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Machine Learning

By: Publication details: Cambridge: MIT Pres, 2021Description: 255ISBN:
  • 9780262542524
Subject(s): DDC classification:
  • 006.31 ALP
Summary: Machine learning is rapidly becoming a skill that computer science students must master before graduation. The third edition of this title reflects this shift, with added support for beginners, including selected solutions for exercises and additional example data sets (with code available online). Other substantial changes include discussions of outlier detection; ranking algorithms for perceptrons and support vector machines; matrix decomposition and spectral methods; distance estimation; new kernel algorithms; deep learning in multilayered perceptrons; and the nonparametric approach to Bayesian methods. All learning algorithms are explained so that students can easily move from the equations in the book to a computer program. The book can be used by both advanced undergraduates and graduate students. It will also be of interest to professionals who are concerned with the application of machine learning methods.
List(s) this item appears in: New Arrivals for the Month of April - 2023
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Holdings
Item type Current library Collection Call number Copy number Status Date due Barcode Item holds
Reference Book Reference Book ACED Computer Science and Information Technology 006.31 ALP (Browse shelf(Opens below)) 1 Not for loan E11461
Book Book ACED Computer Science and Information Technology 006.31 ALP (Browse shelf(Opens below)) 3 Available E11463
Book Book ACED Computer Science and Information Technology 006.31 ALP (Browse shelf(Opens below)) 2 Checked out 01/08/2025 E11462
Total holds: 0

Machine learning is rapidly becoming a skill that computer science students must master before graduation. The third edition of this title reflects this shift, with added support for beginners, including selected solutions for exercises and additional example data sets (with code available online). Other substantial changes include discussions of outlier detection; ranking algorithms for perceptrons and support vector machines; matrix decomposition and spectral methods; distance estimation; new kernel algorithms; deep learning in multilayered perceptrons; and the nonparametric approach to Bayesian methods. All learning algorithms are explained so that students can easily move from the equations in the book to a computer program. The book can be used by both advanced undergraduates and graduate students. It will also be of interest to professionals who are concerned with the application of machine learning methods.

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