Mobility industry call center location selection under sustainability: a two-phase decision-making approach

Shishu Ding (Department of Transportation Engineering, Shanghai Jiao Tong University, Shanghai, China)
Jun Xu (Chexiang Automobile Club (Shanghai) Co., Ltd., China, Shanghai, China)
Lei Dai (Department of Transportation Engineering, Shanghai Jiao Tong University, Shanghai, China)
Hao Hu (Department of Transportation Engineering, Shanghai Jiao Tong University, Shanghai, China)

Smart and Resilient Transportation

ISSN: 2632-0487

Article publication date: 9 June 2021

Issue publication date: 26 August 2021

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Abstract

Purpose

This paper aims to solve the facility location problem of mobility industry call centers comprehensively, considering both investment efficiency and long-term development efficiency.

Design/methodology/approach

In this paper, a two-phase decision-making approach within a multi-criteria decision-making (MCDM) framework has been proposed to help select optimal locations among various alternate locations. Both quantitative and qualitative information is collected and processed based on fuzzy set theory and fuzzy analytic hierarchy process. Then the fuzzy technique for order preference by similarity to an ideal solution method is incorporated in the framework to assess the overall feasibility of all alternates.

Findings

A real case of a mobility giant in China is applied to verify the effectiveness of the proposed framework. Sensitivity analysis also proves the robustness of the framework.

Originality/value

This two-phase MCDM framework allows the mobility industry call center location to be selected considering economic, human resource and sustainability elements comprehensively. The framework proposed in this paper might be applicable to other companies in the mobility industry when deciding optimal locations of call centers.

Keywords

Citation

Ding, S., Xu, J., Dai, L. and Hu, H. (2021), "Mobility industry call center location selection under sustainability: a two-phase decision-making approach", Smart and Resilient Transportation, Vol. 3 No. 2, pp. 177-201. https://doi.org/10.1108/SRT-10-2020-0025

Publisher

:

Emerald Publishing Limited

Copyright © 2021, Shishu Ding, Jun Xu, Lei Dai and Hao Hu.

License

Published in Smart and Resilient Transportation. Published by Emerald Publishing Limited. This article is published under the Creative Commons Attribution (CC BY 4.0) licence. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this licence maybe seen at http://creativecommons.org/licences/by/4.0/legalcode


1. Introduction

Over the years, the mobility industry has gained great expansions all over the world and the development is significant especially in China owing to the huge potential market. Till the end of 2018, the user scale in the mobility industry had reached up to 330 million in China with a total market scale of more than US$40bn. Then, it is expected to double in 2025 according to the China Automotive Smart Shared Mobility Development Report 2019 (China Society of Automotive Engineers, 2019). Stimulated by the rapid development, some domestic players have quickly grown into international mobility giants such as Uber and Didi.

However, apart from the surging demand side, the service supply side is not always capable of providing guaranteed mobility service to passengers. Especially in China, many cases of passengers’ property loss or even cases of passengers killed by taxi drivers happened in recent years (Echo Huang, 2019). To take deep thinking of this problem, the outsourced call center service should be responsible for this. In recent years, mobility service providers tend to communicate with the passengers via the outsourced call centers, just like many other service industries: banks and telecom companies. However, the outsourced telephone clerks have very limited authority to deal with some emergency cases when passengers are in danger, time might be wasted in telephone clerks’ internal reporting.

Currently, to better protect the safety of passengers and improve service quality, some mobility service providers (e.g. Didi) in China have realized the importance of call centers and have decided to self-run the business (Jesse Pottinger, 2019). While for practice, problems emerge when mobile service providers are considering building their own call centers, as site location selection is much more complex than other industries. On the one hand, mobility service telephone clerks need to be more professional (e.g. they need to have a proficient mastery of car and/or mobility-related knowledge) than clerks serving other industries. So, the supply of plenty of qualified telephone clerks or well-educated undergraduates is critical when considering potential selection cities. On the other hand, as pioneers of sharing economy, mobility companies need to take long-term sustainability (e.g. environmental-friendly factors) into considerations when deciding which city to locate the call centers to show their social responsibilities.

However, as mobility service (especially the ride-sharing service) is a relatively new business type that emerged in recent years, limited research has been done to explore the problem of call center location selection while considering the service quality and long-term sustainability. Hence, the aim of this research is to fill the research gap and propose a generic decision-making framework for the mobility call center location selection problem.

The rest of this article is organized as follows: Section 2 reviewed the related literature on the call center location selection problem. The research methodology, the proposed decision-making framework and the detailed evaluation criteria systems will be presented in Sections 3 and 4. A real case study of a large mobile service provider in China is shown in Section 5. Conclusions are drawn in Section 6.

2. Literature review

From the literature, the call center location selection problem can be seen as a particular case of facility location problem (FLP), the study of which first began in 1909 when Alfred Weber considered how to select a location for a warehouse to minimize the total distance between it and customers (Owen and Daskin, 1998). Much of the literature has proposed many decision-making models to address FLP in different areas. Basically, FLP is a complex and comprehensive issue, as there are many factors, both quantitative and qualitative, to be considered to make an optimal decision (Birgün and Güngör, 2014).

Much of the literature tried to address FLP under certainty situations, inputting deterministic parameters and deriving a certain optimal solution. However, in practical cases, the FLP of call centers is always addressed under uncertain situations. There are three main reasons for it:

  1. Unlike the logistics distribution center, whose total cost plays a decisive role in its optimal location selection, the FLP of the call center should take lots of goals into consideration. Thus, it is difficult to establish deterministic optimization models to select the optimal location;

  2. many qualitative parameters concerned with policy and sustainability are not able to obtain deterministic and certain information or data; and

  3. There are many political and economic uncertainty issues concerned with alternate locations in practice such as unpredictable restrictions or incentive policy on the mobility industry.

To select a suitable location for a call center, considerations such as promoting the sustainable development of the local economy, maximizing the customers’ satisfaction, minimizing total investment and operation costs and sustainability of future expansions should be taken. The location selection of a call center should, therefore, be considered as a multiple-criteria decision-making (MCDM) problem under uncertain situations. MCDM indicates that to select the optimal site from all alternate locations, the decision-makers need to take multiple factors into consideration owing to the complexity and uncertainty of practical problems.

MCDM framework has been proved to be effective to solve FLP in different fields. Tsaur et al. (2002) established an MCDM model based on the analytic hierarchy process (AHP) for the selection of restaurant locations. Chu (2002) proposed an MCDM model based on the fuzzy technique for order preference by similarity to an ideal solution (TOPSIS) to solve the FLP under a group decisions environment. Tsaur et al. (2002) proposed an MCDM model combining AHP and TOPSIS to evaluate the service quality of the airline. Zhang and Lu (2003) proposed an integrated fuzzy group decision-making method so as to deal with the fuzziness of the decision-maker’s preferences. Lili Yang (2007) studied how to find the optimal location for fire-station combining a fuzzy multi-objective programming and a genetic algorithm by considering the fuzzy nature of decision-makers in the optimization model. Chou (2008) proposed a new fuzzy MADM (multi-attribute decision-making) method named fuzzy simple additive weighting system to solve FLP. San Cristóbal (2011) used the VlseKriterijumska Optimizacija I Kompromisno Resenje (VIKOR) method for solving the selection problem of a renewable energy project in Spain. He (2016) improved the TOPSIS method using weighted criterion distance to select the optimal location of a JDC (Joint Distribution Center). The validation of the model was tested by sensitivity analysis of comparing the improved model with traditional TOPSIS. Baušys and Juodagalvienė (2017) addressed the FLP of the garage at the parcel of a single-family residential house within the MCDM framework. AHP was used to calculate the weight of each criterion chosen.

