AbstractDistance permutation indexes support fast proximity searching in high-dimensional metric spaces. Given some fixed reference sites, for each point in a database the index stores a permutation naming the closest site, the second-closest, and so on. We examine how many distinct permutations can occur as a function of the number of sites and the size of the space. We give theoretical results for tree metrics and vector spaces with L1, L2, and L∞ metrics, improving on the previous best known storage space in the vector case. We also give experimental results and commentary on the number of distance permutations that actually occur in a variety of vector, string, and document databases
We introduce a new probabilistic proximity search algorithm for range and K-nearest neighbor (K-NN) ...
Proximity searching consists in retrieving from a database those elements that are similar to a quer...
Proximity queries (the searching problem generalized beyond exact match) is mostly modeled as metric...
AbstractDistance permutation indexes support fast proximity searching in high-dimensional metric spa...
ABSTRACT We survey permutation-based methods for approximate knearest neighbor search. In these meth...
Abstract. The permutation based index has shown to be very effective in medium and high dimensional ...
In the realm of metric search, the permutation-based approaches have shown very good performance in ...
In the realm of metric search, the permutation-based approaches have shown very good performance in ...
In the realm of metric search, the permutation-based approaches have shown very good performance in ...
Similarity search is a difficult problem and various indexing schemas have been defined to process s...
Similarity search is a difficult problem and various indexing schemas have been defined to process s...
Similarity search is a difficult problem and various indexing schemas have been defined to process s...
AbstractThe main bottleneck of the research in metric space searching is the so-called curse of dime...
In many database applications, one of the common queries is to find approximate matches to a given q...
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) ...
Proximity searching consists in retrieving from a database those elements that are similar to a quer...
Proximity queries (the searching problem generalized beyond exact match) is mostly modeled as metric...
AbstractDistance permutation indexes support fast proximity searching in high-dimensional metric spa...
ABSTRACT We survey permutation-based methods for approximate knearest neighbor search. In these meth...
Abstract. The permutation based index has shown to be very effective in medium and high dimensional ...
In the realm of metric search, the permutation-based approaches have shown very good performance in ...
In the realm of metric search, the permutation-based approaches have shown very good performance in ...
In the realm of metric search, the permutation-based approaches have shown very good performance in ...
Similarity search is a difficult problem and various indexing schemas have been defined to process s...
Similarity search is a difficult problem and various indexing schemas have been defined to process s...
Similarity search is a difficult problem and various indexing schemas have been defined to process s...
AbstractThe main bottleneck of the research in metric space searching is the so-called curse of dime...
In many database applications, one of the common queries is to find approximate matches to a given q...
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) ...
Proximity searching consists in retrieving from a database those elements that are similar to a quer...
Proximity queries (the searching problem generalized beyond exact match) is mostly modeled as metric...