2001
DOI: 10.1016/s0950-7051(00)00105-2
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Cited by 76 publications
(42 citation statements)
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“…• Unsupervised Feedback: It applies blind relevance feedback, and typically assumes that the top k documents returned by a search process are relevant (e.g., [6]). This also known as pseudo-relevance feedback.…”
Section: Query Refinement and Context-based Retrievalmentioning
confidence: 99%
See 1 more Smart Citation
“…• Unsupervised Feedback: It applies blind relevance feedback, and typically assumes that the top k documents returned by a search process are relevant (e.g., [6]). This also known as pseudo-relevance feedback.…”
Section: Query Refinement and Context-based Retrievalmentioning
confidence: 99%
“…Automatic topical search refers to automatically formulating queries with terms extracted from a thematic context. The resources collected by the formulation of topical queries can be used in different scenarios, such as responding to contextualized information needs [24,7], fulfilling long term information needs [36], collecting resources for topical Web portals [10], or accessing the Deep Web [20], among others.…”
Section: Introductionmentioning
confidence: 99%
“…Another system similar in purpose to our own is Watson [4], which suggests web pages to a computer user based on the documents currently open in a word processor or web browser. Watson uses a variety of heuristics to construct queries from the text of the documents, then sends these queries to the AltaVista search engine.…”
Section: Query-free Searchmentioning
confidence: 99%
“…A person interested in finding out about the Benedictine order would use the document in a different context from a person interested in cooking, and in each context, there would be a different answer to the question "What is this document about?" Information retrieval agents generally retrieve based on document content [3,6,7,14,16], and commonly treat a document as an independent entity, taking into account its relationship to the entire corpus but not to the immediate group of recently-consulted documents within which it was accessed. For example, in TFIDF-based indexing, an index vector is created for each document; the magnitude of each element indicates how well that term represents the contents of the document, based on its frequency within the document and the inverse of the frequency of documents in the corpus containing that term.…”
Section: Content or Context?mentioning
confidence: 99%