10-705/36-705 Intermediate Statistics

Instructor: Larry Wasserman
Time: MWF 12:30 - 1:20
Place: Scaife 125

Office Hour: Mondays 1:30 - 2:30 Baker Hall 228a

Announcements:

(updated Dec 1)

Final Exam: Monday December 12, 8:30-11:30 a.m., DH 1212


PRACTICE EXAM



End of Announcements


TA: Wanjie Wang (wwang@stat.cmu.edu)
Office hours: Tuesdays 4:30-5:30
Place: FMS 320

TA: Xiaolin Yang (xyang@stat.cmu.edu)
Office hours: Wednesdays 3:00-4:00
Place: FMS 320

TA: Liang Xiong (excelly@gmail.com)
Office hours: Thursdays 10:00 - 11:00 a.m.
Place: FMS 320

Course Assistant: Mari-Alice McShane mcshane@stat.cmu.edu
Office: Baker Hall 229K

Course description

This course will cover the fundamentals of theoretical statistics. We will cover Chapters 5 -- 10 from Casella and Berger plus some supplementary material.
This course is excellent preparation for advanced work in statistics and machine learning.

Textbook: Casella, G. and Berger, R. L. (2002). Statistical Inference, 2nd ed.

Other Recommended Texts:

Wasserman, L. (2004). All of Statistics: A concise course in statistical inference.
Bickel, P. J. and Doksum, K. A. (1977). Mathematical Statistics.
Rice, J. A. (1977). Mathematical Statistics and Data Analysis, Second Edition.

Prerequisites

I assume that you know the material in Chapters 1-4 of Casella and Berger (basic probability theory).

The syllabus includes information about assignments, exams and grading.

Assignments

Assignments are due on Thursdays at 3:00 p.m. Hand in the assignment to Mari-Alice McShane in Baker Hall 229K.
You can also email them to her. Send a PDF file to: mcshane@stat.cmu.edu. Make sure you put "Stat 705 Assigment" in the subject line.

Solutions

Homework 1 SOLUTIONS
Homework 2 SOLUTIONS
Homework 3 SOLUTIONS
SOLUTIONS for Test 1
Homework 4 SOLUTIONS
Homework 5 SOLUTIONS
Homework 6 SOLUTIONS
Test 2 SOLUTIONS
Homework 7 SOLUTIONS
Homework 8 SOLUTIONS
Test 3 SOLUTIONS
Homework 9 SOLUTIONS
Homework 10 SOLUTIONS

Lecture Notes

Download the notes and bring them to class.
Course Calendar
Week of: Mon Wed Thursday Friday
August 29 Review   Review, Inequalities     Inequalities
September 5 NO CLASS   Inequalities, O_P   Homework 1   VC Theory
September 12 Convergence Convergence Homework 2   Test I
September 19 Convergence Sufficiency Homework 3   Sufficiency
September 26 Point Estimation Point Estimation Homework 4   Minimax Theory
October 3 Minimax Theory Asymptotics Homework 5   Asymptotics
October 10 Asymptotics Review   Test II
October 17 Testing Testing Homework 6   MID-SEMESTER BREAK
October 24 Testing Confidence Intervals Homework 7 Confidence Intervals
October 31 Nonparametric Nonparametric   Review
November 7 Test III No Class Homework 8 The Bootstrap
November 14 The Bootstrap Bayesian Inference Homework 9 Bayesian Inference
November 21 NO CLASS NO CLASS   NO CLASS
November 28 Prediction Prediction Homework 10 Model Selection
December 5 30 Model Selection Causation   Review