Through extensive literature review, it can be found that no previous research has been done for call center location selection. In this case, it would be effective to address this problem within the MCDM framework owing to its generic applicability in solving FLP. Further, some special considerations should be taken when establishing the MCDM framework suitable for call center location selection.

  • Apart from traditional benefit-related criteria, considerations of sustainability (e.g. environmental and social factors) and special characteristics of the industry should be taken when selecting the evaluation criteria.

  • Large quantities of alternates are supposed to be evaluated in which case the ease of conduction and accuracy of results should be considered.

  • Both qualitative and quantitative data should be collected and analyzed when selecting the optimal location of the call center owing to its complexity.

The main contributions of this paper are as follows:

  • This is one of the first studies that provide detailed and comprehensive criteria systems to, respectively, evaluate development efficiency and sustainability for location selection of call centers in the mobility industry, which might provide a theoretical reference for practitioners.

  • A generic two-phase decision-making framework has been proposed to select the optimal location in a more scientific way. This framework may provide a theoretical reference for call center enterprises or government authorities when making multi-criteria decisions under uncertain situations from perspectives of both sustainability and efficiency.

3. Decision-making framework

This paper aims to propose a two-phase decision-making framework for mobility call center location selection problems by incorporating economic and human resource considerations and long-term sustainability considerations. Two phases of decision-making aim to improve the overall efficiency and ensure the results’ accuracy. In the first phase, alternate cities with bad performances in overall costs, high-quality human resource supply will be filtered out from the groups. As no further data collection and analysis will be conducted regarding these filtered alternates, the overall decision-making efficiency will be improved. As only the good performers can go to the second phase where sustainable elements will be emphasized and the most competitive alternate city will be chosen. As data concerned with sustainable elements are mainly qualitative, containing uncertainty and subjectivity, reduction in the size of evaluation groups will improve the decision-making accuracy. In this proposed framework, fuzzy AHP and fuzzy TOPSIS are applied to, respectively, determine the weights of criteria and select the optimal location.

3.1 Fuzzy analytic hierarchy process

The AHP was first proposed by (Saaty and Kearns, 1985) in 1985 which has the ability to incorporate both qualitative descriptions of decision-makers and quantitative factors into the decision-making process. The evaluation results can be obtained directly from the decision-maker’s opinion represented by linguistics ratings. Then, the scope of AHP was extended by integrating with fuzzy set theory to address the issue of uncertainty. In this paper, the weights of different criteria are determined by fuzzy AHP. Decision-makers may get more accurate and adequate results compared with classical AHP. The steps of fuzzy AHP are shown as follows:

Step 1: Calculate the fuzzy synthetic extent

Let X = {x1, x2,…xn}be an objective set and U = {u1, u2, […] um} be a goal set. Based on the extent analysis method proposed by (Chang, 1996), we take each objective and perform extent analysis for each goal, respectively. Thus, we can get m extent analysis for each objective, respectively, as follows:

(1) Mgi1,Mgi2,,Mgim

where each Mgim is a triangular fuzzy number (TFN) set and the fuzzy synthetic extent can be calculated as:

(2) Si=j=1mMgij[i=1nj=1mMgij]1

Step 2: Comparison of fuzzy values

The degree of possibility of M1M2 is defined as:

(3) V(M1M2)=supx≥y[min(μM1(x),μM2(y)]

When there exists a pair (x,y) such that x y and μM1(x),μM2(y), we have V(M1M2) = 1. As M1 and M2 are convex fuzzy numbers, they are expressed as follows:

(4) V(M1M2)=hgt(M1M2)=μM2(d)

where d is the ordinate of the highest intersection point D between μM1 and μM2.When M1 = (l1, m1, n1) and M2 = (l2, m2, n2) then μM2(d) are calculated as:

(5) μM2(d)={0,l1>n2l1n2(m2n2)(m1l1),otherwise1,m2>m1

For the comparison of M1 and M2, we need to calculate both values of V(M1M2) and V(M2M1).

Step 3: Priority weight calculation

(6) V(MM1,M2,Mk)=V[(MM1)and(MM2)and(MMk)]
(7) V(MM1,M2,Mk)=minV(MMi)i=1,2,,k

If

(8) m(Pi) = minV(SiSK) for k = 1, 2,,nki

Then the weight vector is given as:

(9) WP=(m(P1),m(P2),m(Pn))T

Step 4: Calculation of normalized vector

Based on the normalization of WP we can get the normalized weight vector as:

(10) W=(w(P1),w(P2),w(Pn))T

where W is not the fuzzy number and it illustrates the priority weights of one alternate over others.

3.2 Fuzzy technique for order preference by similarity to an ideal solution

TOPSIS is a well-known MCDM method to solve the problem under uncertainty. It was first proposed by Hwang and Yoon (1981). The main logic behind this is that the best solution among all alternates should have the shortest distance between itself with the positive ideal solution and the longest distance with the negative ideal solution (Uygun and Dede, 2016). The biggest advantage of TOPSIS is the ease of conduction which means that decision-makers do not need to undertake cumbersome calculations to get the results of evaluations. At the same time, decision-makers can get stable and accurate results. Another advantage of TOPSIS is that it is easy and applicable to integrate with other methods to solve MCDM problems. However, traditional TOPSIS is also criticized for its limitations of linguistics ratings represented by a single numeric value. So, traditional TOPSIS can be improved by integrating with fuzzy theory to make more accurate evaluations. Instead of applying a single numeric value, fuzzy numbers are used to make linguistics judgments. Many researchers have incorporated traditional TOPSIS with fuzzy set theory to solve problems under uncertainty. In these research studies, different membership functions such as triangular and trapezoidal are used. Studies have shown that it is more appropriate to use TFNs, as it is easy to operate and it yields better evaluation results. Thus, in this research, fuzzy TOPSIS integrating traditional TOPSIS with fuzzy set theory using TFNs was applied.

The steps of fuzzy TOPSIS using TFNs are described as follows (Choudhary and Shankar, 2012; dos Santos et al., 2019):

Supposing that there are a set of m alternates: A = (A1, A2, …, Am), a set of n criteria: C = (C1, C2, …, Cn), a set of k decision-makers: D = (D1, D2, …, Dk)

Step 1: Aggregate linguistics rating of all experts

Let a˜ijk=(aijkL,aijkM,aijkR) be the linguistics rating of kth decision-makers regarding ith alternate in terms of jth criterion where 0aijkLaijkMaijkR1. So, the aggregating linguistics rating for the ith alternate with respect to the jth criterion can be calculated as:

(11) a˜ij=a˜ij1a˜ij2a˜ijkk

Step 2: Normalize the fuzzy decision matrix

The initial fuzzy matrix can be built up by equation (12). Based on the initial fuzzy matrix, we can normalize it by the following method. As we mentioned before, there are two kinds of criteria: cost-type and benefit-type criteria.

