Let A be finite set equipped with a probability distribution P, and let M be a “mass” function on A. A characterization is given for the most efficient way in which A n can be covered using spheres of a fixed radius. A covering is a subset C n of A n with the property that most of the elements of A n are within some fixed distance from at least one element of C n , and “most of the elements” means a set whose probability is exponentially close to one (with respect to the product distribution P n ). An efficient covering is one with small mass M n (C n ). With different choices for the geometry on A, this characterization gives various corollaries as special cases, including Marton’s error-exponents theorem in lossy data compression, Hoeffdi...
Abstract: At several places in the literature there are indications that many tests are optimal in t...
We find tight upper and lower bounds on the growth rate for the covering numbers of functions of bou...
We establish optimal Statistical Query (SQ) lower bounds for robustly learning certain families of d...
Suppose A is a finite set, let P be a discrete probability distribution on A, and let M be an arbitr...
Suppose A is a finite set equipped with a probability measure P and let M be a ``mass'' function on ...
Abstract — Suppose A is a finite set, let P be a discrete dis-tribution on A, and let M be an arbitr...
Suppose A is a finite set, let P be a discrete distribution on A, and let M be an arbitrary "mass" f...
The hypothesis that high dimensional data tends to lie in the vicinity of a low di-mensional manifol...
A judicious application of the Berry-Esseen theorem via suitable Augustin information measures is de...
We state and solve a general version of the rate-distortion problem. We show that its answer contain...
This paper is concerned with the lossy compression of general random variables, specifically with ra...
The small sample universal hypothesis testing problem, where the number of samples n is smaller than...
We evaluate the performance of several multiterminal detection systems, each of which comprises a ce...
Abstract—In this paper, we study the covering numbers of the space of convex and uniformly bounded f...
We introduce a quantitative version of Property A in order to estimate the Lp-compressions of a metr...
Abstract: At several places in the literature there are indications that many tests are optimal in t...
We find tight upper and lower bounds on the growth rate for the covering numbers of functions of bou...
We establish optimal Statistical Query (SQ) lower bounds for robustly learning certain families of d...
Suppose A is a finite set, let P be a discrete probability distribution on A, and let M be an arbitr...
Suppose A is a finite set equipped with a probability measure P and let M be a ``mass'' function on ...
Abstract — Suppose A is a finite set, let P be a discrete dis-tribution on A, and let M be an arbitr...
Suppose A is a finite set, let P be a discrete distribution on A, and let M be an arbitrary "mass" f...
The hypothesis that high dimensional data tends to lie in the vicinity of a low di-mensional manifol...
A judicious application of the Berry-Esseen theorem via suitable Augustin information measures is de...
We state and solve a general version of the rate-distortion problem. We show that its answer contain...
This paper is concerned with the lossy compression of general random variables, specifically with ra...
The small sample universal hypothesis testing problem, where the number of samples n is smaller than...
We evaluate the performance of several multiterminal detection systems, each of which comprises a ce...
Abstract—In this paper, we study the covering numbers of the space of convex and uniformly bounded f...
We introduce a quantitative version of Property A in order to estimate the Lp-compressions of a metr...
Abstract: At several places in the literature there are indications that many tests are optimal in t...
We find tight upper and lower bounds on the growth rate for the covering numbers of functions of bou...
We establish optimal Statistical Query (SQ) lower bounds for robustly learning certain families of d...