返回到 Probabilistic Graphical Models 2: Inference
Stanford University

Probabilistic Graphical Models 2: Inference

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 second in a sequence of three. Following the first course, which focused on representation, this course addresses the question of probabilistic inference: how a PGM can be used to answer questions. Even though a PGM generally describes a very high dimensional distribution, its structure is designed so as to allow questions to be answered efficiently. The course presents both exact and approximate algorithms for different types of inference tasks, and discusses where each could best be applied. The (highly recommended) honors track contains two hands-on programming assignments, in which key routines of the most commonly used exact and approximate algorithms are implemented and applied to a real-world problem.

状态:Algorithms
状态:Computational Thinking
高级设置课程小时

精选评论

AA

5.0评论日期:Mar 8, 2020

Great course, except that the programming assignments are in Matlab rather than Python

YP

5.0评论日期:May 28, 2017

I learned pretty much from this course. It answered my quandaries from the representation course, and as well deepened my understanding of PGM.

KD

4.0评论日期:Nov 4, 2018

Great introduction. It would be great to have more examples included in the lectures and slides.

AK

5.0评论日期:Nov 4, 2017

This course induces lateral thinking and deep reasoning.

GV

4.0评论日期:Nov 27, 2017

great course, though really advanced. would like a bit more examples especially regarding the coding. worth it overally

RG

4.0评论日期:May 15, 2020

Great course. The assignments are old and are not worth doing it. But the content is good for those who are interested in Probabilistic Graphical Models basics.

JR

5.0评论日期:Dec 21, 2017

Great course! Expect to spend significant time reviewing the material.

JL

5.0评论日期:Apr 8, 2018

I would have like to complete the honors assignments, unfortunately, I'm not fluent in Matlab. Otherwise, great course!

KI

5.0评论日期:Dec 6, 2020

Amazing course offering a technical as well as intuitional understanding of the principles of doing inference

MP

5.0评论日期:Jan 19, 2021

Great course! Course has filled gaps in my knowledge from statistics and similar sciences.

RL

5.0评论日期:Feb 23, 2021

Awesome class to gain better understanding of inference for graphical model

AT

5.0评论日期:Aug 22, 2019

Just like the first course of the specialization, this course is really good. It is well organized and taught in the best way which really helped me to implement similar ideas for my projects.

所有审阅

显示:20/78

AlexanderV
5.0
评论日期:Mar 9, 2020
Shi Yihui
5.0
评论日期:Dec 16, 2018
Jonathan Hollenbeck
4.0
评论日期:Aug 3, 2017
Anurag Singh
4.0
评论日期:Nov 8, 2017
Tianyi Xia
3.0
评论日期:Feb 22, 2018
Jiaxing Liu
2.0
评论日期:Nov 27, 2016
Hunter Johnson
2.0
评论日期:May 2, 2017
Kuan-Cheng Lai
2.0
评论日期:Jul 23, 2020
Deleted Account
1.0
评论日期:Nov 17, 2018
Anthony Lourdiane
5.0
评论日期:Aug 20, 2019
Michael Kesling
4.0
评论日期:Dec 24, 2016
george vavoulis
4.0
评论日期:Nov 28, 2017
Kaixuan Zhang
4.0
评论日期:Dec 4, 2018
Michel Speiser
3.0
评论日期:Jul 14, 2018
Mahmoud Shepero
1.0
评论日期:Feb 22, 2019
Sergey Semenov
5.0
评论日期:Sep 23, 2020
Chan-Se-Yeun
5.0
评论日期:Jan 30, 2018
Rishi Chopra
5.0
评论日期:Oct 27, 2017
Dat Nguyen
5.0
评论日期:Nov 20, 2019
satish padmanabhan
5.0
评论日期:Aug 28, 2020