Index

Deepa Jain (GGSIP University, India)
Manoj Kumar Dash (ABV-IIITM, India)
K.S. Thakur (Jiwaji University, India)

The Sustainability of Financial Innovation in E-Payment Systems

ISBN: 978-1-80455-885-0, eISBN: 978-1-80455-884-3

Publication date: 25 July 2023

This content is currently only available as a PDF

Citation

Jain, D., Dash, M.K. and Thakur, K.S. (2023), "Index", The Sustainability of Financial Innovation in E-Payment Systems, Emerald Publishing Limited, Leeds, pp. 211-217. https://doi.org/10.1108/978-1-80455-884-320231010

Publisher

:

Emerald Publishing Limited

Copyright © 2023 Deepa Jain, Manoj Kumar Dash and K. S. Thakur. Published under exclusive licence by Emerald Publishing Limited


INDEX

Adjusted Goodness of Fit Index (AGFI)
, 129, 168

Adoption intention
, 157

Age

impact of age on usage of e-payment following five null hypotheses
, 92

analyze influence of demographic characteristics on e-payment based on
, 89–97

effect on SEPS model
, 174–177

Agenda 2030
, 9

Analysis of variance (ANOVA)
, 41

Analytical Hierarchy Process (AHP)
, 191

method
, 41–42

Attitude (ATT)
, 30

Automated-teller-machine (ATM)
, 5

Autonomy to Use Technology (AUTT)
, 134, 157, 174, 178–179, 186, 190

validation of AUTT through CFA
, 134–135

Average Variance Extracted (AVE)
, 144

Bartlett Test of Sphericity
, 126

Bartlett’s measure tests
, 125–126

Behavioural intention (BI)
, 39

Bharat Interface for Money (BHIM)
, 35–36

Bibliometric analysis (see also Confirmatory factor analysis (CFA))
, 23–25, 28

influential authors
, 26–27

influential countries
, 27

influential keywords
, 27–28

influential sources
, 28

phase
, 25

results of
, 26–28

Brundtland report (see United Nations World Commission on Environment and Development (1987))

Capital market
, 1–2

Cash on delivery (COD)
, 39

Chi-square test
, 115

Chi-square value normalized by degrees of freedom (CMIN/df)
, 144

Clear theory conceptualization
, 70

Co-authorship visualization
, 26–27

Comma-separated values (CSV)
, 25

Communication
, 140

benefits offered by e-payment
, 84–85

Comparative Fit Index (CFI)
, 129, 168

Competition, Confidence, Cost, and Convenience (4C)
, 6

Confirmatory analysis
, 69–70

Confirmatory factor analysis (CFA) (see also Bibliometric analysis)
, 14, 32, 70, 116, 144, 155–156, 162, 186

validation of AUTT through
, 134–135

validation of e-payment system factors through
, 129–143

validation of FSI through
, 137–138

validation of PIS through
, 143

validation of TC through
, 138–140

validation of TCP through
, 141

Consumer demographics
, 58–61

Coverage, Confidence, Cost, Convenience and Convergence (5C)
, 6

Cronbach’s reliability statistics of all statements
, 122–125

Cronbach’s α
, 118

Data extraction
, 25

Data reduction technique
, 126

Databases
, 191

selection
, 25

Demographic dossier of respondents
, 74–77

Demographics
, 161–162

Demonetization’
, 32–33

Department of Investment and Public Asset Management (Dipam)
, 3–4

Descriptive analysis of online payment
, 78–89

Descriptive approach
, 68

in e-payment system
, 68

Descriptive statistics
, 115

Diagnostic approach in e-payment system
, 68

Digital banking and payment (DBP)
, 38

Digital India
, 6

project
, 3–4

Digital payment (DP)
, 24–25, 53

Digital payment systems (DPSs)
, 32–33

Digital transactions
, 5

Digital wallets (DWs)
, 36

Digitalization
, 73

Diversity in customers
, 74

E-payment (EP)
, 5–6, 9–10, 29, 78–79, 186

impact of age on usage of e-payment following five null hypotheses
, 92

barriers faced using
, 83

barriers in acceptance of
, 84

based on gender, age, education and income, analyze influence of demographic characteristics on
, 89–97

