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Introduction
                                   Related Work
                                   Our Proposal
                         Demonstration Scenario
                            Final Considerations
                                      References




An Open and Inspectable Learner Modeling with a
Negotiation Mechanism to Solve Cognitive Conflicts
         in an Intelligent Tutoring System

                    Evandro Costa, Priscylla Silva,
                Jonathas Magalh˜es and Marlos Silva
                                a


                             TIPS Group
                        Computing Institute
                Federal University of Alagoas, Brazil
            Federal University of Campina Grande, Brazil
    E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                 a                  PALE UMAP 2012   1
Introduction
                                    Related Work
                                    Our Proposal
                          Demonstration Scenario
                             Final Considerations
                                       References


Research Context


   Learner modeling tasks in ITS;
   High level of uncertainty;
   Probabilistic Learner Modeling in ITS;
   Opening and Viewing Learner Model;
   Presence of Cognitive Conflicts;
   Mechanisms for dealing with conflicts;
   Negotiating the open learner model.




     E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                  a                  PALE UMAP 2012   2
Introduction
                                    Related Work
                                    Our Proposal
                          Demonstration Scenario
                             Final Considerations
                                       References


Research Questions



   Q1 : What approach should we adopt to deal with uncertainty
   found in a learner model for ITS?
   Q2 : What is an appropriate way to define and viewing OLM?
   Q3 : How can we detect cognitive conflicts between the student
   and the system concerning problem solving activities?
   Q4 : How can we effectively address these conflicts?




     E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                  a                  PALE UMAP 2012   3
Introduction
                                     Related Work
                                     Our Proposal
                           Demonstration Scenario
                              Final Considerations
                                        References


How those Questions have been addressed?




With respect to Q1 – Representation and Maintenance:
    Conati et al. [2];




      E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                   a                  PALE UMAP 2012   4
Introduction
                                     Related Work
                                     Our Proposal
                           Demonstration Scenario
                              Final Considerations
                                        References


How those Questions have been addressed?




With respect to Q2 – OLM and Visualization:
    Zapata and Greer [5];




      E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                   a                  PALE UMAP 2012   5
Introduction
                                      Related Work
                                      Our Proposal
                            Demonstration Scenario
                               Final Considerations
                                         References


How those Questions have been addressed?




With respect to Q3 and Q4 – Conflicts detection and Negotiation:
    Bull et al. [1];
    Dimitrova [3];
    Thomson and Mitrovic [4].




       E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                    a                  PALE UMAP 2012   6
Introduction
                                    Related Work
                                    Our Proposal
                          Demonstration Scenario
                             Final Considerations
                                       References


Our General Approach




     E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                  a                  PALE UMAP 2012   7
Introduction
                                    Related Work
                                    Our Proposal
                          Demonstration Scenario
                             Final Considerations
                                       References


The Open Learner Model




     E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                  a                  PALE UMAP 2012   8
Introduction
                                    Related Work
                                    Our Proposal
                          Demonstration Scenario
                             Final Considerations
                                       References


The Open Learner Model


                                                               1     4
   The system put a problem to the learner:                    3   + 3;
   He declares his belief:
        Very unsure = 0.05;
        Unsure = 0.25;
        Almost sure = 0.5;
        Sure = 0.75;
        Very sure = 0.95.
   Then, he submits a solution and the system evaluate it and
   returns a grade [0,1].



     E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                  a                  PALE UMAP 2012       9
Introduction
                                    Related Work
                                    Our Proposal
                          Demonstration Scenario
                             Final Considerations
                                       References


The Open Learner Model




                           (a) The Ms .              (b) The Mt .


              Figure: Task-specific part of the Learner Model.




     E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                  a                  PALE UMAP 2012   10
Introduction
                                    Related Work
                                    Our Proposal
                          Demonstration Scenario
                             Final Considerations
                                       References


The Open Learner Model




              (a) The Ms .                                   (b) The Mt .


            Figure: Domain-general part of the Learner Model.



     E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                  a                  PALE UMAP 2012         11
Introduction
                                    Related Work
                                    Our Proposal
                          Demonstration Scenario
                             Final Considerations
                                       References


The Open Learner Model




              Figure: The Visualization of the Learner Model.



