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You are here: Home / ieee projects 2014 / CONTENT AND QUERYING VALUE BASED DOCUMENT ANNOTATION

CONTENT AND QUERYING VALUE BASED DOCUMENT ANNOTATION

November 12, 2014 by IeeeAdmin

Annotations are comments, notes, explanations, or other types of external remarks that can be attached to a Web document or to a selected part of a document. As they are external, it is possible to annotate any Web document independently, without needing to edit the document itself. From a technical point of view, annotations are usually seen as metadata, as they give additional information about an existing piece of data. A large number of organizations today generate and share textual descriptions of their products, services, and actions. Such collections of textual data contain significant amount of structured information, which remains buried in the unstructured text. While information extraction algorithms facilitate the extraction of structured relations, they are often expensive and inaccurate, especially when operating on top of text that does not contain any instances of the targeted structured information. We present a novel alternative approach that facilitates the generation of the structured metadata by identifying documents that are likely to contain information of interest and this information is going to be subsequently useful for querying the database. Our approach relies on the idea that humans are more likely to add the necessary metadata during creation time, if prompted by the interface; or that it is much easier for humans (and/or algorithms) to identify the metadata when such information actually exists in the document, instead of naively prompting users to fill in forms with information that is not available in the document. As a major contribution of this paper, we present algorithms that identify structured attributes that are likely to appear within the document, by jointly utilizing the content of the text and the query workload. Our experimental evaluation shows that our approach generates superior results compared to approaches that rely only on the textual content or only on the query workload, to identify attributes of interest.

Filed Under: ieee projects 2014 Tagged With: Bulk IEEE Projects 2015, IEEE Projects 2015, IEEE Projects 2015 For BE Cse, IEEE Projects 2015 For Cse, ieee projects 2015 for it, IEEE Projects 2015 For MCA, IEEE Projects 2015 For ME Cse, ieee projects 2015 in data mining, java ieee projects 2015

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