Machine Learning:A Probabilistic Perspective

Machine Learning:A Probabilistic Perspective
分享
扫描下方二维码分享到微信
打开微信,点击右上角”+“,
使用”扫一扫“即可将网页分享到朋友圈。
作者:
出版社: The MIT Press
2012-08
ISBN: 9780262018029
装帧: 精装
开本: 其他
纸张: 其他
24人买过
  • Today's Web-enabled deluge of electronic data calls for automated methods of data analysis. Machine learning provides these, developing methods that can automatically detect patterns in data and then use the uncovered patterns to predict future data. T Kevin P. Murphy is Associate Professor in the Department of Computer Science and in the Department of Statistics at the University of British Columbia. Chapter 1: Introduction
    Chapter 2: Probability
    Chapter 3: Statistics
    Chapter 4: Gaussian models
    Chapter 5: Generative models for classification
    Chapter 6: Discriminative linear models
    Chapter 7: Graphical Models
    Chapter 8: Decision theory
    Chapter 9: Mixture models and the EM algorithm
    Chapter 10: Latent Linear models
    Chapter 11: Hierarchical Bayes
    Chapter 12: Sparce Linear Models
    Chapter 13: Kernels
    Chapter 14: Gaussian processes
    Chapter 15: Adaptive basis function models
    Chapter 16: Markov and hidden Markov Models
    Chapter 17: State space models
    Chapter 18: Conditional random fields
    Chapter 19: Exact inference algorithms for graphical models
    Chapter 20: Mean field inference algorithms
    Chapter 21: Other variational inference algorithms
    Chapter 22: Monte Carlo inference algorithms
    Chapter 23: MCMC inference algorithms
    Chapter 24: Clustering
    Chapter 25: Graphical model structure learning
    Chapter 26: Two-layer latent variable models
    Chapter 27: Deep learning
  • 内容简介:
    Today's Web-enabled deluge of electronic data calls for automated methods of data analysis. Machine learning provides these, developing methods that can automatically detect patterns in data and then use the uncovered patterns to predict future data. T
  • 作者简介:
    Kevin P. Murphy is Associate Professor in the Department of Computer Science and in the Department of Statistics at the University of British Columbia.
  • 目录:
    Chapter 1: Introduction
    Chapter 2: Probability
    Chapter 3: Statistics
    Chapter 4: Gaussian models
    Chapter 5: Generative models for classification
    Chapter 6: Discriminative linear models
    Chapter 7: Graphical Models
    Chapter 8: Decision theory
    Chapter 9: Mixture models and the EM algorithm
    Chapter 10: Latent Linear models
    Chapter 11: Hierarchical Bayes
    Chapter 12: Sparce Linear Models
    Chapter 13: Kernels
    Chapter 14: Gaussian processes
    Chapter 15: Adaptive basis function models
    Chapter 16: Markov and hidden Markov Models
    Chapter 17: State space models
    Chapter 18: Conditional random fields
    Chapter 19: Exact inference algorithms for graphical models
    Chapter 20: Mean field inference algorithms
    Chapter 21: Other variational inference algorithms
    Chapter 22: Monte Carlo inference algorithms
    Chapter 23: MCMC inference algorithms
    Chapter 24: Clustering
    Chapter 25: Graphical model structure learning
    Chapter 26: Two-layer latent variable models
    Chapter 27: Deep learning
查看详情
相关图书 / 更多
Machine Learning:A Probabilistic Perspective
MachineShopPractice-Volume1
K. H. Moltrecht 著
Machine Learning:A Probabilistic Perspective
Machine Learning Refined:Foundations, Algorithms, and Applications
Jeremy Watt;Reza Borhani;Aggelos Katsaggelos
Machine Learning:A Probabilistic Perspective
Machines of Loving Grace:The Quest for Common Ground Between Humans and Robots
John Markoff
Machine Learning:A Probabilistic Perspective
Machine Learning and Security:Protecting Systems with Data and Algorithms
Clarence Chio;David Freeman
Machine Learning:A Probabilistic Perspective
Machine Learning with TensorFlow
Nishant Shukla
Machine Learning:A Probabilistic Perspective
Machine Learning and Big Data with KDB+/Q
Paul A. Bilokon;Jan Novotny
Machine Learning:A Probabilistic Perspective
Machine, Platform, Crowd:Harnessing Our Digital Future
Andrew McAfee;Erik Brynjolfsson
Machine Learning:A Probabilistic Perspective
Machine Learning:Hands-On for Developers and Technical Professionals
Jason Bell
Machine Learning:A Probabilistic Perspective
MachineShopPractice,Vol.2
Karl Moltrecht 著
Machine Learning:A Probabilistic Perspective
Machine Translation
Thierry Poibeau
Machine Learning:A Probabilistic Perspective
Machine Beauty:Elegance and the Heart of Computing
David Hillel Gelernter;Gelernter
Machine Learning:A Probabilistic Perspective
MachineElementsinMechanicalDesign机械设计(英文版)
宋梅利、祖莉、梁医 著
您可能感兴趣 / 更多
Machine Learning:A Probabilistic Perspective
必然(修订版)
Kevin Kelly(凯文·凯利
Machine Learning:A Probabilistic Perspective
手和腕关节手术技术(第3版)
Kevin C. Chung;陈山林
Machine Learning:A Probabilistic Perspective
迭代:社区产品设计和商业模式的七步策略
Kevin(张晋壹
Machine Learning:A Probabilistic Perspective
YoungMoney:InsidetheHiddenWorldofWallStr
Kevin Roose 著
Machine Learning:A Probabilistic Perspective
TheBunkerDiary
Kevin Brooks 著
Machine Learning:A Probabilistic Perspective
Philip Treacy 菲利普·崔西
Kevin Davies、Philip Treacy 著
Machine Learning:A Probabilistic Perspective
Kevin Zraly's Complete Wine Course
Kevin Zraly 著
Machine Learning:A Probabilistic Perspective
Art and Craft of Coffee
Kevin Sinnott 著
Machine Learning:A Probabilistic Perspective
BlackRabbitSummer英文原版
Kevin Brooks(凯文·布鲁克斯) 著
Machine Learning:A Probabilistic Perspective
I'm the Biggest Thing in the Ocean
Kevin Sherry 著
Machine Learning:A Probabilistic Perspective
SecretsofDisney’sGloriousGardens
Kevin Markey 著
Machine Learning:A Probabilistic Perspective
Oracle9i DBA Handbook
Kevin Loney、Marlene Theriault 著