This thesis focuses on applications of classical tools from probability theory and convex analysis such as limit theorems to problems in theoretical computer science, specifically to pseudorandomness and learning theory. At first look, limit theorems, pseudorandomness and learning theory appear to be disparate subjects. However, as it has now become apparent, there's a strong connection between these questions through a third more abstract question: what do random objects look like. This connection is best illustrated by the study of the spectrum of Boolean functions which directly or indirectly played an important role in a plethora of results in complexity theory. The current thesis aims to take this program further by drawing on a variet...
The article further develops Kolmogorov's algorithmic complexity theory. The definition of randomnes...
Abstract: We study a time bounded variant of Kolmogorov complexity. This motion, together with unive...
A leading idea is to apply techniques from verification and programming theory to machine learning a...
This thesis focuses on applications of classical tools from probability theory and convex analysis s...
A fresh look at the question of randomness was taken in the theory of computing: A distribution is p...
This dissertation involves the interplay between structure, randomness, and pseudorandomness in theo...
We describe new ways of constructing pseudorandom generators for Boolean functions that satisfy cert...
In combinatorics, the probabilistic method is a very powerful tool to prove the existence of combina...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2003.Includes bibliogr...
This thesis is concerned with the study of the noise sensitivity of boolean functions and its applic...
In this dissertation we consider two different notions of randomness and their applica-tions to prob...
There has been a common perception that computational complexity is a theory of "bad news" because i...
This thesis studies computational complexity in concrete models of computation. We draw on a range o...
1 Introduction Recently there has been exciting progress in our understanding of algorithmicrandomne...
In this dissertation we consider two different notions of randomness and their applications to probl...
The article further develops Kolmogorov's algorithmic complexity theory. The definition of randomnes...
Abstract: We study a time bounded variant of Kolmogorov complexity. This motion, together with unive...
A leading idea is to apply techniques from verification and programming theory to machine learning a...
This thesis focuses on applications of classical tools from probability theory and convex analysis s...
A fresh look at the question of randomness was taken in the theory of computing: A distribution is p...
This dissertation involves the interplay between structure, randomness, and pseudorandomness in theo...
We describe new ways of constructing pseudorandom generators for Boolean functions that satisfy cert...
In combinatorics, the probabilistic method is a very powerful tool to prove the existence of combina...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2003.Includes bibliogr...
This thesis is concerned with the study of the noise sensitivity of boolean functions and its applic...
In this dissertation we consider two different notions of randomness and their applica-tions to prob...
There has been a common perception that computational complexity is a theory of "bad news" because i...
This thesis studies computational complexity in concrete models of computation. We draw on a range o...
1 Introduction Recently there has been exciting progress in our understanding of algorithmicrandomne...
In this dissertation we consider two different notions of randomness and their applications to probl...
The article further develops Kolmogorov's algorithmic complexity theory. The definition of randomnes...
Abstract: We study a time bounded variant of Kolmogorov complexity. This motion, together with unive...
A leading idea is to apply techniques from verification and programming theory to machine learning a...