Do all roads lead to Rome? Studying distance measures in the context of machine learning

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Do all roads lead to Rome? Studying distance measures in the context of machine learningDate
2023-09Citation
E. Blanco-Mallo, L. Morán-Fernández, B. Remeseiro, V. Bolón-Canedo, "Do all roads lead to Rome? Studying distance measures in the context of machine learning", Pattern Recognition, Vol. 141, Sept. 2023, article number 109646, doi: 10.1016/j.patcog.2023.109646
Abstract
[Abstract]: Many machine learning and data mining tasks are based on distance measures, so a large amount of literature addresses this aspect somehow. Due to the broad scope of the topic, this paper aims to provide an overview of the use of these measures in the most common machine learning problems, pointing out those aspects to consider to choose the most appropriate measure for a particular task. For this purpose, the most recent works addressing the subject were reviewed and seven of the most commonly used measures were analyzed, investigating in detail their main properties and applications. Different experiments were carried out to study their relationships and compare their performance. The degradation of the results in the presence of noise was also considered, as well as the execution time required by each measure.
Keywords
Classification
Clustering
Distance measures
Machine learning
Similarity measures
Clustering
Distance measures
Machine learning
Similarity measures
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Atribución-NoComercial-SinDerivadas 3.0 España