For cost-type criteria, we can normalize it by:

(12) b˜ij=max{a˜ij,i=1,2,,m}a˜ijmax{a˜ii,i=1,2,,m}min{a˜ii,i=1,2,,m}

For benefit-type criteria, we can normalize it by:

(13) b˜ij=a˜ijmax{a˜ij,i=1,2,,m}max{a˜ii,i=1,2,,m}min{a˜ii,i=1,2,,m}

As a result, we can obtain the normalized fuzzy decision matrix:

(14) B=(b˜ij)m*n=(b˜11b˜1nb˜m1b˜mn)

Step 3: Calculate the weight of each criterion

The weight of each criterion can be calculated using equations (1)–(11).

Step 4: Calculate the weight-normalized fuzzy decision matrix

The weight-normalized fuzzy matrix can be calculated by:

(15) C=(c˜ij)m*n=(b˜11*w˜1b˜1n*w˜nb˜m1*w˜1b˜mn*w˜n)

Step 5: Define the positive and negative ideal solutions

We can obtain the positive and negative ideal solutions by taking the best and worst value of each alternates in terms of each criterion. Supposing that T1 and T2 represent the set of cost-type criteria and benefit-type criteria, respectively. Then, the positive and negative ideal solutions are calculated as:

(16) C˜+=(ct+L,ct+M,ct+R)={maxcij|jT1,mincij|jT2}
(17) C˜=(ctL,ctM,ctR)={mincij|jT1,mincij|jT2}

Step 6: Calculate the distance of each alternate to the positive and negative ideal solutions

The distance of each alternate to positive and negative ideal solutions are calculated as:

(18) di+=[(cijLcj+L)2+(cijMcj+M)2+(cijRcj+R)2]3
(19) di=[(cijLcjL)2+(cijMcjM)2+(cijRcjR)2]3

Step 7: Calculate the relative closeness of each alternate

(20) Ri=didi+di+

Step 8: Rank all alternates based on relative closeness

Based on the relative closeness of each alternate regarding positive and negative ideal solutions, we can rank all alternates in descending of Ri.

3.3 Decision-making phases

3.3.1 Phase I – initial filtering by investment efficiency elements.

In this phase, all potentially feasible locations will be identified by taking into consideration parameters highly related to the development efficiency of a call center. The procedures can be summarized as the following steps:

Step 1: Determine the base pool consisting of all intended cities. In this process, consideration in terms of feasibility and efficiency is not required. Certainly, this city pool contains both feasible and infeasible alternates.

Step 2: Establish the development efficiency criteria system to evaluate all alternate locations. Then, collect the quantitative data of all alternate locations regarding each criterion.

Step 3: Determine the weights of all criteria using fuzzy AHP. Linguistics ratings are represented by TFNs.

Step 5: Carry out the normalization process based on the type of each criterion. For cost-type criteria, the lower value of the criteria it has, the better it will be. For benefit-type criteria, the higher value of the criteria it has, the better it will be.

Step 6: Rank the weight-normalized values to select all potential locations. The specific requirements are determined by the call centers, as different enterprises set different requirements on feasibility.

3.3.2 Phase II – optimal filtering considering long-term sustainable elements.

In this phase, the optimal location will be identified by taking into consideration parameters highly related to the long-term development sustainability of a call center. The procedures can be summarized as the following steps:

Step 1: Establish the sustainability criteria system to evaluate the long-term sustainability of potentially feasible locations. Then, collect qualitative information regarding each criterion for further evaluation.

Step 2: As the same as phase I, determine the weights of all criteria using fuzzy AHP. Linguistics ratings are represented by TFNs.

Step 3: Based on the information collected, evaluate all feasible locations regarding each criterion by linguistics ratings.

Step 4: Carry out the normalization process, calculate the weight-normalized value. Calculate the relative closeness of feasible locations using fuzzy TOPSIS.

Step 5: Rank the relative closeness values to select the optimal location.

In conclusion, the proposed two-phase decision-making framework can be summarized as follows: By inputting both quantitative data and qualitative data, we can obtain the optimal decision of location selection for a call center. Then, we establish two criteria index systems to, respectively, evaluate the development efficiency and sustainability of alternate locations. The research roadmap is illustrated by the following graph Figure 1.

4. Evaluation criteria

In this part, the criteria index systems are established to, respectively, evaluate the development efficiency and sustainability of alternate cities. The selection of evaluation criteria is based on the literature review and the practical needs of call centers. Thus, both generic consideration of FLP and special consideration regarding the mobility industry should be taken.

The hierarchy of evaluation criteria is shown in Figure 2.

4.1 Development efficiency criteria

In the first phase of evaluation, some elements of development efficiency are considered to evaluate the alternate locations. The efficiency criteria consist of 2 sub-criteria: criteria of economic and criteria of human resource. The details can be found in Table 1.

4.1.1 Economic criteria.

4.1.1.1 E1: Labor cost.

A call center generally has hundreds of staff operating every day in which case the labor cost has a great impact on site selection (Birgün and Güngör, 2014). A higher labor cost will increase the total operation cost of a call center. The labor cost consists of salary expenditure, staff welfare, insurances fee and any other cost related to an employee. In this paper, the average salary of call center clerks in CNY per person per month in each alternate city is chosen to represent E1.

4.1.1.2 E2: Land cost.

Generally, a call center requires a huge working place to settle in hundreds of employees and fixed equipment. An increase in land cost will significantly influence the overall capital investment. So, the land cost has a critical impact on site selection (Rao et al., 2015). In this paper, the average rent of office buildings in each alternate city in CNY per square meter is used for representing E2.

4.1.1.3 E3: Tax policy.

Tax is a very important parameter when evaluating the economic conditions of alternate cities. A city with better tax policies will certainly be more attractive owing to the lower total cost (He, 2017). Some cities will provide special tax policies to attract more investment from enterprises. Call centers are more prone to locate in these cities. In this paper, a binary variable is used to quantify this criterion. Alternate cities with appealing tax policies will be marked with 1, otherwise with 0 in this research.

4.1.1.4 E4: Investment incentive.

Different cities provide different investment incentive policies to attract investment from new enterprises such as a one-year-free rent policy (Özkan, 2012). Call centers are prone to select these cities to relieve the initial capital burden. As the same as “tax policy,” a binary variable is used to quantify this criterion.

4.1.1.5 E5: Urban agglomeration.

A city in core urban agglomeration gains stronger competitiveness over other cities owing to better human resource conditions and potential development. Cities in core urban agglomerations will have more opportunities and better supporting policies both from the central government and provincial government levels (Chuanglin, 2015). As the same as “tax policy,” a binary variable is used to quantify this criterion. All alternate cities will be classified into “national” or “regional” depending on the urban agglomeration they are in.

