Both supervised and unsupervised machine learning algorithms have been used to learn partition-based index structures for approximate nearest neighbor (ANN) search. Existing supervised algorithms formulate the learning task as finding a partition in which the nearest neighbors of a training set point belong to the same partition element as the point itself, so that the nearest neighbor candidates can be retrieved by naive lookup or backtracking search. We formulate candidate set selection in ANN search directly as a multilabel classification problem where the labels correspond to the nearest neighbors of the query point, and interpret the partitions as partitioning classifiers for solving this task. Empirical results suggest that the natura...
The long-standing problem of efficient nearest-neighbor (NN) search has ubiqui-tous applications ran...
In nearest neighbors search the task is to find points from a data set that lie close in space to a ...
K-nearest neighbor's classification and regression is broadly utilized as a part of data mining beca...
Nearest neighbor search is a crucial tool in computer science and a part of many machine learning al...
With the surging popularity of approximate near-neighbor search (ANNS), driven by advances in neural...
Approximate Nearest neighbor search (ANNS) is fundamental and essential operation in applications f...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
Nearest-neighbor search is a very natural and universal problem in computer science. Often times, th...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
We are witnessing a data explosion era, in which huge data sets of billions or more samples represen...
Can we leverage learning techniques to build a fast nearest-neighbor (ANN) re-trieval data structure...
International audienceKeywords: Exact nearest neighbour search Approximate nearest neighbour search ...
Approximate Nearest Neighbor (ANN) search in high di-mensional space has become a fundamental paradi...
Approximate Nearest Neighbor (ANN) search in high dimensional space has become a fundamental paradig...
Similarity searching often reduces to finding the k nearest neighbors to a query object. Finding the...
The long-standing problem of efficient nearest-neighbor (NN) search has ubiqui-tous applications ran...
In nearest neighbors search the task is to find points from a data set that lie close in space to a ...
K-nearest neighbor's classification and regression is broadly utilized as a part of data mining beca...
Nearest neighbor search is a crucial tool in computer science and a part of many machine learning al...
With the surging popularity of approximate near-neighbor search (ANNS), driven by advances in neural...
Approximate Nearest neighbor search (ANNS) is fundamental and essential operation in applications f...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
Nearest-neighbor search is a very natural and universal problem in computer science. Often times, th...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
We are witnessing a data explosion era, in which huge data sets of billions or more samples represen...
Can we leverage learning techniques to build a fast nearest-neighbor (ANN) re-trieval data structure...
International audienceKeywords: Exact nearest neighbour search Approximate nearest neighbour search ...
Approximate Nearest Neighbor (ANN) search in high di-mensional space has become a fundamental paradi...
Approximate Nearest Neighbor (ANN) search in high dimensional space has become a fundamental paradig...
Similarity searching often reduces to finding the k nearest neighbors to a query object. Finding the...
The long-standing problem of efficient nearest-neighbor (NN) search has ubiqui-tous applications ran...
In nearest neighbors search the task is to find points from a data set that lie close in space to a ...
K-nearest neighbor's classification and regression is broadly utilized as a part of data mining beca...