Re-ranking (RR) and Cluster-based Retrieval (CR) have been polar methods for improving retrieval effectiveness by using inter-document similarities. However, RR and CR improve precision and recall respectively, not simultaneously. Thus, the improvement through RR and CR may be different according to whether a query is recall-deficient or not. However, previous researchers missed out this point, and separately investigated individual approaches, causing a limited improvement. To reflect all of positive effects by RR and CR, this paper proposes RCR, the re-ranking with cluster-based retrieval where RR is applied to initially-retrieved results of CR. Experimental results show that RCR significantly improves the baseline, while CR or RR sometim...
Abstract- Analyzing click-through data from a huge search engine log information shows that users ar...
Cross-modal retrieval tasks like image-to-text, audio-to-image retrieval, etc. are an important area...
Relevance feedback is the most popular query reformulation strategy. However, clicking data as user&...
Abstract. We adapt the cluster hypothesis for score-based information retrieval by claiming that clo...
Search systems often employ a re-ranking pipeline, wherein documents (or passages) from an initial p...
Inspired by the use of PageRank algorithms in document ranking, we develop and evaluate a cluster-ba...
Query-based information retrieval refers to the process of scoring documents given a short natural l...
Query-based information retrieval refers to the process of scoring documents given a short natural l...
Abstract. How to improve the rankings of the relevant documents plays a key role in information retr...
Inspired by the use of PageRank algorithms in document ranking, we develop and evaluate a cluster-ba...
A new means of evaluating the cluster hypothesis is introduced and the results of such an evaluatio...
Inspired by the use of PageRank algorithms in document ranking, we develop and evaluate a cluster-ba...
Fusion and clustering are two approaches to improving the effectiveness of information retrieval. In...
Fusion and clustering are two approaches to improving the effectiveness of information retrieval. In...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
Abstract- Analyzing click-through data from a huge search engine log information shows that users ar...
Cross-modal retrieval tasks like image-to-text, audio-to-image retrieval, etc. are an important area...
Relevance feedback is the most popular query reformulation strategy. However, clicking data as user&...
Abstract. We adapt the cluster hypothesis for score-based information retrieval by claiming that clo...
Search systems often employ a re-ranking pipeline, wherein documents (or passages) from an initial p...
Inspired by the use of PageRank algorithms in document ranking, we develop and evaluate a cluster-ba...
Query-based information retrieval refers to the process of scoring documents given a short natural l...
Query-based information retrieval refers to the process of scoring documents given a short natural l...
Abstract. How to improve the rankings of the relevant documents plays a key role in information retr...
Inspired by the use of PageRank algorithms in document ranking, we develop and evaluate a cluster-ba...
A new means of evaluating the cluster hypothesis is introduced and the results of such an evaluatio...
Inspired by the use of PageRank algorithms in document ranking, we develop and evaluate a cluster-ba...
Fusion and clustering are two approaches to improving the effectiveness of information retrieval. In...
Fusion and clustering are two approaches to improving the effectiveness of information retrieval. In...
Ranking is the central problem for information retrieval (IR), and employing machine learning techni...
Abstract- Analyzing click-through data from a huge search engine log information shows that users ar...
Cross-modal retrieval tasks like image-to-text, audio-to-image retrieval, etc. are an important area...
Relevance feedback is the most popular query reformulation strategy. However, clicking data as user&...