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Ideas for Spring 2016
Elisa Ferracane edited this page Jan 19, 2016
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###Topics Semi-ordered list of topics we'd like to cover in the Spring 2016 research course (please be as specific as possible to narrow down the scope):
- Linear Algebra
- Matrix Inverse
- Determinants
- Eigenvectors + EigenValues
- Singular Value Decomposition
- Probabilities & Statistics
- Discrete Distributions
- Multinomial Logit/Probit
- Chain Rule
- Bayesian statistics:
- Posterior/prior probability
- Khan Academy: good resource for a solid understanding of basic concepts. They have a course on linear algebra here.
- Jason's Applied NLP course
- Andrew Ng's Machine Learning course at Stanford (not the coursera course)
- Metacademy gives you a roadmap of what you need to learn before understanding a concept, with links to other resources
- Video lectures by top ML researchers from Machine Learning Summer School (Cambridge 2009)