Artificial intelligence for decision support systems in the field of operations research: review and future scope of research

被引:0
作者
Shivam Gupta
Sachin Modgil
Samadrita Bhattacharyya
Indranil Bose
机构
[1] NEOMA Business School,Department of Information Systems, Supply Chain and Decision Making
[2] International Management Institute,Operations Management, Quantitative Methods and Information Systems Area
[3] Indian Institute of Management Udaipur,undefined
[4] Indian Institute of Management Calcutta,undefined
来源
Annals of Operations Research | 2022年 / 308卷
关键词
Operations research; Decision support systems; Artificial intelligence; Systematic literature review;
D O I
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中图分类号
学科分类号
摘要
Operations research (OR) has been at the core of decision making since World War II, and today, business interactions on different platforms have changed business dynamics, introducing a high degree of uncertainty. To have a sustainable vision of their business, firms need to have a suitable decision-making process at each stage, including minute details. Our study reviews and investigates the existing research in the field of decision support systems (DSSs) and how artificial intelligence (AI) capabilities have been integrated into OR. The findings of our review show how AI has contributed to decision making in the operations research field. This review presents synergies, differences, and overlaps in AI, DSSs, and OR. Furthermore, a clarification of the literature based on the approaches adopted to develop the DSS is presented along with the underlying theories. The classification has been primarily divided into two categories, i.e. theory building and application-based approaches, along with taxonomies based on the AI, DSS, and OR areas. In this review, past studies were calibrated according to prognostic capability, exploitation of large data sets, number of factors considered, development of learning capability, and validation in the decision-making framework. This paper presents gaps and future research opportunities concerning prediction and learning, decision making and optimization in view of intelligent decision making in today’s era of uncertainty. The theoretical and managerial implications are set forth in the discussion section justifying the research questions.
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页码:215 / 274
页数:59
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