AbstractIn this paper, we prove two general theorems on monotone Boolean functions which are useful for constructing a learning algorithm for monotone Boolean functions under the uniform distribution.A monotone Boolean function is called fair if it takes the value 1 on exactly half of its inputs. The first result proved in this paper is that a single variable function f(x)=xi has the minimum correlation with the majority function among all fair monotone functions. This proves the conjecture by Blum et al. (1998, Proc. 39th FOCS, pp. 408–415) and improves the performance guarantee of the best known learning algorithm for monotone Boolean functions under the uniform distribution they proposed.Our second result is on the relationship between t...
This thesis is concerned with the study of the noise sensitivity of boolean functions and its applic...
The noise sensitivity of a Boolean function f: {0,1}^n - > {0,1} is one of its fundamental propertie...
AbstractWe give an algorithm that with high probability properly learns random monotone DNF with t(n...
AbstractIn this paper, we prove two general theorems on monotone Boolean functions which are useful ...
We consider the problem of learning monotone Boolean functions over under the uniform distributi...
In this paper, we prove two general theorems on monotone Boolean functions which are useful for con...
In this note we prove that a monotone boolean function computable by a decision tree of size s has a...
We give an algorithm that learns any monotone Boolean function f: {−1, 1}n → {−1, 1} to any constant...
We give an algorithm that learns any monotone Boolean function f: f1; 1gn! f1; 1g to any constant ac...
Monotone Boolean functions, and the monotone Boolean circuits that compute them, have been intensive...
A longstanding lacuna in the field of computational learning theory is the learnability of succinctl...
Monotone Boolean functions, and the monotone Boolean circuits that compute them, have been intensive...
Over the years a range of positive algorithmic results have been obtained for learning various class...
© Ronitt Rubinfeld and Arsen Vasilyan. The noise sensitivity of a Boolean function f : {0, 1}n → {0,...
Much work has been done on learning various classes of “simple ” monotone functions under the unifor...
This thesis is concerned with the study of the noise sensitivity of boolean functions and its applic...
The noise sensitivity of a Boolean function f: {0,1}^n - > {0,1} is one of its fundamental propertie...
AbstractWe give an algorithm that with high probability properly learns random monotone DNF with t(n...
AbstractIn this paper, we prove two general theorems on monotone Boolean functions which are useful ...
We consider the problem of learning monotone Boolean functions over under the uniform distributi...
In this paper, we prove two general theorems on monotone Boolean functions which are useful for con...
In this note we prove that a monotone boolean function computable by a decision tree of size s has a...
We give an algorithm that learns any monotone Boolean function f: {−1, 1}n → {−1, 1} to any constant...
We give an algorithm that learns any monotone Boolean function f: f1; 1gn! f1; 1g to any constant ac...
Monotone Boolean functions, and the monotone Boolean circuits that compute them, have been intensive...
A longstanding lacuna in the field of computational learning theory is the learnability of succinctl...
Monotone Boolean functions, and the monotone Boolean circuits that compute them, have been intensive...
Over the years a range of positive algorithmic results have been obtained for learning various class...
© Ronitt Rubinfeld and Arsen Vasilyan. The noise sensitivity of a Boolean function f : {0, 1}n → {0,...
Much work has been done on learning various classes of “simple ” monotone functions under the unifor...
This thesis is concerned with the study of the noise sensitivity of boolean functions and its applic...
The noise sensitivity of a Boolean function f: {0,1}^n - > {0,1} is one of its fundamental propertie...
AbstractWe give an algorithm that with high probability properly learns random monotone DNF with t(n...