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Decision and Negotiation Support in Multi-Stakeholder Development of Lake Regulation Policy

Decision and Negotiation Support in Multi-Stakeholder Development of Lake Regulation Policy. -. Report on the testing phase. Raimo P. Hämäläinen 1 , Eero Kettunen 1 , Mika Marttunen 2 , and Harri Ehtamo 1 1 Systems Analysis Laboratory, Helsinki University of Technology

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Decision and Negotiation Support in Multi-Stakeholder Development of Lake Regulation Policy

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  1. Decision and Negotiation Support in Multi-Stakeholder Development of Lake Regulation Policy - Report on the testing phase Raimo P. Hämäläinen1, Eero Kettunen1, Mika Marttunen2, and Harri Ehtamo1 1 Systems Analysis Laboratory, Helsinki University of Technology 2Finnish Environment Institute http://www.hut.fi/Units/Systems.Analysis/

  2. The Framework 1. Structuring the problem 2. Identifying Pareto-optimal alternatives 3. Seeking group consensus 4. Seeking public acceptance • Objective to provide support for the whole decision process

  3. Information Technology Dynamic policy alternatives: ISMO - Interactive analysis of dynamic water regulation Strategies by Multicriteria Optimization Problem Structuring - comparison of policy alternatives: HIPRE 3+ Web-HIPRE

  4. Public - acceptance: Opinion Online - Web-based survey and voting Pareto-optimal policies: Joint Gains - Generating efficient alternatives (in testing with simplefied goals) Group-consensus: HIPRE Grouplink (Interval AHP model) WINPRE - Workbench for Interval Preference Programming (Interval AHP, SMART/SWING)

  5. Development of Water Level Management Policy in Lake Päijänne • Illustrative reference case • Regulation policy defined by annual water level goals • Stakeholders with conflicting objectives • Hydro power producers, fishermen, farmers, ... • First phase of true testing • Role playing experiments

  6. 10 40 0 30 50 20 km LAKE PÄIJÄNNE LAKES RUOTSALAINEN AND KONNIVESI LAKE PYHÄJÄRVI RIVER KYMIJOKI

  7. Need for modeling and decision support • Dynamic system • No intuitive solutions - impacts are functions of decision variables • Interactive analysis of impacts • Multiple criteria • Many stakeholder groups

  8. Water level Water level Outflow Outflow Utopia solution Realistic solution

  9. Structuring the Problem • Iterative value tree analysis • Hierarchical structuring and prioritization • Decision criteria • Learning the ranges by initial prioritizations with temporary alternatives • Stakeholder grouping • Decision variables defining regulation policy • Target water levels at April 1st and September 1st

  10. Value tree analysis by Web-HIPRE

  11. Method of Improving Directions • Ehtamo, Kettunen and Hämäläinen (1998) • Interactive method for identification of efficient alternatives - Joint Gains software • Subjects are onlygiven simple comparison tasks: “Which one of these alternatives do you prefer most?” or “Which one of these two alternatives do you prefer, A or B?”

  12. Pareto-efficiency in group settings Inefficient alternative: Alternatives preferred to x by DM1 Alternatives preferred to x by DM2 x Efficient alternative:

  13. Approximating DM’s utility function’s gradient direction x2 Most preferred alternative on the circle Approximation at x x x1

  14. Calculation of jointly improving direction • Required preference information: DMs’ utility functions’ gradient directions • Solution of a nonlinear direction finding optimization problem • Special case with two DMs: bisecting direction

  15. Iteration step • DMs select most preferred points in this direction • New iteration point: nearest x2 DM1 DM2 DM1 Jointly improving direction x DM2 x1

  16. x2 Efficient frontier x1 Generation of efficient frontier from different initial points

  17. Joint Gains DM interface Subject 1: “environmentalist” Joint Gains- Negotiation Support System Subject 5: “power company” Joint Gains DM interface Joint Gains Mediator Joint Gains DM interface Subject 4: “farmer” Local area network questions replies Joint Gains DM interface Joint Gains DM interface Subject 3: “fisherman” Subject 2: “summer resident”

  18. Interfaces for comparison tasks Scanning alternatives or Answer a series of pairwise comparison questions B A A etc. B

  19. Proposal for jointly preferred alternative Y X

  20. Role Playing Experiments • Roles (fisherman, environmentalist, summer resident, farmer, power company) and objectives (e.g., high and diverse catch, natural reproduction) given • 2 or 3 subjects in 9 test groups Questions of interest: • Subjects’ opinion about the tasks • Consistency of statements • Convergence speed

  21. initial and intermediate points stopping point Mediation processes for 2 DM groups Roles: Environmentalist & Farmer Fisherman & Environmentalist Fisherman & Summer resident

  22. initial and intermediate points stopping point Mediation processes for 2 DM groups Roles: Fisherman & Environmentalist Power company & Environmentalist Fisherman & Power company

  23. initial and intermediate points stopping point Mediation processes for 2 and 3 DM groups Roles: Fisherman & Farmer Summer resident & Environmentalist Farmer, Power company & Summer resident

  24. Role playing experiments - observations • Subjects found the stated questions easy to reply with both elicitation methods • Statements and results were consistent with the given role objectives • Experiment suggests a high speed of convergence • Low degree of conflict (similar objectives) Þ same nearby points reached from different initial points

  25. Seeking Group Consensus • Select and evaluate a representative set of efficient alternatives by interval value tree analysis • Objective to reach consensus • Tools for consensus seeking • HIPRE 3+ Group Link • WINPRE - Workbench for Interactive Preference Programming

