An adaptive cost-sensitive learning approach in neural networks to minimize local training–test class distributions mismatch

We design an adaptive learning algorithm for binary classification problems whose objective is to reduce the cost of misclassified instances derived from the consequences of errors. Our algorithm (Adaptive Cost-Sensitive Learning — AdaCSL) adaptively adjusts the loss function to bridge the differenc...

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Bibliographic Details
Published inIntelligent systems with applications Vol. 21; p. 200316
Main Authors Volk, Ohad, Singer, Gonen
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.03.2024
Elsevier
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Online AccessGet full text
ISSN2667-3053
2667-3053
DOI10.1016/j.iswa.2023.200316

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Summary:We design an adaptive learning algorithm for binary classification problems whose objective is to reduce the cost of misclassified instances derived from the consequences of errors. Our algorithm (Adaptive Cost-Sensitive Learning — AdaCSL) adaptively adjusts the loss function to bridge the difference between the class distributions between subgroups of samples in the training and validation data sets. This adjustment is made for samples with similar predicted probabilities, in such a way that the local cost decreases. This process usually leads to a reduction in cost when applied to the test data set (i.e., local training–test class distributions mismatch). We present empirical evidence that neural networks used with the proposed algorithm yield better cost results on several data sets compared to other approaches. In addition, the proposed AdaCSL algorithm can optimize evaluation metrics other than cost. We present an experiment that demonstrates how utilizing the AdaCSL algorithm generates superior accuracy results. The AdaCSL algorithm can be used for applications in which the training set is noisy or when large variability may occur between the training and validation data sets, such as the classification of disease severity for a given subject based on other subjects. Our code is available at https://github.com/OhadVolk/AdaCSL. •We propose a new adaptive cost-sensitive learning (AdaCSL) algorithm.•The AdaCSL algorithm aims to achieve minimum misclassification costs.•The AdaCSL algorithm reduces the local training-test class distributions mismatch.•We provide some theoretical performance guarantees on the proposed algorithm.•Experiments show the superiority of Neural Networks with AdaCSL over other methods.
ISSN:2667-3053
2667-3053
DOI:10.1016/j.iswa.2023.200316