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Supply Chain Risk Management: A Comprehensive Review

  • Zohreh Khojasteh-GhamariEmail author
  • Takashi Irohara
Chapter

Abstract

The purpose of this chapter is to investigate recent research developments in supply chain risk management (SCRM) and to provide a comprehensive outline for researchers and practitioners who are trying to identify the existing state of research in the SCRM area. The importance of a literature review is to enhance the understanding of researchers by cataloging previous research in an area and clarifying the strengths and weaknesses of existing studies and what they might mean. Since the number of studies on SCRM has increased dramatically, several review papers of existing papers have been published. By finding significant number of review papers in the area, we convinced about the necessity of including summary of review papers. Therefore, we first summarize previous SCRM review papers. Second, we review recent papers that have not been mentioned in these review papers. Third, we develop a framework by which to categorize these papers. We conclude by presenting the observed pattern of SCRM research.

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Copyright information

© Springer Nature Singapore Pte Ltd. 2018

Authors and Affiliations

  1. 1.Graduate School of Science and EngineeringSophia UniversityTokyoJapan

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