A preference learning framework for multiple criteria sorting with diverse additive value models and valued assignment examples
Jiapeng Liu, Milosz Kadzinski, Xiuwu Liao, Xiaoxin Mao, Yao Wang

TL;DR
This paper introduces a flexible preference learning framework for multiple criteria sorting that accommodates diverse additive value models and valued assignment examples, improving predictive accuracy and scalability.
Contribution
It develops a unified analytical framework for sorting with various marginal value functions and valued examples, along with an efficient algorithm for large datasets.
Findings
Framework effectively handles diverse value functions.
Valued examples improve classification accuracy.
Algorithm enhances scalability for large datasets.
Abstract
We present a preference learning framework for multiple criteria sorting. We consider sorting procedures applying an additive value model with diverse types of marginal value functions (including linear, piecewise-linear, splined, and general monotone ones) under a unified analytical framework. Differently from the existing sorting methods that infer a preference model from crisp decision examples, where each reference alternative is assigned to a unique class, our framework allows to consider valued assignment examples in which a reference alternative can be classified into multiple classes with respective credibility degrees. We propose an optimization model for constructing a preference model from such valued examples by maximizing the credible consistency among reference alternatives. To improve the predictive ability of the constructed model on new instances, we employ the…
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Taxonomy
TopicsMulti-Criteria Decision Making · Rough Sets and Fuzzy Logic · Fuzzy Systems and Optimization
