Given a pairwise similarity notion between objects, locality sensitive hashing (LSH) aims to construct a hash function family over the universe of objects such that the probability two objects hash to the same value is their similarity. LSH is a powerful algorithmic tool for large-scale applications and much work has been done to understand LSHable similarities, i.e., similarities that admit an LSH. In this paper we focus on similarities that are provably non-LSHable and propose a notion of distortion to capture the approximation of such a similarity by a similarity that is LSHable. We consider several well-known non-LSHable similarities and show tight upper and lower bounds on their distortion
We present an I/O-efficient algorithm for computing similarity joins based on locality-sensitive has...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
To compare the similarity of probability distributions, the information-theoretically motivated metr...
Given a notion of pairwise similarity between objects, locality sensitive hashing (LSH) aims to cons...
Locality sensitive hashing (LSH) is a key algorithmic tool that lies at the heart of many informatio...
Locality sensitive hashing (LSH) is a key algorithmic tool that is widely used both in theory and pr...
Locality Sensitive Hashing (LSH) is widely recognized as one of the most promising approaches to sim...
Locality Sensitive Hashing (LSH) is an effective method to index a set of points such that we can ef...
In this lecture we will be talking about algorithms for estimating similarity. Fix a collection C of...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Locality-sensitive hashing (LSH) is an important tool for man- aging high-dimensional noisy or uncer...
In this paper we study the complexity of the following feasibility problem: given an n × n similarit...
All pairs similarity search is a problem where a set of data objects is given and the task is to fin...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
We present an I/O-efficient algorithm for computing similarity joins based on locality-sensitive has...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
To compare the similarity of probability distributions, the information-theoretically motivated metr...
Given a notion of pairwise similarity between objects, locality sensitive hashing (LSH) aims to cons...
Locality sensitive hashing (LSH) is a key algorithmic tool that lies at the heart of many informatio...
Locality sensitive hashing (LSH) is a key algorithmic tool that is widely used both in theory and pr...
Locality Sensitive Hashing (LSH) is widely recognized as one of the most promising approaches to sim...
Locality Sensitive Hashing (LSH) is an effective method to index a set of points such that we can ef...
In this lecture we will be talking about algorithms for estimating similarity. Fix a collection C of...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Locality-sensitive hashing (LSH) is an important tool for man- aging high-dimensional noisy or uncer...
In this paper we study the complexity of the following feasibility problem: given an n × n similarit...
All pairs similarity search is a problem where a set of data objects is given and the task is to fin...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
We present an I/O-efficient algorithm for computing similarity joins based on locality-sensitive has...
Similarity search plays an important role in many applications involving high-dimensional data. Due ...
To compare the similarity of probability distributions, the information-theoretically motivated metr...