In recent years, a number of probabilistic inference and counting techniques have been proposed that exploit pairwise independent hash functions to infer properties of succinctly defined high-dimensional sets. While providing desirable statistical guarantees, typical constructions of such hash functions are themselves not amenable to efficient inference. Inspired by the success of LDPC codes, we propose the use of low-density parity constraints to make inference more tractable in practice. While not strongly universal, we show that such sparse constraints belong to a new class of hash functions that we call Average Universal. These weaker hash functions retain the desirable statistical guarantees needed by most such probabilistic inference ...
Cryptographic assumptions and security goals are fundamentally distributional. As a result, statisti...
We study the performance of nonbinary low-density parity-check (LDPC) codes over finite integer ring...
We investigate probabilistic hashing techniques for addressing computational and memory challenges i...
In recent years, a number of probabilistic in-ference and counting techniques have been pro-posed th...
In recent years, there has been considerable progress on fast randomized algorithms that approximate...
.We present three explicit constructions of hash functions, which exhibit a trade-off between the si...
In recent years, there has been considerable progress on fast randomized algorithms that ap-proximat...
Random hashing can provide guarantees regarding the performance of data structures such as hash ta...
We consider the problem of sampling from a probability distribution defined over a high-dimensional ...
In recent years, there has been considerable progress on fast randomized algorithms that ap- proxima...
This lecture discusses a very neat paper of Mitzenmacher and Vadhan [8], which proposes a robust mea...
Many probabilistic inference and learning tasks involve summations over exponentially large sets. Re...
Hashing-based model counting has emerged as a promising approach for large-scale probabilistic infer...
Low Density Parity Check codes, LDPCs for short, are a family of codes which have shown near optimal...
The aim of this tutorial article is to provide an introduction to methods based on universal hashing...
Cryptographic assumptions and security goals are fundamentally distributional. As a result, statisti...
We study the performance of nonbinary low-density parity-check (LDPC) codes over finite integer ring...
We investigate probabilistic hashing techniques for addressing computational and memory challenges i...
In recent years, a number of probabilistic in-ference and counting techniques have been pro-posed th...
In recent years, there has been considerable progress on fast randomized algorithms that approximate...
.We present three explicit constructions of hash functions, which exhibit a trade-off between the si...
In recent years, there has been considerable progress on fast randomized algorithms that ap-proximat...
Random hashing can provide guarantees regarding the performance of data structures such as hash ta...
We consider the problem of sampling from a probability distribution defined over a high-dimensional ...
In recent years, there has been considerable progress on fast randomized algorithms that ap- proxima...
This lecture discusses a very neat paper of Mitzenmacher and Vadhan [8], which proposes a robust mea...
Many probabilistic inference and learning tasks involve summations over exponentially large sets. Re...
Hashing-based model counting has emerged as a promising approach for large-scale probabilistic infer...
Low Density Parity Check codes, LDPCs for short, are a family of codes which have shown near optimal...
The aim of this tutorial article is to provide an introduction to methods based on universal hashing...
Cryptographic assumptions and security goals are fundamentally distributional. As a result, statisti...
We study the performance of nonbinary low-density parity-check (LDPC) codes over finite integer ring...
We investigate probabilistic hashing techniques for addressing computational and memory challenges i...