Hardness results for maximum agreement problems have close connections to hardness results for proper learning in computational learning theory. In this paper we prove two hardness results for the problem of finding a low degree polynomial threshold function (PTF) which has the maximum possible agreement with a given set of labeled examples in Rn × {−1, 1}. We prove that for any constants d> 1, > 0, • Assuming the Unique Games Conjecture, no polynomial-time algorithm can find a degree-d PTF that is consistent with a ( 12 + ) fraction of a given set of labeled examples in R n × {−1, 1}, even if there exists a degree-d PTF that is consistent with a 1 − fraction of the examples. • It is NP-hard to find a degree-2 PTF that is consisten...
We study the average-case hardness of the class NP against deterministic polynomial time algorithms....
NP = PCP(log n; 1) and related results crucially depend upon the close connection between the probab...
Given any linear threshold function f on n Boolean vari-ables, we construct a linear threshold funct...
Hardness results for maximum agreement problems have close connections to hardness results for prope...
All in-text references underlined in blue are linked to publications on ResearchGate, letting you ac...
AbstractWe address the computational complexity of learning in the agnostic framework. For a variety...
We give the first representation-independent hardness results for PAC learning intersections of half...
We show that for several natural problems of interest, complexity lower bounds that are barely non-t...
We show that for several natural problems of interest, complexity lower bounds that are barely non-t...
AbstractWe consider the complexity of properly learning concept classes, i.e. when the learner must ...
Given a function f mapping n-variate inputs from a nite eld F into F, we consider the task of recons...
Much work has been done on learning various classes of “simple ” monotone functions under the unifor...
We give new upper and lower bounds on the degree of real multivariate polynomials whi h sign-represe...
AbstractWe describe a new approach for understanding the difficulty of designing efficient learning ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2002.Includes bibliogr...
We study the average-case hardness of the class NP against deterministic polynomial time algorithms....
NP = PCP(log n; 1) and related results crucially depend upon the close connection between the probab...
Given any linear threshold function f on n Boolean vari-ables, we construct a linear threshold funct...
Hardness results for maximum agreement problems have close connections to hardness results for prope...
All in-text references underlined in blue are linked to publications on ResearchGate, letting you ac...
AbstractWe address the computational complexity of learning in the agnostic framework. For a variety...
We give the first representation-independent hardness results for PAC learning intersections of half...
We show that for several natural problems of interest, complexity lower bounds that are barely non-t...
We show that for several natural problems of interest, complexity lower bounds that are barely non-t...
AbstractWe consider the complexity of properly learning concept classes, i.e. when the learner must ...
Given a function f mapping n-variate inputs from a nite eld F into F, we consider the task of recons...
Much work has been done on learning various classes of “simple ” monotone functions under the unifor...
We give new upper and lower bounds on the degree of real multivariate polynomials whi h sign-represe...
AbstractWe describe a new approach for understanding the difficulty of designing efficient learning ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2002.Includes bibliogr...
We study the average-case hardness of the class NP against deterministic polynomial time algorithms....
NP = PCP(log n; 1) and related results crucially depend upon the close connection between the probab...
Given any linear threshold function f on n Boolean vari-ables, we construct a linear threshold funct...