5,181 research outputs found

    Neogeography: The Challenge of Channelling Large and Ill-Behaved Data Streams

    Get PDF
    Neogeography is the combination of user generated data and experiences with mapping technologies. In this article we present a research project to extract valuable structured information with a geographic component from unstructured user generated text in wikis, forums, or SMSes. The extracted information should be integrated together to form a collective knowledge about certain domain. This structured information can be used further to help users from the same domain who want to get information using simple question answering system. The project intends to help workers communities in developing countries to share their knowledge, providing a simple and cheap way to contribute and get benefit using the available communication technology

    Living Knowledge

    Get PDF
    Diversity, especially manifested in language and knowledge, is a function of local goals, needs, competences, beliefs, culture, opinions and personal experience. The Living Knowledge project considers diversity as an asset rather than a problem. With the project, foundational ideas emerged from the synergic contribution of different disciplines, methodologies (with which many partners were previously unfamiliar) and technologies flowed in concrete diversity-aware applications such as the Future Predictor and the Media Content Analyser providing users with better structured information while coping with Web scale complexities. The key notions of diversity, fact, opinion and bias have been defined in relation to three methodologies: Media Content Analysis (MCA) which operates from a social sciences perspective; Multimodal Genre Analysis (MGA) which operates from a semiotic perspective and Facet Analysis (FA) which operates from a knowledge representation and organization perspective. A conceptual architecture that pulls all of them together has become the core of the tools for automatic extraction and the way they interact. In particular, the conceptual architecture has been implemented with the Media Content Analyser application. The scientific and technological results obtained are described in the following

    Measuring the Global Research Environment: Information Science Challenges for the 21st Century

    Get PDF
    “What does the global research environment look like?” This paper presents a summary look at the results of efforts to address this question using available indicators on global research production. It was surprising how little information is available, how difficult some of it is to access and how flawed the data are. The three most useful data sources were UNESCO (United Nations Educational, Scientific and Cultural Organization) Research and Development data (1996-2002), the Institute of Scientific Information publications listings for January 1998 through March 2003, and the World of Learning 2002 reference volume. The data showed that it is difficult to easily get a good overview of the global research situation from existing sources. Furthermore, inequalities between countries in research capacity are marked and challenging. Information science offers strategies for responding to both of these challenges. In both cases improvements are likely if access to information can be facilitated and the process of integrating information from different sources can be simplified, allowing transformation into effective action. The global research environment thus serves as a case study for the focus of this paper – the exploration of information science responses to challenges in the management, exchange and implementation of knowledge globally

    Topic Segmentation: How Much Can We Do by Counting Words and Sequences of Words

    Get PDF
    In this paper, we present an innovative topic segmentation system based on a new informative similarity measure that takes into account word co-occurrence in order to avoid the accessibility to existing linguistic resources such as electronic dictionaries or lexico-semantic databases such as thesauri or ontology. Topic segmentation is the task of breaking documents into topically coherent multi-paragraph subparts. Topic segmentation has extensively been used in information retrieval and text summarization. In particular, our architecture proposes a language-independent topic segmentation system that solves three main problems evidenced by previous research: systems based uniquely on lexical repetition that show reliability problems, systems based on lexical cohesion using existing linguistic resources that are usually available only for dominating languages and as a consequence do not apply to less favored languages and finally systems that need previously existing harvesting training data. For that purpose, we only use statistics on words and sequences of words based on a set of texts. This solution provides a flexible solution that may narrow the gap between dominating languages and less favored languages thus allowing equivalent access to information

    Discovering shifts in competitive strategies in probiotics, accelerated with TechMining

