Open Peer Review. Open Publishing. Open Access. Open Discussion. Open Directory. Open Recommendations. Open API. Open Source.
Ontological Tree Generation for Enhanced Information Retrieval.
Anwaya Aras, Dina Manzi, Dr.Mangesh Bedekar
Jun 27, 2013 (modified: Jun 27, 2013)AKBC 2013 submissionreaders: everyone
Abstract:Information visualization seeks to leverage human visual processing to make sense of abstract information. One particularly rich class of information structures ripe for visualization are those representable as graphs (i.e. nodes and edges), including organization charts, website linkage, and computer networks. In this paper we propose a methodology to extract information from big data and convert it into a human comprehensible format of graphs to give the reader an objective overall idea of the document content. We put forth the design and implementation details to mapping our data into the Open Directory Project or the DMOZ tree and build a hierarchical ontological tree based on the extracted metadata.
Enter your feedback below and we'll get back to you as soon as possible.