4.1.2 Human resource criteria.

4.1.2.1 HR1: Total employment in the service industry.

Total employment in the service industry is a crucial criterion to evaluate the capability of human resource supply for call centers of alternate cities. In this paper, the total number of employees in the service industry of each alternate city is used to represent the index of HR1, that a larger value of HR1, the stronger capability of a city could provide the qualified human resource.

4.1.2.2 HR2: Number of high education institutions

The number of high education institutions illustrates the research and technology level of alternate cities. Locating in a city full of high education institutions will help call centers in operation when outsourcing projects (Özkan, 2012). In this paper, the total number of higher education institutions of each alternate city is used to represent the index. The larger value of HR2, the stronger capability of technical cooperation a city could provide.

4.1.2.3 HR3: Scale of high-educated graduates.

Nowadays, especially in the mobility industry, advanced talents such as software engineers and IT engineers are urgently needed owing to the rapid development. The scale of high-educated graduates evaluates the education level of the present human resource market (Özkan, 2012). Cities with a larger scale of high-educated graduates are more appealing to call centers. In this paper, the total number of high-educated graduates of each alternate city is used to represent HR3. With a larger value of HR3, the stronger capability of a city could provide high-quality engineers.

4.1.2.4 HR4: Scale of existing call centers.

However, existing call centers in some cities will increase the recruitment cost and overall human resource cost even though they contribute to the large employment. Because business competition among call centers will generally help to increase the overall salary level of clerks. So, the scale of existing call centers will play a negative impact on the overall feasibility of alternate cities. In this paper, the total number of employees of call centers in each alternate city is used to quantify this criterion. The larger value of HR4, the higher the competition pressure of a city would have.

4.2 Development sustainability criteria

For the second phase of evaluation and filtering, some sustainable elements will be considered and emphasized. The sustainability criteria consist of three sub-criteria: criteria of development potential, social responsibilities and environmental friendliness. The details can be found in Table 2.

4.2.1 Development potential.

4.2.1.1 D1: Possibility of expansion.

Possibility of expansion is a parameter to evaluate the development sustainability of alternate cities. It refers to the potential of alternate cities for a call center to enlarge its scale in the long run. With the rapid development of the mobility industry, a city with a higher possibility of expansion will certainly benefit a lot (Bouhana et al., 2013; Awasthi et al., 2011; Kuo, 2011).

4.2.1.2 D2: Public facilities condition.

A well-operated call center requires good and stable public facilities conditions to function properly such as stable network service, electricity supply and water supply (Elevli, 2014). The equipment in a call center is extremely expensive and vulnerable. An insufficient or unstable power supply will do great damage to the equipment.

4.2.1.3 D3: Potential of urban agglomeration.

Cities in different urban agglomeration have different development potential in terms of market of advanced talents, the opportunity of economic cooperation, level of technology innovation, etc. It is significant, therefore, to evaluate the potential of different urban agglomerations.

4.2.1.4 D4: Government support.

Mobility service providers, as a pioneer of sharing economy, appeal to lots of second-tier and third-tier cities. Local governments may provide special policies over tax and land use to attract these call centers (He, 2017; Özkan, 2012).

4.2.1.5 D5: Technology level.

The technology level should be considered, as the mobility industry is gaining rapid development nowadays. More and more advanced technologies have been applied in call centers to improve their overall performance in terms of customer satisfaction, cost management and personnel evaluation.

4.2.2 Social responsibilities.

4.2.2.1 S1: Impact of noise on nearby residents.

Social responsibility should also be considered when selecting the location of a call center. Thus, the location selection of a call center should consider the negative externalities it may cause (Rao et al., 2015; He, 2017) Noise is a possible negative impact caused by a call center.

4.2.2.2 S2: Role in promoting employment rate.

Role in promoting employment rate illustrates how much can society benefit from call center enterprise (He, 2017). The higher role they play, the better the brand image they will have in society and the huger potential of opportunity to carry economic cooperation with the local government.

4.2.2.3 S3: Role in promoting technological innovation.

As the same as the role in promoting employment rate, role in promoting technological innovation is another external benefit can society gains from call centers. By cooperating with institutions and local government, technology innovation can be improved.

4.2.2.4 S4: Role in promoting local economic planning.

The Chinese government will make its development plans every five years and so do local governments. Some local governments aim to promote their information technology level in their five-year development plans (He, 2017). Locating in these cities is a win-win strategy for call centers.

4.2.3 Environmental-friendliness.

4.2.3.1 E1: Impact on ecological landscape.

A call center is supposed to harmonize with the surrounding landscape of alternates cities (Bouhana et al., 2013; Guo and Zhao, 2015; Vafa-Arani et al., 2014). Social responsibility as maintaining or improving the landscape without damaging its original image is important.

4.2.3.2 E2: Natural conditions.

When selecting the optimal location of a call center, comprehensive evaluation over the local natural environmental conditions such as temperature, wind and rainfall should be conducted, as it helps to reduce the risk of the construction and operation (Chou et al., 2008).

4.2.3.3 E3: Compliance with environmental laws and regulations.

The location selection of a call center must comply with environmental laws and regulations released by the local government. Then, further, call centers should comprehensively consider the alternate cities’ land-use planning, natural resource condition, etc. Compliance with the spatial structure of alternate cities is also relevant Dweiri et al. (2018).

5. Case study

The proposed two-phase decision-making framework was applied to a real case of call center location selection in China. This mobility service provider company has been operating a call center in Shanghai for two years and it decided to build up a new one in China, owing to the rapid development of its mobility business. Considering the high cost and development limitation of the existing call center, the company intended to find a better location with lower cost and better development sustainability. A group of four decision-makers, one from the marketing department, two from top-level managers, one from consulting organization came together to evaluate all possible locations to select the optimal one.

5.1 Phase I – potentially feasible locations

In this phase, all intended cities were first selected. Basically, first-tier cities are not considered owing to extremely high cost, just like the existing call center in Shanghai. At meanwhile, cities below the third-tier are not considered as well, as these less-developed cities tend to have the worse potential of future development and human resource condition (Jack, 2006). Through group discussion, the city pool was constructed, consisting of all possible cities shown in Appendix Table A1:

After building up the city pool, the data of all aspects was collected through different channels such as official documents from the Statistics Department of Government, a commercial report released by consulting organization and a database of third-party platforms. The details of all information were shown in Appendix Table A2. Further, data was normalized using a different method based on the type of each criterion, cost-type or benefit-type. The normalized data was shown in Appendix Table A3.

Then, the weight of each criterion was determined by the fuzzy AHP method. First, the different priority weights of all criteria and their sub-criteria were determined using the linguistics ratings and triangular scale defined by (Bozbura et al., 2007) in Table 3.

By using the extent analysis approach proposed by (Chang, 1996), the priority weights based on the linguistics ratings from experts were calculated. The results were shown in Tables 4–6.

