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Hauptverfasser: Bernardino, Gabriel, Jonsson, Anders, Clarysse, Patrick, Duchateau, Nicolas
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2603.15110
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author Bernardino, Gabriel
Jonsson, Anders
Clarysse, Patrick
Duchateau, Nicolas
author_facet Bernardino, Gabriel
Jonsson, Anders
Clarysse, Patrick
Duchateau, Nicolas
contents Determining the most appropriate features for machine learning predictive models is challenging regarding performance and feature acquisition costs. In particular, global feature choice is limited given that some features will only benefit a subset of instances. In previous work, we proposed a reinforcement learning approach to sequentially recommend which modality to acquire next to reach the best information/cost ratio, based on the instance-specific information already acquired. We formulated the problem as a Markov Decision Process where the state's dimensionality changes during the episode, avoiding data imputation, contrary to existing works. However, this only allowed processing a small number of features, as all possible combinations of features were considered. Here, we address these limitations with two contributions: 1) we expand our framework to larger datasets with a heuristic-based strategy that focuses on the most promising feature combinations, and 2) we introduce a post-fit regularisation strategy that reduces the number of different feature combinations, leading to compact sequences of decisions. We tested our method on four binary classification datasets (one involving high-dimensional variables), the largest of which had 56 features and 4500 samples. We obtained better performance than state-of-the-art methods, both in terms of accuracy and policy complexity.
format Preprint
id arxiv_https___arxiv_org_abs_2603_15110
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Sampling-guided exploration of active feature selection policies
Bernardino, Gabriel
Jonsson, Anders
Clarysse, Patrick
Duchateau, Nicolas
Machine Learning
Computer Vision and Pattern Recognition
Determining the most appropriate features for machine learning predictive models is challenging regarding performance and feature acquisition costs. In particular, global feature choice is limited given that some features will only benefit a subset of instances. In previous work, we proposed a reinforcement learning approach to sequentially recommend which modality to acquire next to reach the best information/cost ratio, based on the instance-specific information already acquired. We formulated the problem as a Markov Decision Process where the state's dimensionality changes during the episode, avoiding data imputation, contrary to existing works. However, this only allowed processing a small number of features, as all possible combinations of features were considered. Here, we address these limitations with two contributions: 1) we expand our framework to larger datasets with a heuristic-based strategy that focuses on the most promising feature combinations, and 2) we introduce a post-fit regularisation strategy that reduces the number of different feature combinations, leading to compact sequences of decisions. We tested our method on four binary classification datasets (one involving high-dimensional variables), the largest of which had 56 features and 4500 samples. We obtained better performance than state-of-the-art methods, both in terms of accuracy and policy complexity.
title Sampling-guided exploration of active feature selection policies
topic Machine Learning
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.15110