提出了基于数据包络分析方法的汽车售后服务机构预测基准模型

Sajjad Kheyri, Farhad Hosseinzadeh Lotfi, Seyed Esmaeil Najafi, Bijan Rahmani Parchkolaei
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引用次数: 0

摘要

每个人都意识到标杆管理在所有行业的重要性。汽车行业也是如此。汽车售后服务机构持续改进的方法之一是借鉴国内成功、高效的案例对标。考虑到评估和基准方法通常是回顾性的,而且环境和客户需求的快速变化,当前的方法不能快速定义纠正措施。本文首先以汽车售后服务经销商为决策单元,建立了基于数据包络分析的对标模型,然后考虑到模型输出具有较高的相关系数,采用创新的机器学习模型对输出进行预测。最后,将该预测模型的结果与感知器神经网络算法进行了比较。结果表明,该基准和预测模型预测当期末基准的误差为7.7%。
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Presenting a predictive benchmark model of after-sales service agencies for vehicles based on the data envelopment analysis approach
Everyone is aware of the importance of benchmarking in all industries. The same is true of the automotive industry. One of the methods of continuous improvement of car after-sales service agencies is benchmarking from successful and efficient examples in the country. Given that evaluation and benchmarking methods are usually retrospective, and also, the rapid changes in environment and customer needs, current methods cannot quickly define corrective actions. In this paper, first, a benchmarking model based on data envelopment analysis is developed for car after-sales service dealers as decision-making units, then considering that the model outputs have a high correlation coefficient, an innovative machine learning model has been used to predict the outputs. Finally, the results of the proposed prediction model are compared with a perceptron neural network algorithm. The results show that the benchmarking and prediction model together with a 7.7% error predicts benchmarks for the end of current period.
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来源期刊
International Journal of Services and Operations Management
International Journal of Services and Operations Management Engineering-Industrial and Manufacturing Engineering
CiteScore
1.20
自引率
0.00%
发文量
62
期刊介绍: Globalisation of market and operations places tremendous pressure on productive management of services and manufacturing enterprises. Services are increasingly important in today''s developed economies. Nevertheless, manufacturing plays a major role in national economies and is essential for the survival of service organisations. Considering the globalisation of services and manufacturing, a journal focusing on global perspective of operations management is of paramount importance. IJSOM focuses on new strategies, techniques and technologies for improving productivity and quality in both manufacturing and services. Topics covered include: • Operations strategy in services/manufacturing, SMEs • Designing service/manufacturing enterprises, virtual enterprises • Value chain perspectives • Service blue printing • Service delivery process, performance measures/metrics • Managing capacity • Managing and measuring quality • Information technology, MRP, ERP • Human resources • Production planning and control, scheduling, JIT • Lean/agile production • Supply chain/inventory management • Product and process design • E-commerce and operations • Location and facility planning
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