返回到 Probabilistic Graphical Models 3: Learning
Stanford University

Probabilistic Graphical Models 3: Learning

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 third in a sequence of three. Following the first course, which focused on representation, and the second, which focused on inference, this course addresses the question of learning: how a PGM can be learned from a data set of examples. The course discusses the key problems of parameter estimation in both directed and undirected models, as well as the structure learning task for directed models. The (highly recommended) honors track contains two hands-on programming assignments, in which key routines of two commonly used learning algorithms are implemented and applied to a real-world problem.

状态:Markov Model
状态:Model Evaluation
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精选评论

LC

5.0评论日期:Feb 22, 2019

A great course! Learned a lot. Especially the assignments are excellent! Thanks a lot.

RL

5.0评论日期:Mar 22, 2021

Excellent course. Assignments are challenging but once you figure them out you will have a solid understanding of PGM.

AK

5.0评论日期:Nov 8, 2017

Awesome course... builds intuitive thinking for developing intelligent algorithms...

JG

4.0评论日期:May 30, 2020

1) The fórums need better assistance.2) If we could submit Python code por the homework assignments, that would be much better for me.

JS

5.0评论日期:Dec 23, 2024

Amazing lecture videos. However, some images are missing from quizzes. The slides links are all broken.

SP

5.0评论日期:Oct 11, 2020

An amazing course! The assignments and quizzes can be insanely difficult espceially towards the conclusion.. Requires textbook reading and relistening to lectures to gather the nuances.

RC

5.0评论日期:May 6, 2020

Plz give practical assignments in Python. Matlab is not free and not many and neither myself know Matlab.

AA

4.0评论日期:May 12, 2021

Octave programming assignments, instead of Python

LY

5.0评论日期:Aug 26, 2018

Great course, great assignments I indeed learn much from this course an the whole PGM ialization!

SJ

5.0评论日期:Apr 19, 2017

Tougher course than the 2 preceding ones, but definitely worthwhile.

KM

5.0评论日期:Apr 2, 2017

Very interesting course. Several methods and algorithms are well-explained.

IV

5.0评论日期:Oct 19, 2017

Excellent course. Programming assignments are excellent and extremely instructive.

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Akshaya Thippur
3.0
评论日期:Mar 14, 2019
Amine M'Charrak
3.0
评论日期:Jun 17, 2019
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2.0
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5.0
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4.0
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3.0
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2.0
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5.0
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5.0
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4.0
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4.0
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4.0
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3.0
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2.0
评论日期:Mar 5, 2021
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2.0
评论日期:Nov 6, 2018
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5.0
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5.0
评论日期:Aug 13, 2020
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5.0
评论日期:Jan 19, 2019
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5.0
评论日期:Feb 21, 2018
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5.0
评论日期:Jun 4, 2018