The process fuzzy AHP using the example of calculation with respect to four main criteria is illustrated below. First, the values of fuzzy synthetic extent were calculated as:

S1 = (2.3, 2.6, 3.2)(14.3, 17.3, 21.2)1 = (0.1085, 0.1503, 0.2238)
S2 = (4.5, 5.5, 6.5)(14.3, 17.3, 21.2)1 = (0.2123, 0.3179, 0.4545)
S3 = (4.5, 5.5, 6.5)(14.3, 17.3, 21.2)1 = (0.2123, 0.3179, 0.4545)
S4=(3,3.7,5)(14.3,17.3,21.2)1=(0.1415, 0.2139, 0.3497)

Then, the V values were calculated using equations (3)–(5), the results are shown in Table 7. Based on the V values, the degree of possibility could be obtained by equations (6)–(8).

m(P1) = minV(S1SK) = min(1,1,1) = 0.064

Similarly

m(P2)=m(P3)=1,m(P4)=0.569

Then the weight vector was calculated as:

WP = (0.064,1,1,0.569)T

After the normalization process, we can get the normalized weight vector as:

WP = (0.02, 0.38, 0.38, 0.22)T

The rest calculation processes were not given here, as the procedure of calculation are all the same as the above. After finishing all calculations, the global and local weights of all criteria are shown in Table 8.

After finishing the weight of each criterion, the weight-normalized values were calculated combining the weight and normalized data of all intended cities, the results were shown in Table 9.

In the end, four potentially feasible cities, with the weigh-normalized values higher than 0.6, were chosen: Xi’an, Chongqing, Wuhan, Tianjin (thereafter represented as A1, A2, A3 and A4). The selection of potentially feasible cities was based on the following principles:

  • Meet the practical needs of call center enterprises (e.g. intuitive judgment).

  • No more than 6 to ensure the result accuracy in phase II based on linguistics ratings.

  • The performance of selected alternates should be significantly better than others.

So, in the next phase, the sustainability of these four cities would be evaluated through group decisions.

5.2 Phase II – optimal location

Similarly, the weight of each criterion in the long-term criteria system would be calculated. The linguistic rating and weight were shown in Tables 10–14.

Then, fuzzy TOPSIS was applied to rank all the alternate cities. We used the linguistics ratings defined by Awasthi et al. (2011) to evaluate all alternate cities, shown in Tables 15 and 16. The weight-normalized matrix was shown in Table 17, based on which we can calculate the distance from alternate cities to positive and negative ideal solution and then calculate the relative closeness, the results were shown in Table 18.

By comparing the relative closeness values of all four alternate cities, we can draw a conclusion that A3 (Wuhan) > A2 (Chongqing) > A4 (Tianjin) > A1(Xi’an). Thus, Wuhan was recommended as the optimal location for the call center.

5.3 Sensitivity analysis

To investigate the robustness of the proposed model, sensitivity analysis was conducted to evaluate the performance of the decision-making process. Based on the decision-making logic of fuzzy TOPSIS, the optimal location should be the city with the highest relative closeness value.

The value of global weights of each criterion, which illustrates the overall importance of this main criteria and the value of the local weight, which illustrates the local importance within the main criterion, will be mutually exchanged within 2 criteria while the values of other criteria remain unchanged in the sensitivity analysis (Rosenhead, 1972). For example, the local weight of C1 was exchanged with local weights of C2, C3, C4 and C5 sequentially. The relative closeness of different situations is calculated and observed the stability of decision-making rank. The results are shown in Table 19 and Figure 3.

It can be clearly seen that in each of the experiment runs alternate city (Wuhan) had the largest relative closeness value. This indicates that a stable rank could be obtained while exchanging the weights of criteria. Only in the 16th experiment run, a different rank: A3 > A4 > A2 > A1 appears, in which case alternate city (Tianjin) became the second-best alternate. This demonstrates the robustness and stability of the proposed model.

6. Conclusion

A generic two-phase decision-making framework was proposed for the evaluation and selection of optimal locations for call centers in the mobility industry. A detailed evaluation criteria system involving 21 criteria was developed for assessing both development efficiency and long-term sustainability of call center location problem. The proposed decision-making framework is developed based on fuzzy MCDM and aims at solving the practical problems that emerged in the mobility industry, as MCDM models have been proved to be effective for solving FLP.

Compared with previous research works, the two-phase decision-making approach has two main theoretical advantages:

  1. Improving decision-making efficiency

To solve the location selection problem of call centers in the mobility industry, large quantities of alternates should be evaluated. However, it would be time-consuming and unnecessary to collect all quantitative and qualitative data overall alternates. Logically, an alternate city with poor conditions regarding human resource and investment factors is not likely to be the optimal location, unless some unpredictable issues occur. However, this kind of exception is not considered in this paper. By eliminating these poor-performed alternates from decision-making groups, the efficiency of decision-making would be improved significantly.

  • (2) Improving decision-making accuracy

Under an uncertain decision-making environment, qualitative data are collected based on experts’ subjective judgments such as pairwise comparison using linguistics rating. When there are many alternates evaluated simultaneously, the decision-making results will be extremely inaccurate. By applying a two-phase decision-making approach, we only concentrate on these highlighting alternates. By reducing the frequency of pairwise comparison, the accuracy of decision-making will be improved significantly.

From the practical perspective, a large mobile service provider in Chin launched a real-world project of call center location selection. In this project, our proposed method was compared with competitors’ frameworks and traditional methods and it was finally adopted, which validated the feasibility and robustness of the proposed decision-making framework practically.

The limitation of this research is that qualitative information was collected and evaluated based on linguistics ratings from experts. For further research, some other advanced expert evaluation systems could be applied to better evaluate the qualitative information.

Figures

Research roadmap

Figure 1.

Research roadmap

Hierarchy structure of evaluation criteria systems

Figure 2.

Hierarchy structure of evaluation criteria systems

Results of sensitivity analysis using fuzzy TOPSIS

Figure 3.

Results of sensitivity analysis using fuzzy TOPSIS

Efficiency evaluation criteria

Criteria Sub-criteria Type Source
Economic Labor cost Cost Birgün and Güngör (2014)
Land cost Cost Rao et al. (2015)
Tax policy Benefit He (2017)
Investment incentive Benefit Özkan (2012)
Urban agglomeration Benefit Model assumption
Human resource Scale of employment in the service industry Benefit Model assumption
Number of high education institutions Benefit Özkan (2012)
Scale of high-educated graduates Benefit Özkan (2012)
Scale of existing call centers Cost Model assumption

Sustainability evaluation criteria

Criteria Sub-criteria Type Source
Development potential Possibility of expansion Maximize Awasthi et al. (2011)
Bouhana et al. (2013)
Kuo (2011)
Public facilities condition Maximize Elevli (2014)
Urban agglomeration Maximize Model assumption
Government support Maximize He et al. (2017)
Özkan (2012)
Technology level Maximize Model assumption
Social responsibility Impact of noise on nearby residents Minimize Rao et al. (2015)
He et al. (2017)
Role in promoting employment rate Maximize He et al. (2017)
Role in promoting technological innovation Maximize Model assumption
Role in promoting local economic planning Maximize He et al. (2017)
Environmental-friendliness Impact on ecological landscape Minimize Bouhana et al. (2013)
Guo and Zhao (2015)
Vafa-Arani (2014)
Natural conditions Maximize Chou et al. (2008)
Compliance with environmental laws and regulations Maximize Dweiri et al. (2018)

