SML

STAT 675, Fall 2015

Darren Homrighausen

Syllabus


Lecture:

Date and Time: Tuesday and Thursday, 2:00 - 3:15 pm
Location: Statistics 006

Office hours: By appointment (please don't hesitate to ask), Statistics 204


Statistical Machine Learning combines methodology with theoretical foundations and computational aspects. Though one person's theory is another person's application, we will try and preferentially focus on applications and methodology. Theorems will be presented selectively together with practical aspects of methodology and intuition to help students develop tools for their own research.


Homeworks:

HOMEWORK 1 Theory (pdf)
HOMEWORK 1 Applied (pdf)
HOMEWORK 2 (pdf)
HOMEWORK 3 (pdf)
R code from previous class the might be helpful (ignore parts about SVM and e1071 for now)

HOMEWORK 4 (pdf)

Kaggle: Rossmann Stores


Scribe: Scribe template Scribe style file Scribe references (bibtexing solutions)

Scribe 2
Scribe 3
Scribe 4
Scribe 5
Scribe 6
Scribe 7
Scribe 8
Scribe 9
Scribe 10
Scribe 11
Scribe 12
Scribe 13
Scribe 14
Scribe 15
Scribe 16
Scribe 17
Scribe 18
Scribe 19
Scribe 20
Scribe 21
Scribe 23
Scribe 24
Scribe 25
Scribe 26
Scribe 27

Lectures: Lecture formatting .sty Lecture notation .sty (compiling lectures)

PRELIMINARY MATERIALS

LINEAR MODEL INTRO
LINEAR MODEL Risk
LINEAR MODEL: Model Selection
LINEAR MODEL: Regularization
LINEAR MODEL: Additional Topics
CLASSIFICATION CLASSIFICATION: TREES BAGGING SVMs 1 SVMs 2 BOOSTING 1 BOOSTING 2 BOOSTING 3 NEURAL NETWORKS 1
NEURAL NETWORKS 2
NEURAL NETWORKS 3

NONLINEAR EMBEDDINGS
H CLUSTERING
Some Theory

Short Presentations: (Example: Refitted Lasso )


Scribe Schedule:

Lecture 2: Zeke
Lecture 3: Ahmed
Lecture 4: Soo Young
Lecture 5: Veronica
Lecture 6: Ryan
Lecture 7: Yewon
Lecture 8: Lyuou
Lecture 9: Ahmed
Lecture 10: Ryan
Lecture 11: Veronica
Lecture 12: Zeke
Lecture 13: Soo Young
Lecture 14: Yewon
Lecture 15: Zeke
Lecture 16: Veronica
Lecture 17: Ryan
Lecture 18: Soo Young
Lecture 19: Ahmed
Lecture 20: Lyuou
Lecture 21: Veronica
Lecture 22: Zeke
Lecture 23: Soo Young
Lecture 24: Yewon
Lecture 25: Lyuou
Lecture 26: Ryan
Lecture 27: Ahmed