Use este identificador para citar ou linkar para este item: https://ri.ufs.br/jspui/handle/riufs/24791
Tipo de Documento: Dissertação
Título: A novel approach to use Multi-Armed Bandit for feature selection
Autor(es): Monteiro, Keomas da Silva
Data do documento: 29-Ago-2025
Orientador: Carvalho, André Britto de
Abstract: This work explores the application of Multi-Armed Bandit (MAB) algorithms for feature selection (FS) in machine learning, aiming to address the challenges posed by high-dimensional data, such as computational complexity and overfitting. While traditional FS methods are widely used, the integration of MAB in this context remains unexplored. This research proposes novel MAB-based algorithms, specifically adapting the Epsilon-greedy (MAB-EgreedyFS) and Upper Confidence Bound (MAB-UCBFS) algorithms, to dynamically manage feature inclusion and exclusion. In this way, the feature set is formed with the aim of providing the best accuracy for the classifier in the classification task. For this, each feature’s status is treated as an "arm" in the bandit problem approach that abstracts the search for the best features as the exploration-exploitation dilemma. During the process a Support Vector Machine (SVM) is applied as the classifier to evaluate the methods. A experimental set was performed, the proposed methods were evaluated in seven dataset and compared against established FS methods: SVM-RFE, extra-trees-based method, genetic algorithm-based method a ANOVA filter method. The results indicate that MAB-UCBFS consistently achieved strong performance, notably ranking as the "Best Method" for most of the evaluated data sets. While not universally superior, MAB-UCBFS demonstrated robust and competitive performance across most scenarios. Statistical analysis using Conover test heatmaps further corroborated these findings, highlighting significant differences between MAB-UCBFS and other techniques on several datasets. This study successfully validates the viability and strong performance of MAB-based algorithms, particularly MAB-UCBFS, as innovative and effective solutions for feature selection.
Palavras-chave: Computação
Aprendizado do computador
Inteligência artificial
Multi-armed bandits
Feauture selection
Machine learning
área CNPQ: CIENCIAS EXATAS E DA TERRA::CIENCIA DA COMPUTACAO
Idioma: por
Sigla da Instituição: Universidade Federal de Sergipe (UFS)
Programa de Pós-graduação: Pós-Graduação em Ciência da Computação
Citação: MONTEIRO, Keomas da Silva. A novel approach to use Multi-Armed Bandit for feature selection. 2025. 84 f. Dissertação (Mestrado em Ciência da computação) — Universidade Federal de Sergipe, São Cristóvão, 2025.
URI: https://ri.ufs.br/jspui/handle/riufs/24791
Aparece nas coleções:Mestrado em Ciência da Computação

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