Big data-driven fuzzy cognitive map for prioritising IT service procurement in the public sector

被引:1
作者
Youngseok Choi
Habin Lee
Zahir Irani
机构
[1] Brunel University London,Brunel Business School
来源
Annals of Operations Research | 2018年 / 270卷
关键词
Big data analytics; Fuzzy cognitive map; Decision modelling; IT service procurement; Simulation;
D O I
暂无
中图分类号
学科分类号
摘要
The prevalence of big data is starting to spread across the public and private sectors however, an impediment to its widespread adoption orientates around a lack of appropriate big data analytics (BDA) and resulting skills to exploit the full potential of big data availability. In this paper, we propose a novel BDA to contribute towards this void, using a fuzzy cognitive map (FCM) approach that will enhance decision-making thus prioritising IT service procurement in the public sector. This is achieved through the development of decision models that capture the strengths of both data analytics and the established intuitive qualitative approach. By taking advantages of both data analytics and FCM, the proposed approach captures the strength of data-driven decision-making and intuitive model-driven decision modelling. This approach is then validated through a decision-making case regarding IT service procurement in public sector, which is the fundamental step of IT infrastructure supply for publics in a regional government in the Russia federation. The analysis result for the given decision-making problem is then evaluated by decision makers and e-government expertise to confirm the applicability of the proposed BDA. In doing so, demonstrating the value of this approach in contributing towards robust public decision-making regarding IT service procurement.
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页码:75 / 104
页数:29
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共 195 条
  • [1] Amankwah-Amoah J(2015)Safety or no safety in numbers? Governments, big data and public policy formulation Industrial Management & Data Systems 115 1596-1603
  • [2] Amann M(2014)Driving sustainable supply chain management in the public sector: The importance of public procurement in the European Union Supply Chain Management: An International Journal 19 351-366
  • [3] Roehrich JK(2003)The Cyprus puzzle and the Greek-Turkish arms race: Forecasting developments using genetically evolved fuzzy cognitive maps Defence and Peace Economics 14 293-310
  • [4] Eßig M(2007)Progress in Web-based decision support technologies Decision Support Systems 43 1083-1095
  • [5] Harland C(1972)Factoring and weighting approaches to status scores and clique identification The Journal of Mathematical Sociology 2 113-120
  • [6] Andreou AS(2007)Some unique properties of eigenvector centrality Social Networks 29 555-564
  • [7] Mateou NH(2012)A fuzzy time series forecasting model for multi-variate forecasting analysis with fuzzy C-means clustering International Journal of Computer, Electrical, Automation, Control and Information Engineering 6 671-677
  • [8] Zombanakis GA(1996)Forecasting enrollments based on fuzzy time series Fuzzy Sets and Systems 81 311-319
  • [9] Bhargava HK(2011)Multivariate fuzzy forecasting based on fuzzy time series and automatic clustering techniques Expert Systems with Applications 38 10594-10605
  • [10] Power DJ(2014)Modeling fitting-function-based fuzzy time series patterns for evolving stock index forecasting Applied intelligence 41 327-347