Similarity searches in multidimensional Non-ordered Discrete Data Spaces (NDDS) are becoming increasingly important for application areas such as bioinformatics, biometrics, data mining and E-commerce. Efficient similarity searches require robust indexing techniques. Unfortunately, existing indexing methods developed for multidimensional (ordered) Continuous Data Spaces (CDS) such as the R-tree cannot be directly applied to an NDDS. This is because some essential geometric concepts/properties such as the minimum bounding region and the area of a region in a CDS are no longer valid in an NDDS. Other indexing methods based on metric spaces such as the M-tree and the Slim-trees are too general to effectively utilize the special characteristics...
In this paper, we propose a novel high-dimensional index method, the BM+-tree, to support efficient ...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
We propose a file structure to index high-dimensionality data, typically, points in some feature spa...
The M-tree is a well-known indexing method enabling efficient similarity search in metric spaces. Al...
Title: Tree-based Indexing Methods for Similarity Search in Metric and Nonmetric Spaces Author: Mgr....
Title: Tree-based Indexing Methods for Similarity Search in Metric and Nonmetric Spaces Author: Mgr....
In this paper, we propose a new metric index, called M+-tree, which is a tree dynamically organized ...
Abstract. Nowadays feature vector based similarity search is increasingly emerging in database syste...
Abstract—Metric-space indexing is a general method for similarity queries of complex data. The quali...
In this work we study the validity of the so-called curse of dimensionality for indexing of database...
Similarity search in large time series databases has attracted much research interest recently. It i...
The performance of similarity search in the unstructured databases largely depends on the employed s...
In this work we study the validity of the so-called curse of dimensionality for indexing of database...
The performance of similarity search in the unstructured databases largely depends on the employed s...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
In this paper, we propose a novel high-dimensional index method, the BM+-tree, to support efficient ...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
We propose a file structure to index high-dimensionality data, typically, points in some feature spa...
The M-tree is a well-known indexing method enabling efficient similarity search in metric spaces. Al...
Title: Tree-based Indexing Methods for Similarity Search in Metric and Nonmetric Spaces Author: Mgr....
Title: Tree-based Indexing Methods for Similarity Search in Metric and Nonmetric Spaces Author: Mgr....
In this paper, we propose a new metric index, called M+-tree, which is a tree dynamically organized ...
Abstract. Nowadays feature vector based similarity search is increasingly emerging in database syste...
Abstract—Metric-space indexing is a general method for similarity queries of complex data. The quali...
In this work we study the validity of the so-called curse of dimensionality for indexing of database...
Similarity search in large time series databases has attracted much research interest recently. It i...
The performance of similarity search in the unstructured databases largely depends on the employed s...
In this work we study the validity of the so-called curse of dimensionality for indexing of database...
The performance of similarity search in the unstructured databases largely depends on the employed s...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
In this paper, we propose a novel high-dimensional index method, the BM+-tree, to support efficient ...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
We propose a file structure to index high-dimensionality data, typically, points in some feature spa...