Adam Kalai Probabilistic and On-line Methods in Machine Learning Degree Type: Ph.D. in Computer Science Advisor(s): Avrim Blum Graduated: May 2001 Keywords: Algorithms, on-line algorithms, machine learning, O.S. Abstract On the surface, the three on-line machine learning problems analyzed in this thesis may seem unrelated. The first is an on-line investment strategy introduced by Tom Cover. We begin with a simple analysis that extends to the case of fixed-percentage transaction costs. We then describe an efficient implementation that runs in time polynomial in the number of stocks. The second problem is k-fold cross validation, a popular technique in machine learning for estimating the error of a learned hypothesis. We show that this is a valid technique by comparing it to the hold-out estimate. Finally, we discuss work towards a dynamically-optimal adaptive binary search tree algorithm. Thesis Committee Avrim Blum (Chair) Manuel Blum Danny Sleator Santosh Vempala Randy Bryant, Head, Computer Science Department James Morris, Dean, School of Computer Science Thesis Document CMU-CS-01-132.pdf (577.28 KB) (44 pages) Copyright Notice Return to Degrees List Thesis Repositories SCS Technical Reports Kilthub Proquest (requires CMU login)