communication benefits offered by
, 84–85

impact of education on usage of e-payment following five null hypotheses
, 92–97

features make e-payment as financial innovation
, 87–88

feedback of respondents on
, 79–80

gateway
, 6

impact of gender on usage of EP following five null hypotheses
, 91–92

impact of income on usage of e-payment following five null hypotheses
, 97

innovative features of financial service of e-payment
, 87

innovative features of financial technology of e-payment
, 85

preference for e-payment over other modes of payment
, 80–83

preference for payment mode
, 79

quality of
, 89

reasons for use of
, 80

reasons resist use of
, 89

E-payment system (EPS)
, 2–4, 23–24, 53, 73, 113, 115, 155–157, 186

AUTT
, 132–135

Cronbach’s reliability statistics of all statements
, 122–125

and data security
, 52

descriptive and diagnostic approach in
, 68

and e-commerce
, 44–51

Eigen value
, 126

and financial services
, 44–51

and financial technology
, 51

FSI
, 136–138

identification of factor structure of E-payment system through EFA
, 118–129

and network security
, 52

perception of users towards
, 102

PIE
, 131–132

PIS
, 142–143

predictive approach in
, 68–71

prescriptive approach in
, 71

TC
, 138–140

TCP
, 140–141

total variance
, 126

validation of e-payment system factors through CFA
, 129–143

validation of explored factors for
, 143–144

validity test for sample adequacy
, 125–126

Ease of use (EOU)
, 31, 46, 51, 157–158

Economic sustainability
, 8

Education

analyze influence of demographic characteristics on e-payment based on
, 89–97

impact of education on usage of e-payment following five null hypotheses
, 92–97

effect on SEPS Model
, 177–178

Eigen Value
, 126

Electronic commerce
, 27–28

Electronic Commerce Research and Applications (ECRA)
, 33

Electronic payment (e-payment)
, 2–3

Electronic word-of-mouth (e-WOM)
, 39, 46, 51

Electronic-Clearing-Service (ECS)
, 5

Elimination process
, 116

Empirical analysis, methodology for
, 68–71

Environmental sustainability
, 8

Epistemology
, 57

Exploration
, 63

Exploratory factor analysis (EFA)
, 14, 32, 69, 116, 186

identification of factor structure of e-payment system through
, 118–129

Exploratory Principal Component Factor Analysis (EPCFA)
, 122

Exploratory research
, 63

Facilitating conditions (FC)
, 30, 46, 51

Factor-analysis-method
, 69–70, 118, 121

Feedback of respondents on e-payment
, 79–80

Financial innovation
, 6–7, 53–54, 115

analyze influence of demographic characteristics on e-payment based on gender, age, education and income
, 89–97

