This study introduces a class of region preserving space transformation (RPST) schemes for accessing high-dimensional data. The access methods in this class differ with respect to their spacepartitioning strategies. The study develops two new static partitioning schemes that can split each dimension of the space within linear space complexity. They also support an effective mechanism for handling skewed data in heavily sparse spaces. The techniques are experimentally compared to the Pyramid Technique, which is another example of static partitioning designed for high-dimensional data. On real high-dimensional data, the proposed RPST schemes outperform the Pyramid Technique by a significant margin
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
We propose a file structure to index high-dimensionality data, typically, points in some feature spa...
In this paper, we propose a new method for indexing large amounts of point and spatial data in highd...
In this paper, we propose a new method for indexing large amounts of point and spatial data in highd...
In this paper, we propose the Pyramid-Technique, a new indexing method for high-dimensional data spa...
Dataspaces are recently proposed to manage heterogeneous data, with features like partially unstruct...
In this paper, we propose a new method for index-ing large amounts of point and spatial data in high...
In this paper, we propose a new method for index-ing large amounts of point and spatial data in high...
We introduce a novel multi-dimensional space partitioning method. A new type of tree combines the ad...
This paper proposes a spatial index structure based on a new space-partitioning method. Previous res...
We propose a file structure to index high-dimensionality data, typically, points in some feature spa...
Abstract. Indexing high dimensional datasets has attracted extensive attention from many researchers...
In this work a novel hierarchical data structure for high dimensional data indexing is proposed. MKL...
We introduce a novel multi-dimensional space partitioning method. A new type of tree combines the ad...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
We propose a file structure to index high-dimensionality data, typically, points in some feature spa...
In this paper, we propose a new method for indexing large amounts of point and spatial data in highd...
In this paper, we propose a new method for indexing large amounts of point and spatial data in highd...
In this paper, we propose the Pyramid-Technique, a new indexing method for high-dimensional data spa...
Dataspaces are recently proposed to manage heterogeneous data, with features like partially unstruct...
In this paper, we propose a new method for index-ing large amounts of point and spatial data in high...
In this paper, we propose a new method for index-ing large amounts of point and spatial data in high...
We introduce a novel multi-dimensional space partitioning method. A new type of tree combines the ad...
This paper proposes a spatial index structure based on a new space-partitioning method. Previous res...
We propose a file structure to index high-dimensionality data, typically, points in some feature spa...
Abstract. Indexing high dimensional datasets has attracted extensive attention from many researchers...
In this work a novel hierarchical data structure for high dimensional data indexing is proposed. MKL...
We introduce a novel multi-dimensional space partitioning method. A new type of tree combines the ad...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
Similarity search in high dimensional space is a nontrivial problem due to the so-called curse of di...
We propose a file structure to index high-dimensionality data, typically, points in some feature spa...