比较购物行为的特征:一个案例研究

Mona Gupta, Happy Mittal, Parag Singla, A. Bagchi
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引用次数: 9

摘要

在这项工作中,我们使用从印度手机比较网站http://smartprix.com收集的超过一年的会话跟踪来研究用户在线比较购物的行为。我们的研究有两个方面:数据分析和行为预测。我们研究的第一个方面是数据分析,旨在洞察用户行为,使供应商能够提供合适的产品和价格,这可以帮助比较购物引擎根据用户偏好定制搜索。我们发现用户在进入网站之前写的搜索查询和他们未来在同一网站上的行为之间的相关性。我们还根据地理位置、一天中的时间、一周中的哪一天、点击购买(转化)次数、重复用户、访问和比较的手机/品牌研究了用户分布。我们分析了价格变化对产品受欢迎程度的影响,以及新车型发布等特殊事件如何影响品牌的受欢迎程度。我们的分析证实了人们的直觉,比如价格上涨会导致人气下降,反之亦然。此外,我们描述了这种现象对受欢迎程度影响的时间滞后。我们根据多个状态之间的转换顺序来描述用户在网站上的行为(根据被访问的页面类型来定义,例如首页、访问、比较等)。我们使用KL散度来表明,当点击次数从5到30变化时,时间齐次马尔可夫链是会话跟踪的正确模型。最后,我们使用马尔可夫逻辑构建一个模型,该模型使用用户在会话中的活动历史来预测用户是否会在该会话中点击转换。在我们看来,我们将数据分析与机器学习相结合的方法是对此类数据集进行实证研究的新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterizing comparison shopping behavior: A case study
In this work we study the behavior of users on online comparison shopping using session traces collected over one year from an Indian mobile phone comparison website: http://smartprix.com. There are two aspects to our study: data analysis and behavior prediction. The first aspect of our study, data analysis, is geared towards providing insights into user behavior that could enable vendors to offer the right kinds of products and prices, and that could help the comparison shopping engine to customize the search based on user preferences. We discover the correlation between the search queries which users write before coming on the site and their future behavior on the same. We have also studied the distribution of users based on geographic location, time of the day, day of the week, number of sessions which have a click to buy (convert), repeat users, phones/brands visited and compared. We analyze the impact of price change on the popularity of a product and how special events such as launch of a new model affect the popularity of a brand. Our analysis corroborates intuitions such as increasing price leads to decrease in popularity and vice-versa. Further, we characterize the time lag in the effect of such phenomena on popularity. We characterize the user behavior on the website in terms of sequence of transitions between multiple states (defined in terms of the kind of page being visited e.g. home, visit, compare etc.). We use KL divergence to show that a time-homogeneous Markov chain is the right model for session traces when the number of clicks varies from 5 to 30. Finally, we build a model using Markov logic that uses the history of the user's activity in a session to predict whether a user is going to click to convert in that session. Our methodology of combining data analysis with machine learning is, in our opinion, a new approach to the empirical study of such data sets.
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