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arxiv: 1207.1377 · v1 · pith:ZBIFRP42new · submitted 2012-07-04 · 💻 cs.AI

Efficient algorithm for estimation of qualitative expected utility in possibilistic case-based reasoning

classification 💻 cs.AI
keywords algorithmexpectedutilityattributescomplexitycomputationaldecisionefficient
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We propose an efficient algorithm for estimation of possibility based qualitative expected utility. It is useful for decision making mechanisms where each possible decision is assigned a multi-attribute possibility distribution. The computational complexity of ordinary methods calculating the expected utility based on discretization is growing exponentially with the number of attributes, and may become infeasible with a high number of these attributes. We present series of theorems and lemmas proving the correctness of our algorithm that exibits a linear computational complexity. Our algorithm has been applied in the context of selecting the most prospective partners in multi-party multi-attribute negotiation, and can also be used in making decisions about potential offers during the negotiation as other similar problems.

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