AILGDec 6, 2022

Fuzzy Rough Sets Based on Fuzzy Quantification

arXiv:2212.04327v121 citationsh-index: 48
Originality Incremental advance
AI Analysis

This work addresses noise robustness in fuzzy rough sets for machine learning applications, representing an incremental improvement over prior models.

The paper tackles the sensitivity to noise in classical fuzzy rough sets by introducing fuzzy quantifier-based fuzzy rough sets (FQFRS), which generalizes existing models and proposes new binary quantification models, resulting in a model that significantly improves on VQFRS and competes with OWAFRS in classification tasks.

One of the weaknesses of classical (fuzzy) rough sets is their sensitivity to noise, which is particularly undesirable for machine learning applications. One approach to solve this issue is by making use of fuzzy quantifiers, as done by the vaguely quantified fuzzy rough set (VQFRS) model. While this idea is intuitive, the VQFRS model suffers from both theoretical flaws as well as from suboptimal performance in applications. In this paper, we improve on VQFRS by introducing fuzzy quantifier-based fuzzy rough sets (FQFRS), an intuitive generalization of fuzzy rough sets that makes use of general unary and binary quantification models. We show how several existing models fit in this generalization as well as how it inspires novel ones. Several binary quantification models are proposed to be used with FQFRS. We conduct a theoretical study of their properties, and investigate their potential by applying them to classification problems. In particular, we highlight Yager's Weighted Implication-based (YWI) binary quantification model, which induces a fuzzy rough set model that is both a significant improvement on VQFRS, as well as a worthy competitor to the popular ordered weighted averaging based fuzzy rough set (OWAFRS) model.

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