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Idea Relationship Analysis in
Open Innovation CrowdSourcing
            systems
Adam Westerski, Carlos A. Iglesias and Javier Espinosa
Grupo de Sistemas Inteligentes
  Autor:
Universidad Politécnica de Madrid
  Grupo de Sistemas Inteligentes
http://www.gsi.dit.upm.es
  Universidad Politécnica de Madrid
Outline
   Idea Management Systems
   The problem
            too many similar ideas
   Our solution
            idea relationship hierarchy
   Evaluation
            Ubuntu brainstorm
   Conclusions
Idea Management Systems
   Evolution of suggestion boxes...




   for open innovation purposes
            Collect ideas, suggestions, from customers,
             employees, ...
Innovation through
             Idea Management Systems
                    Idea
                Improvement
                                       Idea
                                     Selection
  Idea
Generation




   Idea                               Idea
Deployment                       Implementation
Goal: improve how ideas are
   automatically filtered
Our research so far
   Define Gi2MO ontology for formalising and
    interlinking idea management systems (IMS)
   Connect ideas with Enterprise systems
    following the Linked Data model
   Integrating Opinion Mining techniques with
    IMS
   Idea Classification, filtering and analysis of
    idea similarities independent of idea topic (this
    talk!)
Our research so far...
   Software released as open source, everything
    available at http://www.gi2mo.org
The problem
   Too many ideas to be analysed
   Many ideas are similar
Proposal: similarity relationships
Proposal Similarity Relationships
Evaluation methodology




Semantic scrapper, available at
http://www.gsi.dit.upm.es/index.php/en/software/details/1/2/software-scrappy.html
Manual annotation
Experiment I
   Goal: determine if all the relationships are
    useful, apart from duplicate relationship
   We compare our manual annotation with the
    annotation of duplicate available in Ubuntu
    Brainstorm
Results Experiment I
   76.7% new relationships compared with the
    original IMS
Experiment II
   Goal: new relationships help to identify
    duplicates and reduce the data set
   We compare
            Detected duplicates in Ubuntu
            Detected duplicates in our dataset based on
             the new relationships
                  200 ideas with 5 manual annotations suggested
                    by Lucene
            Same as before but taking into account the
             hierarchy
Results II
   Ubuntu: 1.13% of duplicate ideas of entire
    dataset
   Data set with relationships: 0.5%
   Data set with relationships + hierarchy: 1.95%
    → increase in 95%!
Experiment III
   558 out of 1000 ideas are not related each
    other (so, they are not similar)
   Analyse similarity based on other annotations:
            Trigger type
            Innovation type
            Proposal type
            Object type
Gi2MO Types
Results Experiment III
   Calculated similarity S between two related
    ideas (iA, iB) for 50 ideas for Metric Mx
Analysis
   Same correlation in similar and disjoint idea
    subsets with the analysed metrics
Conclusions
   Semantic relationship can
    improve the detection of
    similar ideas
   Relationship hierarchy
    and transitivity improve
    similarity detection
   Other annotations (Gi2MO
    types) and associated
    metrics do not help for
    detecting similar ideas
Questions?

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Idea Relationship Analysis in Open Innovation CrowdSourcing systems

  • 1. Idea Relationship Analysis in Open Innovation CrowdSourcing systems Adam Westerski, Carlos A. Iglesias and Javier Espinosa Grupo de Sistemas Inteligentes Autor: Universidad Politécnica de Madrid Grupo de Sistemas Inteligentes http://www.gsi.dit.upm.es Universidad Politécnica de Madrid
  • 2. Outline  Idea Management Systems  The problem  too many similar ideas  Our solution  idea relationship hierarchy  Evaluation  Ubuntu brainstorm  Conclusions
  • 3. Idea Management Systems  Evolution of suggestion boxes...  for open innovation purposes  Collect ideas, suggestions, from customers, employees, ...
  • 4. Innovation through Idea Management Systems Idea Improvement Idea Selection Idea Generation Idea Idea Deployment Implementation
  • 5.
  • 6.
  • 7.
  • 8. Goal: improve how ideas are automatically filtered
  • 9. Our research so far  Define Gi2MO ontology for formalising and interlinking idea management systems (IMS)  Connect ideas with Enterprise systems following the Linked Data model  Integrating Opinion Mining techniques with IMS  Idea Classification, filtering and analysis of idea similarities independent of idea topic (this talk!)
  • 10. Our research so far...  Software released as open source, everything available at http://www.gi2mo.org
  • 11. The problem  Too many ideas to be analysed  Many ideas are similar
  • 14. Evaluation methodology Semantic scrapper, available at http://www.gsi.dit.upm.es/index.php/en/software/details/1/2/software-scrappy.html
  • 16. Experiment I  Goal: determine if all the relationships are useful, apart from duplicate relationship  We compare our manual annotation with the annotation of duplicate available in Ubuntu Brainstorm
  • 17. Results Experiment I  76.7% new relationships compared with the original IMS
  • 18. Experiment II  Goal: new relationships help to identify duplicates and reduce the data set  We compare  Detected duplicates in Ubuntu  Detected duplicates in our dataset based on the new relationships  200 ideas with 5 manual annotations suggested by Lucene  Same as before but taking into account the hierarchy
  • 19. Results II  Ubuntu: 1.13% of duplicate ideas of entire dataset  Data set with relationships: 0.5%  Data set with relationships + hierarchy: 1.95% → increase in 95%!
  • 20. Experiment III  558 out of 1000 ideas are not related each other (so, they are not similar)  Analyse similarity based on other annotations:  Trigger type  Innovation type  Proposal type  Object type
  • 22. Results Experiment III  Calculated similarity S between two related ideas (iA, iB) for 50 ideas for Metric Mx
  • 23. Analysis  Same correlation in similar and disjoint idea subsets with the analysed metrics
  • 24. Conclusions  Semantic relationship can improve the detection of similar ideas  Relationship hierarchy and transitivity improve similarity detection  Other annotations (Gi2MO types) and associated metrics do not help for detecting similar ideas