     E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                  a                  PALE UMAP 2012   12
Introduction
                                      Related Work
                                      Our Proposal
                            Demonstration Scenario
                               Final Considerations
                                         References


Negotiation Process


The negotiation mechanism depends on the learner’s credibility:




                   Figure: The DBN of the learner’s credibility.




       E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                    a                  PALE UMAP 2012   13
Introduction
                                    Related Work
                                    Our Proposal
                          Demonstration Scenario
                             Final Considerations
                                       References


Negotiation Process

    When the learner wants to change the tutor’s belief
 Credibility L’s belief < T’s belief L’s Belief > T’s belief
    Low            Persuasion              Persuasion
  Medium           Persuasion             Cooperation
   High            Persuasion             Cooperation

    When the tutor wants to change the student’s belief
 Credibility L’s belief < T’s belief L’s belief > T’s belief
    Low              Support              Contestation
  Medium             Support              Contestation
   High              Support              Contestation

     E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                  a                  PALE UMAP 2012   14
Introduction
                                    Related Work
                                    Our Proposal
                          Demonstration Scenario
                             Final Considerations
                                       References


Prove Process



   During the negotiation:
        The system can request that the learner proves his knowledge, or;
        The learner can request the opportunity of prove.
   The proof process consists of:
        Two problems and the learner has two chances to solve each
        problem;
        Then, his model is updated.




     E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                  a                  PALE UMAP 2012   15
Introduction
                                     Related Work
                                     Our Proposal
                           Demonstration Scenario
                              Final Considerations
                                        References


Demonstration Scenario




    Figure: Example of Negotiation Dialogue Started by the Learner.




      E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                   a                  PALE UMAP 2012   16
Introduction
                                    Related Work
                                    Our Proposal
                          Demonstration Scenario
                             Final Considerations
                                       References


We are we going next?



   Improve the visualization, allowing the visualization of the two
   parts of the model;
   Put other evidences in the learner model: social characteristics,
   CV-curriculum of the student, collaborative information;
   Perform an experiment in a basic math classroom.




     E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                  a                  PALE UMAP 2012   17
Introduction
                                     Related Work
                                     Our Proposal
                           Demonstration Scenario
                              Final Considerations
                                        References


References

   Susan Bull, Paul Brna, and Helen Pain.
   Extending the scope of the student model.
   User Modeling and User-Adapted Interaction, 5(1):45–65, 1995.
   Cristina Conati, Abigail Gertner, and Kurt Vanlehn.
   Using bayesian networks to manage uncertainty in student
   modeling.
   User Modeling and User-Adapted Interaction, 12(4):371–417,
   2002.
   Vania Dimitrova.
   Style-olm: Interactive open learner modelling.
   International Journal of Artificial Intelligence in Education,
   13(1):35–78, January 2003.
      E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                   a                  PALE UMAP 2012   18
Introduction
                                     Related Work
                                     Our Proposal
                           Demonstration Scenario
                              Final Considerations
                                        References


Referˆncias
     e


   David Thomson and Antonija Mitrovic.
   Preliminary evaluation of a negotiable student model in a
   constraint-based its.
   Research and Practice in Technology Enhanced Learning,
   5(1):19–33, 2010.
   Juan-Diego Zapata-Rivera and Jim E. Greer.
   Interacting with inspectable bayesian student models.
   International Journal of Artificial Intelligence in Education,
   14(2):127–163, 2004.



      E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                   a                  PALE UMAP 2012   19
Introduction
                               Related Work
                               Our Proposal
                     Demonstration Scenario
                        Final Considerations
                                  References




                             Thanks!!




E. Costa, P. Silva, J. Magalh˜es and M. Silva
                             a                  PALE UMAP 2012   20
Introduction
                                      Related Work
                                      Our Proposal
                            Demonstration Scenario
                               Final Considerations
                                         References


For more information: http://tip.ic.ufal.br/site/




       E. Costa, P. Silva, J. Magalh˜es and M. Silva
                                    a                  PALE UMAP 2012   21

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An Open and Inspectable Learner Modeling with a Negotiation Mechanism to Solve Cognitive Conflicts in an Intelligent Tutoring System

