Abstract
The tremendous development in information technology led to an explosion of data and motivated the need for powerful yet efficient strategies for knowledge discovery. Question answering (QA) systems made it possible to ask questions and retrieve answers using natural language queries. In ontology-based QA system, the knowledge-based data, where the answers are sought, have a structured organization. The question-answer retrieval of ontology knowledge base provides a convenient way to obtain knowledge for use. In this paper, QAPD, an ontology-based QA system applied to the physics domain, which integrates natural language processing, ontologies and information retrieval technologies to provide informative information for users, is presented. This system allows users to retrieve information from formal ontologies using input queries formulated in natural language. We proposed inferring schema mapping method, which uses the combination of semantic and syntactic information, and attribute-based inference to transform users’ questions into ontological knowledge base query. In addition, a novel domain ontology for physics domain, called EAEONT, is presented. Relevant standards and regulations have been utilized extensively during the ontology building process. The original characteristic of system is the strategy used to fill the gap between users’ expressiveness and formal knowledge representation. This system has been developed and tested on the English language and using an ontology modeling the physics domain. The performance level achieved enables the use of the system in real environments.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Abacha AB, Zweigenbaum P (2015) MEANS: a medical question-answering system combining NLP techniques and semantic Web technologies. Inf Process Manag 51:570–594
Abdi A, Idris N, Alguliev RM, Aliguliyev RM (2015a) Automatic summarization assessment through a combination of semantic and syntactic information for intelligent educational systems. Inf Process Manag 51:340–358
Abdi A, Idris N, Alguliyev R, Aliguliyev R (2015b) Query-based multi-documents summarization using linguistic knowledge and content word expansion. Soft Comput. doi:10.1007/s00500-015-1881-4
Aijun Z (2006) Research and implementaion of ontology-based intelligent question answer system. Comput Appl Softw 5:027
Asiaee AH, Minning T, Doshi P, Tarleton RL (2015) A framework for ontology-based question answering with application to parasite immunology. J Biomed Semant 6:1–25
Bertola F, Patti V (2015) Ontology-based affective models to organize artworks in the social semantic web. Inf Process Manage 52:139–162
Besbes G, Baazaoui-Zghal H, Ghezela HB (2015) An ontology-driven visual question-answering framework. In: Information visualisation (IV), 19th international conference on, 2015. IEEE, pp 127–132
Cullity BD, Graham CD (2011) Introduction to magnetic materials. Wiley, New York
Dalmas T, Webber B (2007) Answer comparison in automated question answering. J Appl Log 5:104–120
Damljanovic D, Agatonovic M, Cunningham H (2010) Natural language interfaces to ontologies: Combining syntactic analysis and ontology-based lookup through the user interaction. In: The semantic web: research and applications. Springer, Berlin, pp 106–120
Dragoni M, da Costa Pereira C, Tettamanzi AG (2012) A conceptual representation of documents and queries for information retrieval systems by using light ontologies. Expert Syst Appl 39:10376–10388
Hu D, Wang W, Xie N, Cao C (2012) ACQA_onto: an ontology approach for restrain domain question answering system. In: Information science and control engineering (ICISCE 2012), IET international conference on, 2012. IET, pp 1–5
Jaccard P (1912) The distribution of the flora in the alpine zone. New Phytol 11:37–50
Kalaivani S, Duraiswamy K (2012) Comparison of question answering systems based on ontology and semantic web in different environment. J Comput Sci 8:1407
Küçük D, Salor Ö, İnan T, Çadırcı I, Ermiş M (2010) PQONT: a domain ontology for electrical power quality. Adv Eng Inf 24:84–95
Lee S-M, Ryu P, Choi K-S (2007) Ontology-based question answering system. In: The 6th international semantic web conference
Li F, Jagadish HV (2014) NaLIR: an interactive natural language interface for querying relational databases. In: Proceedings of the 2014ACM SIGMOD international conference on management of data. ACM, pp 709–712
Lin R (2004) A package for automatic evaluation of summaries. In: Text summarization branches out: proceedings of the ACL-04 workshop, pp 74–81
