IMPROVING EFFECTIVENESS INFORMATION RETRIEVAL SYSTEM USING PSEUDO RELEVANCE FEEDBACK
Pseudo relevance feedback (PRF) enhances the retrieval performance of the relevance feedback. Pseudo relevance feedback assumes that the k highest-ranking documents in the first retrieval are relevant and extract query expansion from them. Rocchio algorithm is a classical algorithm for implementi...
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Main Author: | |
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Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/70703 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Pseudo relevance feedback (PRF) enhances the retrieval performance of the
relevance feedback. Pseudo relevance feedback assumes that the k highest-ranking
documents in the first retrieval are relevant and extract query expansion from them.
Rocchio algorithm is a classical algorithm for implementing relevance feedback
into vector space models. The Rocchio algorithm forms a new query moves toward
the centroid of the relevant documents and keeps away from centroid of the
irrelevant documents. However, in the relevance feedback method, irrelevant
documents are ignored. In this paper, we conduct a method for pseudo irrelevance
feedback (PIRF) that effectively applied to the Rocchio algorithm. Documents with
a high ranking outside of k relevant documents and those documents dissimilar to
any k relevant documents can extract good query expansion if the documents are
applied as irrelevant documents. The Rocchio algorithm uses PRF as a component
of relevant documents and this research method for irrelevant documents as a
component of irrelevant documents denoted by Roc PRF PIRF (filter). Experiment
on CISI dataset show that Roc PRF PIRF (filter) improved performance by testing
several variations the number of irrelevant documents compared to the standard
Rocchio algorithm and Rocchio algorithm with irrelevant documents but without
proposed method. |
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