2021
DOI: 10.3390/electronics10091095
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Improving the Performance of an Associative Classifier in the Context of Class-Imbalanced Classification

Abstract: Class imbalance remains an open problem in pattern recognition, machine learning, and related fields. Many of the state-of-the-art classification algorithms tend to classify all unbalanced dataset patterns by assigning them to a majority class, thus failing to correctly classify a minority class. Associative memories are models used for pattern recall; however, they can also be employed for pattern classification. In this paper, a novel method for improving the classification performance of a hybrid associativ… Show more

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