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Dominance-based Rough Set Approach, basic ideas and main trends

2022-10-06 21:59:00
Jerzy Błaszczyński (1), Salvatore Greco (2 and 3), Benedetto Matarazzo (2), Marcin Szeląg (4) ((1) Poznan Supercomputing and Networking Center - Poznań - Poland, (2) Department of Economics and Business - University of Catania - Catania - Italy, (3) Centre for Operational Research & Logistics - Portsmouth Business School - Portsmouth - UK, (4) Institute of Computing Science - Poznan University of Technology - Poznań - Poland)

Abstract

Dominance-based Rough Approach (DRSA) has been proposed as a machine learning and knowledge discovery methodology to handle Multiple Criteria Decision Aiding (MCDA). Due to its capacity of asking the decision maker (DM) for simple preference information and supplying easily understandable and explainable recommendations, DRSA gained much interest during the years and it is now one of the most appreciated MCDA approaches. In fact, it has been applied also beyond MCDA domain, as a general knowledge discovery and data mining methodology for the analysis of monotonic (and also non-monotonic) data. In this contribution, we recall the basic principles and the main concepts of DRSA, with a general overview of its developments and software. We present also a historical reconstruction of the genesis of the methodology, with a specific focus on the contribution of Roman Słowiński.

Abstract (translated)

URL

https://arxiv.org/abs/2210.03233

PDF

https://arxiv.org/pdf/2210.03233.pdf


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