1 Integrating ChemAxon and Linguamatics to provide Agile, Chemistry-enabled Text Mining Dr Paul Milligan Senior Application Specialist, Linguamatics ChemAxon.

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Presentation transcript:

1 Integrating ChemAxon and Linguamatics to provide Agile, Chemistry-enabled Text Mining Dr Paul Milligan Senior Application Specialist, Linguamatics ChemAxon UGM, June 4 th 2009

2 Flexible and scalable text mining for business-critical knowledge discovery Linguamatics I2E NLP-based knowledge discovery platform Rapidly reveals structured facts and relationships by understanding meaning Delivers relevant, high quality results in real-time

3 Web Search Web Search: Gets users to documents containing terms From Documents to Knowledge Value Relationship Extraction Relationship Extraction: Finds relationships within documents Assertion Clustering Assertion Clustering: Gets users directly to lists of interest, or assertions and the evidence for them Profiling Profiling: Summarizes different kinds of information about a compound, person etc. Join Join: Creates indirect correlations and connections

4 Join Examples Discover indirect associations across multiple documents

Linguamatics – Customer Confidential5 Structure Input: Ontology Look-up

6 Query Results and Visualization

7 Thank You! For more information… Visit: Contact: Phil Hastings Phone: +44 (0) Mobile: +44 (0) Intro Webinar: Visit Meet our experts at upcoming events in 2009: Visit