We are witnessing a data explosion era, in which huge data sets of billions or more samples represented by high-dimensional feature vectors can be easily found on the Web, enterprise data centers, surveillance sensor systems, and so on. On these large scale data sets, nearest neighbor search is fundamental for lots of applications including content based search/retrieval, recommendation, clustering, graph and social network research, as well as many other machine learning and data mining problems. Exhaustive search is the simplest and most straightforward way for nearest neighbor search, but it can not scale up to huge data set at the sizes as mentioned above. To make large scale nearest neighbor search practical, we need the online search ...
As databases increasingly integrate different types of information such as time-series, multimedia a...
The approximate nearest neighbor problem (epsilon-ANN) in Euclidean settings is a fundamental questi...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
Nearest neighbor search is a crucial tool in computer science and a part of many machine learning al...
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 ...
The long-standing problem of efficient nearest-neighbor (NN) search has ubiqui-tous applications ran...
International audienceThis paper presents a moderately secure but very efficient approximate nearest...
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...
Open Access article. Under a Creative Commons License.For big data applications, randomized partitio...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
AbstractThe nearest neighbor search (NNS) problem is the following: Given a set of n points P={p1, …...
AbstractFor big data applications, randomized partition trees have recently been shown to be very ef...
Both supervised and unsupervised machine learning algorithms have been used to learn partition-based...
As databases increasingly integrate different types of information such as time-series, multimedia a...
The approximate nearest neighbor problem (epsilon-ANN) in Euclidean settings is a fundamental questi...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...
Nearest neighbor search is a crucial tool in computer science and a part of many machine learning al...
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 ...
The long-standing problem of efficient nearest-neighbor (NN) search has ubiqui-tous applications ran...
International audienceThis paper presents a moderately secure but very efficient approximate nearest...
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...
Open Access article. Under a Creative Commons License.For big data applications, randomized partitio...
We consider the task of nearest-neighbor search with the class of binary-space-partitioning trees, w...
AbstractThe nearest neighbor search (NNS) problem is the following: Given a set of n points P={p1, …...
AbstractFor big data applications, randomized partition trees have recently been shown to be very ef...
Both supervised and unsupervised machine learning algorithms have been used to learn partition-based...
As databases increasingly integrate different types of information such as time-series, multimedia a...
The approximate nearest neighbor problem (epsilon-ANN) in Euclidean settings is a fundamental questi...
We propose a new data-structure, the generalized randomized k-d forest, or k-d GeRaF, for approximat...