Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer Science, 2012.Cataloged from PDF version of thesis.Includes bibliographical references (p. 119-123).A probability distribution over {0, 1}' is k-wise independent if its restriction to any k coordinates is uniform. More generally, a discrete distribution D over E1 x ... x E, is called (non-uniform) k-wise independent if for any subset of k indices {ii, . . . , ik} and for any zi E Ei 1, .. , Zk E Eik , PrX~D [Xi 1 - - -Xi, = Z1 .. z] = PrX-D[Xi 1 = zi] ... PrX~D [Xik = Zk]. k-wise independent distributions look random "locally" to an observer of only k coordinates, even though they may be far from random "globally". Because of this key featur...
Distribution testing deals with what information can be deduced about an unknown distribution over $...
AbstractThe algorithmic theory of randomness is well developed when the underlying space is the set ...
Distribution testing deals with what information can be deduced about an unknown distribution over $...
A distribution D over Σ1× ⋯ ×Σ n is called (non-uniform) k-wise independent if for any set of k indi...
A discrete distribution D over Σ1 × · · · × Σn is called (non-uniform) k-wise independent if for...
A probability distribution over {0, 1}n is k-wise independent if its restriction to any k coordinate...
In this work, we consider the problems of testing whether a distribution over{0, 1} n is k-wise or (...
In this work, we consider the problems of testing whether a distribution over {0, 1} n is k-wise (re...
A probability distribution over {-1, 1}^n is (epsilon, k)-wise uniform if, roughly, it is epsilon-cl...
Given access to independent samples of a distribution A over [n] × [m], we show how to test whether ...
Given access to independent samples of a distribution A over [n] × [m], we show how to test whether ...
Given access to independent samples of a distribution A over [n] × [m], we show how to test whether ...
The algorithmic theory of randomness is well developed when the underlying space is the set of finit...
A 0-1 probability space is a probability space(\Omega ; 2\Omega ; P ), where the sample space\Ome...
Given access to independent samples of a distributionA over [n] [m], we show how to test whether th...
Distribution testing deals with what information can be deduced about an unknown distribution over $...
AbstractThe algorithmic theory of randomness is well developed when the underlying space is the set ...
Distribution testing deals with what information can be deduced about an unknown distribution over $...
A distribution D over Σ1× ⋯ ×Σ n is called (non-uniform) k-wise independent if for any set of k indi...
A discrete distribution D over Σ1 × · · · × Σn is called (non-uniform) k-wise independent if for...
A probability distribution over {0, 1}n is k-wise independent if its restriction to any k coordinate...
In this work, we consider the problems of testing whether a distribution over{0, 1} n is k-wise or (...
In this work, we consider the problems of testing whether a distribution over {0, 1} n is k-wise (re...
A probability distribution over {-1, 1}^n is (epsilon, k)-wise uniform if, roughly, it is epsilon-cl...
Given access to independent samples of a distribution A over [n] × [m], we show how to test whether ...
Given access to independent samples of a distribution A over [n] × [m], we show how to test whether ...
Given access to independent samples of a distribution A over [n] × [m], we show how to test whether ...
The algorithmic theory of randomness is well developed when the underlying space is the set of finit...
A 0-1 probability space is a probability space(\Omega ; 2\Omega ; P ), where the sample space\Ome...
Given access to independent samples of a distributionA over [n] [m], we show how to test whether th...
Distribution testing deals with what information can be deduced about an unknown distribution over $...
AbstractThe algorithmic theory of randomness is well developed when the underlying space is the set ...
Distribution testing deals with what information can be deduced about an unknown distribution over $...