An Ontology-based Collaboration Recommender System using Patents
Sandra Geisler, Rihan Hai, Christoph Quix
2015
Abstract
Successful research and development projects start with finding the right partners for the venture. Especially for interdisciplinary projects, this is a difficult task as experts from foreign domains are not known. Furthermore, the transfer of knowledge from research into practice is becoming more important in research projects to enable the quick application of research results. This is in particular relevant for projects in medical engineering. Patents and publications contain technical knowledge which can be exploited to find suitable experts. Patents are usually more product-oriented as the inventors have to describe an application area and products might be protected by patents. On the other hand, scientific publications represent the state-of-the-art in research. The challenge is finding the right mixture of research- or application-oriented experts from different domains. Hence, we propose a recommender system for experts for a certain topic based on patent topic clustering, ontologies, and ontology matching, which maps patents to corresponding innovation fields. The medical engineering domain serves as a first test bed, since projects in this area are highly interdisciplinary.
References
- Aras, H., Hackl-Sommer, R., Schwantner, M., and Sofean, M. (2014). Applications and challenges of text mining with patents. In Proc. Intl. Workshop on Patent Mining and its Applications. Stiftung Univ. Hildesheim.
- Awasthi, A., Adetiloye, T., and Crainic, T. G. (2015). Collaboration partner selection for city logistics planning under municipal freight regulations. Applied Mathematical Modelling.
- Balog, K. and De Rijke, M. (2007). Determining expert profiles (with an application to expert finding). InIJCAI, volume 7, pages 2657-2662.
- Bonino, D., Ciaramella, A., and Corno, F. (2010). Review of the state-of-the-art in patent information and forthcoming evolutions in intelligent patent informatics. World Patent Information, 32(1):30-38.
- Chen, Y.-L. and Hu, H.-L. (2006). An overlapping cluster algorithm to provide non-exhaustive clustering. Europ. J. of Operational Research, 173(3):762-780.
- Deutsche Gesellschaft für Biomed. Technik im VDE (2012). Empfehlungen zur Verbesserung der Innovationsrahmenbedingungen für HochtechnologieMedizin. Technical report, VDE.
- Fall, C. J., Törcsvári, A., Benzineb, K., and Karetka, G. (2003). Automated categorization in the international patent classification. In ACM SIGIR Forum, volume 37, pages 10-25. ACM.
- Geum, Y., Lee, S., Yoon, B., and Park, Y. (2013). Identifying and evaluating strategic partners for collaborative r&d: Index-based approach using patents and publications. Technovation, 33(6):211-224.
- Ghazvinian, A., Noy, N., and Musen, M. (2009). Creating mappings for ontologies in biomedicine: simple methods work. In AMIA Ann. Symp. Proc., pages 198-202.
- Gomez-Perez, A. (2004). Ontology evaluation. In Staab, S. and Studer, R., editors, Handbook on Ontologies, pages 250-273. Springer.
- Gonc¸alves, C. A., Gonc¸alves, C. T., Camacho, R., and Oliveira, E. C. (2010). The impact of pre-processing on the classification of medline documents. In PRIS, pages 53-61.
- Jonquet, C., Musen, M. A., and Shah, N. H. (2010). Building a biomedical ontology recommender web service. J. Biomedical Semantics, 1(S-1):S1.
- Kensche, D., Quix, C., Li, X., and Li, Y. (2007). GeRoMeSuite: A system for holistic generic model management. In Proc. VLDB, pages 1322-1325.
- Mogee, M. E. and Kolar, R. G. (1999). Patent co-citation analysis of eli lilly & co. patents. Expert Opinion on Therapeutic Patents, 9(3):291-305.
- Poveda-Villalón, M., Suárez-Figueroa, M. C., and GómezPérez, A. (2012). Validating ontologies with oops! In Knowledge Engineering and Knowledge Management, pages 267-281. Springer.
- Rafiei, M. and Kardan, A. A. (2015). A novel method for expert finding in online communities based on concept map and pagerank. Human-centric Computing and Information Sciences, 5(1):1-18.
- Rani, S. K., Raju, K., and Kumari, V. V. (2015). Expert finding system using latent effort ranking in academic social networks. Intl. J. of Information Technology and Computer Science, 2:21-27.
