Managing Constraints and Preferences for Winner Determination in Multi-attribute Reverse Auctions

Malek Mouhoub, Farnaz Ghavamifar
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引用次数: 2

Abstract

Multi-Attribute Reverse Auctions (MARAs) are considered an excellent way to buy and sell efficiently. However, eliciting the buyer's requirements and preferences as well as determining the winner, are both challenging tasks. In this paper, we propose a multi-round and semi-sealed MARA auction system, capable of determining the winner given a set of user's preferences and requirements. This system is capable of managing qualitative, quantitative and conditional preferences together with constraints. For that, we use the constrained Tradeoffs-enhanced Conditional Preference Networks (constrained TCP-nets) graphical model for representing constraints as well as qualitative and conditional preferences, and Multi-Attribute Utility Theory (MAUT) for dealing with quantitative preferences. Determining the winners of the auction will then be achieved using the backtrack search algorithm we use for solving constrained TCP-nets.
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多属性逆向拍卖中赢家确定的约束与偏好管理
多属性反向拍卖(MARAs)被认为是一种高效的买卖方式。然而,引出买家的需求和偏好以及确定获胜者都是具有挑战性的任务。在本文中,我们提出了一个多轮半密封的MARA拍卖系统,能够根据用户的偏好和要求确定获胜者。该系统能够管理质量、数量和条件偏好以及约束。为此,我们使用约束权衡增强条件偏好网络(约束TCP-nets)图形模型来表示约束以及定性和条件偏好,并使用多属性效用理论(MAUT)来处理定量偏好。然后使用我们用于求解约束tcp网络的回溯搜索算法来确定拍卖的获胜者。
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