A Question Answering Framework Based on Hybridization of Deep Learning and Semantic Web Techniques (original) (raw)

FUOYE Journal of Engineering and Technology

The question answering (QA) system has been existing for several years. QA systems are divided into different processes such as question processing, document processing, paragraph extraction, answer extraction, question analysis, phrase mapping, disambiguation, query construction, querying the Knowledge Base (KB), and result ordering on user response respectively. Based on these processes, many models have been developed using approaches ranging from linguistic, statistical, and pattern matching. Popular models are Feedback, Refinement and Extended VocabularY Aggregation (FREyA), PowerAqua, SemSek, Semantic Interpretation of User Queries for QA on Interlinked Data (SINA), DEep Answers for maNy Naturally Asked questions (DEANNA), gAnswer, SemGraph, OKBQA (Open Knowledge Base and Question Answering) and Semantic Question Answering (SQA), for performance evaluation, these mostly focus on higher precision, recall, and/or F-measure. However, most of these models are constrained in the fo...