2023
DOI: 10.1111/exsy.13338
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An empirical hybridized Siamese network using hypercube natural aggregation algorithm for handling imbalance data learning

Abstract: Dealing with imbalanced data is a common challenge in machine learning, where one class has significantly fewer examples than another. Successfully addressing this challenge requires careful consideration of the data, algorithm, and evaluation metrics to ensure that the model accurately predicts the minority class. In this study, we present a hybrid approach called Siamese‐HYNAA, which combines a Siamese network and a population‐based optimizer hypercube natural aggregation algorithm (HYNAA) to generate candid… Show more

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“…The next article by Subhashree Rout et al (2023) presents a hybrid approach called Siamese-HYNAA, which combines a Siamese network and a population-based optimizer hypercube natural aggregation algorithm (HYNAA) to generate candidate solutions for augmenting the minority class. The authors have evaluated the proposed strategy against basic SMOTE and SMOTE-PSOEV, using various performance measures, including ROC-AUC learning curves, sensitivity, specificity, accuracy, characteristic stability index, balanced accuracy, F1-score, informedness, markedness and execution time.…”
mentioning
confidence: 99%
“…The next article by Subhashree Rout et al (2023) presents a hybrid approach called Siamese-HYNAA, which combines a Siamese network and a population-based optimizer hypercube natural aggregation algorithm (HYNAA) to generate candidate solutions for augmenting the minority class. The authors have evaluated the proposed strategy against basic SMOTE and SMOTE-PSOEV, using various performance measures, including ROC-AUC learning curves, sensitivity, specificity, accuracy, characteristic stability index, balanced accuracy, F1-score, informedness, markedness and execution time.…”
mentioning
confidence: 99%