    Full text link
    [EN] Profiling the technological strategy of different competitors is a key element for the companies in a given industry, as well to technology planners and R&D strategists. The analysis of the patent portfolio of a company as well as its evolution in the time line is of interest for technology analysts and decision makers. However, the need for the participation of experts in the field of a company as well as patent specialists, slows down the process. Bibliometrics and text mining techniques contribute to the interpretation of specialists. The present paper tries to offer a step by step procedure to analyze the technology strategy of several companies through the analysis of their portfolio claims, combined with the use of TechMining with the help of a text mining tool. The procedure, complemented with a semantic TRIZ analysis provides key insights in disclosing the technological analysis of some competitors in the field of probiotics for livestock health. The results show interesting shifts in the key probiotic and prebiotic ingredients for which companies claim protection and therefore offers clues about their technology intention in the life sciences industry in a more dynamic, convenient and simple way.The authors would like to thank the contribution of the research institute IRTA, to the TRIZ company triz XXI and to Fernando Palop and their wise insights and guidance. The authors thank the usage of Search Technology s VantagePoint and IHS-Markit s Goldfire.Vicente Gomila, JM.; Palli, A.; De La Calle, B.; Artacho RamĂ­rez, MÁ.; JimĂ©mez, S. (2017). Discovering shifts in competitive strategies in probiotics, accelerated with TechMining. Scientometrics. 111(3):1907-1923. https://doi.org/10.1007/s11192-017-2339-5S190719231113Abbas, A., Zhang, L., & Khan, S. (2014). A literature review on the state-of-the-art in patent analysis. World Patent Information, 37, 3–13.Allen, H., Levine, T., Bandrick, M., & Casey, T. (2012). Treatment, promotion, commotion: Antibiotic alternatives in food-producing animals. Trends in Microbiology, 21(3), 114–119.Animal Task Force. (2013). Research & innovation for a sustainable livestock sector in Europe. http://www.animaltaskforce.eu/Portals/0/ATF/horizon2020/ATF%20white%20paper%20Research%20priorities%20for%20a%20sustainable%20livestock%20sector%20in%20Europe.pdf . Accessed September 4, 2016.Abramson, D. (2011). Patent strategies for life sciences companies to navigate the changing patent landscape. Journal of Commercial Biotechnology, 17, 358–364.Banan-Mwine Daliri, E., & Lee, B. H. (2015). New perspectives on probiotics and disease. Food Science and Human Wellness, 4, 56–65.Bubela, T., Gold, R., Gregory, G., Cahoy, D., & Castle, D. (2013). Patent landscaping for life sciences innovation: Toward consistent and transparent practices. Nature Biotechnology, 31, 202–206.Chih-Hung, H. (2013). Patent value assessment and commercialization strategy. Technology forecasting & Social Change, 80, 307–319.Choi, S., Yoon, J., Kim, K., Lee, J. Y., & Kim, C.-H. (2011). SAO network analysis of patents for technology trends identification: A case study of polymer electrolyte membrane technology in proton exchange membrane fuel cells. Scientometrics, 88, 863–883.Collins, M. D., & Gibson, G. (1999). Probiotics, prebiotics, and synbiotics: Approaches for modulating the microbial ecology of the gut. American Journal of Clinical Nutrition, 69(suppl), 1052S–1057S.Ernst, H. (1998). Patent portfolio for strategic technology management. Journal of Engineering Technology Management, 15, 279–308.Ferraro, G., & Wanner, L. (2011). Towards the derivation of verbal content relations from patent claims using deep syntactic structures. Knowledge-Based Systems, 24, 1233–1244.FolignĂ©, B., Daniel, C., & Pot, B. (2013). Probiotics from research to market: The possibilities, risks and challenges. Current Opinion in Microbiology, 16(3), 284–292.Gerken, J., & Moehrle, M. (2012). A new instrument for technology monitoring: Novelty in patents measured by semantic patent analysis. Scientometrics, 91, 645–670.Grant, R. (2006). Contemporary strategic analysis (5th ed.). ISBN 1-405-1999-3.Grant, E., Van den Hof, M., & Gold, R. (2014). Patent landscape analysis: A methodology in need of harmonized standards. World Patent Information, 39, 3–10.He, J., Yamanaka, T., & Kano, S. (2016). Mapping university receptor based on claim embodiment quantitative analysis: A study of 31 cases form the University of Tokio. World Patent Information, 46, 49–55.IHS Goldfire. www.ihsmarkit.com . Accessed November 2016.Kaushik, G. (Ed.) (2015). Applied environmental biotechnology: Present scenario and future trends. Springer. ISBN 978-81-322-2122-7.Kim, B., Miller, D., & Mahoney, J. (2016). The impact of the timing of patents on innovation performance. Research Policy, 45(2016), 914–928.Kume, H. (2010). From low power to no power through energy harvesting: Powering up the battery-free world. Nikkei Elctronics Asia; October 31, 2010; Accessed November 2011.Lanjouw, J., & Schankerman, M. (1999). The quality of ideas: Measuring innovation with multiple indicators. 