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Enhancing Online Auction Transaction Likelihood: A Comprehensive Data Mining Approach

机译:提高在线拍卖事务可能性:全面的数据挖掘方法

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摘要

This article compares four data mining models (discriminant analysis, logistic regression, decision tree, and multilayer neural networks) for online auction transaction predictions. It aims to choose the best model in terms of prediction accuracy and to identify determinants significant for auction transactions. By using datasets from eBay, the authors find that the best data mining model for auction transactions is multilayer neural networks. Logistic regression and decision tree models can be used to identify determinants significant for auction transaction such as seller's feedback profile, listing picture, listing files size, return policies, and others. By adjusting these listing options, sellers could increase the auction transaction likelihood. This study will help sellers improve their auction listings by constructing effective selling strategies so that they can enhance the likelihood of online auction transactions. All these efforts will help improve their online auction performances and finally lead to a more efficient electronic marketplace.
机译:本文比较了用于在线拍卖事务预测的四种数据挖掘模型(判别分析,逻辑回归,决策树和多层神经网络)。它旨在在预测准确性方面选择最佳模型,并识别拍卖交易的重要意义。通过使用来自eBay的数据集,作者发现拍卖事务的最佳数据挖掘模型是多层神经网络。 Logistic回归和决策树模型可用于识别拍卖事务的重要意义,例如卖家的反馈配置文件,清单图片,列表文件大小,返回策略等。通过调整这些列表选项,卖方可以提高拍卖事务可能性。本研究将通过构建有效的销售策略来帮助销售人员改善其拍卖列表,以便他们可以增强在线拍卖交易的可能性。所有这些努力将有助于提高他们的在线拍卖表演,最终导致更有效的电子市场。

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