预测用户对汽车网站的查询和购买意愿

Jie Gu, Fang Wei, K. Yu, Rui Cao, Yazhou Shi
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引用次数: 1

摘要

随着互联网的快速发展和互联网对汽车行业的渗透,越来越多的人在做出购买决定之前,会在互联网上搜索和浏览汽车相关信息。这为利用用户在线活动数据研究汽车购买意愿形成了沃土。在本文中,我们主要基于来自isp的深度包检测数据来预测用户是否有购买特定品牌汽车的意图。我们从DPI数据中提取了3个月的用户活动数据,并通过网络爬虫收集了中国5家领先汽车网站的汽车相关信息。将预测问题表述为实践中的典型分类问题。我们非常重视特征工程。我们提出了一种将用户访问序列的向量表示与用户和汽车相关的统计特征相结合的特征工程方法。我们用传统的统计方法和我们的方法训练了各种组合特征的分类模型。实验结果表明,该方法生成的特征比仅用统计方法生成的特征性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting inquiry and purchase intention of users on automobile websites
With the rapid development of Internet and Internet penetration into the automobile industry, more and more people search and browse automobile related information on the Internet before making a decision of purchase. This has formed a fertile ground to study automobile purchase intention by using user online activity data. In this paper, we focus on the task of predicting whether a user has the intention to purchase a particular make of automobile mainly based on the Deep Packet Inspection data from ISPs. We extracted 3-month user activity data from DPI data and collected automobile related information by the Web crawler on 5 leading automobile websites in China. The prediction problem was formulated as a typical classification problem in practice. And we paid a great deal of attention to the feature engineering. We proposed a feature engineering method by combining vector representation for user visiting sequence and statistical features related to users as well as automobiles. We trained various classification models with the combined features by traditional statistical methods and our method. The experimental results show that the features generated by our method perform better than the features only by statistical methods.
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