Abstract

Data mining is one of the most important research area in literature. Due to the increasing volume of data, which is directly proportional to technological advancements, the number of researches in this field is growing rapidly. The goal of data mining is to extract various insights and obtain information from raw data by leveraging machine learning techniques. The structural characteristics and also class distributions of the datasets used in machine learning techniques significantly affect the performances of the algorithms. In this study, our aim is balancing the imbalanced binary dataset, used in the machine learning techniques, with an undersampling approach including a classification method via polyhedral conic functions.

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