# Difference between revisions of "Machine learning"

(Created page with "Our Journal Club slides about ML will be posted here.") |
|||

(30 intermediate revisions by 7 users not shown) | |||

Line 1: | Line 1: | ||

Our Journal Club slides about ML will be posted here. | Our Journal Club slides about ML will be posted here. | ||

+ | |||

+ | * [[Media:MLintro.pdf | Machine learning introduction]] - Gunnar | ||

+ | * [[Media:LinearRegression.pdf | Linear Regression]] - Sisi | ||

+ | * [[Media:Linear_Classification.pdf | Linear Classification]] - Parisa | ||

+ | * [[Media:MCMC.pdf | Markov Chain Montre Carlo]] - Gunnar | ||

+ | * [[Media:Intro to PCA and ICA.pdf | Introduction to PCA and ICA]] - Cindy | ||

+ | * [[Media:EM_algorithm.pdf | Expectation Maximization]] - Brandon and Jonathan | ||

+ | * [[Media:HMM-parisa.pdf | Hidden Markov Models]] - Parisa | ||

+ | * [[Media:KalmanFilter.pdf | Kalman filter]] - Josh | ||

+ | * [[Media:ML-ANNs.pdf | Rate-based networks & error back-propagation learning]] - Scott | ||

+ | * [[Media:Support Vector Machines (SVM).pdf | Support Vector Machines]] - Jerry | ||

+ | * [[Media:Deep_Belief_Network_Home_(2).pdf | Deep belief networks ]] - Tiger | ||

+ | |||

+ | |||

+ | ---- | ||

+ | |||

+ | == Machine learning books == | ||

+ | |||

+ | * [http://personal.disco.unimib.it/Vanneschi/McGrawHill_-_Machine_Learning_-Tom_Mitchell.pdf Tom Mitchell's book] | ||

+ | * [http://alex.smola.org/drafts/thebook.pdf Smola & Vishwanathan's book] | ||

+ | * [http://ciml.info/dl/v0_8/ciml-v0_8-all.pdf Daume's book] | ||

+ | * [https://www.cs.ubc.ca/~murphyk/MLbook/pml-intro-22may12.pdf Murphy's book] | ||

+ | * [http://www.cs.huji.ac.il/~shais/UnderstandingMachineLearning/understanding-machine-learning-theory-algorithms.pdf Shalev-Shwartz & Ben-David's book] | ||

+ | * [http://ai.stanford.edu/~nilsson/MLBOOK.pdf Nilsson's book] | ||

+ | * [http://www2.ift.ulaval.ca/~chaib/IFT-4102-7025/public_html/Fichiers/Machine_Learning_in_Action.pdf Harrington's book] | ||

+ | * [http://www.deeplearningbook.org/ Ian Goodfellow, Yoshua Bengio, and Aaron Courville's book] | ||

+ | * [https://web.stanford.edu/~hastie/Papers/ESLII.pdf Hastie, Tibshirani, and Friedman's book]; also [http://www-bcf.usc.edu/~gareth/ISL/ James, Witten, Hastie, and Tibshirani's book], which has less focus on mathematical foundations and more on applications (in R). | ||

+ | |||

+ | ---- | ||

+ | |||

+ | == Online Machine Learning Resources == | ||

+ | * [https://www.coursera.org/learn/machine-learning ML course by Stanford computer scientist Andrew Ng (requires Coursera signup --> free enrollment)] | ||

+ | * [http://www.johnwittenauer.net/machine-learning-exercises-in-python-part-1/ Andrew Ng ML course exercises for Python] | ||

+ | * [http://setosa.io/ev/markov-chains/ Markov Chains explained visually] | ||

+ | * [https://www.mathworks.com/matlabcentral/fileexchange/55826-pattern-recognition-and-machine-learning-toolbox Mo Chen's toolbox] for all the methods discussed in the book: Pattern Recognition and Machine Learning by C. Bishop | ||

+ | * [http://www.arxiv-sanity.com arXiv Sanity Preserver], an interface to the machine learning section of arXiv; lists recent papers most discussed in social media, and gives similar paper recommendations. |

## Latest revision as of 20:14, 11 October 2017

Our Journal Club slides about ML will be posted here.

- Machine learning introduction - Gunnar
- Linear Regression - Sisi
- Linear Classification - Parisa
- Markov Chain Montre Carlo - Gunnar
- Introduction to PCA and ICA - Cindy
- Expectation Maximization - Brandon and Jonathan
- Hidden Markov Models - Parisa
- Kalman filter - Josh
- Rate-based networks & error back-propagation learning - Scott
- Support Vector Machines - Jerry
- Deep belief networks - Tiger

## Machine learning books

- Tom Mitchell's book
- Smola & Vishwanathan's book
- Daume's book
- Murphy's book
- Shalev-Shwartz & Ben-David's book
- Nilsson's book
- Harrington's book
- Ian Goodfellow, Yoshua Bengio, and Aaron Courville's book
- Hastie, Tibshirani, and Friedman's book; also James, Witten, Hastie, and Tibshirani's book, which has less focus on mathematical foundations and more on applications (in R).

## Online Machine Learning Resources

- ML course by Stanford computer scientist Andrew Ng (requires Coursera signup --> free enrollment)
- Andrew Ng ML course exercises for Python
- Markov Chains explained visually
- Mo Chen's toolbox for all the methods discussed in the book: Pattern Recognition and Machine Learning by C. Bishop
- arXiv Sanity Preserver, an interface to the machine learning section of arXiv; lists recent papers most discussed in social media, and gives similar paper recommendations.