TFNs of comparison measures

Linguistics ratings Triangular fuzzy scale Triangular fuzzy reciprocal scale
Absolutely more important (2.5, 3, 3.5) (0.2, 0.3, 0.4)
Very strongly more important (2, 2.5, 3) (0.3, 0.4, 0.5)
Strongly more important (1.5, 2, 2.5) (0.4, 0.5, 0.6)
Weakly important (1, 1.5, 2) (0.5, 0.6, 1)
Equally important (0.5, 1, 1.5) (0.6, 1, 2)
Just equal (1, 1, 1) (1, 1, 1)

The fuzzy comparison matrix within short-term evaluation criteria

Criteria Economic Human resource Weight
Economic (1, 1, 1) (1, 1, 1) 0.5
Human resource (1, 1, 1) (1, 1, 1) 0.5

The fuzzy comparison matrix within economic criteria

Criteria E1 E2 E3 E4 E5 Weight
E1 (1, 1, 1) (1, 1.5, 2) (1.5, 2, 2.5) (1.5, 2, 2.5) (1, 1, 1) 0.37
E2 (0.5, 0.6, 1) (1, 1, 1) (1, 1.5, 2) (1, 1.5, 2) (0.5, 0.6, 1) 0.23
E3 (0.4, 0.5, 0.6) (0.5, 0.6, 1) (1, 1, 1) (1, 1, 1) (0.4, 0.5, 0.6) 0.02
E4 (0.4, 0.5, 0.6) (0.5, 0.6, 1) (1, 1, 1) (1, 1, 1) (0.4, 0.5, 0.6) 0.02
E5 (1, 1, 1) (1, 1.5, 2) (1.5, 2, 2.5) (1.5, 2, 2.5) (1, 1, 1) 0.37

The fuzzy comparison matrix within human resource criteria

Criteria HR1 HR2 HR3 HR4 Weight
HR1 (1, 1, 1) (0.4, 0.5, 0.6) (0.4, 0.5, 0.6) (0.5, 0.6, 1) 0.02
HR2 (1.5, 2, 2.5) (1, 1, 1) (1, 1, 1) (1, 1.5, 2) 0.38
HR3 (1.5, 2, 2.5) (1, 1, 1) (1, 1, 1) (1, 1.5, 2) 0.38
HR4 (1, 1.5, 2) (0.5, 0.6, 1) (0.5, 0.6, 1) (1, 1, 1) 0.22

The V values of criteria

V HR1 HR2 HR3 HR4
HR1 1 1 1
HR2 0.06426 1 0.56905
HR3 0.06426 1 0.56905
HR4 0.56405 1 1

Global and local weights of short-term criteria

Criteria Global weight Sub-criteria Local weight
Economic 0.50 Labor cost 0.37
Land cost 0.23
Tax policy 0.02
Investment incentive 0.02
Urban agglomeration 0.37
Human resource 0.50 Scale of employment in the service industry 0.02
Number of high education institutions 0.38
Scale of high-educated graduates 0.38
Scale of existing call centers 0.22

Weight-normalized value of all intended cities

Cities Xi’an Chongqing Tianjin Wuhan Hangzhou Harbin Changsha Hefei
Weigh-normalized value 0.662 0.661 0.648 0.635 0.597 0.593 0.590 0.588
Cities Wuhu Yangzhou Chengdu Luoyang Nanchang Shangrao Taizhou Shijiazhuang
Weigh-normalized value 0.584 0.583 0.582 0.576 0.574 0.561 0.557 0.554
Cities Jinan Wuxi Xiamen Ningbo Dongguan Weifang Mianyang Shenyang
Weigh-normalized value 0.522 0.501 0.484 0.472 0.466 0.439 0.427 0.418
Cities Fuzhou Anshan Guiyang Lanzhou Foshan
Weigh-normalized value 0.404 0.394 0.382 0.359 0.298

The fuzzy comparison matrix within long-term evaluation criteria

Criteria C1 C2 C3 Weight
C1 (1, 1, 1) (1, 1.5, 2) (1.5, 2, 2.5) 0.57
C2 (0.5, 0.6, 1) (1, 1, 1) (1, 1.5, 2) 0.35
C3 (0.4, 0.5, 0.6) (0.5, 0.6, 1) (1, 1, 1) 0.08

The fuzzy comparison matrix within development potential criteria

Criteria D1(0.4, 0.5, 0.6) D2 D3 D4 D5 Weight
D1 (1, 1, 1) (1.5, 2, 2.5) (1, 1.5, 2) (1, 1, 1) (1, 1.5, 2) 0.31
D2 (0.4, 0.5, 0.6) (1, 1, 1) (0.5, 0.6, 1) (0.4, 0.5, 0.6) (0.5, 0.6, 1) 0.05
D3 (1, 1.5, 2) (1, 1, 1) (0.4, 0.5, 0.6) (1, 1, 1) 0.17
D4 (1, 1, 1) (1.5, 2, 2.5) (1, 1.5, 2) (1, 1, 1) (1, 1.5, 2) 0.31
D5 (0.5, 0.6, 1) (1, 1.5, 2) (1, 1, 1) (0.5, 0.6, 1) (1, 1, 1) 0.17

The fuzzy comparison matrix within social responsibility criteria

Criteria S1 S2 S3 S4 Weight
S1 (1, 1, 1) (0.5, 0.6, 1) (1, 1.5, 2) (0.5, 0.6, 1) 0.22
S2 (1, 1.5, 2) (1, 1, 1) (1.5, 2, 2.5) (1, 1, 1) 0.38
S3 (0.5, 0.6, 1) (0.4, 0.5, 0.6) (1, 1, 1) (0.4, 0.5, 0.6) 0.02
S4 (1, 1.5, 2) (1, 1, 1) (1.5, 2, 2.5) (1, 1, 1) 0.38

The fuzzy comparison matrix within environmental-friendliness criteria

Criteria E1 E2 E3 Weight
E1 (1, 1, 1) (1, 1.5, 2) (0.5, 0.6, 1) 0.35
E2 (0.5, 0.6, 1) (1, 1, 1) (0.4, 0.5, 0.6) 0.08
E3 (1, 1.5, 2) (1.5, 2, 2.5) (1, 1, 1) 0.57

Global and local weights of all long-term criteria

Criteria Global weight Sub-criteria Local weight
Development potential 0.57 Possibility of expansion 0.31
Public facilities condition 0.05
Urban agglomeration 0.17
Government support 0.31
Technology level 0.17
Social responsibility 0.35 Impact of noise on nearby residents 0.22
Role in promoting employment rate 0.38
Role in promoting technological innovation 0.02
Role in promoting local economic planning 0.38
Environmental friendliness 0.08 Impact on ecological landscape 0.35
Natural conditions 0.08
Compliance with environmental laws and regulations 0.57

