We propose a new algorithm for fast approximate nearest neighbor search based on the properties of ordered vectors. Data vectors are classified based on the index and sign of their largest components, thereby partitioning the space in a number of cones centered in the origin. The query is itself classified, and the search starts from the selected cone and proceeds to neighboring ones. Overall, the proposed algorithm corresponds to locality sensitive hashing in the space of directions, with hashing based on the order of components. Thanks to the statistical features emerging through ordering, it deals very well with the challenging case of unstructured data, and is a valuable building block for more complex techniques dealing with structured...
The nearest neighbor problem is one of the most important problems in computational geometry. Many o...
We present a simple randomized data structure for two-dimensional point sets that allows fast neares...
Open Access article. Under a Creative Commons License.For big data applications, randomized partitio...
We propose a new algorithm for fast approximate nearest neighbor search based on the properties of o...
We propose a new algorithm for fast approximate nearest neighbor search based on the properties of o...
In this paper, we propose a novel method to learn similarity-preserving hash functions for approxima...
We introduce a new probabilistic proximity search algorithm for range and K-nearest neighbor (K-NN) ...
We introduce a new probabilistic proximity search algorithm for range and K-nearest neighbor (K-NN) ...
The long-standing problem of efficient nearest-neighbor (NN) search has ubiqui-tous applications ran...
Approximate Nearest Neighbor (ANN) search in high dimensional space has become a fundamental paradig...
Approximate Nearest Neighbor (ANN) search in high di-mensional space has become a fundamental paradi...
Nearest neighbor search is a fundamental computational tool and has wide applications. In past decad...
A method is proposed for indexing spaces with arbitrary distance measures, so as to achieve efficien...
We address the problem of designing data structures that allow efficient search for approximate near...
We address the problem of designing data structures that allow efficient search for approximate near...
The nearest neighbor problem is one of the most important problems in computational geometry. Many o...
We present a simple randomized data structure for two-dimensional point sets that allows fast neares...
Open Access article. Under a Creative Commons License.For big data applications, randomized partitio...
We propose a new algorithm for fast approximate nearest neighbor search based on the properties of o...
We propose a new algorithm for fast approximate nearest neighbor search based on the properties of o...
In this paper, we propose a novel method to learn similarity-preserving hash functions for approxima...
We introduce a new probabilistic proximity search algorithm for range and K-nearest neighbor (K-NN) ...
We introduce a new probabilistic proximity search algorithm for range and K-nearest neighbor (K-NN) ...
The long-standing problem of efficient nearest-neighbor (NN) search has ubiqui-tous applications ran...
Approximate Nearest Neighbor (ANN) search in high dimensional space has become a fundamental paradig...
Approximate Nearest Neighbor (ANN) search in high di-mensional space has become a fundamental paradi...
Nearest neighbor search is a fundamental computational tool and has wide applications. In past decad...
A method is proposed for indexing spaces with arbitrary distance measures, so as to achieve efficien...
We address the problem of designing data structures that allow efficient search for approximate near...
We address the problem of designing data structures that allow efficient search for approximate near...
The nearest neighbor problem is one of the most important problems in computational geometry. Many o...
We present a simple randomized data structure for two-dimensional point sets that allows fast neares...
Open Access article. Under a Creative Commons License.For big data applications, randomized partitio...