  26. HIPRE Group Link Individual AHP prioritizations (HIPRE) Combination of prioritizations (Group Link) Interval preference model (WINPRE) View from interval preference model for three DMs: Recreation Recreation Landscape Landscape Biodiversity Biodiversity DM1 DM2 DM3 DM2 DM3 DM1 DM2 DM1 DM3

  27. WINPRE - Workbench for Interactive Preference Programming (AHP mode) Group priorities embedded in the interval statements

  28. Conclusion • Framework for supporting complex decision processes • An evolutionary learning process • Shown to be feasible by role playing experiments • Real application • Testing of methods and tools • Biases related to elicitation procedure tested • Important testing phase often neglected • Allows improvements before final process

  29. References WWW-sites Systems Analysis Laboratory Activity Report: http://www.hut.fi/Units/SAL/Research/. WINPRE - Workbench for Interactive Preference Programming v. 1.0, Computer software, Systems Analysis Laboratory, Helsinki University of Technology. Downloadable at http://www.hut.fi/Units/SAL/Downloadables/. Web-HIPRE - Java-applet for Value Tree and AHP Analysis, Computer software, Systems Analysis Laboratory, Helsinki University of Technology (http://www.hipre.hut.fi). The Päijänne regulation policy project: (http://leino.hut.fi/päijänne.htm) References Ehtamo, H., R. P. Hämäläinen, P. Heiskanen, J. Teich, M. Verkama, and S. Zionts (1998), “Generating Pareto Solutions in Two-Party Negotiations by Adjusting Artificial Constraints,” Manuscript, Systems Analysis Laboratory, Helsinki University of Technology. Downloadable at http://www.hut.fi/Units/SAL/Publications/. Ehtamo, H., E. Kettunen, and R. P. Hämäläinen (1998), “Searching for Joint Gains in Multi-Party Negotiations,” Manuscript, Systems Analysis Laboratory, Helsinki University of Technology. Downloadable at http://www.hut.fi/Units/SAL/Publications/. R.P. Hämäläinen, E. Kettunen, M. Marttunen and H. Ehtamo: An approach to decision and negotiation support in multi-stakeholder development of lake regulation policy. Manuscript, Systems Analysis Laboratory, Helsinki University of Technology. Downloadable at http://www.hut.fi/Units/SAL/Publications/.

  30. Ehtamo, H., M. Verkama, and R. P. Hämäläinen (1992), “On Contracting under Incomplete Information Using Linear Proposals,” Preprints of the Fifth International Symposium on Dynamic Games and Applications, Grimentz, Switzerland, 128-133. Ehtamo, H., M. Verkama, and R. P. Hämäläinen (1998), “How to Select Fair Improving Directions in a Negotiation Model over Continuous Issues,” IEEE Transactions on Systems, Man, and Cybernetics, to appear. A shortened version in Proceedings of the Decision Science Institute 1995 Annual Meeting, November 20-22, 1995, Boston, Massachusetts, 2, 549-551. Hämäläinen, R. P. (1988), “Computer Assisted Energy Policy Analysis in the Parliament of Finland,” Interfaces, 18(4), 12-23. Hämäläinen, R. P., A. A. Salo, and K. Pöysti (1991), “Observations about Consensus Seeking in a Multiple Criteria Environment,” Proceedings of the 25th Annual Hawaii International Conference on System Sciences, IEEE Computer Society Press, 4, 190-198. Hämäläinen, R. P. and E. Kettunen (1994), “On-Line Group Decision Support by HIPRE 3+ Group Link,” Proceedings of the Third International Conference on the Analytic Hierarchy Process, July 11-13, 1994, George Washington University, Washington D.C., 547-557. Hämäläinen, R. P. and H. Lauri (1998), HIPRE 3+ Decision Support Software v. 3.15b, Computer software, Systems Analysis Laboratory, Helsinki University of Technology. Hämäläinen, R. P., and O. Leikola (1995), “Spontaneous Decision Conferencing in Parliamentary Negotiations,” Proceedings of the 28th Annual Hawaii International Conference on System Sciences, IEEE Computer Society Press, 4, 290-299.

  31. Hämäläinen, R. P., K. Sinkko, M. Lindstedt, M. Ammann, and A. Salo (1998), RODOS and Decision Conferencing on Early Stage Protective Actions in Finland, RODOS Report (WG7) EU Research Project on Decision Support for Nuclear Emergencies. Hämäläinen, R. P. and J. Mäntysaari (1998), “Interactive Spreadsheet Modelling of Regulation Strategies for a Lake-River System,” Proceedings of the 17th IASTED International Conference on Modelling, Identification and Control, February 18-20, 1998, IASTED - Acta Press, Anaheim, Grindelwald, Switzerland, 181-184. Hämäläinen, R. P. and M. Pöyhönen (1996), “On-Line Group Decision Support by Preference Programming in Traffic Planning,” Group Decision and Negotiation, 5, 485-500. Marttunen, M. and R. P. Hämäläinen (1995), “Decision Analysis Interviews in Environmental Impact Assessment,” European Journal of Operational Research, 87, 551-563. Pöyhönen, M., H. C. Vrolijk, and R. P. Hämäläinen (1997), Behavioral and Procedural Consequences of Structural Variation in Value Trees, Research Report A69, Systems Analysis Laboratory, Helsinki University of Technology. Downloadable at http://www.hut.fi/Units/SAL/Publications/. Salo, A. A. and R. P. Hämäläinen (1992), “Preference Assessment by Imprecise Ratio Statements,” Operations Research, 40, 1053-1061. Salo, A. A. and R. P. Hämäläinen (1995), “Preference Programming through Approximative Ratio Comparisons,” European Journal of Operational Research, 82, 458-475. Salo A. (1995), “Interactive decision aiding for group decision support,” European Journal of Operational Research, 84, 134-149.

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