Nearest neighbor search algorithms have been successful in finding practically useful solutions to computationally difficult problems. In the nearest neighbor search problem, the brute force approach is often more efficient than other algorithms for high-dimensional spaces. A special case exists for objects represented as sparse vectors, where algorithms take advantage of the fact that an object has a zero value for most features. In general, since exact nearest neighbor search methods suffer from the “curse of dimensionality,” many practitioners use approximate nearest neighbor search algorithms when faced with high dimensionality or large datasets. To a reasonable degree, it is known that relying on approximate nearest neighbors leads to ...
International audienceThis paper proposes a binarization scheme for vectors of high dimension based ...
In spite of extensive and continuing research, for various geometric search problems (such as neares...
This paper describes a new approach for performing efficient approximate k-nearest-neighbor searches...
Nearest neighbor search algorithms have been successful in finding practically useful solutions to c...
Approximate Nearest neighbor search (ANNS) is fundamental and essential operation in applications f...
As an analysis of the classification accuracy bound for the Nearest Neighbor technique, in this work...
Nearest-neighbor search is a very natural and universal problem in computer science. Often times, th...
In nearest neighbors search the task is to find points from a data set that lie close in space to a ...
2016 Spring.Includes bibliographical references.Nearest neighbor search is an important operation wh...
The long-standing problem of efficient nearest-neighbor (NN) search has ubiqui-tous applications ran...
Nearest neighbor search is a crucial tool in computer science and a part of many machine learning al...
Given n data points in d-dimensional space, nearest neighbor searching involves determining the near...
This paper reconsiders common benchmarking approaches to nearest neighbor search. It is shown that t...
International audienceThis paper presents a moderately secure but very efficient approximate nearest...
Given n data points in d-dimensional space, nearest-neighbor searching involves determining the near...
International audienceThis paper proposes a binarization scheme for vectors of high dimension based ...
In spite of extensive and continuing research, for various geometric search problems (such as neares...
This paper describes a new approach for performing efficient approximate k-nearest-neighbor searches...
Nearest neighbor search algorithms have been successful in finding practically useful solutions to c...
Approximate Nearest neighbor search (ANNS) is fundamental and essential operation in applications f...
As an analysis of the classification accuracy bound for the Nearest Neighbor technique, in this work...
Nearest-neighbor search is a very natural and universal problem in computer science. Often times, th...
In nearest neighbors search the task is to find points from a data set that lie close in space to a ...
2016 Spring.Includes bibliographical references.Nearest neighbor search is an important operation wh...
The long-standing problem of efficient nearest-neighbor (NN) search has ubiqui-tous applications ran...
Nearest neighbor search is a crucial tool in computer science and a part of many machine learning al...
Given n data points in d-dimensional space, nearest neighbor searching involves determining the near...
This paper reconsiders common benchmarking approaches to nearest neighbor search. It is shown that t...
International audienceThis paper presents a moderately secure but very efficient approximate nearest...
Given n data points in d-dimensional space, nearest-neighbor searching involves determining the near...
International audienceThis paper proposes a binarization scheme for vectors of high dimension based ...
In spite of extensive and continuing research, for various geometric search problems (such as neares...
This paper describes a new approach for performing efficient approximate k-nearest-neighbor searches...