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Data mining driven agents for predicting online auction's end price

机译:数据挖掘驱动的代理预测在线拍卖的最终价格

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Auctions can be characterized by distinct nature of their feature space. This feature space may include opening price, closing price, average bid rate, bid history, seller and buyer reputation, number of bids and many more. In this paper, a clustering based method is used to forecast the end-price of an online auction for autonomous agent based system. In the proposed model, the input auction space is partitioned into groups of similar auctions by k-means clustering algorithm. The recurrent problem of finding the value of k in k-means algorithm is solved by employing elbow method using one way analysis of variance (ANOVA). Then k numbers of regression models are employed to estimate the forecasted price of an online auction. Based on the transformed data after clustering and the characteristics of the current auction, bid selector nominates the regression model for the current auction whose price is to be forecasted. Our results show the improvements in the end price prediction for each cluster which support in favor of the proposed clustering based model for the bid prediction in the online auction environment.
机译:拍卖可以通过其特征空间的不同性质来表征。此功能空间可能包括开盘价,收盘价,平均出价率,出价历史记录,买卖双方声誉,出价数量等等。在本文中,基于聚类的方法用于预测基于自治代理的系统的在线拍卖的最终价格。在提出的模型中,通过k-means聚类算法将输入拍卖空间划分为相似拍卖的组。在k-means算法中找到k值的重复性问题通过采用肘形法和方差分析(ANOVA)的方法解决。然后,使用k个回归模型来估计在线拍卖的预测价格。基于聚类后的转换数据和当前拍卖的特征,出价选择器为要预测其价格的当前拍卖指定回归模型。我们的结果表明,对每个集群的最终价格预测都有所改进,从而支持了针对在线拍卖环境中的出价预测所建议的基于聚类的模型。

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