Spelling suggestions: "subject:"1nternet forminformation retrieval"" "subject:"1nternet forminformation etrieval""
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Informationssuche im Internet der Suchprozess aus psychologischer und informationstechnologischer SichtWirschum, Nadine January 2003 (has links)
Zugl.: Saarbrücken, Univ., Diplomarbeit, 2003 u.d.T.: Wirschum, Nadine: Erleichterung der Informationssuche im Internet
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Navigating hyperspace : assessing usabilitySmith, Pauline January 1994 (has links)
No description available.
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Integrating information from heterogeneous databases using agents and metadataEl Khatib, Hazem Turki January 2000 (has links)
No description available.
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Resource discovery and fair intelligent admission control over scalable Internet /Li, Ming. January 2004 (has links)
Thesis (Ph.D)--University of Technology, Sydney, 2004.
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World Wide Web Hypertext linkage patternsSchoon, Perry L. Hecht, Jeffrey. January 1997 (has links)
Thesis (Ph. D.)--Illinois State University, 1997. / Title from title page screen, viewed June 8, 2006. Dissertation Committee: Jeffrey B. Hecht (chair), Patricia H. Klass, Rodney P. Riegle, Roberta K. Weber. Includes bibliographical references (leaves 124-135) and abstract. Also available in print.
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Extracting Causal Relations between News Topics from Distributed SourcesMiranda Ackerman, Eduardo Jacobo 07 December 2013 (has links) (PDF)
The overwhelming amount of online news presents a challenge called news information overload. To mitigate this challenge we propose a system to generate a causal network of news topics. To extract this information from distributed news sources, a system called Forest was developed. Forest retrieves documents that potentially contain causal information regarding a news topic. The documents are processed at a sentence level to extract causal relations and news topic references, these are the phases used to refer to a news topic. Forest uses a machine learning approach to classify causal sentences, and then renders the potential cause and effect of the sentences. The potential cause and effect are then classified as news topic references, these are the phrases used to refer to a news topics, such as “The World Cup” or “The Financial Meltdown”. Both classifiers use an algorithm developed within our working group, the algorithm performs better than several well known classification algorithms for the aforementioned tasks.
In our evaluations we found that participants consider causal information useful to understand the news, and that while we can not extract causal information for all news topics, it is highly likely that we can extract causal relation for the most popular news topics. To evaluate the accuracy of the extractions made by Forest, we completed a user survey. We found that by providing the top ranked results, we obtained a high accuracy in extracting causal relations between news topics.
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Extracting Causal Relations between News Topics from Distributed SourcesMiranda Ackerman, Eduardo Jacobo 08 November 2013 (has links)
The overwhelming amount of online news presents a challenge called news information overload. To mitigate this challenge we propose a system to generate a causal network of news topics. To extract this information from distributed news sources, a system called Forest was developed. Forest retrieves documents that potentially contain causal information regarding a news topic. The documents are processed at a sentence level to extract causal relations and news topic references, these are the phases used to refer to a news topic. Forest uses a machine learning approach to classify causal sentences, and then renders the potential cause and effect of the sentences. The potential cause and effect are then classified as news topic references, these are the phrases used to refer to a news topics, such as “The World Cup” or “The Financial Meltdown”. Both classifiers use an algorithm developed within our working group, the algorithm performs better than several well known classification algorithms for the aforementioned tasks.
In our evaluations we found that participants consider causal information useful to understand the news, and that while we can not extract causal information for all news topics, it is highly likely that we can extract causal relation for the most popular news topics. To evaluate the accuracy of the extractions made by Forest, we completed a user survey. We found that by providing the top ranked results, we obtained a high accuracy in extracting causal relations between news topics.
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Tagging, rating, posting : studying forms of user contribution for web-based information management and information retrieval /Heckner, Markus January 2008 (has links)
Zugl.: Regensburg, Univ., Diss., 2008
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Querying databases privately : a new approach to private information retrieval /Asonov, Dmitri. January 2004 (has links)
Humboldt-Univ., Diss.--Berlin, 2003.
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