International audienceEfficiently constructing the K-Nearest Neighbor Graph (K-NNG) of large and high dimensional datasets is crucial for many applications with feature-rich objects, such as images or other multimedia content. In this paper we investigate the use of high dimensional hashing methods for efficiently approximating the K-NNG, notably in distributed environments. We first discuss the importance of balancing issues on the performance of such approaches and show why the baseline approach using Locality Sensitive Hashing does not perform well. Our new KNN-join method is based on RMMH, a recently introduced hash function family based on randomly trained classifiers. We show that the resulting hash tables are much more balanced and t...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
In response to the rapid growth of many sorts of information, highway data has continued to evolve i...
International audienceThis paper proposes a novel approach to compute K-Nearest Neighbors (KNN) algo...
International audienceGiven a point p and a set of points S, the kNN operation finds the k closest p...
International audienceGiven a point p and a set of points S, the kNN operation finds the k closest p...
The k-nearest neighbor (kNN) join has recently attracted considerable attention due to its broad app...
k nearest neighbor join (kNN join), designed to find k nearest neighbors from a dataset S for every ...
k nearest neighbor join (kNN join), designed to find k nearest neighbors from a dataset S for every ...
Abstract. The k nearest neighbors (kNN) graph, perhaps the most popular graph in machine learning, p...
This paper presents an implementation of the brute-force exact k-Nearest Neighbor Graph (k-NNG) cons...
This paper presents an implementation of the brute-force exact k-Nearest Neighbor Graph (k-NNG) cons...
We present a new Bi-level LSH algorithm to perform approximate k-nearest neighbor search in high dim...
We present an efficient GPU-based parallel LSH algorithm to perform approximate k-nearest neighbor c...
In many advanced database applications (e.g., multimedia databases), data objects are transformed in...
This thesis addresses the need for a scalable distributed solution for k-nearest-neighbor (kNN) sear...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
In response to the rapid growth of many sorts of information, highway data has continued to evolve i...
International audienceThis paper proposes a novel approach to compute K-Nearest Neighbors (KNN) algo...
International audienceGiven a point p and a set of points S, the kNN operation finds the k closest p...
International audienceGiven a point p and a set of points S, the kNN operation finds the k closest p...
The k-nearest neighbor (kNN) join has recently attracted considerable attention due to its broad app...
k nearest neighbor join (kNN join), designed to find k nearest neighbors from a dataset S for every ...
k nearest neighbor join (kNN join), designed to find k nearest neighbors from a dataset S for every ...
Abstract. The k nearest neighbors (kNN) graph, perhaps the most popular graph in machine learning, p...
This paper presents an implementation of the brute-force exact k-Nearest Neighbor Graph (k-NNG) cons...
This paper presents an implementation of the brute-force exact k-Nearest Neighbor Graph (k-NNG) cons...
We present a new Bi-level LSH algorithm to perform approximate k-nearest neighbor search in high dim...
We present an efficient GPU-based parallel LSH algorithm to perform approximate k-nearest neighbor c...
In many advanced database applications (e.g., multimedia databases), data objects are transformed in...
This thesis addresses the need for a scalable distributed solution for k-nearest-neighbor (kNN) sear...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
In response to the rapid growth of many sorts of information, highway data has continued to evolve i...
International audienceThis paper proposes a novel approach to compute K-Nearest Neighbors (KNN) algo...