Manual Solution For Machine Learning
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STA 414/2104: Statistical Methods for Machine Learning and Data Mining STA 414/2104: Statistical Methods for Machine Learning and Data Mining (Jan-Apr 2013) All material handed in is now available for pickup. I'll be in my office 2:00-2:30 on Wednesday, April 24. (Later times will be announced here later.) Links to the papers grad students presented are. Instructor:, Office: SS6026A, Phone: (416) 978-4970, Email: Office Hours: Fridays 1:30-2:30pm, in SS6026A.
Lectures: Tuesdays 12:10-2:00pm and Thursdays 12:10-1:00pm, in MS 3171. The first lecture is January 8. The last lecture is April 4.
There are no lectures February 19 and 21 (Reading Week). Graduate students in STA 2104 will make presentations on Tuesday April 9 (12:10-2:00pm) and Thursday April 11 (12:10-1:00pm). Evaluation: For undergraduates in STA 414: 50% Four assignments, worth 10%, 10%, 15%, and 15%. 50% Three 50-minutes tests, worth 16%, 17%, and 17%, held in lecture time on February 7, March 14, and April 4. For graduate students in STA 2104: 46% Four assignments, worth 10%, 10%, 13%, and 13%. 44% Three 50-minutes tests, worth 14%, 15%, and 15%, held in lecture time on February 7, March 14, and April 4.
10% A 12-minute individual presentation on a conference paper that you have read. The assignments are to be done by each student individually. Any discussion of the assignments with other students should be about general issues only, and should not involve giving or receiving written, typed, or emailed notes.
Manual Solution For Machine Learning Tutorial
Graduate students may discuss the conference paper that they will present with anyone, in order to help understand it, but they must prepare their presentation themselves. (They may if they wish solicit feedback from others after a practice run of their presentation.) Textbook: The book Machine Learning: A Probabilistic Perspective, by Kevin P. Murphy, is strongly recommended (but not required). I will be posting lecture slides, and links to online references. Computing: Assignments will be done in R.
Statistics Graduate students will use the Statistics research computing system. Undergraduates and graduate students from other departments will use.
You can on CQUEST if you're an undergraduate student in this course (you need to fill out a form if you're a grad student). You can also use R on your home computer by downloading it for free from. From that site, here is the. Some useful on-line references, by David MacKay., by Trevor Hastie, Robert Tibshirani, and Jerome Friedman., by Carl Edward Rasmussen and Christopher K.
Lecture slides: Note that slides may be updated as mistakes are corrected, or the amount of material covered in the week becomes apparent. (Introduction: Murphy's Ch. 1) (Linear basis functions, penalties, cross-validation) (Introduction to Bayesian methods) (Conjugate priors: Murphy's Ch. 3, Bayesian linear basis function models: Murphy's Ch. 7) (Gaussian process models: Murphy's Ch.
15) (Clustering, mixture models: Murphy's Ch. 11) (More on Gaussian mixtures, EM: Murphy's Ch. 11) (Neural networks: Murphy's Section 16.5) (Dimensionality reduction, factor analysis: Murphy's Chapter 12, Section 28.3.2) (Classification, generative and discriminative models: Murphy's Section 3.5, Chapter 8) (Support Vector Machines, Kernel PCA: Murphy's Chapter 14) Practice problem sets: (now with some slight errors corrected), and the., and the., and the. Assignments: Assignment 1:. Data set 1:,. Data set 2:,.
Solution:, and, and, and, and,. Assignment 2:, Solution:,. Assignment 3:, Datasets:,.