Joanne S. Utley and J. Gaylord May
This chapter uses advance order data from an actual manufacturing shop to develop and test a forecast model for total demand. The proposed model made direct use of historical time…
Abstract
This chapter uses advance order data from an actual manufacturing shop to develop and test a forecast model for total demand. The proposed model made direct use of historical time series data for total demand and time series data for advance orders. Comparison of the proposed model to commonly used approaches showed that the proposed model exhibited greater forecast accuracy.
Joanne S. Utley and J. Gaylord May
This study examines the use of forecast combination to improve the accuracy of forecasts of cumulative demand. A forecast combination methodology based on least absolute value…
Abstract
This study examines the use of forecast combination to improve the accuracy of forecasts of cumulative demand. A forecast combination methodology based on least absolute value (LAV) regression analysis is developed and is applied to partially accumulated demand data from an actual manufacturing operation. The accuracy of the proposed model is compared with the accuracy of common alternative approaches that use partial demand data. Results indicate that the proposed methodology outperforms the alternative approaches.
Joanne S. Utley and J. Gaylord May
The purpose of this paper is to devise a robust statistical process control methodology that will enable service managers to better monitor the performance of correlated service…
Abstract
Purpose
The purpose of this paper is to devise a robust statistical process control methodology that will enable service managers to better monitor the performance of correlated service measures.
Design/methodology/approach
A residuals control chart methodology based on least absolute value regression (LAV) is developed and its performance is compared to a traditional control chart methodology that is based on ordinary least squares (OLS) regression. Sensitivity analysis from the goal programming formulation of the LAV model is also performed. The methodology is applied in an actual service setting.
Findings
The LAV based residuals control chart outperformed the OLS based residuals control chart in identifying out of control observations. The LAV methodology was also less sensitive to outliers than the OLS approach.
Research limitations/implications
The findings from this study suggest that the proposed LAV based approach is a more robust statistical process control method than the OLS approach. In addition, the goal program formulation of the LAV regression model permits sensitivity analysis whereas the OLS approach does not.
Practical implications
This paper shows that compared to the traditional OLS based control chart, the LAV based residuals chart may be better suited to actual service settings in which normality requirements are not met and the amount of data is limited.
Originality/value
This paper is the first study to use a least absolute value regression model to develop a residuals control chart for monitoring service data. The proposed LAV methodology can help service managers to do a better job monitoring related performance metrics as part of a quality improvement program such as six sigma.
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Rhonda L. Hensley and Joanne S. Utley
This paper aims to propose a service reliability framework for classifying technical reliability tools so that managers can better understand how to use them in practice.
Abstract
Purpose
This paper aims to propose a service reliability framework for classifying technical reliability tools so that managers can better understand how to use them in practice.
Design/methodology/approach
Published research was examined to identify reliability tools that have been used in services. These tools were then categorized using a framework that considered subsystem reliability, system configuration and system reliability.
Findings
A number of traditional manufacturing reliability tools have been used in service companies. This paper has categorized those tools within a service reliability framework based on subsystem reliability, configuration and system reliability.
Research limitations/implications
Future research could address the issue of customer perception and customer feedback as part of the reliability appraisal process.
Practical implications
Service managers can use the proposed framework to examine the applicability of these technical tools in service operations and to guide reliability improvement efforts.
Originality/value
The proposed service reliability framework provides an integrated view of subsystems, systems and configuration that is lacking in the service management literature. The framework also emphasizes technical reliability tools that have not received sufficient attention in the service management literature.
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This chapter examines the use of mathematical programming to remove systematic bias from demand forecasts. A debiasing methodology is developed and applied to demand data from an…
Abstract
This chapter examines the use of mathematical programming to remove systematic bias from demand forecasts. A debiasing methodology is developed and applied to demand data from an actual service operation. The accuracy of the proposed methodology is compared to the accuracy of a well-known approach that utilizes ordinary least squares regression. Results indicate that the proposed method outperforms the least squares approach.
This paper presents a mathematical programming model to reduce bias for both aggregate demand forecasts and lower echelon forecasts comprising a hierarchical forecasting system…
Abstract
This paper presents a mathematical programming model to reduce bias for both aggregate demand forecasts and lower echelon forecasts comprising a hierarchical forecasting system. Demand data from an actual service operation are used to illustrate the model and compare its accuracy with a standard approach for hierarchical forecasting. Results show that the proposed methodology outperforms the standard approach.
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Past research has shown that forecast combination typically improves demand forecast accuracy even when only two component forecasts are used; however, systematic bias in the…
Abstract
Past research has shown that forecast combination typically improves demand forecast accuracy even when only two component forecasts are used; however, systematic bias in the component forecasts can reduce the effectiveness of combination. This study proposes a methodology for combining demand forecasts that are biased. Data from an actual manufacturing shop are used to develop the methodology and compare its accuracy with the accuracy of the standard approach of correcting for bias prior to combination. Results indicate that the proposed methodology outperforms the standard approach.