customer perception towards
, 73

demographic dossier of respondents
, 74–77

descriptive analysis of online payment
, 78–89

features make e-payment as
, 87–88

justification
, 73–74

justification
, 115–116

methodology for scale development
, 116–118

perception of users towards e-payment system
, 102

results
, 102–114

shopping e-payment generally used for
, 78–79

validation of e-payment system factors through CFA
, 129–143

validation of explored factors for e-payment system
, 143–144

Financial market
, 1–2, 23

bibliometric analysis
, 25–28

citation reporting
, 44

contribution
, 187

contribution of research work
, 18

descriptive and diagnostic approach in e-payment system
, 68

e-payment
, 5–6

financial innovation
, 6–7

framework and design in financial market research
, 57–58

future of financial market
, 44–53

justification
, 58–61

limitation and scope of work
, 191

managerial implication
, 187–191

methodology
, 24

methodology for empirical analysis
, 68–71

motivation for study and gap analysis
, 9–11

predictive approach in e-payment system
, 68–71

prescriptive approach in e-payment system
, 71

research design
, 63–68

research design and outcomes
, 12–14

research gaps
, 53–55

research insights
, 23–24

research-work organization
, 14–17

review of studies
, 28–44

review of studies undertaken abroad
, 37–44

review of studies undertaken in India
, 30–37

scope and objectives of study
, 11–12

SLR
, 24–25

sustainability
, 7–9

theoretical perspective
, 5–9

Financial service of e-payment, innovative features of
, 87

Financial sustainable innovation (FSI)
, 136–138, 157, 186, 190

validation of FSI Through CFA
, 137–138

Financial system
, 1–2, 23, 52–53

core of
, 2

Financial technology of e-payment, innovative features of
, 85

Food Sustainability
, 53–54

Gender

analyze influence of demographic characteristics on e-payment based on
, 89–97

effect on SEPS Model
, 170–174

impact of gender on usage of EP following five null hypotheses
, 91–92

Goodness of Fit Index (GFI)
, 129, 168

Goodness-of-Fit (GOF)
, 69–70, 129

Goverment-of-India
, 5–6

Government-to-person (G2P)
, 41

Hypothesis testing
, 14

Immediate-Payment-Service (IMPS)
, 5

Income

analyze influence of demographic characteristics on e-payment based on
, 89–97

effect on SEPS Model
, 179–180

impact of income on usage of e-payment following five null hypotheses
, 97

India
, 2–3

review of studies undertaken in
, 30–37

Innovate’
, 7

Innovative payment system
, 137

Intention to adopt (ITA)
, 157–158

ITA EPS
, 157–158

mobile payments
, 168–169

Intention to use (ITU)
, 30

ITU MPs
, 30

Internal consistency
, 118

estimation of reliability
, 118

estimation of validity
, 118

International Journal of Electronic Commerce (IJEC)
, 28, 33

Interpretive Structural Modelling (ISM)
, 191

Item statistics
, 118

ITU-quick-response-MP (ITU-QR-MP)
, 39

Jordan MP system (JoMoPay system)
, 38

Journal of Banking and Finance (JBF)
, 33

Journal of Money, Credit and Banking (JMCB)
, 33

JSON (database)
, 25

JSTOR (database)
, 191

Kaiser–Meyer–Olkin (KMO)
, 125

Keyword Search
, 25

Knowledge generation process
, 57

Literature review (LR)
, 12, 24

Majlis-Bandaraya-Shah-Alam-and-Majlis-Daerah-Kampar (MBSAMD)
, 43

Measure of Sampling Adequacy (MSA)
, 125

Meta-literature review
, 191

Ministry of Electronics & Information Technology (MeitY)
, 6

Mobile payments (MPs)
, 30

Mobile point-of-sale (MPOS)
, 42

Monte Carlo methods
, 66–67

Multi-factor model approach
, 143–144

National Capital Region (NCR)
, 36

National-Electronic Fund Transfer (NEFT)
, 5

New technology (NT)
, 7–8

Normed Fit Index (NFI)
, 129, 168

Offline-data-collection questionnaire
, 64

Online payment, descriptive analysis of
, 78–89

Online questionnaire
, 67

Ontology
, 57–58

Payer, purchase, physical technology and payment instrument (4p)
, 41

Payment and Settlement Act (2007)
, 5

Payment and Settlement Systems (PSS)
, 6

Payment information security (PIS)
, 137, 142–143, 157, 186, 190

validation of PIS through CFA
, 143

Payment infrastructure ecosystem (PIE)
, 131–132, 157, 178–179, 186, 190

validation of PIE through CFA
, 132

Payment system
, 147

Perceived ease of use (PEOU)
, 31, 46, 51, 157–158

