pre-printBregman divergences are important distance measures that are used extensively in data-driven applications such as computer vision, text mining, and speech processing, and are a key focus of interest in machine learning. Answering nearest neighbor (NN) queries under these measures is very important in these applications and has been the subject of extensive study, but is problematic because these distance measures lack metric properties like symmetry and the triangle inequality. In this paper, we present the first provably approximate nearest-neighbor (ANN) algorithms. These process queries in O(logn) time for Bregman divergences in fixed dimensional spaces. We also obtain polylogn bounds for a more abstract class of distance measur...
Bregman divergences generalize measures such as the squared Euclidean distance and the KL divergenc...
Given a set of n disjoint balls b_1, ..., b_n in R^d, we provide a data structure, of near linear si...
International audienceThe approximate nearest neighbor problem (e-ANN) in high dimensional Euclidean...
Bregman divergences are important distance measures that are used extensively in data-driven appli-c...
International audienceNearest Neighbor (NN) search is a crucial tool that remains critical in many c...
In this dissertation, we study efficient solutions to proximity search problems where the notion of ...
International audienceNearest Neighbor (NN) retrieval is a crucial tool of many computer vision task...
We develop an algorithm for efficient range search when the notion of dissimilarity is given by a Br...
23 pages (this version is cleaner that the previous report and includes empirical results for the Sm...
Many metric learning tasks, such as triplet learning, nearest neighbor retrieval, and visualization,...
AbstractWe define a natural notion of efficiency for approximate nearest-neighbor (ANN) search in ge...
International audienceWe present a new approach to ε-approximate nearest-neighbor queries in fixed d...
We investigate the problem of approximate Nearest-Neighbor Search (NNS) in graphical metrics: The ta...
We consider the Approximate Nearest Neighbor (ANN) problem where the input set consists of n k-flats...
AbstractThe nearest neighbor search (NNS) problem is the following: Given a set of n points P={p1, …...
Bregman divergences generalize measures such as the squared Euclidean distance and the KL divergenc...
Given a set of n disjoint balls b_1, ..., b_n in R^d, we provide a data structure, of near linear si...
International audienceThe approximate nearest neighbor problem (e-ANN) in high dimensional Euclidean...
Bregman divergences are important distance measures that are used extensively in data-driven appli-c...
International audienceNearest Neighbor (NN) search is a crucial tool that remains critical in many c...
In this dissertation, we study efficient solutions to proximity search problems where the notion of ...
International audienceNearest Neighbor (NN) retrieval is a crucial tool of many computer vision task...
We develop an algorithm for efficient range search when the notion of dissimilarity is given by a Br...
23 pages (this version is cleaner that the previous report and includes empirical results for the Sm...
Many metric learning tasks, such as triplet learning, nearest neighbor retrieval, and visualization,...
AbstractWe define a natural notion of efficiency for approximate nearest-neighbor (ANN) search in ge...
International audienceWe present a new approach to ε-approximate nearest-neighbor queries in fixed d...
We investigate the problem of approximate Nearest-Neighbor Search (NNS) in graphical metrics: The ta...
We consider the Approximate Nearest Neighbor (ANN) problem where the input set consists of n k-flats...
AbstractThe nearest neighbor search (NNS) problem is the following: Given a set of n points P={p1, …...
Bregman divergences generalize measures such as the squared Euclidean distance and the KL divergenc...
Given a set of n disjoint balls b_1, ..., b_n in R^d, we provide a data structure, of near linear si...
International audienceThe approximate nearest neighbor problem (e-ANN) in high dimensional Euclidean...