With the rapid growth and maturity of Question-Answering (QA) domain, non-factoid Question-Answering tasks are in high demand. However, existing Question-Answering systems are either fact-based, or highly keyword related and hard-coded. Moreover, if QA is to become more personable, sentiment of the question and answer should be taken into account. However, there is not much research done in the field of non-factoid Question-Answering systems based on sentiment analysis, that would enable a system to retrieve answers in a more emotionally intelligent way. This study investigates to what extent could prediction of the best answer be improved by adding an extended representation of sentiment information into non-factoid Question-Answering
Copyright © 2013 ISSR Journals. This is an open access article distributed under the Creative Common...
The task of Question Answering (QA) is arguably one of the oldest tasks in Natural Language Processi...
We propose a robust answer reranking model for non-factoid questions that inte-grates lexical semant...
Question Answering (QA) is a field of study addressed to develop automatic methods for answering que...
The treatment of factual data has been widely studied in different areas of Nat-ural Language Proces...
University of Minnesota M.S. thesis. August 2013. Major: Computer science. Advisor: Dr. Carolyn Crou...
The development of the Web 2.0 led to the birth of new textual genres such as blogs, reviews or foru...
The task of a question answering (QA) system is to automatically answer questions asked by humans, e...
Automatic question answering (QA), which can greatly facilitate the access to information, is an imp...
Intelligent interaction between humans and computers has been a dream of artificial intelligence sin...
Abstract: Question answering System (QAS) represents a specialized information retrieval (IR) mecha...
SUMMARY This paper describes a flexible strategy to gen-erate candidate answers for factoid question...
Question answering communities (QAC) are nowadays becoming widely used due to the huge facilities an...
The rigorousness, professionalism and seriousness of answer contents in social Q&A communities have ...
AbstractThe need to query information content available in various formats including structured and ...
Copyright © 2013 ISSR Journals. This is an open access article distributed under the Creative Common...
The task of Question Answering (QA) is arguably one of the oldest tasks in Natural Language Processi...
We propose a robust answer reranking model for non-factoid questions that inte-grates lexical semant...
Question Answering (QA) is a field of study addressed to develop automatic methods for answering que...
The treatment of factual data has been widely studied in different areas of Nat-ural Language Proces...
University of Minnesota M.S. thesis. August 2013. Major: Computer science. Advisor: Dr. Carolyn Crou...
The development of the Web 2.0 led to the birth of new textual genres such as blogs, reviews or foru...
The task of a question answering (QA) system is to automatically answer questions asked by humans, e...
Automatic question answering (QA), which can greatly facilitate the access to information, is an imp...
Intelligent interaction between humans and computers has been a dream of artificial intelligence sin...
Abstract: Question answering System (QAS) represents a specialized information retrieval (IR) mecha...
SUMMARY This paper describes a flexible strategy to gen-erate candidate answers for factoid question...
Question answering communities (QAC) are nowadays becoming widely used due to the huge facilities an...
The rigorousness, professionalism and seriousness of answer contents in social Q&A communities have ...
AbstractThe need to query information content available in various formats including structured and ...
Copyright © 2013 ISSR Journals. This is an open access article distributed under the Creative Common...
The task of Question Answering (QA) is arguably one of the oldest tasks in Natural Language Processi...
We propose a robust answer reranking model for non-factoid questions that inte-grates lexical semant...