We present cluster-based retrieval (CBR) experiments on the largest available Turkish document collection. Our experiments evaluate retrieval effectiveness and efficiency on both an automatically generated clustering structure and a manual classification of documents. In particular, we compare CBR effectiveness with full-text search (FS) and evaluate several implementation alternatives for CBR. Our findings reveal that CBR yields comparable effectiveness figures with FS. Furthermore, by using a specifically tailored cluster-skipping inverted index we significantly improve in-memory query processing efficiency of CBR in comparison to other traditional CBR techniques and even FS
New documents are created every day and the number of digital documents in the world is exponentiall...
Approximated algorithms for clustering large-scale document collection are proposed and evaluated un...
We show how full-text search based on inverted indices can be accelerated by clustering the document...
We propose a unique cluster-based retrieval (CBR) strategy using a new cluster-skipping inverted fil...
Cataloged from PDF version of article.Our research shows that for large databases, without considera...
Our research shows that for large databases, without considerable additional storage overhead, clust...
Our research shows that for large databases, without considerable additional storage overhead, clust...
The efficiency of various cluster based retrieval (CBR) strategies is analyzed. The possibility of c...
The efficiency of various cluster based retrieval (CBR) strategies is analyzed. The possibility of c...
Information retrieval over clustered document collections has two successive stages: first identifyi...
We present the results of the first large-scale Turkish information retrieval experiments performed ...
In this study, we investigate information retrieval (IR) on Turkish texts using a large-scale test c...
Information retrieval over clustered document collections has two successive stages: first identifyi...
The standard approach to document retrieval is to assume that the relevance of documents could be as...
The effectiveness and efficiency of an Information Retrieval (IR) system depends on the quality of i...
New documents are created every day and the number of digital documents in the world is exponentiall...
Approximated algorithms for clustering large-scale document collection are proposed and evaluated un...
We show how full-text search based on inverted indices can be accelerated by clustering the document...
We propose a unique cluster-based retrieval (CBR) strategy using a new cluster-skipping inverted fil...
Cataloged from PDF version of article.Our research shows that for large databases, without considera...
Our research shows that for large databases, without considerable additional storage overhead, clust...
Our research shows that for large databases, without considerable additional storage overhead, clust...
The efficiency of various cluster based retrieval (CBR) strategies is analyzed. The possibility of c...
The efficiency of various cluster based retrieval (CBR) strategies is analyzed. The possibility of c...
Information retrieval over clustered document collections has two successive stages: first identifyi...
We present the results of the first large-scale Turkish information retrieval experiments performed ...
In this study, we investigate information retrieval (IR) on Turkish texts using a large-scale test c...
Information retrieval over clustered document collections has two successive stages: first identifyi...
The standard approach to document retrieval is to assume that the relevance of documents could be as...
The effectiveness and efficiency of an Information Retrieval (IR) system depends on the quality of i...
New documents are created every day and the number of digital documents in the world is exponentiall...
Approximated algorithms for clustering large-scale document collection are proposed and evaluated un...
We show how full-text search based on inverted indices can be accelerated by clustering the document...