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13th AIM Conference 2008 - Paris

Comparison of Multicriteria and
Prediction Market Approaches for
Technology Foresight

Cédric Gaspoz, Faculty of Business and Economics
Introduction

One of the critical issues in IT management is to
“situate the challenges facing the IT
managers regarding emerging
technology…”.
                                                McKeen and Smith (2003)


This requires companies to adopt a systematic
process to stay up-to-date and assess new
technology for a potential integration into
modern organizations.
                                                                      17th June 2008




               2   Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
How to choose the best approach?

We propose to establish a comparison framework based
on characteristics derived from past research previously
presented (MCDM and PM).
  –   Presentation of the Approaches
  –   Design of the Artifacts
  –   Settings of the Experiments
  –   Analysis of the Results

This framework aims at helping us to compare our two
approaches and identify their key success factors.
  – Comparison of the Methods
  – Conclusions
  – Future Work
                                                                            17th June 2008




                     3   Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
Presentation of the Approaches

        MCDM                                    PM
 A Management Science                   An Emerging Approach
       Approach
• uses either quantitative or          • aggregates automatically
  qualitative criteria                   the information
  simultaneously and                     disseminated among all
  concurrently                           actors in a corporate crowd
• determines the solution              • determines the consensual
  approaching the “optimal”              equilibrium price of the
  in regards of several                  underlying solution
  criteria or among existing
  solutions                                                                17th June 2008




                    4   Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
Design of the Artifacts

     MCDM                                   PM
A Group Decision                     e-Trading Market
Support System
   PylaDESS                                     MarMix




                                                                  17th June 2008




           5   Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
Settings of the Experiments

         MCDM                                        PM
Visiting Swiss Experts                       Gathering the Crowd
Selected Experts                  Who          Master Students (crowd)
Individual interviews with             One group meeting to
each company followed by          start the market and some
a roundtable for all the   Where     trading activities. Later,
experts to meet and              the participants continue to
discuss the results.                     trade alone anytime.
6 month                          When                                      1 month
Several month for setup,                          Few days for setup and
                                  How
interviews and analysis                                          analysis
                                                                                 17th June 2008




                    6   Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
Analysis of the Results

        MCDM                                        PM
Ranking and Outranking                      Price of Contracts




         1. SmartCard              1. NFC
         2. NFC                    2. SmartCard
         3. Contactless Card       3. Contactless Card
         4. Magnetic Card          4. Phone proximity
         5. Phone proximity        5. Phone remote
         6. Phone remote           6. Magnetic Card                      17th June 2008




                  7   Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
Comparison of the Methods (1/5)
A Framework of Comparison


                                                               Organizational
              Organizational
                 Factors                                          Factors



              Technology                            Data IN                           Data OUT
              Forecasting
                Method
    Data                    Assessment
 Attributes                  Properties                          Assessment
                                                                  properties
                                                                                             17th June 2008




                               8   Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
Comparison of the Methods (2/5)
Organizational factors

           MCDM                                            PM
• organizations with formal           • organizations with
  and less participatory                participatory and informal
  decision-making processes             decision-making style
• relies mainly on relevant           • community of players
  experts                               driven by the game and its
                                        financial profits
• experts need a good                 • does not require in depth
  knowledge of the method               knowledge of the method

                                                                          17th June 2008




                   9   Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
Comparison of the Methods (3/5)
Assessment Properties

          MCDM                                           PM
• gives a posteriori results        • longitudinal studies for
  to support the resolution           assessments requiring
  of a decision problem               frequent or permanent
                                      update
• detailed snapshots taken • movies shot over a
  at certain times           period of time


                                                                        17th June 2008




                  10 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
Comparison of the Methods (4/5)
Data Attributes

          MCDM                                           PM
• Endogenous Data                   • Exogenous Data
  Collection                          Collection
• External Validation               • Internal Validation
  Process                             Process
• Extended Outcome                  • Aggregated Outcome



                                                                        17th June 2008




                  11 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
Comparison of the Methods (5/5)
Key Success Factors

• Experts vs Crowd
• Hired Facilitator vs Motivated Crowd
• Valid Data vs Validated Data
• Explicit Outcome vs Implicit Outcome




                                                                       17th June 2008




                 12 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
Conclusions

MCDM approach brought                PM provide a synthetic
an analytic explanation of           aggregation of numerous
the phenomenon by a                  individual beliefs, constan-
controlled and criteria-             tly adjusted and made
based evaluation                     available for everyone

             The combined strengths of the MCDM
             approach and prediction markets could be
             exploited for technology assessment and
             foresight to improve IT investment
             decisions.
                                                                       17th June 2008




                 13 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
Future Work

• Expand the framework to a tool to choose the right
  Computer Aided Technology Foresight Tool based on
  the forecasting context
• Use our framework with other forecasting methods




                                                                       17th June 2008




                 14 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
The research presented in this slideshow is available as a research paper
on the website of the author:
                http://www.hec.unil.ch/cgaspoz/en/publications.html




                  Cédric Gaspoz
                  University of Lausanne
                  Faculty of Business and Economics
                  Information Systems Institute
                  CH-1015 Lausanne

                  cedric.gaspoz@unil.ch

Cédric Gaspoz's research focuses on information aggregation, primarily to support decision making. He explores
ways of aggregating disseminated information to structure it and increase it's significance. His research covers a
broad range of topics like prediction markets, group decision support systems (GDSS), negotiation support
systems (NSS), semantic search and Mashup. His actual focus is on using prediction markets to support portfolio
management of research projects in mobile information and communication systems.
                                                                                                                 17th June 2008




