TermPedia for Interactive Document Enrichment: Using Technical Terms (TT) to Provide Relevant Contextual Information
نویسنده
چکیده
Technical Terms (TTs) and/or jargon embedded within technical documents can make it difficult or impossible to understand a document. This is why we would like to investigate a possibility of providing information for the TTs by linking them to relevant lexicon or encyclopedia pages. In this way, additional contextual information relating to the TTs shall be readily available and hopefully make reading and understanding easier.
منابع مشابه
Easy Educational Literature Comprehension - Applying TermPedia to Information Retrieval Knowledge Domain
This paper provides a detailed description of how TermPedia which is a document enrichment tool, is applied to educational literature in order to help students easily understand their reading material. The paper assumes that technical terms are one of the major hindrances to document content comprehension. TermPedia has the ability to extract, define, and link technical terms to Wikipedia. It i...
متن کاملEffect of Document Enrichment on E-Learning
In order to realize the idea of document enrichment we developed a tool called TermPedia which predicts and defines technical terms. The definitions are extracted from Wikipedia, and the technical terms are also linked to contextually relevant Wikipedia articles which provide further explanation for the definitions. This paper presents results from a user study that was carried out to find out ...
متن کاملRelevant term suggestion in interactive web search based on contextual information in query session logs
This paper proposes an effective term suggestion approach to interactive Web search. Conventional approaches to making term suggestions involve extracting co-occurring keyterms from highly ranked retrieved documents. Such approaches must deal with term extraction difficulties and interference from irrelevant documents, and, more importantly, have difficulty extracting terms that are conceptuall...
متن کاملA survey on Automatic Text Summarization
Text summarization endeavors to produce a summary version of a text, while maintaining the original ideas. The textual content on the web, in particular, is growing at an exponential rate. The ability to decipher through such massive amount of data, in order to extract the useful information, is a major undertaking and requires an automatic mechanism to aid with the extant repository of informa...
متن کاملText-Based Ontology Enrichment Using Hierarchical Self-organizing Maps
The success of the Semantic Web research is dependent upon the construction of complete and reliable domain ontologies. In this paper we describe an unsupervised framework for domain ontology enrichment based on mining domain text corpora. Specifically, we enrich the hierarchical backbone of an existing ontology, i.e. its taxonomy, with new domain-specific concepts. The framework is based on an...
متن کامل