  • 1. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References An Open and Inspectable Learner Modeling with a Negotiation Mechanism to Solve Cognitive Conflicts in an Intelligent Tutoring System Evandro Costa, Priscylla Silva, Jonathas Magalh˜es and Marlos Silva a TIPS Group Computing Institute Federal University of Alagoas, Brazil Federal University of Campina Grande, Brazil E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 1
  • 2. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References Research Context Learner modeling tasks in ITS; High level of uncertainty; Probabilistic Learner Modeling in ITS; Opening and Viewing Learner Model; Presence of Cognitive Conflicts; Mechanisms for dealing with conflicts; Negotiating the open learner model. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 2
  • 3. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References Research Questions Q1 : What approach should we adopt to deal with uncertainty found in a learner model for ITS? Q2 : What is an appropriate way to define and viewing OLM? Q3 : How can we detect cognitive conflicts between the student and the system concerning problem solving activities? Q4 : How can we effectively address these conflicts? E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 3
  • 4. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References How those Questions have been addressed? With respect to Q1 – Representation and Maintenance: Conati et al. [2]; E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 4
  • 5. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References How those Questions have been addressed? With respect to Q2 – OLM and Visualization: Zapata and Greer [5]; E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 5
  • 6. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References How those Questions have been addressed? With respect to Q3 and Q4 – Conflicts detection and Negotiation: Bull et al. [1]; Dimitrova [3]; Thomson and Mitrovic [4]. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 6
  • 7. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References Our General Approach E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 7
  • 8. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References The Open Learner Model E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 8
  • 9. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References The Open Learner Model 1 4 The system put a problem to the learner: 3 + 3; He declares his belief: Very unsure = 0.05; Unsure = 0.25; Almost sure = 0.5; Sure = 0.75; Very sure = 0.95. Then, he submits a solution and the system evaluate it and returns a grade [0,1]. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 9
  • 10. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References The Open Learner Model (a) The Ms . (b) The Mt . Figure: Task-specific part of the Learner Model. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 10
  • 11. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References The Open Learner Model (a) The Ms . (b) The Mt . Figure: Domain-general part of the Learner Model. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 11
  • 12. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References The Open Learner Model Figure: The Visualization of the Learner Model. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 12
  • 13. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References Negotiation Process The negotiation mechanism depends on the learner’s credibility: Figure: The DBN of the learner’s credibility. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 13
  • 14. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References Negotiation Process When the learner wants to change the tutor’s belief Credibility L’s belief < T’s belief L’s Belief > T’s belief Low Persuasion Persuasion Medium Persuasion Cooperation High Persuasion Cooperation When the tutor wants to change the student’s belief Credibility L’s belief < T’s belief L’s belief > T’s belief Low Support Contestation Medium Support Contestation High Support Contestation E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 14
  • 15. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References Prove Process During the negotiation: The system can request that the learner proves his knowledge, or; The learner can request the opportunity of prove. The proof process consists of: Two problems and the learner has two chances to solve each problem; Then, his model is updated. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 15
  • 16. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References Demonstration Scenario Figure: Example of Negotiation Dialogue Started by the Learner. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 16
  • 17. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References We are we going next? Improve the visualization, allowing the visualization of the two parts of the model; Put other evidences in the learner model: social characteristics, CV-curriculum of the student, collaborative information; Perform an experiment in a basic math classroom. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 17
  • 18. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References References Susan Bull, Paul Brna, and Helen Pain. Extending the scope of the student model. User Modeling and User-Adapted Interaction, 5(1):45–65, 1995. Cristina Conati, Abigail Gertner, and Kurt Vanlehn. Using bayesian networks to manage uncertainty in student modeling. User Modeling and User-Adapted Interaction, 12(4):371–417, 2002. Vania Dimitrova. Style-olm: Interactive open learner modelling. International Journal of Artificial Intelligence in Education, 13(1):35–78, January 2003. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 18
  • 19. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References Referˆncias e David Thomson and Antonija Mitrovic. Preliminary evaluation of a negotiable student model in a constraint-based its. Research and Practice in Technology Enhanced Learning, 5(1):19–33, 2010. Juan-Diego Zapata-Rivera and Jim E. Greer. Interacting with inspectable bayesian student models. International Journal of Artificial Intelligence in Education, 14(2):127–163, 2004. E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 19
  • 20. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References Thanks!! E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 20
  • 21. Introduction Related Work Our Proposal Demonstration Scenario Final Considerations References For more information: http://tip.ic.ufal.br/site/ E. Costa, P. Silva, J. Magalh˜es and M. Silva a PALE UMAP 2012 21