Reflecting on Imbalance Data Issue When Teaching Performance Measures

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 inter...

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Published inArtificial Intelligence Trends in Intelligent Systems Vol. 573; pp. 33 - 42
Main Authors Škrabánek, Pavel, Majerík, Filip
Format Book Chapter
LanguageEnglish
Published Switzerland Springer International Publishing AG 2017
Springer International Publishing
SeriesAdvances in Intelligent Systems and Computing
Subjects
Online AccessGet full text
ISBN3319572601
9783319572604
ISSN2194-5357
2194-5365
DOI10.1007/978-3-319-57261-1_4

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Abstract 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.
AbstractList 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.
Author Majerík, Filip
Škrabánek, Pavel
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Snippet Importance of soft computing methods has continuously grown for many years. Particularly machine learning methods have been paid considerable attention in the...
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StartPage 33
SubjectTerms Artificial intelligence
Binary classification
Imbalanced data
Machine learning
Performance measures
Teaching method
Title Reflecting on Imbalance Data Issue When Teaching Performance Measures
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