AbstractSimilarity search has been proved suitable for searching in large collections of unstructured data objects. A number of practical index data structures for this purpose have been proposed. All of them have been devised to process single queries sequentially. However, in large-scale systems such as Web Search Engines indexing multi-media content, it is critical to deal efficiently with streams of queries rather than with single queries. In this paper we show how to achieve efficient and scalable performance in this context. To this end we transform a sequential index based on clustering into a distributed one and devise algorithms and optimizations specially tailored to support high-performance parallel query processing
This work introduces decentralized query processing techniques based on MIDAS, a novel distributed m...
A web search query made to Microsoft Bing is currently parallelized by distributing the query proces...
Abstract. Spectral clustering algorithm has been shown to be more effective in finding clusters than...
AbstractSimilarity search has been proved suitable for searching in large collections of unstructure...
Due to the increasing complexity of current digital data, the similarity search has become a fundame...
Due to the increasing complexity of current digital data, similarity search has become a fundamental...
This article compares several strategies for searching in Web engines and we present the bucket alg...
This article compares several strategies for searching in Web engines and we present the bucket alg...
International audienceIndexing is crucial for many data mining tasks that rely on efficient and effe...
International audienceIndexing is crucial for many data mining tasks that rely on efficient and effe...
International audienceIndexing is crucial for many data mining tasks that rely on efficient and effe...
Information retrieval systems often have to deal with very large amounts of data. They must be able ...
We present a distributed indexing scheme for peer to peer networks. Past work on distributed indexin...
We study efficient query processing in distributed web search engines with global index organization...
The creation of very large-scale multimedia search engines, with more than one billion images and v...
This work introduces decentralized query processing techniques based on MIDAS, a novel distributed m...
A web search query made to Microsoft Bing is currently parallelized by distributing the query proces...
Abstract. Spectral clustering algorithm has been shown to be more effective in finding clusters than...
AbstractSimilarity search has been proved suitable for searching in large collections of unstructure...
Due to the increasing complexity of current digital data, the similarity search has become a fundame...
Due to the increasing complexity of current digital data, similarity search has become a fundamental...
This article compares several strategies for searching in Web engines and we present the bucket alg...
This article compares several strategies for searching in Web engines and we present the bucket alg...
International audienceIndexing is crucial for many data mining tasks that rely on efficient and effe...
International audienceIndexing is crucial for many data mining tasks that rely on efficient and effe...
International audienceIndexing is crucial for many data mining tasks that rely on efficient and effe...
Information retrieval systems often have to deal with very large amounts of data. They must be able ...
We present a distributed indexing scheme for peer to peer networks. Past work on distributed indexin...
We study efficient query processing in distributed web search engines with global index organization...
The creation of very large-scale multimedia search engines, with more than one billion images and v...
This work introduces decentralized query processing techniques based on MIDAS, a novel distributed m...
A web search query made to Microsoft Bing is currently parallelized by distributing the query proces...
Abstract. Spectral clustering algorithm has been shown to be more effective in finding clusters than...