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BidAnalyzer: A Method for Estimation and Selection of Dynamic Bidding Models

机译:BidAnalyzer:一种动态出价模型的估算和选择方法

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Online reverse auctions generate real-time bidding data that could be used via appropriate statistical estimation to assist the corporate buyer's procurement decision. To this end, we develop a method, called BidAnalyzer, which estimates dynamic bidding models and selects the most appropriate of them. Specifically, we enable model estimation by addressing the problem of partial observability; i.e., only one of N suppliers' bids is realized, and the other (N-1) bids remain unobserved. To address partial observability, BidAnalyzer estimates the latent price distributions of bidders by applying the Kalman filtering theory. In addition, BidAnalyzer conducts model selection by applying multiple information criteria. Using empirical data from an automotive parts auction, we illustrate the application of BidAnalyzer by estimating several dynamic bidding models to obtain empirical insights, retaining a model for forecasting, and assessing its predictive performance in out-of-sample. The resulting one-step-ahead price forecast is accurate up to 2.95% median absolute percentage error. Finally, we suggest how BidAnalyzer can serve as a device for price discovery in online reverse auctions.
机译:在线反向拍卖会生成实时出价数据,可以通过适当的统计估算来使用这些数据,以协助企业买方的采购决策。为此,我们开发了一种称为BidAnalyzer的方法,该方法可以估算动态出价模型并选择最合适的模型。具体来说,我们通过解决部分可观察性的问题来启用模型估计。即,仅实现了N个供应商的出价之一,而其他(N-1)个出价仍未观察到。为了解决部分可观察性问题,BidAnalyzer通过应用卡尔曼滤波理论来估算投标人的潜在价格分布。另外,BidAnalyzer通过应用多个信息标准来进行模型选择。利用汽车零件拍卖中的经验数据,我们通过估算几种动态投标模型以获得经验见解,保留模型进行预测以及评估其样本外的预测性能,来说明BidAnalyzer的应用。最终的一步式价格预测准确度高达2.95%的绝对百分比中位数误差。最后,我们建议BidAnalyzer如何用作在线反向拍卖中价格发现的设备。

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