投标制定决策支持的迭代多属性采购拍卖

T. Chetan, M. Jenamani, S. P. Sarmah
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引用次数: 1

摘要

实践中的迭代式多属性反向拍卖给买方和投标方都带来了一定的困难。买方面临着创建正确的属性权重的问题,而竞标方在每一轮中都难以调整属性值。本文提出了一种基于综合数据包络分析(DEA)和最佳-最差法(BWM)的迭代多属性反向拍卖机制,旨在减少买方对获胜者确定的干预,并简化偏好激发过程。与典型的计分拍卖不同,所提出的机制不需要买方估计参与卖方的特征,以确定最优计分函数。由于在确定获胜者的过程中不会有买方的其他干预,因此所提出的方法使采购过程公正且无腐败。除了解决买方的问题外,所提出的机制还与最优出价确定方法(OBDM)相关联,以帮助卖方在迭代拍卖中制定临时出价。仿真实验表明,所提出的OBDM对买卖双方都有利。对于买方而言,根据其偏好,它提供了更高的期望效用和属性值;对于卖方来说,它会带来更好的预期利润和更高的获胜概率。
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Iterative Multi-Attribute Procurement Auction with Decision Support for Bid Formulation
Iterative multi-attribute reverse auctions in practice create certain difficulties for both the buyer and participating bidders. While the buyer faces the problem of creating the right attribute weights, the bidders have difficulty in adjusting the attribute values in each round. In this paper, we present an iterative multi-attribute reverse auction mechanism based on integrated data envelopment analysis (DEA) and best–worst method (BWM) with an objective of reducing the intervention of the buyer in the determination of the winner and also easing up the preference elicitation process. Unlike the typical scoring auctions, the proposed mechanism does not require the buyer to estimate the characteristics of the participating sellers in order to determine the optimal scoring function. As there will be no other intervention from the buyer during the winner determination process, the proposed method makes the procurement process impartial and corruption-free. Besides solving the buyer’s problem, the proposed mechanism is also associated with an optimal bid determination method (OBDM) to assist the sellers in formulating improvised bids in iterative rounds of the auction. Simulation experiments show that the proposed OBDM benefits both the buyer and sellers. For the buyer, it provides higher expected utility and attribute values as per his preferences; for the seller, it gives a better expected profit and a higher probability of winning.
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