论供应链财务绩效与战略地位的整体观

IF 1 4区 经济学 Q4 BUSINESS
Chih-Yang Tsai
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引用次数: 0

摘要

摘要衡量企业财务绩效是许多供应链决策中的一项重要任务,如供应链战略定位和合作伙伴选择。这项研究引入了一种分析方法,可以快速扫描许多公司的财务数据,并为每个公司生成一个汇总指标。该方法为组织提供了一种不太容易磨损的方式,可以全面了解所有目标公司的财务绩效模式,这意味着潜在的供应链战略。战略图是摘要的二维表示,为理解相对战略地位和衡量公司之间的相似性提供了一种可理解的手段。该方法依赖于三种流行的机器学习模型,预测、聚类和分类。它从三个标准财务报表中提取多年、多变量的财务时间序列,从数据中学习模式,并调整模型参数以配置未来应用的最终设置。所需的输入数据相对容易获得,自学习模块只需要适度的领域知识即可应用该方法。它的降噪、异常值检测和特征选择功能确保了一致和稳健的性能。使用纽约证券交易所和纳斯达克上市的所有美国制造商和贸易商的数据进行的实证检验证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On a holistic view of supply chain financial performance and strategic position
Abstract Measuring corporate financial performance is an essential task in many supply chain decisions, such as supply chain strategic positioning and partner selection. This study introduces an analytical approach that can quickly scan financial data of many companies and produce a summary measure for each company. The approach offers organizations a less wearing way to obtain a holistic view of all target companies’ financial performance patterns, which imply the underlying supply chain strategies. The strategy map, a two-dimensional representation of the summary, provides a comprehensible means to apprehend the relative strategic position and measure the similarity between companies. The approach relies on three popular machine learning models, forecasting, clustering, and classification. It takes multi-year, multi-variate financial time series from the three standard financial statements, learns the patterns from the data, and tunes model parameters to configure the final settings for future applications. The input data needed are relatively easy to obtain and the self-learning modules only require modest domain knowledge to apply the approach. Its noise reduction, outlier detection, and feature selection functions ensure a consistent and robust performance. The empirical test using data from all US manufacturers and traders listed on NYSE and NASDAQ demonstrates the efficacy of the approach.
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来源期刊
Engineering Economist
Engineering Economist ENGINEERING, INDUSTRIAL-OPERATIONS RESEARCH & MANAGEMENT SCIENCE
CiteScore
2.00
自引率
0.00%
发文量
14
审稿时长
>12 weeks
期刊介绍: The Engineering Economist is a refereed journal published jointly by the Engineering Economy Division of the American Society of Engineering Education (ASEE) and the Institute of Industrial and Systems Engineers (IISE). The journal publishes articles, case studies, surveys, and book and software reviews that represent original research, current practice, and teaching involving problems of capital investment. The journal seeks submissions in a number of areas, including, but not limited to: capital investment analysis, financial risk management, cost estimation and accounting, cost of capital, design economics, economic decision analysis, engineering economy education, research and development, and the analysis of public policy when it is relevant to the economic investment decisions made by engineers and technology managers.
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