Abstract
Knowledge mobilisation is a transition from the prevailing knowledge management technology that has been widely used in industry for the last 20 years to a new methodology and some innovative methods for knowledge representation, formation and development and for knowledge retrieval and distribution. Knowledge mobilisation aims at coming to terms with some of the problems of knowledge management and at the same time to introduce new theory, new methods and new technology. More precisely, this paper presents an outline of a fuzzy ontology as an enhanced version of classical ontology and demonstrates some advantages for practical decision making. We show that a number of soft computing techniques, e.g. aggregation functions and interval valued fuzzy numbers, will support effective and practical decision making on the basis of the fuzzy ontology. We demonstrate the knowledge mobilisation methods with the construction of a support system for finding the best available wine for a number of wine drinking occasions using a fuzzy wine ontology and fuzzy reasoning methods; the support system has been implemented for a Nokia N900 smart phone.
Similar content being viewed by others
References
Acampora G, Gaeta M, Loia V, Vadilakos AV (2010) Interoperable and adaptive fuzzy services for ambient intelligence applications. ACM Trans Autonom Adapt Syst 5:1–26
Acampora G, Loia V (2010) Fuzzy control interoperability and scalability for adaptive domotic framework. IEEE Trans Ind Inform 1:97–111
Beliakov G, Pradera A, Calvo T (2007) Aggregation functions: a guide for practitioners. Series: studies in fuzziness and soft computing. Springer, Berlin
Calegari S, Ciucci D (2006) Integrating fuzzy logic in ontologies. In: Proceedings of the 8th International Conference on Enterprise Information Systems, pp 66–73
Calegari S, Ciucci D (2010) Granular computing applied to ontologies. Int J Approx Reason 5:391–401
Carlsson C, Brunelli M, Mezei J (2010) Fuzzy ontology and information granulation: an approach to knowledge mobilisation. Proc IPMU 2010 (2):420–429
Dubois D, Prade H (1980) Fuzzy sets and systems: theory and applications. Academic Press, New York
Goguen JA (1967) L-Fuzzy sets. J Math Anal Appl 18:145–174
Grattan-Guiness I (1975) Fuzzy membership mapped onto interval and many-valued quantities. Z. Math. Logik. Grundladen Math. 22:149–160
Gruber T (1993) A translation approach to portable ontology specification. Knowl Acquis 5:199–220
Hudelot C, Atif J, Bloch I (2008) Fuzzy spatial relation ontology for image interpretation. Fuzzy Sets Syst 159:1929–1951
Jahn KU (1975) Intervall-wertige Mengen. Math. Nach. 68:115–132
Keen PGW, Mackintosh R (2001) The freedom economy: gaining the mcommerce edge in the era of the wireless internet. Osborne/McGraw-Hill, New York
Klir GJ, Yuan B (1995) Fuzzy sets and fuzzy logic: theory and applications. Pretience Hall, New Jersey
Knappe R, Bulskov H, Andreasen T (2007) Perspectives on ontology-based querying. Int J Intell Syst 22:739–761
Lee CS, Jian ZW, Huang LK (2005) A fuzzy ontology and its application to news summarization. IEEE Trans Syst Man Cyber B 35:859–880
Lee CS, Wang MH, Acampora G, Loia V, Hsu CY (2009) Ontology-based intelligent fuzzy agent for diabetes application. In: Proceeding of the 2009 IEEE Symposium on Computational Intelligence for Intelligent Agents, pp 16–22
Lee CS, Wang MH, Hagras H (2010) A type-2 fuzzy ontology and its application to personal diabetic-diet recommendation. IEEE Trans Fuzzy Syst 18:374–395
Lee C-S, Wang M-H, Acampora G, Hsu C-Y, Hagras H (2010) Diet assessment based on type-2 fuzzy ontology and fuzzy markup language. Int J Intell Syst 25:1187–1216
Li R, Sun X, Lu Z, Wen K, Li Y (2007) Towards a type-2 fuzzy description logic for semantic search engine. Advances in data and web management. Lecture notes in computer science, vol 4505, pp 805–812
Parry D (2004) Fuzzification of a standard ontology to encourage reuse. In: Proceedings of IEEE International conference on information reuse and integration, pp 582–587
Parry D (2006) Fuzzy ontologies for information retrieval on the WWW. In: Bouchon-Meunier B, Gutierrez Rios J, Magdalena L, Yager RR. (ed.) Fuzzy logic and the semantic web, vol 1. Capturing intelligence series. Elsevier, Amsterdam
Sambuc R (1975) Fonctions ϕ-floues. Application l’aide au diagnostic en pathologie thyroidienne. PhD thesis Univ. Marseille, France
Straccia U (2009) Multi-criteria decision making in fuzzy description logics: a first step. Proc KES 2009, part I 79–87
Wang G, Li X (1998) The applications of interval-valued fuzzy numbers and interval-distribution numbers. Fuzzy Sets Syst 98:331–335
Wang M-H, Lee C-S, Hsieh K-L, Hsu C-Y, Acampora G, Chang C-C (2010) Ontology-based multi-agents for intelligent healthcare applications. J Amb Intel Humaniz Comput 1:111–131
Yager RR (1988) Ordered weighted averaging operators in multicriteria decision making. IEEE Trans Syst Man Cyber 18:183–190
Yager RR (2004) OWA aggregation over a continuous interval argument with applications to decision making. IEEE Trans Syst Man Cyber B 34:1952–1963
Zadeh LA (1975) The concept of a linguistic variable and its application to approximate reasoning-I. Inf Sci 8:199–249
Author information
Authors and Affiliations
Corresponding author
Additional information
This paper is an extended version of ‘Fuzzy Ontologies and Knowledge Mobilisation: Turning Amateurs into Wine Connoisseurs’ presented at the FUZZ-IEEE 2010. This research has been funded through the TEKES strategic research project 40211/08 and the corporate partners were: Kemira, Metso Automation, Rautaruukki and UPM Kymmene.
Rights and permissions
About this article
Cite this article
Carlsson, C., Brunelli, M. & Mezei, J. Decision making with a fuzzy ontology. Soft Comput 16, 1143–1152 (2012). https://doi.org/10.1007/s00500-011-0789-x
Published:
Issue Date:
DOI: https://doi.org/10.1007/s00500-011-0789-x