Probabilistic Graphical Models 1: Representation

开始时间: 04/22/2022 持续时间: Unknown

所在平台: CourseraArchive

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大学或机构: CourseraNew

课程主页: https://www.coursera.org/archive/probabilistic-graphical-models

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Probabilistic graphical models (PGMs) are a rich framework for encoding probability distributions over complex domains: joint (multivariate) distributions over large numbers of random variables that interact with each other. These representations sit at the intersection of statistics and computer science, relying on concepts from probability theory, graph algorithms, machine learning, and more. They are the basis for the state-of-the-art methods in a wide variety of applications, such as medical diagnosis, image understanding, speech recognition, natural language processing, and many, many more. They are also a foundational tool in formulating many machine learning problems. This course is the first in a sequence of three. It describes the two basic PGM representations: Bayesian Networks, which rely on a directed graph; and Markov networks, which use an undirected graph. The course discusses both the theoretical properties of these representations as well as their use in practice. The (highly recommended) honors track contains several hands-on assignments on how to represent some real-world problems. The course also presents some important extensions beyond the basic PGM representation, which allow more complex models to be encoded compactly.

概率图形模型1:表示形式:概率图形模型(PGM)是一个丰富的框架,用于编码复杂域上的概率分布:大量相互影响的随机变量的联合(多变量)分布。这些表示法依赖于概率论,图算法,机器学习等概念,位于统计学与计算机科学的交叉点上。它们是医学诊断,图像理解,语音识别,自然语言处理以及许多其他应用程序中最先进方法的基础。它们还是解决许多机器学习问题的基础工具。 这是三门课程中的第一门。它描述了两种基本的PGM表示形式:贝叶斯网络,它依赖有向图;和Markov网络,它们使用无向图。本课程讨论了这些表示的理论特性及其在实践中的使用。 (强烈推荐)荣誉赛道包含一些动手实践的作业,这些作业涉及如何表示一些现实问题。该课程还提供了一些基本的PGM表示之外的重要扩展,这些扩展允许更复杂的模型进行紧凑编码。

课程大纲

In this module, we define the Bayesian network representation and its semantics. We also analyze the relationship between the graph structure and the independence properties of a distribution represented over that graph. Finally, we give some practical tips on how to model a real-world situation as a Bayesian network.

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Probabilistic graphical models (PGMs) are a rich framework for encoding probability distributions ov

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