Lloret E (2012) Text summarisation based on human language technologies and its applications. Proces Leng Nat 48:119–122
Lopez V, Uren V, Motta E, Pasin M (2007) AquaLog: an ontology-driven question answering system for organizational semantic intranets Web Semantics: science. Serv Agents World Wide Web 5:72–105
Lu W, Cheng J, Yang Q (2012) Question answering system based on web. In: Proceedings of the 2012 fifth international conference on intelligent computation technology and automation. IEEE Computer Society, pp 573–576
Manning CD, Raghavan P, Schütze H (2008) Introduction to information retrieval, vol 1. Cambridge University Press, Cambridge
Miller GA, Charles WG (1991) Contextual correlates of semantic similarity. Lang Cogn Process 6:1–28
Noy NF, McGuinness DL (2001) Ontology development 101: a guide to creating your first ontology. Stanford knowledge systems laboratory technical report KSL-01-05 and Stanford medical informatics technical report SMI-2001-0880
Paul M, Jamal S (2015) An improved SRL based plagiarism detection technique using sentence. Rank Proc Comput Sci 46:223–230
Pavlić M, Han ZD, Jakupović A (2015) Question answering with a conceptual framework for knowledge-based system development “Node of Knowledge”. Expert Syst Appl 42:5264–5286
Peral J, Ferrández A, De Gregorio E, Trujillo J, Maté A, Ferrández LJ (2014) Enrichment of the phenotypic and genotypic data warehouse analysis using question answering systems to facilitate the decision making process in cereal breeding programs. Ecol Inform 26:203–216
Raj P (2013) Architecture of an ontology-based domain-specific natural language question answering system. arXiv preprint arXiv:1311.3175
Tomiyama T (1994) From general design theory to knowledge-intensive engineering. Artif Intell Eng Des Anal Manuf 8:319–333
Toti D (2014) AQUEOS: a system for question answering over semantic data. In: Intelligent networking and collaborative systems (INCoS), 2014 international conference on. IEEE, pp 716–719
Tsuruoka Y, Tsujii Ji (2005) Bidirectional inference with the easiest-first strategy for tagging sequence data. In: Proceedings of the conference on human language technology and empirical methods in natural language processing. Association for Computational Linguistics, pp 467–474
van Rijsbergen CJ (1986) (invited paper) A new theoretical framework for information retrieval. In: Proceedings of the 9th annual international ACM SIGIR conference on research and development in information retrieval. ACM, pp 194–200
Vani K, Gupta D Using K-means cluster based techniques in external plagiarism detection. In: Contemporary computing and informatics (IC3I), 2014 international conference on, 2014. IEEE, pp 1268–1273
Vargas-Vera M, Motta E, Domingue J (2003) An ontology-driven question answering system (AQUA), new directions in question answering. MIT Press, Cambridge
Varile GB, Zampolli A (1997) Survey of the state of the art in human language technology, vol 13. Cambridge University Press, Cambridge
Xie X, Song W, Liu L, Du C, Wang H (2015) Research and implementation of automatic question answering system based on ontology. In: Control and decision conference (CCDC), 2015 27th Chinese. IEEE, pp 1366–1370
Xu J, Li Y (2010) Design and implementation of intelligent question answering system based on ontology. In: 2010 Second international conference on computational intelligence and natural computing, pp 213–216
Zayaraz G (2015) Concept relation extraction using Naïve Bayes classifier for ontology-based question answering systems. J King Saud Univ Comput Inf Sci 27:13–24
Acknowledgments
This work is supported by the GPLAODQA Project (P.No: RACE CR009- 2014).
Author information
Authors and Affiliations
Corresponding author
Ethics declarations
Conflict of interest
I hereby and on behalf of the co-authors, declare all the authors agreed to submit the article exclusively to this journal and also declare that there is no conflict of interests regarding the publication of this article.
Ethical approval
This article does not contain any studies with human participants performed by any of the authors
Additional information
Communicated by V. Loia.
Rights and permissions
About this article
Cite this article
Abdi, A., Idris, N. & Ahmad, Z. QAPD: an ontology-based question answering system in the physics domain. Soft Comput 22, 213–230 (2018). https://doi.org/10.1007/s00500-016-2328-2
Published:
Issue Date:
DOI: https://doi.org/10.1007/s00500-016-2328-2