This dissertation is about classification methods for binary data developed in Computer Science and Statistics. The research focuses on two main algorithms called support vector machines and logistic regression. The thesis consists of three chapters. The first chapter provides a general discussion of classification algorithms used in Statistical and Machine Learning with special emphasis on logistic regression and support vector machines. The second chapter includes some simulation studies to compare the classification methods. The third chapter concludes the thesis with an application to a real dataset.
A Comparison between Support Vector Machines and Logistic Regression for Classification
Hasanov, Ilgar
2022/2023
Abstract
This dissertation is about classification methods for binary data developed in Computer Science and Statistics. The research focuses on two main algorithms called support vector machines and logistic regression. The thesis consists of three chapters. The first chapter provides a general discussion of classification algorithms used in Statistical and Machine Learning with special emphasis on logistic regression and support vector machines. The second chapter includes some simulation studies to compare the classification methods. The third chapter concludes the thesis with an application to a real dataset.File in questo prodotto:
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Utilizza questo identificativo per citare o creare un link a questo documento:
https://hdl.handle.net/20.500.14247/9335