Περιέχει το πλήρες κείμενοIn this paper, we focus on the leaf level nodes of tree-like k-dimensional indexes that store the data entries, since those nodes represent the majority of the nodes in the index. We propose a generic node splitting approach that defers splitting when possible and instead favors merging of a full node with an appropriate sibling and then re-splitting of the resulting node. Our experiments with the hB-tree, show that the proposed splitting approach achieves high average node storage utilization regardless of data distribution, data insertion patterns and dimensionality
Nearest neighbor searching of large databases in high-dimensional spaces is inherently difficult due...
In this paper, we present an efficient B +-tree based indexing method, called iDistance, for Kneares...
Many new applications, such as multimedia databases, employ the so-called feature transformation whi...
Efficient knn computation for high-dimensional data is an important, yet challenging task. Today, mo...
Περιέχει το πλήρες κείμενοThe problem of indexing large volumes of high dimensional data is an impor...
The emergence of novel database applications has resulted in the prevalence of a new paradigm for si...
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 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...
In this paper, we propose a new method for indexing large amounts of point and spatial data in highd...
High-dimensional indexing is an important area of current re-search, especially for range and kNN qu...
In this paper, we develop a novel index structure to support efficient approximate k-nearest neighbo...
The state-of-the-art approaches for scalable kNN query processing utilise big data parallel/distribu...
Applications like multimedia retrieval require efficient support for similarity search on large data...
When dimension goes high, sequential scan processing becomes more efficient than most index-based qu...
Nearest neighbor searching of large databases in high-dimensional spaces is inherently difficult due...
In this paper, we present an efficient B +-tree based indexing method, called iDistance, for Kneares...
Many new applications, such as multimedia databases, employ the so-called feature transformation whi...
Efficient knn computation for high-dimensional data is an important, yet challenging task. Today, mo...
Περιέχει το πλήρες κείμενοThe problem of indexing large volumes of high dimensional data is an impor...
The emergence of novel database applications has resulted in the prevalence of a new paradigm for si...
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 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...
In this paper, we propose a new method for indexing large amounts of point and spatial data in highd...
High-dimensional indexing is an important area of current re-search, especially for range and kNN qu...
In this paper, we develop a novel index structure to support efficient approximate k-nearest neighbo...
The state-of-the-art approaches for scalable kNN query processing utilise big data parallel/distribu...
Applications like multimedia retrieval require efficient support for similarity search on large data...
When dimension goes high, sequential scan processing becomes more efficient than most index-based qu...
Nearest neighbor searching of large databases in high-dimensional spaces is inherently difficult due...
In this paper, we present an efficient B +-tree based indexing method, called iDistance, for Kneares...
Many new applications, such as multimedia databases, employ the so-called feature transformation whi...