Companion Classification Losses for Regression Problems

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Hybrid Artificial Intelligent Systems (HAIS 2023)

Abstract

By their very nature, regression problems can be transformed into classification problems by discretizing their target variable. Within this perspective, in this work we investigate the possibility of improving the performance of deep machine learning models in regression scenarios through a training strategy that combines different classification and regression objectives. In particular, we train deep neural networks using the mean squared error along with categorical cross-entropy and the novel Fisher loss as companion losses. Finally, we will compare experimentally the results of these companion loss methods with the ones obtained using the standard mean squared loss.

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Acknowledgments

The authors acknowledge financial support from the European Regional Development Fund and the Spanish State Research Agency of the Ministry of Economy, Industry, and Competitiveness under the project PID2019-106827GB-I00. They also thank the support of the UAM–ADIC Chair for Data Science and Machine Learning and gratefully acknowledge the use of the facilities of Centro de Computación Científica (CCC) at UAM. They finally acknowledge the financial support of the Department of Education of the Basque Government under the grant PRE_2022_1_0103.

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Correspondence to Aitor Sánchez-Ferrera .

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Sánchez-Ferrera, A., Dorronsoro, J.R. (2023). Companion Classification Losses for Regression Problems. In: García Bringas, P., et al. Hybrid Artificial Intelligent Systems. HAIS 2023. Lecture Notes in Computer Science(), vol 14001. Springer, Cham. https://doi.org/10.1007/978-3-031-40725-3_19

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  • DOI: https://doi.org/10.1007/978-3-031-40725-3_19

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  • Online ISBN: 978-3-031-40725-3

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