SF2935 MODERN METHODS OF STATISTICAL LEARNING
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The aim of the course is to introduce some of the basic algorithms and
methods of statistical learning theory at an intermediate level. These are essential tools for making sense of the vast
and complex data sets (c.f. big data) that have emerged in fields ranging from biology to marketing to astrophysics in the past decades. The course presents some of the most important modeling and prediction techniques, along with some relevant applications. Topics presented include classification, artificial neural networks with exponential families of distributions, Bayesian learning, resampling methods, tree-based methods, and clustering, highdimensional data.
This is a good part of the background required for a career in data analytics. The course is lectured and examined in English.
Recommended prerequisities:
- SF 1901 or equivalent course of the type 'a first course in probability and statistics (for engineers)'
- Multivariate normal distribution
- Basic differential and integral calculus, basic linear algebra.
- Proficiency in R (optional)
Lecturers:
Timo Koski (examiner) homepage and contact information
Daniel Berglund
email
Jimmy Olsson
email
Tetyana Pavlenko
email
Course literature::
- G. James, D. Witten, T. Hastie, R. Tibshirani: An introduction to Statistical Learning web page for the book (acronym below: ISL) by the publisher Springer
- some sections of: Avrim Blum, John Hopcroft and Ravindran Kannan: Foundations of Data Science pdf from the authors
- Supplementary reading and material from the lectures
web page
The textbook ISL can be bought at THS Kårbokhandel, Drottning Kristinas väg 15-19.
Examination:
- Computer homework (3.0 cu): there are two compulsory computer projects/home work that are to be submitted as written reports. Each report should be
produced by a group of two (2) students. The reports are
examined at the Project presentation seminars on TBA of November and TBA of December, 2017. The computer homework will be graded with Pass/Fail.
- There will be a written exam (4.5 cu), consisting of five (5) assignments, on Thursday 11th of January, 2018, 08-
13.00 hrs.
- Bonus for summaries of the guest lectures and papers
An individually written summary (max. 2xA4) of the scientific contents of
a guest lecture (2 x E.A), (LK) (SV) will provide one (1) bonus point for the exam. In addition can bonus points be gained by written summaries of at most two scientific articles (TBA). The summary is expected to be based on the students' own notes taken during the lecture or reading of a paper.
The summaries must be submitted with deadline Fri 16th of December at 15 hrs. The bonus points are valid for the ordinary Exam on Thursday 11th of January, 2018, and in the re-examination on (TBA). The maximum number of bonus points to be gained is five (5).
- Important: Students, who are admitted to a course and who intend to attend it, need to activate themselves in
Rapp . Log in there using your KTH-id and click on "activate" (aktivera). The codename for sf2935 in Rapp is statin17.
Registration for the written examination via "mina sidor"/"my pages"
is required.
Grades are set according to the quality of the written examination.
Grades are given in the range A-F, where A is the best and F means
failed.
Fx means that you have the right to a complementary examination
(to reach the grade E).
The criteria for Fx is a grade F on the exam, and that an isolated part
of the course can be
identified where you have shown a particular lack of
knowledge and that the examination after a complementary examination on
this
part can be given the grade E.
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Supervision for computer projects
Teaching assistant Daniel Berglund will be available for advice and supervision for computer projects at times
to be announced.
Plan of lectures
KTH Social .
(TK=Timo Koski, JO= Jimmy Olsson TP=Tetyana Pavlenko, DB= Daniel Berglund, EA= Erik Aurell, LK= Lukas Käll, SV= Sara Väljamets, ISL =
the textbook, FoDSc= Foundations of Data Science )
The addresses of the lecture halls and guiding instructions are found by clicking on the Hall links below
Day |
Date |
Time |
Hall |
Topic |
Lecturer |
Tue |
31/10 |
13-15 |
Q2
|
Lecture 1: Introduction to statistical learning (perceptrons, feedforward neural nets) and the course work.
Introduction to computer projects Chapter 2 in ISL.
|
TK |
Thu |
02/11
|
08-10 |
Q2 |
Lecture 2:
Supervised Learning Part I. Chapter 4 in ISL
|
TP
|
Fri
|
03/11
|
10-12 |
Q2 |
Lecture 3: Supervised Learning Part II. Chapter 4 in ISL
|
TP
|
Tue
|
07/11 |
14-16 |
Q2 |
Lecture 4: Bootstrap
|
TP
|
Thu
|
09/11 |
08-10 |
Q2 |
Lecture 5: Introduction to R in a computer class Chapter 2 in ISL |
DB
|
Fri
|
10/11 |
10-12 |
Q2 |
Lecture 6: feedforward neural networks as statistical models I, handouts. |
TK
|
Tue
|
14/11 |
13-15 |
Q2 |
Lecture 7: feedforward neural networks as statistical models II, Support vector machines (SVM) I Chapter 9 in IS
|
TK
|
Thu
|
16/11 |
08-10 |
Q2 |
Lecture 8: SVM II Chapter 9 in ISL
|
TK
|
Fri
|
17/11 |
08-10 |
Q2 |
Lecture 9: Bayesian Learning I, Handouts
|
TK
|
Tue
|
21/11 |
13-15 |
D3
|
Lecture 10:Project presentation seminar 1
|
TK
|
Thu
|
23/11 |
08-10 |
Q2 |
Lecture 11:Bayesian Learning II Handouts
|
TK
|
Fri
|
24/11 |
10-12 |
E3 |
Lecture 12: Guest Lecture: TBA
|
SV
|
Tue
|
28/11 |
13-15 |
E3 |
Lecture 13: Unsupervised learning part I. Chapter 10 in ISL
|
TK
|
Thu
|
30/11 |
08-10 |
Q2 |
Lecture 14: Unsupervised learning part II. Chapter 10 in ISL
|
TK
|
Fri
|
01/12 |
10-12 |
E3
|
Lecture 15: GUEST LECTURE: An insight into computational and statistical mass spectrometry-based proteomics |
LK
|
Tue
|
05/12 |
13-15 |
E3 |
Lecture 16: Random Trees and Classification. Chapter 8 in ISL
|
JO
|
Thu
|
07/12 |
08-10 |
Q2 |
Lecture 17: Geometry of High-Dimensional Spaces, Gaussians in high Dimensions, Johnson -Lindenstrauss Lemma, Separating Gaussians.Part I, Chap.2 in FoDSc. |
TK
|
Fri
|
08/12 |
10-12 |
Q2
|
Lecture 18: Guest Lecture: Inferring protein structures from many protein sequences I
|
EA
|
Tue
|
12/12 |
13-15 |
E3
|
Lecture 19: Guest Lecture: Inferring protein structures from many protein sequences II
|
EA
|
Fri
|
14/12 |
08-10 |
Q2
|
Lecture 20: Geometry of High-Dimensional Spaces, Gaussians in high Dimensions, Johnson -Lindenstrauss Lemma, Separating Gaussians, Part II. Chap.2 in FoDSc. |
TK
|
Fri
|
16/12 |
10-12 |
E51
|
Lecture 21:Project presentation seminar 2 |
TK, TP
|
Thu
|
11/01/2018 |
TBA |
Q24, Q26, Q22 |
Exam |
TK
|
Xy
|
xx/xx/2018 |
TBA |
TBA |
Re-exam |
TK
|
Welcome, we hope you will enjoy the course (and learn (sic) a lot)! Tetyana, Jimmy & Timo
To course
web page
Published by: Timo Koski
Updated:20176-10-12 |
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