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Fourth International Conference on Topic Maps – Research and Applications (TMRA 2008)




Towards an Automatic Semantic Integration of
Information
Dr. Jörg Wurzer, iQser AG
Prof. Dr. Stefan Smolnik, European Business School (EBS)

Leipzig, October 16, 2008
Agenda

• Status quo and motivation


• New paradigm: information access by context


• Proof of Concept at EADS


• Technical architecture


• Analysis process & queries


• Further research & questions
Motivation

• The quantity of digital information is still growing. IDC 2008: 60% per year


• Information is dispersed over documents and various applications/databases


• Growing need for creating knowledge based on available information


  • Profound knowledge for management decisions, completing tasks and
    business processes, development of new products, sales and marketing
    campaigns


• Topic Maps can adopt the new results of research in semantic technologies
Todays solution I: full-text search

• Advantages: easy to use, generally accepted, high user experiences


• Disadvantages:


  • Result quality depends on the keyword selection


  • Results are presented as long document lists, which have to be assessed
    intellectually by the users


  • The result set does not necessarily consider the user’s intention


  • Each application has its own search functionality (no standards)
Todays solution II: directory hierarchy

• Advantages: content like documents can be organized considering their
  meaning, context, and applicability


• Disadvantages:


  • A manually created hierarchy provides a static view on the content, but in
    practice, the user need different views like on customers, projects and
    products dimensions


  • Documents are usually needed in several contexts; in this case, the
    documents are stored redundantly; problem: editing of all relevant
    documents


  • Directory hierarchies often reflect the current state of knowledge; however,
    some documents can not be included appropriately in the hierarchy
New paradigm: access content in any context

• Automatically created topic maps of all content object types


  • Multiple links between the content objects establish a semantic, non-
    hierachical network; links are created semantically


  • The user chooses his focus of interest; a topic map provides the related
    content; example: customers are linked to projects, contracts, products,
    employees, and service calls.


  • Exploring the available data by navigating through a topic map


  • The content could be located in heterogeneous sources and could be
    stored in different formats or data models; even external content could be
    included
Proof of Concept of iQser Middleware at EADS

• Devision Defence and Communcation Systems


• Requirements:


  • Analysis of unstructured data of military information


     • Automatically created network of content objects


     • Automatically created network of main concepts


  • All links between documents have to be justified


  • Benchmark: a system with a manually created ontology
Application screenshot (modified data due to confidentiality)
Results

• The created topic map provides transparent relations between documents


• The terms tree provides users with an overview of the document base’s
  content as well as of related fundamental facts


  • In the Poc for EADS, the concept-tree shows that “Biber” is a bridge tank
    and the location of the anti-missile defense


• The tree’s information quality as well as the topic map’s quality is high and
  can compete with that of a manually created ontology
Uniform Information Layer (UIL)

• Single point of access for all content object types


  • Connector for each type of structured and unstructured content from any
    source (document, database, application): transforms data into a
    semantically typed generic content object and stores modified data back.


  • No redundantly stored data


• Searching across heterogeneous sources including the web is possible


  • Users can specify search queries by means of attributes
Architecture of iQser Semantic Middleware
Analysis process

• All content changes (and changes of the topic map) trigger an event


• All user actions are tracked


• All changes or specific amounts of user actions trigger the analysis process


  • Combination of three analysis methods: Syntax Analyzer, Pattern Analyzer,
    Semantic Analyzer


  • More analyzers could be included according to customers needs


• Pairs of content objects can have n relations with calculated weights
Syntax Analyzer

• Each content object can have multiple key attributes defined in the content
  provider


  • Examples: full name of a person, sender and recipient of an email, project
    ID


• The Syntax Analyzer looks wether these key attributes are related to
  attributes of other content objects in the data pool
Pattern Analyzer

• The Pattern Analyzer extracts the meaningful words according to significance


• Transforms a selected set of words into a data query; the result is a list of
  similar content objects


  • The similarity is described by a weight between 0 and 1


• The Pattern Analyzer considers the context of used words in a text; it
  therefore reflects the different use of words in different contexts
Semantic Analyzer

• Background: the meaning of words and sentences in a language is not
  defined abstractly but indirectly manifested in the daily use of language


• The Semantic Analyzer evaluates the tracked user actions


  • If two content objects are selected, edited, or created in a sequence, the
    Semantic Analyzer creates a link between these objects


  • The weight of such a link will grow, if the same sequence of content objects
    occurs again


  • The weights of content object links can shrink, if a weight has a value larger
    than 1


  • The topic map is self-optimizing considering the customers’ interests
Querying associated information

• Users can specify search queries aiming at a precise result by means of


  • attibutes


  • semantic types


  • relations (context search)


• All changes in the data pool and in the topic map can be used to trigger or
  control a process
Further research

• Developing more applications as concrete use cases based on the iQser
  Semantic Middleware


• Developing and evaluating additional analysis methods


• Implementing complex queries with multiple contexts
Thank you!
Dr. Jörg Wurzer
+49 172 6680073
www.iqser.com
joerg.wurzer@iqser.net
Technical details

• Hardware: Pentium(R) Dual Core 3 GHz, 2 GB RAM


• Software: Windows XP 2002 SP3, JBoss 4.0.4 GA, Sun JDK 1.5_12


• JBoss JVM heap size configuration: -Xms128m -Xmx512m


• 3 GB of data (Word, Excel, PowerPoint, Plain Text, HTML) are indexed and
  analyzed in 14 hours


