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A Grey Theory Based Approach to Big Data Risk Management Using FMEA

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  • Maisa Mendonça Silva
  • Thiago Poleto
  • Lúcio Camara e Silva
  • Ana Paula Henriques de Gusmao
  • Ana Paula Cabral Seixas Costa

Abstract

Big data is the term used to denote enormous sets of data that differ from other classic databases in four main ways: (huge) volume, (high) velocity, (much greater) variety, and (big) value. In general, data are stored in a distributed fashion and on computing nodes as a result of which big data may be more susceptible to attacks by hackers. This paper presents a risk model for big data, which comprises Failure Mode and Effects Analysis (FMEA) and Grey Theory, more precisely grey relational analysis. This approach has several advantages: it provides a structured approach in order to incorporate the impact of big data risk factors; it facilitates the assessment of risk by breaking down the overall risk to big data; and finally its efficient evaluation criteria can help enterprises reduce the risks associated with big data. In order to illustrate the applicability of our proposal in practice, a numerical example, with realistic data based on expert knowledge, was developed. The numerical example analyzes four dimensions, that is, managing identification and access, registering the device and application, managing the infrastructure, and data governance, and 20 failure modes concerning the vulnerabilities of big data. The results show that the most important aspect of risk to big data relates to data governance.

Suggested Citation

  • Maisa Mendonça Silva & Thiago Poleto & Lúcio Camara e Silva & Ana Paula Henriques de Gusmao & Ana Paula Cabral Seixas Costa, 2016. "A Grey Theory Based Approach to Big Data Risk Management Using FMEA," Mathematical Problems in Engineering, Hindawi, vol. 2016, pages 1-15, August.
  • Handle: RePEc:hin:jnlmpe:9175418
    DOI: 10.1155/2016/9175418
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    Cited by:

    1. Thyago Celso Cavalcante Nepomuceno & Késsia Thais Cavalcanti Nepomuceno & Thiago Poleto & Victor Diogho Heuer de Carvalho & Ana Paula Cabral Seixas Costa, 2022. "When Penalty Fails: Modeling Contractual Misincentives With Evidence From Portugal ITO Agreements," SAGE Open, , vol. 12(4), pages 21582440221, December.
    2. Henriques de Gusmão, Ana Paula & Mendonça Silva, Maisa & Poleto, Thiago & Camara e Silva, Lúcio & Cabral Seixas Costa, Ana Paula, 2018. "Cybersecurity risk analysis model using fault tree analysis and fuzzy decision theory," International Journal of Information Management, Elsevier, vol. 43(C), pages 248-260.

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