7345. National Bureau for Economic Research, Cambridge, MA, USA. http://www.nber.org . Accessed September 2016.Lee, C., Kim, J., Kwon, O., & Woo, H. G. (2016). Stochastic technology life cycle analysis using multiple patent indicators. Technological Forecasting and Social Change, 106(2016), 53–64.Mogee, M. E. (1991). Using patent data for technology analysis and planning. Research-Technology Management, 34(4), 43–49.Niwa, S. (2016). Patent claims and economic growth. Economic Modelling, 54, 377–381.Noh, H., Jo, Y., & Lee, S. (2015). Keyword selection and processing strategy for applying text mining to patent analysis. World Patent Information, 42, 4348–4360.O’Callaghan, T. F., Ross, R. P., Stanton, C., & Clarke, G. (2016). The gut micorbiome as a virtual endocrine organ with implicaitons for farm and domestic animal endocrinology. Domestic Animal Endocrinology, 56, S44–S55.Pargaonkar, Y. (2016). Leveraging patent landscape analysis and IP competitive intelligence. World Patent Information, 45, 10–20.Park, H., Yoon, J., & Kim, K. (2012). Identifiying patent infringement using SAO based semantic technological similarities. Scientometrics, 90, 515–529.Park, H., Yoon, J., & Kim, K. (2013). Identification and evaluation of corporations for merger and acquisition strategies using patent information and text mining. Scientometrics, 97, 883–909.Porter, M. (2008). The five competitive forces that shape strategy. Harvard Business Review. January 2008. 1–17. Reprint R0801E. www.hbrreprints.org .Porter, A. L., & Cunningham, S. (2005). Tech Mining. Hoboken: Wiley Interscience.Porter, A., & Newman, N. (2011). Mining external R&D. Technovation, 31, 171–176.Regulation (EC) No 1831/2003 of the European Parliament and of the Council of 22 September 2003 on additives for use in animal nutrition Regulation (EC) No 1831/2003 of the European Parliament and of the Council. http://eur-lex.europa.eu/legal-content/EN/TXT/?uri=CELEX%3A32003R1831 .Rose, C., Cronin, J., & Schwartz, R. (2007). Communicating the value of your intellectual property to Wall Street. Research Technology Management, 50(2), 36–40.Schrezenmeir, J., & De Vrese, M. (2001). Probiotics, prebiotics, and synbiotics—Approaching a definition. The American Journal of Clinical Nutrition, 73(2), 361s–364s.Soranzo, B., Nosella, A., & Filippini, R. (2016). Managing firm patents: A bibliometric investigation into the state of the art. Journal of Engineering and Technology Management, 42, 15–30.Teece, D. J. (1986). Profiting from technological innovation: Implications for integration, collaboration, licensing and public policy. Research Policy, 15, 285–305.The patent guide; A handbook for analyzing and interpreting patent data. UK Intellectual patent office.Tong, X., & Frame, D. (1994). Technological performance with patent claims data. Research Policy, 23, 133–141.VantagePoint. www.theVantagePoint.com . Accessed September 20, 2016.Verberne, S., D’hondt, E., & Oostdijk, N. (2010). Quantifying the challenges in parsing patent claims. In The 1st international workshop on Advances in Patent Information Retrieval (AsPIRe’10), Milton Keynes, UK.Verbitsky, M. (2004). Semantic TRIZ, triz-journal.com. http://www.triz-journal.com/archives/2004/ .Vicente-Gomila, J. M. (2014). The contribution of syntactic-semantic approach to the search for complimentary literatures for scientific or technical discovery. Scientometrics. doi: 10.1007/s11192-014-1299-2 .Vicente-Gomila, J. M., & Palop, F. (2013). Combining tech-mining and semantic-TRIZ for a faster and better technology analysis: A case in energy storage systems. Technology Analysis & Strategic Management, 25(6), 725–743.Wang, M., Chiu, T., & Chen, W. (2009). Exploring potential R&D collaborators based on patent portfolio analysis: The case of biosensors. In PICMET 2009 Proceedings, August 2–6, Portland, Oregon, USA.Wang, J., Lu, F., & Loh, H. (2015). A two-level parser for patent claim parsing. Advanced Engineering Informatics, 29, 431–439.Weenen, T. C., Pronker, E. S., Commandeur, H. R., & Claasen, E. (2013). Patenting in the European medical nutrition industry: Trends, opportunities and strategies. PharmaNutrition, 1, 13–21.Xie, Z., & Miyazaki, K. (2013). Evaluating the effectiveness of keyword search strategy for patent identification. World Patent Information, 35(1), 20–30.Yang, Y., & Choct, M. (2009). Dietary modulation of gut microflora in broiler chickens: A review of the role of six kinds of alternatives to in-feed antibiotics. World’s Poultry Science Journal, 65, 97–114.Yang, S.-Y., & Soo, V.-W. (2012). Extract conceptual graphs from plain texts in patent claims. Engineering Applications of Artificial Intelligence, 25, 874–887.Yoon, J., Park, H., & Kim, K. (2013). Identifying technological competition trends for R&D planning using dynamic patent maps: SAO-bassed content analysis. Scientometrics, 94, 313–331
    • 

    corecore