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    題名: Binary classification with imbalanced data
    作者: Chiang, Jyun-You;Lio, Yuhlong;Hsu, Chien-Ya;Ho, Chia-Ling;Tsai, Tzong-Ru
    關鍵詞: artificial neural network;expectation-maximization algorithm;Entropy;logistic regression;zero-inflated model
    日期: 2023-12-22
    上傳時間: 2024-07-23 12:05:55 (UTC+8)
    出版者: MDPI
    摘要: When the binary response variable contains an excess of zero counts, the data are imbalanced. Imbalanced data cause trouble for binary classification. To simplify the numerical computation to obtain the maximum likelihood estimators of the zero-inflated Bernoulli (ZIBer) model parameters with imbalanced data, an expectation-maximization (EM) algorithm is proposed to derive the maximum likelihood estimates of the model parameters. The logistic regression model links the Bernoulli probabilities with the covariates in the ZIBer model, and the prediction performance among the ZIBer model, LightGBM, and artificial neural network (ANN) procedures is compared by Monte Carlo simulation. The results show that no method can dominate the other methods regarding predictive performance under the imbalanced data. The LightGBM and ZIBer models are more competitive than the ANN model for zero-inflated-imbalanced data sets.
    關聯: Entropy 26(1), 15
    DOI: 10.3390/e26010015
    顯示於類別:[統計學系暨研究所] 期刊論文

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