斯莫尔特:调查潜力和劣势

Nirwana Wijayanti, Eka N. KENCANA, I. W. Sumarjaya
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引用次数: 5

摘要

数据不平衡是一个经常出现在现实世界分类案例中的问题。数据不平衡导致的错误分类往往会发生在少数群体中。如果少数群体掌握了重要信息,这可能会导致决策失误,而这正是研究的重点。一般来说,有两种方法可以用来处理数据不平衡的问题,数据级方法和算法级方法。事实证明,数据级方法在处理不平衡数据方面非常有效,而且更加灵活。过采样方法是数据级方法之一,通常比欠采样方法给出更好的结果。SMOTE是在更多应用中使用的最流行的过采样方法。在本研究中,我们将更详细地讨论SMOTE方法、该方法的潜力和缺点。通常,这种方法旨在避免过拟合,并提高少数类的分类性能。然而,这种方法也会导致过度概括,这往往是重叠的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SMOTE: POTENSI DAN KEKURANGANNYA PADA SURVEI
Imbalanced data is a problem that is often found in real-world cases of classification. Imbalanced data causes misclassification will tend to occur in the minority class. This can lead to errors in decision-making if the minority class has important information and it’s the focus of attention in research. Generally, there are two approaches that can be taken to deal with the problem of imbalanced data, the data level approach and the algorithm level approach. The data level approach has proven to be very effective in dealing with imbalanced data and more flexible. The oversampling method is one of the data level approaches that generally gives better results than the undersampling method. SMOTE is the most popular oversampling method used in more applications. In this study, we will discuss in more detail the SMOTE method, potential, and disadvantages of this method. In general, this method is intended to avoid overfitting and improve classification performance in the minority class. However, this method also causes overgeneralization which tends to be overlapping.
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24 weeks
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