Perceived risk (PR)
, 31, 46, 51

Perceived security (PS)
, 38, 46, 51, 169

Perceived usefulness (PU)
, 31, 46, 51, 157–158

Performance expectancy (PE)
, 30, 46, 51

Personal descriptive
, 74

Post-demonetization phase, India
, 3

Post-IT phase, India
, 3

Pre-IT phase, India
, 3

Predictive approach
, 68

in e-payment system
, 68–71

methodology for formulation of structural model
, 70–71

methodology for scale development
, 69

methodology for scale validation
, 69–70

Prescriptive approach
, 68

in e-payment system
, 71

Principal component analysis (PCA)
, 69, 116, 121–122

method
, 118

PubMed (databases)
, 25

Quality of e-payment
, 89

Questionnaire, design of
, 63–65

elements of survey questionnaire
, 64–65

R-matrix
, 125–126

Reliability, estimation of
, 118

Research design
, 63–68

data
, 67–68

data collection
, 67

design of questionnaire
, 63–65

exploratory research
, 63

and outcomes
, 12–14

population and sampling area
, 65

process
, 12

sample size
, 65–67

Research-work organization
, 14–17

Respondents, demographic dossier of
, 74–77

Review of literature
, 23–24

Root Mean Square Error of Approximation (RMSEA)
, 129, 144, 168

Scale development, methodology for
, 69, 116, 118

identification of factor structure of e-payment system through EFA
, 118–129

internal consistency and validity measurement
, 118

item evaluation and selection
, 116–118

scale refinement
, 116

Scale validation, methodology for
, 69–70

Scopus (database)
, 25–26

Segmentation Approach to Sustainability of E-payment System on Customer Perspective (SEPSCP)
, 186–187

Single-factor model approach
, 134, 137, 141, 143

Small and Medium Enterprises (SMEs)
, 38

Smart-Partial-Least-Square (Smart-PLS)
, 31

Social influence (SI)
, 30, 46, 51

Social sustainability
, 8

Standardized Root Mean Square Residual (SRMR)
, 129

Statistical package for social sciences (SPSS)
, 67–68

Structural equation modelling (SEM)
, 14, 31, 58, 61, 71, 129, 162, 164

approach
, 155–156

estimation of structural model of SEPS through
, 164–170

tests
, 70

Structural equation models (SE models)
, 70, 163

Structural model (SM)
, 155–156

estimation of structural model of SEPS through SEM
, 164–170

methodology for formulation of
, 70–71

Sustainability
, 7, 9, 53–54, 157, 187

estimation of structural model of SEPS through SEM
, 164–170

of financial innovation
, 155–156

justification of study
, 156–157

literature
, 9

measuring moderating effects of demographic characteristics on SEPS Model
, 170–180

research model and hypothesis development
, 157–162

SEM
, 162–164

variables/factors used in study
, 157

Sustainability of e-payment system (SEPS)
, 4–5, 11, 70, 164–165, 186–187

age effect on
, 174–177

education effect on
, 177–178

estimation of structural model of SEPS Through SEM
, 164–170

gender effect on
, 170–174

income effect on
, 179–180

marital status effect on
, 179

measuring moderating effects of demographic characteristics on SEPS model
, 170–180

type of family effect on
, 178–179

Sustainable development goals (SDGs)
, 158–159

Systematic literature review (SLR)
, 12, 14, 23–25

Technology
, 37

autonomy to use
, 132–135

validation of AUTT Through CFA
, 134–135

Technology Acceptance Model (TAM)
, 39

Technology Characteristics (TC)
, 138, 140, 157, 186, 190

validation of TC through CFA
, 138–140

Technology Communication Platform (TCP)
, 140–141, 157, 186, 190

validation of TCP through CFA
, 141

Total variance
, 126

Trust’
, 157

Unified-Theory-of-Acceptance-and-Use-of-Technology model (UTAUT model)
, 30, 38

United Arab of Emirates (UAE)
, 39, 164

United Nations (UNs)
, 9

United Nations Population Division (UNPD)
, 2

United Nations World Commission on Environment and Development (1987)
, 8

University of Ilorin (UI)
, 43

Usage behaviour (UB)
, 39

Valence-technology-affordances and-constraints-theory’ framework (Valence-TACT framework)
, 30

Validity

estimation of
, 118

estimation of reliability
, 118

estimation of validity
, 118

measurement
, 118

test for sample adequacy
, 125–126

Variable elimination process
, 67–68

Variables/factors used in study
, 157

VOSviewer software
, 25–26

Web of Science (database)
, 25, 191

World Summit
, 8