Tekijät
Joakim Linja, Joonas Hämäläinen, Paavo Nieminen, Tommi Kärkkäinen
Julkaisupäivämäärä
2023/1/21
Lähde
Neurocomputing
Nide
518
Sivut
344-359
Kustantaja
Elsevier
Kuvaus
Feature selection (FS) may improve the performance, cost-efficiency, and understandability of supervised machine learning models. In this paper, FS for the recently introduced distance-based supervised machine learning model is considered for regression problems. The study is contextualized by first providing an umbrella review (review of reviews) of recent development in the research field. We then propose a saliency-based one-shot wrapper algorithm for FS, which is called MAS-FS. The algorithm is compared with a set of other popular FS algorithms, using a versatile set of simulated and benchmark datasets. Finally, experimental results underline the usefulness of FS for regression, confirming the utility of certain filter algorithms and particularly the proposed wrapper algorithm.
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