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Reflecting on Imbalance Data Issue When Teaching Performance Measures

机译:在教学绩效措施时反映不平衡数据问题

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Importance of soft computing methods has continuously grown for many years. Particularly machine learning methods have been paid considerable attention in the business sphere and subsequently within the general public in the last decade. Machine learning and its implementation is the object of interest of many commercial subjects, whether they are small companies or large corporations. Consequently, well-educated experts in the area of machine learning are highly sought after on the job market. Most of the technical universities around the world have incorporated the machine learning into their curricula. However, machine learning is a dynamically evolving area and the curricula should be continuously updated. This paper is intended to support this process. Namely, an imbalance data issue, in context of performance measures for binary classification, is opened, and a teaching method covering this problem is presented. The method has been primary designed for undergraduate and graduate students of technical fields; however, it can be easily adopted in curricula of other fields of study, e.g. medicine, economics, or social sciences.
机译:软计算方法的重要性多年来不断种植。特别是机器学习方法在业务领域得到了相当大的关注,随后在过去十年中随后在公众内。机器学习及其实施是许多商业主题的兴趣对象,无论是小公司还是大公司。因此,在就业市场上追捧了机器学习领域受过良好教育的专家。世界各地的大多数技术大学都将机器学习纳入课程。但是,机器学习是一个动态发展的区域,课程应该不断更新。本文旨在支持此过程。即,在二进制分类的性能措施的上下文中,打开不平衡数据问题,并介绍了涵盖此问题的教学方法。该方法专业为技术领域的本科和研究生设计;但是,在其他研究领域的课程中可以很容易地采用,例如,医学,经济学或社会科学。

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