Mathematical Introduction to Data Science
Autor Sven A. Wegneren Limba Engleză Paperback – 8 sep 2024
The textbook comes with 121 classroom-tested exercises. Topics covered include k-nearest neighbors, linear and logistic regression, clustering, best-fit subspaces, principal component analysis, dimensionality reduction, collaborative filtering, perceptron, support vector machines, the kernel method, gradient descent and neural networks.
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Specificații
ISBN-13: 9783662694251
ISBN-10: 3662694255
Pagini: 299
Ilustrații: X, 299 p. 117 illus.
Dimensiuni: 155 x 235 mm
Ediția:2024
Editura: Springer Berlin, Heidelberg
Colecția Springer
Locul publicării:Berlin, Heidelberg, Germany
ISBN-10: 3662694255
Pagini: 299
Ilustrații: X, 299 p. 117 illus.
Dimensiuni: 155 x 235 mm
Ediția:2024
Editura: Springer Berlin, Heidelberg
Colecția Springer
Locul publicării:Berlin, Heidelberg, Germany
Cuprins
Preface.- 1 What is Data (Science)?.- 2 Affine Linear, Polynomial and Logistic Regression.- 3 k-nearest Neighbors.- 4 Clustering.- 5 Graph Clustering.- 6 Best-Fit Subspaces.- 7 Singular Value Decomposition.- 8 Curse and Blessing of High Dimensionality.- 9 Concentration of Measure.- 10 Gaussian Random Vectors in High Dimensions.- 11 Dimensionality Reduction à la Johnson-Lindenstrauss.- 12 Separation and Fitting of HIgh-Dimensional Gaussians.- 13 Perceptron.- 14 Support Vector Machines.- 15 Kernel Method.- 16 Neural Networks.- 17 Gradient Descent for Convex Functions.- Appendix: Selected Results of Probability Theory.- Bibliography.- Index.
Notă biografică
Sven A. Wegner earned his PhD in Functional Analysis in 2010. After several international academic positions, he is currently affiliated with the University of Hamburg (Germany).
Textul de pe ultima copertă
This textbook is intended for students of mathematics who have completed the foundational courses of their undergraduate studies and now want to specialize in Data Science and Machine Learning. It introduces the reader to the most important topics in the latter areas focusing on rigorous proofs and a systematic understanding of the underlying ideas.
The textbook comes with 121 classroom-tested exercises. Topics covered include k-nearest neighbors, linear and logistic regression, clustering, best-fit subspaces, principal component analysis, dimensionality reduction, collaborative filtering, perceptron, support vector machines, the kernel method, gradient descent and neural networks.
The author
Sven A. Wegner earned his PhD in Functional Analysis in 2010. After several international academic positions, he is currently affiliated with the University of Hamburg (Germany).
The textbook comes with 121 classroom-tested exercises. Topics covered include k-nearest neighbors, linear and logistic regression, clustering, best-fit subspaces, principal component analysis, dimensionality reduction, collaborative filtering, perceptron, support vector machines, the kernel method, gradient descent and neural networks.
The author
Sven A. Wegner earned his PhD in Functional Analysis in 2010. After several international academic positions, he is currently affiliated with the University of Hamburg (Germany).
Caracteristici
Provides a concise and understandable introduction to the mathematics of data science Guides the reader by the central principles of the subject Mathematically precise and focussed on the application