Authors
Carlos Villa-Blanco, Concha Bielza, Pedro Larrañaga
Publication date
2023/10
Source
Artificial Intelligence Review
Volume
56
Issue
Suppl 1
Pages
1011-1062
Publisher
Springer Netherlands
Description
Real-world problems are commonly characterized by a high feature dimensionality, which hinders the modelling and descriptive analysis of the data. However, some of these data may be irrelevant or redundant for the learning process. Different approaches can be used to reduce this information, improving not only the speed of building models but also their performance and interpretability. In this review, we focus on feature subset selection (FSS) techniques, which select a subset of the original feature set without making any transformation on the attributes. Traditional batch FSS algorithms may not be adequate to efficiently handle large volumes of data, either because memory problems arise or data are received in a sequential manner. Thus, this article aims to survey the state of the art of incremental FSS algorithms, which can perform more efficiently under these circumstances. Different strategies are described …
Total citations
202220232024146
Scholar articles
C Villa-Blanco, C Bielza, P Larrañaga - Artificial Intelligence Review, 2023