Transformation rules for linguistics ratings

Linguistics ratings TFNs
Very low (VL) (1, 1, 3)
Low (L) (1, 3, 5)
Medium (M) (3, 5, 7)
High (H) (5, 7, 9)
Very high (VH) (7, 9, 9)

Linguistics ratings of experts with respect to four feasible cities

Alternatives\Criteria C1 C2 C3 C4 C5 C6 C7 C8 C9 C10 C11 C12
EP1
Xi’an M VH VL M VH VH M M L VH H M
Chongqing M M VL M M M L H H M VL H
Wuhan VH L VH H H L M M M VL M VH
Tianjin M VH H M VH H M VL VL H H L
EP2
Xi’an H H M M H M H L VL VH VH M
Chongqing M M VL H L VL M H VH M VL H
Wuhan L VL H VH M L H M H VL VL VH
Tianjin H VH H M VH H M L L VH H H
EP3
Xi’an H VH M H VH M H M M H H M
Chongqing VH M VL H L VL M VH VH L M H
Wuhan H L VH H M VL H M VH M VL VH
Tianjin VH VH VH H H H H VL L H H M
EP4
Xi’an M H VL M VH M VH L VL H M M
Chongqing VH M L VH H VL H H VH M VL H
Wuhan M M H H M VL M L H VL M VH
Tianjin H VH VH H VH H M VL VL VH H H

Weight-normalized matrix

Criteria Alternates
Xi’an (A1) Chongqing (A2) Wuhan (A3) Tianjin (A4)
C1 (0.,0.,0.088) (0.088,0.118,0.118) (0,0,0) (0.118,0.118,0.177)
C2 (0.023,0.024,0.029) (0.008,0.010,0.014) (0,0,0) (0.029,0.029,0.029)
C3 (0.029,0.037,0.044) (0,0,0) (0.097,0.097,0.097) (0.097,0.097,0.097)
C4 (0,0,0) (0.118,0.133,0.133) (0.177,0.177,0.177) (0.044,0.044,0.059)
C5 (0.097,0.097,0.097) (0,0,0) (0.024,0.024,0.039) (0.097,0.097,0.097)
C6 (0.015,0.019,0.023) (0.067,0.077,0.077) (0.077,0.077,0.077) (0,0,0)
C7 (0.133,0.133,0.133) (0,0,0) (0.067,0.067,0.089) (0.033,0.033,0.044)
C8 (0.002,0.003,0.003) (0.007,0.007,0.007) (0.002,0.004,0.004) (0,0,0)
C9 (0,0,0) (0.133,0.133,0.133) (0.093,0.100,0.108) (0,0.011,0.015)
C10 (0,0,0) (0.014,0.016,0.022) (0.028,0.028,0.028) (0,0,0)
C11 (0,0,0.001) (0.006,0.006,0.006) (0.005,0.005,0.005) (0,0,0)
C12 (0,0,0) (0.023,0.023,0.046) (0.046,0.046,0.046) (0.006,0.006,0.011)

Relative closeness values of four alternate cities

Alternates
Value Xi’an (A1) Chongqing (A2) Wuhan (A3) Tianjin (A4)
di- 0.0321 0.0529 0.0667 0.0433
di+ 0.0742 0.0412 0.0297 0.0517
Ri 0.3021 0.5622 0.6921 0.4558

Sensitivity analysis results

Experiment run Weight
exchange
Relative closeness Rank
1 C1–C2 0.2547 0.4850 0.6921 0.3360 A3 > A2 > A4 > A1
2 C1–C3 0.3059 0.5322 0.6492 0.4150 A3 > A2 > A4 > A1
3 C1–C4 0.3021 0.5622 0.6921 0.4558 A3 > A2 > A4 > A1
4 C1–C5 0.2817 0.5322 0.7110 0.4150 A3 > A2 > A4 > A1
5 C2–C3 0.2832 0.5633 0.6600 0.4149 A3 > A2 > A4 > A1
6 C2–C4 0.2615 0.4509 0.5637 0.3353 A3 > A2 > A4 > A1
7 C2–C5 0.2809 0.5633 0.6701 0.4149 A3 > A2 > A4 > A1
8 C3–C4 0.3098 0.5134 0.6113 0.4029 A3 > A2 > A4 > A1
9 C3–C5 0.3021 0.5622 0.6921 0.4558 A3 > A2 > A4 > A1
10 C4–C5 0.2850 0.5134 0.6658 0.4029 A3 > A2 > A4 > A1
11 C6–C7 0.2972 0.5472 0.6408 0.4409 A3 > A2 > A4 > A1
12 C6–C8 0.2943 0.5091 0.6532 0.4558 A3 > A2 > A4 > A1
13 C6–C9 0.3061 0.5300 0.6420 0.4516 A3 > A2 > A4 > A1
14 C7–C8 0.2588 0.4810 0.5929 0.4207 A3 > A2 > A4 > A1
15 C7–C9 0.3021 0.5622 0.6921 0.4558 A3 > A2 > A4 > A1
16 C8–C9 0.2968 0.4203 0.5814 0.4462 A3 > A4 > A2 > A1
17 C10–C11 0.3021 0.5567 0.6868 0.4558 A3 > A2 > A4 > A1
18 C10–C12 0.3021 0.5602 0.6876 0.4547 A3 > A2 > A4 > A1
19 C11–C12 0.3021 0.5453 0.6746 0.4533 A3 > A2 > A4 > A1

All intended cities

City Tier Urban Agglomeration
Chengdu Second Chengdu-Chongqing Urban Agglomerations
Xi’an Second Guan Zhong Plain Urban Agglomerations
Jinan Second Shandong Peninsula Urban Agglomerations
Zhengzhou Second Central Plains Urban Agglomerations
Shangrao Third Triangle of Central China Urban Agglomerations
Hefei Second Yangtze River Delta Urban Agglomerations
Taizhou Third Yangtze River Delta Urban Agglomerations
Yangzhou Second Yangtze River Delta Urban Agglomerations
Ningbo Third Yangtze River Delta Urban Agglomerations
Wuxi Third Yangtze River Delta Urban Agglomerations
Wuhu Third Yangtze River Delta Urban Agglomerations
Tianjin Second Beijing-Tianjin-Hebei Urban Agglomerations
Xiamen Second Pearl River Delta Urban Agglomerations
Foshan Third Pearl River Delta Urban Agglomerations
Dongguan Third Pearl River Delta Urban Agglomerations
Wuhan Second Triangle of Central China Urban Agglomerations
Nanchang Third Triangle of Central China Urban Agglomerations
Changsha Second Triangle of Central China Urban Agglomerations
Chongqing Second Chengdu-Chongqing Urban Agglomerations
Luoyang Third Central Plains Urban Agglomerations
Harbin Second Harbin-Changchun megalopolis
Shijiazhuang Second Beijing-Tianjin-Hebei Urban Agglomerations
Shenyang Second South-central of Liao Urban Agglomerations
Anshan Third South-central of Liao Urban Agglomerations
Lanzhou Third Lanzhou–Xining Urban Agglomerations
Weifang Third Shandong Peninsula Urban Agglomerations
Guiyang Third Central of Qian Urban Agglomerations
Mianyang Third Chengdu-Chongqing Urban Agglomerations
Fuzhou Third Urban Agglomeration on the West Side of the Straits

