International audienceThe approximate nearest neighbor problem (e-ANN) in high dimensional Euclidean space has been mainly addressed by Locality Sensitive Hashing (LSH), which has polynomial dependence in the dimension, sublinear query time, but subquadratic space requirement. In this paper, we introduce a new definition of "low-quality" embeddings for metric spaces. It requires that, for some query point q, there exists an approximate nearest neighbor among the pre-images of the k > 1 approximate nearest neighbors in the target space. Focusing on Euclidean spaces, we employ random projections in order to reduce the original problem to one in a space of dimension inversely proportional to k. The k approximate nearest neighbors can be effici...
International audienceThe construction of r-nets offers a powerful tool in computational and metric ...
Given a set of n points in d-dimensional Euclidean space, S⊂Ed, and a query point qqqEd, we wish to ...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
The approximate nearest neighbor problem (epsilon-ANN) in Euclidean settings is a fundamental questi...
Randomized dimensionality reduction has been recognized as one of the fundamental techniques in hand...
Nearest neighbor searches in high-dimensional space have many important applications in domains such...
The nearest neighbor problem is the following: Given a set of n points P = fp1�:::�p ng in some metr...
International audienceRandomized dimensionality reduction has been recognized as one of the fundamen...
AbstractWe define a natural notion of efficiency for approximate nearest-neighbor (ANN) search in ge...
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, …...
We present a new data structure for the c-approximate near neighbor problem (ANN) in the Euclidean s...
Nearest neighbor searches in high-dimensional space have many important applications in domains such...
International audienceMany approximate nearest neighbor search algorithms operate under memory const...
In this thesis, we study high dimensional approximate similarity search algorithms. High dimensional...
International audienceThe construction of r-nets offers a powerful tool in computational and metric ...
Given a set of n points in d-dimensional Euclidean space, S⊂Ed, and a query point qqqEd, we wish to ...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
The approximate nearest neighbor problem (epsilon-ANN) in Euclidean settings is a fundamental questi...
Randomized dimensionality reduction has been recognized as one of the fundamental techniques in hand...
Nearest neighbor searches in high-dimensional space have many important applications in domains such...
The nearest neighbor problem is the following: Given a set of n points P = fp1�:::�p ng in some metr...
International audienceRandomized dimensionality reduction has been recognized as one of the fundamen...
AbstractWe define a natural notion of efficiency for approximate nearest-neighbor (ANN) search in ge...
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, …...
We present a new data structure for the c-approximate near neighbor problem (ANN) in the Euclidean s...
Nearest neighbor searches in high-dimensional space have many important applications in domains such...
International audienceMany approximate nearest neighbor search algorithms operate under memory const...
In this thesis, we study high dimensional approximate similarity search algorithms. High dimensional...
International audienceThe construction of r-nets offers a powerful tool in computational and metric ...
Given a set of n points in d-dimensional Euclidean space, S⊂Ed, and a query point qqqEd, we wish to ...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...