A long query provides more useful hints for searching relevant documents, but it is likely to introduce noise which affects retrieval performance. In order to smooth such adverse effect, it is important to reduce noisy terms, introduce and boost additional relevant terms. This paper presents a comprehensive framework, called Aspect Hidden Markov Model (AHMM), which integrates query reduction and expansion, for retrieval with long queries. It optimizes the probability distribution of query terms by utilizing intra-query term dependencies as well as the relationships between query terms and words observed in relevance feedback documents. Empirical evaluation on three large-scale TREC collections demonstrates that our approach, which is automa...
The paper presents two approaches to interactively refining user search formulations and their evalu...
In this paper, we report our experiments in the TREC 2009 Million Query Track. Our first line of stu...
Recent research has shown that long documents are unfairly penalised by a number of current retrieva...
A long query provides more useful hints for searching relevant documents, but it is likely to introd...
The Relevance Model (RM) incorporates pseudo relevance feedback to derive query language model and h...
We propose a novel method of query expansion for Language Modeling (LM) in Information Retrieval (IR...
We propose a novel method of query expansion for Language Modeling (LM) in Information Retrieval (IR...
We propose a novel method of query expansion for Language Modeling (LM) in Information Retrieval (IR...
The Relevance Model (RM) incorporates pseudo relevance feedback to derive query language model and h...
Query expansion, in the form of pseudo-relevance feedback or relevance feedback, is a common techniq...
Query language modeling based on relevance feedback has been widely applied to improve the effective...
This paper describes a framework for investigating the quality of different query expansion approach...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
In information retrieval (IR) research, more and more focus has been placed on optimizing a query la...
We propose a novel probabilistic method based on the Hidden Markov Model (HMM) to learn the structur...
The paper presents two approaches to interactively refining user search formulations and their evalu...
In this paper, we report our experiments in the TREC 2009 Million Query Track. Our first line of stu...
Recent research has shown that long documents are unfairly penalised by a number of current retrieva...
A long query provides more useful hints for searching relevant documents, but it is likely to introd...
The Relevance Model (RM) incorporates pseudo relevance feedback to derive query language model and h...
We propose a novel method of query expansion for Language Modeling (LM) in Information Retrieval (IR...
We propose a novel method of query expansion for Language Modeling (LM) in Information Retrieval (IR...
We propose a novel method of query expansion for Language Modeling (LM) in Information Retrieval (IR...
The Relevance Model (RM) incorporates pseudo relevance feedback to derive query language model and h...
Query expansion, in the form of pseudo-relevance feedback or relevance feedback, is a common techniq...
Query language modeling based on relevance feedback has been widely applied to improve the effective...
This paper describes a framework for investigating the quality of different query expansion approach...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
In information retrieval (IR) research, more and more focus has been placed on optimizing a query la...
We propose a novel probabilistic method based on the Hidden Markov Model (HMM) to learn the structur...
The paper presents two approaches to interactively refining user search formulations and their evalu...
In this paper, we report our experiments in the TREC 2009 Million Query Track. Our first line of stu...
Recent research has shown that long documents are unfairly penalised by a number of current retrieva...