Natural Language Question Answering in Open Domains
Închide
Conţinutul numărului revistei
Articolul precedent
Articolul urmator
955 5
Ultima descărcare din IBN:
2021-10-01 12:23
Căutarea după subiecte
similare conform CZU
004.434 (4)
Programe. Software (295)
SM ISO690:2012
TUFIŞ, Dan. Natural Language Question Answering in Open Domains. In: Computer Science Journal of Moldova, 2011, nr. 2(56), pp. 146-164. ISSN 1561-4042.
EXPORT metadate:
Google Scholar
Crossref
CERIF

DataCite
Dublin Core
Computer Science Journal of Moldova
Numărul 2(56) / 2011 / ISSN 1561-4042 /ISSNe 2587-4330

Natural Language Question Answering in Open Domains
CZU: 004.434

Pag. 146-164

Tufiş Dan
 
Institute for Artificial Intelligence, Romanian Academy
 
 
Disponibil în IBN: 15 decembrie 2013


Rezumat

With the ever-growing volume of information on the web, the traditional search engines, returning hundreds or thousands of documents per query, become more and more demanding on the user patience in satisfying his/her information needs. Question Answering in Open Domains is a top research and development topic in current language technology. Unlike the standard search engines, based on the latest Information Retrieval (IR) methods, open domain question-answering systems are expected to deliver not a list of documents that might be relevant for the user's query, but a sentence or a paragraph answering the question asked in natural language. This paper reports on the construction and testing of a Question Answering (QA) system which builds on several web services developed at the Research Institute for Ar- tificial Intelligence (ICIA/RACAI). The evaluation of the system has been independently done by the organizers of the ResPubliQA 2009 exercise and has been rated the best performing system with the highest improvement due to the natural language processing technology over a baseline state-of-the-art IR system. The system was trained on a specific corpus, but its functionality is independent on the linguistic register of the training data.

Cuvinte-cheie
Open Domain search, Question Answering Evaluation, question analysis, query formulation, search engin