Source: Chuanglin (2015)

Data of alternate cities

Cities Chengdu Xi'an Jinan Zhengzhou Shangrao Hefei Yangzhou Taizhou Wuxi Ningbo Wuhu Tianjin Shijiazhuang Foshan
Labor cost (CNY) 67,533 65,793 62,378 60,764 54,720 65,068 67,200 61,025 69,655 69,105 61,325 60,657 64,608 69,750
Land cost (CNY) 16,200 14,800 10,100 15,800 7,900 16,400 15,600 9,300 13,400 17,500 7,650 11,700 13,500 12,200
Tax policy (B) 0 0 1 1 1 1 1 0 0 0 1 1 0 0
Investment incentive (B) 0 0 0 0 1 1 1 0 0 0 1 0 0 0
Urban agglomeration (B) National National Regional National National National National National National National National National National Regional
Number of high education institutions (per) 27 54 36 26 2 23 14 4 12 8 10 30 19 11
Scale of employment in service industry (per) 4,696,010 3,475,200 4,098,000 1,865,300 1,646,300 2,829,000 1,073,000 1,079,000 1,581,000 2,404,640 813,600 5,514,700 2,995,000 1,671,000
Scale of high-educated graduates (per) 390,597 292,340 491,800 243,200 77,253 263,389 97,058 54,259 84,500 108,703 74,239 364,847 277,005 99,220
Scale of existing call centers (per) 17,790 17,578 6,677 4,563 4,170 4,682 1,644 1,889 3,596 4,415 3,274 7,651 8,311 7,348
Cities Wuhan Nanchang Changsha Chongqing Mianyang Guiyang Harbin Luoyang Lanzhou Weifang Fuzhou Xiamen Shenyang Anshan
Labor cost (CNY) 67,495 66,000 58,390 74,445 59,400 64,650 63,598 58,100 60,300 62,400 59,895 67,245 52,274 58,200
Land cost (CNY) 22,300 17,300 9,600 20,500 8,080 9,720 13,400 12,576 11,000 8,640 12,700 14,900 14,200 8,760
Tax policy (B) 1 1 0 0 0 0 0 1 1 1 1 1 0 1
Investment incentive (B) 1 0 0 0 0 0 0 1 1 1 1 0 0 1
Urban agglomeration (B) National National National National Regional Regional National National Regional Regional Regional National Regional Regional
Number of high education institutions (per) 46 24 23 26 5 18 23 3 2 3 18 8 29 2
Scale of employment in service industry (per) 3,053,800 3,333,500 2,060,000 7,779,900 1,232,700 1,396,200 3,382,000 1,669,600 1,224,000 2,661,180 2,921,516 844,087 2,336,000 184,728
Scale of high-educated graduates (per) 299,894 248,226 217,267 837,505 117,253 231,880 332,778 134,460 181,290 190,015 180,806 118,665 203,252 35,599
Scale of existing call centers (per) 12,648 4,687 1,1563 15,189 1,569 7,110 5,801 1,901 3,549 1,638 3,776 5,711 8,491 1,870

Normalized data of alternate cities

Cities Chengdu Xi'an Jinan Zhengzhou Shangrao Hefei Yangzhou Taizhou Wuxi Ningbo Wuhu Tianjin Shijiazhuang Foshan
Labor cost (CNY) 0.774 0.795 0.838 0.860 0.955 0.803 0.778 0.857 0.750 0.756 0.852 0.862 0.809 0.749
Land cost (CNY) 0.472 0.517 0.757 0.484 0.968 0.466 0.490 0.823 0.571 0.437 1.000 0.654 0.567 0.627
Tax policy (B) 0.000 0.000 1.000 1.000 1.000 1.000 1.000 0.000 0.000 0.000 1.000 1.000 0.000 0.000
Investment incentive (B) 0.000 0.000 0.000 0.000 1.000 1.000 1.000 0.000 0.000 0.000 1.000 0.000 0.000 0.000
Urban agglomeration (B) 1.000 1.000 0.000 1.000 1.000 1.000 1.000 1.000 1.000 1.000 1.000 1.000 1.000 0.000
Number of high education institutions (per) 0.500 1.000 0.667 0.481 0.037 0.426 0.259 0.074 0.222 0.148 0.185 0.556 0.352 0.204
Scale of employment in service industry (per) 0.604 0.447 0.527 0.240 0.212 0.364 0.138 0.139 0.203 0.309 0.105 0.709 0.385 0.215
Scale of high-educated graduates (per) 0.466 0.349 0.587 0.290 0.092 0.314 0.116 0.065 0.101 0.130 0.089 0.436 0.331 0.118
Scale of existing call centers (per) 0.088 0.089 0.235 0.344 0.376 0.335 0.954 0.831 0.436 0.355 0.479 0.205 0.189 0.214
Cities Wuhan Nanchang Changsha Chongqing Mianyang Guiyang Harbin Luoyang Lanzhou Weifang Fuzhou Xiamen Shenyang Anshan
Labor cost (CNY) 0.774 0.792 0.895 0.702 0.880 0.809 0.822 0.900 0.867 0.838 0.873 0.777 1.000 0.898
Land cost (CNY) 0.343 0.442 0.797 0.373 0.947 0.787 0.571 0.608 0.695 0.885 0.602 0.513 0.539 0.873
Tax policy (B) 1.000 1.000 0.000 0.000 0.000 0.000 0.000 1.000 1.000 1.000 1.000 1.000 0.000 1.000
Investment incentive (B) 1.000 0.000 0.000 0.000 0.000 0.000 0.000 1.000 1.000 1.000 1.000 0.000 0.000 1.000
Urban agglomeration (B) 1.000 1.000 1.000 1.000 0.000 0.000 1.000 1.000 0.000 0.000 0.000 1.000 0.000 0.000
Number of high education institutions (per) 0.852 0.444 0.426 0.481 0.093 0.333 0.426 0.056 0.037 0.056 0.333 0.148 0.537 0.037
Scale of employment in service industry (per) 0.393 0.428 0.265 1.000 0.158 0.179 0.435 0.215 0.157 0.342 0.376 0.108 0.300 0.024
Scale of high-educated graduates (per) 0.358 0.296 0.259 1.000 0.140 0.277 0.397 0.161 0.216 0.227 0.216 0.142 0.243 0.043
Scale of existing call centers (per) 0.124 0.335 0.136 0.103 1.000 0.221 0.270 0.825 0.442 0.958 0.416 0.275 0.185 0.839

References

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Acknowledgements

This work is funded by Chexiang Automobile Club (Shanghai) Co., Ltd. under the project of SZ0100290.

Corresponding author

Lei Dai can be contacted at: dailei1989@sjtu.edu.cn

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