IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Early Warning System Framework Proposal Based on Structured Analytical Techniques, SNA, and Fuzzy Expert System for Different Industries

Early Warning System Framework Proposal Based on Structured Analytical Techniques, SNA, and Fuzzy Expert System for Different Industries
View Sample PDF
Author(s): Goran Klepac (University College for Applied Computer Engineering Algebra, Zagreb, Croatia), Robert Kopal (University College for Applied Computer Engineering Algebra, Zagreb, Croatia) and Leo Mrsic (University College for Applied Computer Engineering Algebra, Zagreb, Croatia)
Copyright: 2015
Pages: 34
Source title: Handbook of Research on Artificial Intelligence Techniques and Algorithms
Source Author(s)/Editor(s): Pandian Vasant (Universiti Teknologi PETRONAS, Malaysia)
DOI: 10.4018/978-1-4666-7258-1.ch025

Purchase


Abstract

Early warning systems are made with purpose to efficiently recognize deviant and potentially dangerous trends related to company business as early as possible and with significant relevance. There are numerous ways to set up early warning systems within company. Those solutions are often based on single data mining methods, and they rarely provide the holistic and qualitative approach needed in modern market uncertainty conditions. This chapter gives a novel concept for early warning system design within company, applicable in different industries. The core of the proposed framework is hybrid fuzzy expert system, which can contain a variety of data mining predictive models responsible for some specific areas in addition to traditional rule blocks. It can also include social network analysis metrics based on linguistic variables and incorporated within rule blocks. As part of this framework, SNA methods are also explained and introduced as a very powerful and unique tool to be used in modern early warning systems.

Related Content

P. Subashini, M. Krishnaveni, T. T. Dhivyaprabha, R. Shanmugavalli. © 2020. 22 pages.
Thiyagarajan P.. © 2020. 19 pages.
Thangavel M., Abiramie Shree T. G. R., Priyadharshini P., Saranya T.. © 2020. 22 pages.
Sailesh Suryanarayan Iyer, Sridaran Rajagopal. © 2020. 19 pages.
Charu Virmani, Tanu Choudhary, Anuradha Pillai, Manisha Rani. © 2020. 21 pages.
Valliammal Narayan, Barani Shaju. © 2020. 28 pages.
Vaishnavi Ambalavanan, Shanthi Bala P.. © 2020. 18 pages.
Body Bottom