Graphical models, a marriage between probability theory and graph theory, provide a natural tool for dealing with two problems that occur throughout applied mathematics and engineering--uncertainty and complexity. In particular, they play an increasingly important role in the design and analysis of machine learning algorithms. Fundamental to the idea of a graphical model is the notion of modularity: a complex system is built by combining simpler parts. Probability theory serves as the glue whereby the parts are combined, ensuring that the system as a whole is consistent and providing ways to interface models to data. Graph theory provides both an intuitively appealing interface by which humans can model highly interacting sets of variables and a data structure that lends itself naturally to the design of efficient general-purpose algorithms.This book presents an in-depth exploration of issues related to learning within the graphical model formalism. Four chapters are tutorial chapters--Robert Cowell on Inference for Bayesian Networks, David MacKay on Monte Carlo Methods, Michael I. Jordan et al. on Variational Methods, and David Heckerman on Learning with Bayesian Networks. The remaining chapters cover a wide range of topics of current research interest.
發表於2024-12-20
Learning in Graphical Models (Adaptive Computation and Machine Learning) 2024 pdf epub mobi 電子書 下載
圖書標籤: 機器學習 Graph-Model 圖模型 learning Graphical 美國 統計學 機器學習
learning from data, very informational.
評分learning from data, very informational.
評分learning from data, very informational.
評分本來可以個四星的,不過近年來有很多體係完善的相關圖書齣現,這本論文集式的圖書價值多少有點打摺。
評分本來可以個四星的,不過近年來有很多體係完善的相關圖書齣現,這本論文集式的圖書價值多少有點打摺。
Learning in Graphical Models (Adaptive Computation and Machine Learning) 2024 pdf epub mobi 電子書 下載