Title of article
Stochastic dominance-based rough set model for ordinal classification
Author/Authors
Wojciech Kot?owski، نويسنده , , Krzysztof Dembczy?ski، نويسنده , , Salvatore Greco، نويسنده , , Roman Slowinski، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2008
Pages
19
From page
4019
To page
4037
Abstract
In order to discover interesting patterns and dependencies in data, an approach based on rough set theory can be used. In particular, dominance-based rough set approach (DRSA) has been introduced to deal with the problem of ordinal classification with monotonicity constraints (also referred to as multicriteria classification in decision analysis). However, in real-life problems, in the presence of noise, the notions of rough approximations were found to be excessively restrictive. In this paper, we introduce a probabilistic model for ordinal classification problems with monotonicity constraints. Then, we generalize the notion of lower approximations to the stochastic case. We estimate the probabilities with the maximum likelihood method which leads to the isotonic regression problem for a two-class (binary) case. The approach is easily generalized to a multi-class case. Finally, we show the equivalence of the variable consistency rough sets to the specific empirical risk-minimizing decision rule in the statistical decision theory.
Keywords
Dominance-based rough set approach , Ordinal classification , Monotonicity constraints , Isotonic regression , Maximum likelihood estimation , Variable consistency models , Statistical decision theory , Multiple criteria decision analysis , Empirical risk minimization
Journal title
Information Sciences
Serial Year
2008
Journal title
Information Sciences
Record number
1213435
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