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This chapter is a door opener to computer age statistics. It covers a range of supervised and unsupervised learning methods and demonstrates their use in various applications.
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- 1.
Note that this is the convention we use in this book. Some texts label the rows with predicted classes and columns with actual classes.
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Kenett, R., Zacks, S., Gedeck, P. (2022). Modern Analytic Methods: Part I. In: Modern Statistics. Statistics for Industry, Technology, and Engineering. Birkhäuser, Cham. https://doi.org/10.1007/978-3-031-07566-7_7
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