Simplifying Reinforced Feature Selection via Restructured Choice Strategy of Single Agent
Xiaosa Zhao, Kunpeng Liu, Wei Fan, Lu Jiang, Xiaowei Zhao, Minghao, Yin, and Yanjie Fu

TL;DR
This paper introduces a simplified single-agent reinforcement learning approach for feature selection, utilizing a restructured choice strategy to improve efficiency and reduce computational costs compared to multi-agent methods.
Contribution
The paper proposes a novel single-agent reinforced feature selection method with a restructured choice strategy, reducing complexity and enhancing efficiency over existing multi-agent approaches.
Findings
Achieves comparable or better feature selection performance.
Reduces computational costs significantly.
Demonstrates effectiveness on multiple datasets.
Abstract
Feature selection aims to select a subset of features to optimize the performances of downstream predictive tasks. Recently, multi-agent reinforced feature selection (MARFS) has been introduced to automate feature selection, by creating agents for each feature to select or deselect corresponding features. Although MARFS enjoys the automation of the selection process, MARFS suffers from not just the data complexity in terms of contents and dimensionality, but also the exponentially-increasing computational costs with regard to the number of agents. The raised concern leads to a new research question: Can we simplify the selection process of agents under reinforcement learning context so as to improve the efficiency and costs of feature selection? To address the question, we develop a single-agent reinforced feature selection approach integrated with restructured choice strategy.…
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Taxonomy
TopicsEvolutionary Algorithms and Applications · Machine Learning and Data Classification · Face and Expression Recognition
MethodsFeature Selection
