Multi-Class Fuzzy-LORE: A Method for Extracting Local and Counterfactual Explanations Using Fuzzy Decision Trees

Author:

Maaroof Najlaa1ORCID,Moreno Antonio1ORCID,Valls Aida1ORCID,Jabreel Mohammed1ORCID,Romero-Aroca Pedro23ORCID

Affiliation:

1. ITAKA Research Group, Department of Computer Science and Mathematics, Universitat Rovira i Virgili, 43007 Tarragona, Spain

2. Ophthalmology Service, Hospital Universitario Sant Joan de Reus, Pere Virgili Institute for Health Research (IISPV), 43204 Reus, Spain

3. Department of Medicine and Surgery, Faculty of Medicine and Health Sciences, Universitat Rovira i Virgili, 43201 Reus, Spain

Abstract

Multi-class classification is a fundamental task in Machine Learning. However, complex models can be viewed as black boxes, making it difficult to gain insight into how the model makes its predictions and build trust in its decision-making process. This paper presents a novel method called Multi-Class Fuzzy-LORE (mcFuzzy-LORE) for explaining the decisions made by multi-class fuzzy-based classifiers such as Fuzzy Random Forests (FRF). mcFuzzy-LORE is an adaptation of the Fuzzy-LORE method that uses fuzzy decision trees as an alternative to classical decision trees, providing interpretable, human-readable rules that describe the reasoning behind the model’s decision for a specific input. The proposed method was evaluated on a private dataset that was used to train an FRF-based multi-class classifier that assesses the risk of developing diabetic retinopathy in diabetic patients. The results show that mcFuzzy-LORE outperforms prior classical LORE-based methods in the generation of counterfactual instances.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

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3. Saleh, E., Valls, A., Moreno, A., Romero-Aroca, P., Torra, V., and Bustince, H. (2018). Proceedings of the International Conference on Modeling Decisions for Artificial Intelligence, Mallorca, Spain, 15–18 October 2018, Springer.

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