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Text mining and Indexing: Assessing the Results of Deeper Indexing for Patent Search

Text mining and Indexing: Assessing the Results of Deeper Indexing for Patent Search. John Tait Chief Scientific Officer IRF. Acknowledgements. Mihai Lupu of the IRF Jian -Han Zhu of University College London Jimmy Huang of York University of Canada

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Text mining and Indexing: Assessing the Results of Deeper Indexing for Patent Search

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  1. Text mining and Indexing: Assessing the Results of Deeper Indexing for Patent Search John Tait Chief Scientific Officer IRF

  2. Acknowledgements • Mihai Lupu of the IRF • Jian-Han Zhu of University College London • Jimmy Huang of York University of Canada • Giovanna Roda of colleagues in the CLEF IP team for Matrixware and the IRF • Royal Society for Chemistry for generously making their Scientific Journal Colelctions available to us IRF Member Services

  3. An apology The content of this talk was planned on the basis we could discuss the detail of TREC CHEM: over the weekend it became clear NIST policy is that the results should not be made public until the TREC conference in the US in November • Therefore much detail had to be removed IRF Member Services

  4. Outline • Introduction to the IRF • TREC CHEM • 2009 • Plans for the future • Summary and Conclusions IRF Member Services

  5. The IRF

  6. The Information Retrieval Facility • A international not-for-profit institution, founded in 2006, based in Vienna, to promote and facilitate research in large scale information retrieval

  7. The IRF Mission • To bridge the gap between the needs of the industry and the academic know-how. • To maintain a facility that enables largescale information retrieval and in depthprocessing of data for research • To bring the latest information retrieval technology to the community of patentprofessionals and other professional searchers.

  8. IRF – Founding Members

  9. The Information Retrieval Facility A platform initiated by Matrixware which: • improves the transfer of knowledge between professionals in Intellectual Property and Information Retrieval and • promotes collaboration between experts on the development of new research methodologies for international patent data .

  10. Distinctive Patent Search Characteristics • High Recall: a single missed document can invalidate a patent • Session based: single searchers may involve days of cycles of results review and query reformulation • Defendable: Process and results may need to be defended in court

  11. CLEF-IP The goal of the CLEF-IP track is to investigate multilingual IR techniques in the Intellectual Property domain. Target data >1Mio EPO granted patents documents in three languages: English, German, French Tasks prior art search, invalidity search Test collection constructed using the available EPO prior art reports CLEF-IP Track

  12. IRF Member Services • Scientific Members • Access to data to resources • Project links to industry • Industrial Members • Consultancy and research in IR and IP search • Training and support: systems evaluation semantic computing • Links to academia IRF Member Services

  13. TREC Chemistry Information Retrieval Track 2009 John Tait Chief Scientific Officer IRF

  14. TREC • Organised by the US Federal Institute of Standards and Technology • Has run annually since1991 • Originally focused on ad hoc text retrieval with long queries • Regularly extended • Video • Web • Genomics • Legal IRF Member Services

  15. Origins of TREC CHEM • IRF approached NIST about using our patent data and computing facilities as a means to promote scientific co-operation • Jian-Han Zhu then of UK Open University about Chemistry approached NIST about Chemistry • NIST were interested in domain specific retrieval to follow up Genomic track etc. and helped us get going IRF Member Services

  16. Data • 1.2 mil. patent files (IRF) • 59k scientific articles (RSC) IRF Member Services

  17. Tasks • Technical Survey • Search for all potentially relevant documents, in both collections. • 18 manually defined and evaluated topics • Prior Art • Search for patents that may invalidate a given patent • 1000 automatically created and evaluated topics (1000 patent files)

  18. Participants • 15 institutions registered to get the data • 6 submitted 31 runs for the TS task: • University of Applied Science Geneva, Information Retrieval Laboratory of Dalian University of Technology, Fraunhofer SCAI, Milwaukee School of Engineering, Purdue University, York University • 8 submitted 59 runs for the PA topics: • University of Applied Science Geneva, Carnegie Mellon University, Information Retrieval Laboratory of Dalian University of Technology,University of Iowa,Fraunhofer SCA, Milwaukee School of Engineering, Purdue University, York University

  19. Methods • Basic vector space model • Different sections, weights on each section • bm25 • Additional filtering/weighting based on IPC codes • Linguistic processing • Emphasis on Noun Phrases • Concept based search • Query expansion • Using Oscar3, MeSH

  20. Evaluations • Technology Survey tasks • 8 chemistry grad students • 5 experts • Each topic evaluated by 2 students and 1 expert • Prior Art tasks • Automatically evaluated based on citations within patents and family members

  21. Initial Results • Manual evaluations have some conflicting results • Not more than other manually evaluated topics • Using entity recognition and synonyms proves successful • Some groups manually extended the queries • “simple methods” seem to also perform well (e.g. Lucene-based, bm25) • E.g. for Inferred Average Precision they reach 97% of highest score • Disclaimer: results analysis is still ongoing

  22. TREC CHEM 2010 onwards • Subject to discussion at TREC in November • Increased numbers of patents • Include images • Task extensions/refinements • Searching for numerical ranges (independent of unit) • Searching for specific roles of specific chemical components • The use of Markush structures IRF Member Services

  23. Summary and Conclusions • The IRF is promoting collaboration between information retrieval and intelelctual property professionals through promoting evaluations and joint technology development projects • TREC CHEM has provided an objective and independent means as assessing the effectiveness of technologies on two sorts of retrieval tasks IRF Member Services

  24. Thank you for your attentionAny questions ? IRF Newsletter Chemistry Issue: http://www.ir-facility.org/the_irf/newsletter www.ir-facility.org www.matrixware.com www.matrixware.net

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