• More than 70 % of CPU resources for I/O waits


• CPU needed less than 400 MB memory

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Towards an automatic semantic integration of information

  • 1. Fourth International Conference on Topic Maps – Research and Applications (TMRA 2008) Towards an Automatic Semantic Integration of Information Dr. Jörg Wurzer, iQser AG Prof. Dr. Stefan Smolnik, European Business School (EBS) Leipzig, October 16, 2008
  • 2. Agenda • Status quo and motivation • New paradigm: information access by context • Proof of Concept at EADS • Technical architecture • Analysis process & queries • Further research & questions
  • 3. Motivation • The quantity of digital information is still growing. IDC 2008: 60% per year • Information is dispersed over documents and various applications/databases • Growing need for creating knowledge based on available information • Profound knowledge for management decisions, completing tasks and business processes, development of new products, sales and marketing campaigns • Topic Maps can adopt the new results of research in semantic technologies
  • 4. Todays solution I: full-text search • Advantages: easy to use, generally accepted, high user experiences • Disadvantages: • Result quality depends on the keyword selection • Results are presented as long document lists, which have to be assessed intellectually by the users • The result set does not necessarily consider the user’s intention • Each application has its own search functionality (no standards)
  • 5. Todays solution II: directory hierarchy • Advantages: content like documents can be organized considering their meaning, context, and applicability • Disadvantages: • A manually created hierarchy provides a static view on the content, but in practice, the user need different views like on customers, projects and products dimensions • Documents are usually needed in several contexts; in this case, the documents are stored redundantly; problem: editing of all relevant documents • Directory hierarchies often reflect the current state of knowledge; however, some documents can not be included appropriately in the hierarchy
  • 6. New paradigm: access content in any context • Automatically created topic maps of all content object types • Multiple links between the content objects establish a semantic, non- hierachical network; links are created semantically • The user chooses his focus of interest; a topic map provides the related content; example: customers are linked to projects, contracts, products, employees, and service calls. • Exploring the available data by navigating through a topic map • The content could be located in heterogeneous sources and could be stored in different formats or data models; even external content could be included
  • 7.
  • 8. Proof of Concept of iQser Middleware at EADS • Devision Defence and Communcation Systems • Requirements: • Analysis of unstructured data of military information • Automatically created network of content objects • Automatically created network of main concepts • All links between documents have to be justified • Benchmark: a system with a manually created ontology
  • 9. Application screenshot (modified data due to confidentiality)
  • 10. Results • The created topic map provides transparent relations between documents • The terms tree provides users with an overview of the document base’s content as well as of related fundamental facts • In the Poc for EADS, the concept-tree shows that “Biber” is a bridge tank and the location of the anti-missile defense • The tree’s information quality as well as the topic map’s quality is high and can compete with that of a manually created ontology
  • 11. Uniform Information Layer (UIL) • Single point of access for all content object types • Connector for each type of structured and unstructured content from any source (document, database, application): transforms data into a semantically typed generic content object and stores modified data back. • No redundantly stored data • Searching across heterogeneous sources including the web is possible • Users can specify search queries by means of attributes
  • 12. Architecture of iQser Semantic Middleware
  • 13. Analysis process • All content changes (and changes of the topic map) trigger an event • All user actions are tracked • All changes or specific amounts of user actions trigger the analysis process • Combination of three analysis methods: Syntax Analyzer, Pattern Analyzer, Semantic Analyzer • More analyzers could be included according to customers needs • Pairs of content objects can have n relations with calculated weights
  • 14. Syntax Analyzer • Each content object can have multiple key attributes defined in the content provider • Examples: full name of a person, sender and recipient of an email, project ID • The Syntax Analyzer looks wether these key attributes are related to attributes of other content objects in the data pool
  • 15. Pattern Analyzer • The Pattern Analyzer extracts the meaningful words according to significance • Transforms a selected set of words into a data query; the result is a list of similar content objects • The similarity is described by a weight between 0 and 1 • The Pattern Analyzer considers the context of used words in a text; it therefore reflects the different use of words in different contexts
  • 16. Semantic Analyzer • Background: the meaning of words and sentences in a language is not defined abstractly but indirectly manifested in the daily use of language • The Semantic Analyzer evaluates the tracked user actions • If two content objects are selected, edited, or created in a sequence, the Semantic Analyzer creates a link between these objects • The weight of such a link will grow, if the same sequence of content objects occurs again • The weights of content object links can shrink, if a weight has a value larger than 1 • The topic map is self-optimizing considering the customers’ interests
  • 17. Querying associated information • Users can specify search queries aiming at a precise result by means of • attibutes • semantic types • relations (context search) • All changes in the data pool and in the topic map can be used to trigger or control a process
  • 18. Further research • Developing more applications as concrete use cases based on the iQser Semantic Middleware • Developing and evaluating additional analysis methods • Implementing complex queries with multiple contexts
  • 19. Thank you! Dr. Jörg Wurzer +49 172 6680073 www.iqser.com joerg.wurzer@iqser.net
  • 20. Technical details • Hardware: Pentium(R) Dual Core 3 GHz, 2 GB RAM • Software: Windows XP 2002 SP3, JBoss 4.0.4 GA, Sun JDK 1.5_12 • JBoss JVM heap size configuration: -Xms128m -Xmx512m • 3 GB of data (Word, Excel, PowerPoint, Plain Text, HTML) are indexed and analyzed in 14 hours • More than 70 % of CPU resources for I/O waits • CPU needed less than 400 MB memory