                                    15 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008

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0183760ssssssssssssssssssssssssssss00101011 (27).pdf0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
 

Comparison of Multicriteria and Prediction Market Approaches for Technology Foresight

  • 1. 13th AIM Conference 2008 - Paris Comparison of Multicriteria and Prediction Market Approaches for Technology Foresight Cédric Gaspoz, Faculty of Business and Economics
  • 2. Introduction One of the critical issues in IT management is to “situate the challenges facing the IT managers regarding emerging technology…”. McKeen and Smith (2003) This requires companies to adopt a systematic process to stay up-to-date and assess new technology for a potential integration into modern organizations. 17th June 2008 2 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 3. How to choose the best approach? We propose to establish a comparison framework based on characteristics derived from past research previously presented (MCDM and PM). – Presentation of the Approaches – Design of the Artifacts – Settings of the Experiments – Analysis of the Results This framework aims at helping us to compare our two approaches and identify their key success factors. – Comparison of the Methods – Conclusions – Future Work 17th June 2008 3 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 4. Presentation of the Approaches MCDM PM A Management Science An Emerging Approach Approach • uses either quantitative or • aggregates automatically qualitative criteria the information simultaneously and disseminated among all concurrently actors in a corporate crowd • determines the solution • determines the consensual approaching the “optimal” equilibrium price of the in regards of several underlying solution criteria or among existing solutions 17th June 2008 4 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 5. Design of the Artifacts MCDM PM A Group Decision e-Trading Market Support System PylaDESS MarMix 17th June 2008 5 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 6. Settings of the Experiments MCDM PM Visiting Swiss Experts Gathering the Crowd Selected Experts Who Master Students (crowd) Individual interviews with One group meeting to each company followed by start the market and some a roundtable for all the Where trading activities. Later, experts to meet and the participants continue to discuss the results. trade alone anytime. 6 month When 1 month Several month for setup, Few days for setup and How interviews and analysis analysis 17th June 2008 6 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 7. Analysis of the Results MCDM PM Ranking and Outranking Price of Contracts 1. SmartCard 1. NFC 2. NFC 2. SmartCard 3. Contactless Card 3. Contactless Card 4. Magnetic Card 4. Phone proximity 5. Phone proximity 5. Phone remote 6. Phone remote 6. Magnetic Card 17th June 2008 7 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 8. Comparison of the Methods (1/5) A Framework of Comparison Organizational Organizational Factors Factors Technology Data IN Data OUT Forecasting Method Data Assessment Attributes Properties Assessment properties 17th June 2008 8 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 9. Comparison of the Methods (2/5) Organizational factors MCDM PM • organizations with formal • organizations with and less participatory participatory and informal decision-making processes decision-making style • relies mainly on relevant • community of players experts driven by the game and its financial profits • experts need a good • does not require in depth knowledge of the method knowledge of the method 17th June 2008 9 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 10. Comparison of the Methods (3/5) Assessment Properties MCDM PM • gives a posteriori results • longitudinal studies for to support the resolution assessments requiring of a decision problem frequent or permanent update • detailed snapshots taken • movies shot over a at certain times period of time 17th June 2008 10 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 11. Comparison of the Methods (4/5) Data Attributes MCDM PM • Endogenous Data • Exogenous Data Collection Collection • External Validation • Internal Validation Process Process • Extended Outcome • Aggregated Outcome 17th June 2008 11 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 12. Comparison of the Methods (5/5) Key Success Factors • Experts vs Crowd • Hired Facilitator vs Motivated Crowd • Valid Data vs Validated Data • Explicit Outcome vs Implicit Outcome 17th June 2008 12 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 13. Conclusions MCDM approach brought PM provide a synthetic an analytic explanation of aggregation of numerous the phenomenon by a individual beliefs, constan- controlled and criteria- tly adjusted and made based evaluation available for everyone The combined strengths of the MCDM approach and prediction markets could be exploited for technology assessment and foresight to improve IT investment decisions. 17th June 2008 13 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 14. Future Work • Expand the framework to a tool to choose the right Computer Aided Technology Foresight Tool based on the forecasting context • Use our framework with other forecasting methods 17th June 2008 14 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008
  • 15. The research presented in this slideshow is available as a research paper on the website of the author: http://www.hec.unil.ch/cgaspoz/en/publications.html Cédric Gaspoz University of Lausanne Faculty of Business and Economics Information Systems Institute CH-1015 Lausanne cedric.gaspoz@unil.ch Cédric Gaspoz's research focuses on information aggregation, primarily to support decision making. He explores ways of aggregating disseminated information to structure it and increase it's significance. His research covers a broad range of topics like prediction markets, group decision support systems (GDSS), negotiation support systems (NSS), semantic search and Mashup. His actual focus is on using prediction markets to support portfolio management of research projects in mobile information and communication systems. 17th June 2008 15 Cedric.Gaspoz@unil.ch | 13th AIM Conference 2008

Notas do Editor

  1. Ondrus and Pigneur -> 2007Gaspoz and Pigneur -> 2008
  2. Porter et al. (2003) Technology Futures Analysis (FTA) → 50 methods, deux problèmes mise en oeuvre: contenu (i.e., time horizon, geographical extent, level of detail) processus (e.g., participants, decision process, study duration, resources available)Levary and Han (1995) identify six main factors affecting technological forecasting and the choice of a methodLichtenthaler (2005) case study research in leading multinationals → identified contingency factors for the selection of technology intelligence methods and assessment forms
  3. MCDM:Analyse multi-acteurs multi-crit
  4. NFCEvolution des mise en oeuvre est exponentielleMagnetic CardEvolution des cartes magn
  5. OrganisationDisponibilit