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Revisiting data complexity metrics based on morphology for overlap and imbalance: snapshot, new overlap number of balls metrics and singular problems prospect

[PDF] Arxiv (1.942Mo)
Identificadores
URI: https://hdl.handle.net/10481/87883
DOI: 10.1007/s10115-021-01577-1
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Statistiques d'usage de visualisation
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Auteur
Pascual-Triana, José Daniel; Charte Luque, Francisco David; Andrés-Arroyo, Marta; Fernández Hilario, Alberto Luis; Herrera Triguero, Francisco
Editorial
KNOWLEDGE AND INFORMATION SYSTEMS
Date
2021
Referencia bibliográfica
Pascual-Triana, J.D., Charte, D., Andrés Arroyo, M. et al. Revisiting data complexity metrics based on morphology for overlap and imbalance: snapshot, new overlap number of balls metrics and singular problems prospect. Knowl Inf Syst 63, 1961–1989 (2021). https://doi.org/10.1007/s10115-021-01577-1
Résumé
Data Science and Machine Learning have become fundamental assets for companies and research institutions alike. As one of its fields, supervised classification allows for class prediction of new samples, learning from given training data. However, some properties can cause datasets to be problematic to classify. In order to evaluate a dataset a priori, data complexity metrics have been used extensively. They provide information regarding different intrinsic characteristics of the data, which serve to evaluate classifier compatibility and a course of action that improves performance. However, most complexity metrics focus on just one characteristic of the data, which can be insufficient to properly evaluate the dataset towards the classifiers’ performance. In fact, class overlap, a very detrimental feature for the classification process (especially when imbalance among class labels is also present) is hard to assess. This research work focuses on revisiting complexity metrics based on data morphology. In accordance to their nature, the premise is that they provide both good estimates for class overlap, and great correlations with the classification performance. For that purpose, a novel family of metrics has been developed. Being based on ball coverage by classes, they are named after Overlap Number of Balls. Finally, some prospects for the adaptation of the former family of metrics to singular (more complex) problems are discussed.
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