- Robin, S. and Schubert, T. (2013). Cooperation with public research institutions and success in innovation: Evidence from france and germany. Research Policy, 42(1):149-166.
- Schlötelburg, C., Weiß, C., Hahn, P., Becks, T., and Mühlbacher, A. C. (2008). Identifizierung von Innovationshürden in der Medizintechnik. Technical report, Bundesministeriums für Bildung und Forschung.
- Suárez-Figueroa, M. C. (2010). NeOn Methodology for building ontology networks: specification, scheduling and reuse. PhD thesis, Universidad Politecnica de Madrid.
- Suárez-Figueroa, M. C., Gómez-Pérez, A., and VillazónTerrazas, B. (2009). How to write and use the ontology requirements specification document. InProc. OTM 2009, pages 966-982. Springer.
- Trappey, A. J., Trappey, C. V., Hsu, F.-C., and Hsiao, D. W. (2009). A fuzzy ontological knowledge document clustering methodology. IEEE Trans. on Systems, Man, and Cybernetics, Part B, 39(3):806-814.
- Trappey, C. V., Trappey, A. J., and Wu, C.-Y. (2010). Clustering patents using non-exhaustive overlaps. System Science and System Engineering, 19(2):162-181.
- Tseng, Y.-H., Lin, C.-J., and Lin, Y.-I. (2007). Text mining techniques for patent analysis. Information Processing & Management, 43(5):1216-1247.
- Vrandec?ic, D. (2009). Ontology evaluation. In Staab, S. and Studer, R., editors, Handbook on Ontologies, chapter 13, pages 293-313. Springer.
- Wang, G. A., Jiao, J., Abrahams, A. S., Fan, W., and Zhang, Z. (2013). Expertrank: A topic-aware expert finding algorithm for online knowledge communities. Decision Support Systems, 54(3):1442-1451.
- Wanner, L., Baeza-Yates, R., Brügmann, S., Codina, J., Diallo, B., Escorsa, E., Giereth, M., Kompatsiaris, Y., Papadopoulos, S., Pianta, E., et al. (2008). Towards content-oriented patent document processing. World Patent Information, 30(1):21-33.
- Wu, C. and Barnes, D. (2011). A literature review of decision-making models and approaches for partner selection in agile supply chains. Purchasing and Supply Management, 17(4):256-274.
- Yang, Y., Ault, T., Pierce, T., and Lattimer, C. W. (2000). Improving text categorization methods for event tracking. In Proc. of the 23rd Intl. Annual ACM SIGIR Conf., pages 65-72. ACM.
- Yimam-Seid, D. and Kobsa, A. (2003). Expert-finding systems for organizations: Problem and domain analysis and the demoir approach. J. of Organizational Computing and Electronic Commerce, 13(1):1-24.
- Yoon, B. and Park, Y. (2004). A text-mining-based patent network: Analytical tool for high-technology trend. The Journal of High Technology Management Research, 15(1):37-50.
- Zhang, L., Li, L., and Li, T. (2015). Patent mining: A survey. ACM SIGKDD Expl. Newsletter, 16(2):1-19.
Paper Citation
in Harvard Style
Geisler S., Hai R. and Quix C. (2015). An Ontology-based Collaboration Recommender System using Patents . In Proceedings of the 7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management - Volume 1: KEOD, (IC3K 2015) ISBN 978-989-758-158-8, pages 389-394. DOI: 10.5220/0005635503890394
in Bibtex Style
@conference{keod15,
author={Sandra Geisler and Rihan Hai and Christoph Quix},
title={An Ontology-based Collaboration Recommender System using Patents},
booktitle={Proceedings of the 7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management - Volume 1: KEOD, (IC3K 2015)},
year={2015},
pages={389-394},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0005635503890394},
isbn={978-989-758-158-8},
}
in EndNote Style
TY - CONF
JO - Proceedings of the 7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management - Volume 1: KEOD, (IC3K 2015)
TI - An Ontology-based Collaboration Recommender System using Patents
SN - 978-989-758-158-8
AU - Geisler S.
AU - Hai R.
AU - Quix C.
PY - 2015
SP - 389
EP - 394
DO - 10.5220/0005635503890394