While declustering methods for distributed multidimensional indexing of large datasets have been researched widely in the past, replication techniques for multidimensional indexes have not been investigated deeply. In general, a centralized index server may become the performance bottleneck in a wide area network rather than the data servers, since the index is likely to be accessed more often than any of the datasets in the servers. In this paper, we present two different multidimensional indexing algorithms for a distributed environment - a centralized global index and a two-level hierarchical index. Our experimental results show that the centralized scheme does not scale well for either insertion or searching the index. In order to impro...
Indexing of high-dimensional data is essential for building applications such as multimedia retrieva...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
Scientific datasets are often stored on distributed archival storage systems, because geographically...
This work introduces decentralized query processing techniques based on MIDAS, a novel distributed m...
Scientific data analysis applications require large scale computing power to effectively service cli...
This work presents a pure multidimensional, indexing infrastructure for large-scale decentralized ne...
This work presents a pure multidimensional, indexing infrastructure for large-scale decentralized ne...
Spatial queries are widely used in many data mining and analytics applications. However, a huge and ...
Indexing high dimensional data has its utility in many real world applications. Especially the infor...
We propose a general framework to index very large datasets of spatial data in a distributed system...
Abstract. This work presents a pure multidimensional, indexing infrastructure for large-scale decent...
We describe a distributed index structure, in which data is distributed among multiple sites and ind...
The peer-to-peer (P2P) paradigm has become very popular for storing and sharing information in a tot...
Abstract—In many systems providing storage and retrieval operations on data, indices are used to mak...
Indexing of high-dimensional data is essential for building applications such as multimedia retrieva...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
Scientific datasets are often stored on distributed archival storage systems, because geographically...
This work introduces decentralized query processing techniques based on MIDAS, a novel distributed m...
Scientific data analysis applications require large scale computing power to effectively service cli...
This work presents a pure multidimensional, indexing infrastructure for large-scale decentralized ne...
This work presents a pure multidimensional, indexing infrastructure for large-scale decentralized ne...
Spatial queries are widely used in many data mining and analytics applications. However, a huge and ...
Indexing high dimensional data has its utility in many real world applications. Especially the infor...
We propose a general framework to index very large datasets of spatial data in a distributed system...
Abstract. This work presents a pure multidimensional, indexing infrastructure for large-scale decent...
We describe a distributed index structure, in which data is distributed among multiple sites and ind...
The peer-to-peer (P2P) paradigm has become very popular for storing and sharing information in a tot...
Abstract—In many systems providing storage and retrieval operations on data, indices are used to mak...
Indexing of high-dimensional data is essential for building applications such as multimedia retrieva...
Scientific applications that query into very large multidimensional datasets are becoming more commo...
Scientific applications that query into very large multidimensional datasets are becoming more commo...