In information retrieval, retrieving relevant passages, as opposed to whole documents, not only directly benefits the end user by filtering out the irrelevant information within a long relevant document, but also improves retrieval accuracy in general. A critical problem in passage retrieval is to extract coherent relevant passages accurately from a document, which we refer to as passage extraction. While much work has been done on passage retrieval, the passage extraction problem has not been seriously studied. Most existing work tends to rely on presegmenting documents into fixed-length passages which are unlikely optimal because the length of a relevant passage is presumably highly sensitive to both the query and document. In this articl...
Extractive summarization usually automatically selects indicative sentences from a document accordin...
Abstract. Passage retrieval and pseudo relevance feedback/query expansion have been reported as two ...
Statistical machine learning techniques, while well proven in elds such as speech recognition, are j...
UIUC participated in the HARD track in TREC 2004 and focused on the evaluation of a new method for i...
Recent research has demonstrated the strong performance of hidden Markov models (HMM) applied to inf...
Passage retrieval has been expected to be an alternative method to resolve length-normalization prob...
We present a new method for information retrieval using hidden Markov models (HMMs). We develop a ge...
Abstract. We show that several previously proposed passage-based doc-ument ranking principles, along...
This paper explores both how and whether passage level retrieval (PLR) can improve information extra...
International audienceFocused retrieval retrieves and ranks sub-parts of documents according to thei...
The aim of this thesis is to describe passage retrieval (PR), with basis in results from various emp...
Large collections of full-text documents are now commonly used in automated information retrieval. W...
We present a nov el probabilistic method for topic segmentation on unstructured text. Oneprev43S a...
Abstract—In this paper, we propose an algorithm called coher-ence hidden Markov model (HMM) to extra...
A long query provides more useful hints for searching relevant documents, but it is likely to introd...
Extractive summarization usually automatically selects indicative sentences from a document accordin...
Abstract. Passage retrieval and pseudo relevance feedback/query expansion have been reported as two ...
Statistical machine learning techniques, while well proven in elds such as speech recognition, are j...
UIUC participated in the HARD track in TREC 2004 and focused on the evaluation of a new method for i...
Recent research has demonstrated the strong performance of hidden Markov models (HMM) applied to inf...
Passage retrieval has been expected to be an alternative method to resolve length-normalization prob...
We present a new method for information retrieval using hidden Markov models (HMMs). We develop a ge...
Abstract. We show that several previously proposed passage-based doc-ument ranking principles, along...
This paper explores both how and whether passage level retrieval (PLR) can improve information extra...
International audienceFocused retrieval retrieves and ranks sub-parts of documents according to thei...
The aim of this thesis is to describe passage retrieval (PR), with basis in results from various emp...
Large collections of full-text documents are now commonly used in automated information retrieval. W...
We present a nov el probabilistic method for topic segmentation on unstructured text. Oneprev43S a...
Abstract—In this paper, we propose an algorithm called coher-ence hidden Markov model (HMM) to extra...
A long query provides more useful hints for searching relevant documents, but it is likely to introd...
Extractive summarization usually automatically selects indicative sentences from a document accordin...
Abstract. Passage retrieval and pseudo relevance feedback/query expansion have been reported as two ...
Statistical machine learning techniques, while well proven in elds such as speech recognition, are j...