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Improving logistic regression on the imbalanced data by a novel penalized log-likelihood function
Authors:Lili Zhang  Trent Geisler  Herman Ray  Ying Xie
Affiliation:aAnalytics and Data Science Ph.D. Program, Kennesaw State University, Kennesaw, GA, USA;bAnalytics and Data Science Institute, Kennesaw State University, Kennesaw, GA, USA;cDepartment of Information Technology, Kennesaw State University, Kennesaw, GA, USA
Abstract:Logistic regression is estimated by maximizing the log-likelihood objective function formulated under the assumption of maximizing the overall accuracy. That does not apply to the imbalanced data. The resulting models tend to be biased towards the majority class (i.e. non-event), which can bring great loss in practice. One strategy for mitigating such bias is to penalize the misclassification costs of observations differently in the log-likelihood function. Existing solutions require either hard hyperparameter estimating or high computational complexity. We propose a novel penalized log-likelihood function by including penalty weights as decision variables for observations in the minority class (i.e. event) and learning them from data along with model coefficients. In the experiments, the proposed logistic regression model is compared with the existing ones on the statistics of area under receiver operating characteristics (ROC) curve from 10 public datasets and 16 simulated datasets, as well as the training time. A detailed analysis is conducted on an imbalanced credit dataset to examine the estimated probability distributions, additional performance measurements (i.e. type I error and type II error) and model coefficients. The results demonstrate that both the discrimination ability and computation efficiency of logistic regression models are improved using the proposed log-likelihood function as the learning objective.
Keywords:Logistic regression   binary classification   imbalanced data   maximum likelihood   penalized log-likelihood function   cost-sensitive
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