开源软件名称(OpenSource Name): dlab-berkeley/MachineLearningWG开源软件地址(OpenSource Url): https://github.com/dlab-berkeley/MachineLearningWG开源编程语言(OpenSource Language):
HTML
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开源软件介绍(OpenSource Introduction): Machine Learning Working Group, Fall 2018
We meet on alternating Wednesdays from 3-5pm at D-Lab (Barrows 356). We have no expectation of prior machine learning experience, and simply go through one algorithm a meeting, with about 30 minutes each in R & Python. We also incorporate lightning talks and other guest presentations throughout our meetings.
Fall 2018 - unsupervised methods
We are always looking for student/staff/faculty presenters. Please contact us if you are interested!
More information on the D-Lab MLWG website
Previous Semesters
Spring 2018
k-nearest neighbors
decision tree
random forest
gradient boosting
elastic net
Fall 2017
basics of neural networks for image processing
Spring 2017
k-nearest neighbors
stepwise regression
linear and polynomial regression, smoothing splines
multivariate adaptive regression splines and generalized additive models
support vector machines
neural networks.
Fall 2016
decision trees, random forests, penalized regression, and boosting
Resources
Books:
Intro to Statistical Learning by James et al. (free pdf) (Amazon)
Applied Predictive Modeling by Max Kuhn (Amazon)
Python Data Science Handbook by Jake VanderPlas (online version)
Elements of Statistical Learning by Hastie et al. (free pdf) (Amazon)
Modern Multivariate Statistical Techniques by Alan Izenman (Amazon)
Differential Equations and Linear Algebra by Stephen Goode and Scott Annin (Amazon)
Statistical Learning with Sparsity: The Lasso and Generalizations by Trevor Hastie, Robert Tibshirani, and Martin Wainwright (free pdf) (Amazon) and
Help:
Courses at Berkeley:
Stat 154 - Statistical Learning
CS 189 / CS 289A - Machine Learning
COMPSCI x460 - Practical Machine Learning with R [UC Berkeley Extension]
PH 252D - Causal Inference
PH 295 - Big Data
PH 295 - Targeted Learning for Biomedical Big Data
Online classes:
Other Campus Groups:
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