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Characterizing Typical and Atypical User Sessions in Clickstreams

机译:表征点击流中的典型和非典型用户会话

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摘要

Millions of users retrieve information from the Internet using search engines. Mining these user sessions can provide valuable information about the quality of user experience and the perceived quality of search results. Often search engines rely on accurate estimates of Click Through Rate (CTR) to evaluate the quality of user experience. The vast heterogeneity in the user population and presence of automated software programs (bots) can result in high variance in the estimates of CTR. To improve the estimation accuracy of user experience metrics like CTR, we argue that it is important identify typical and atypical user sessions in clickstreams. Our approach to identify these sessions is based on detecting outliers using Mahalanobis distance in the user session space. Our user session model incorporates several key clickstream characteristics including a novel conformance score obtained by Markov Chain analysis. Editorial results show that our approach of identifying typical and atypical sessions has a precision of about 89%. Filtering out these atypical sessions reduces the uncertainty (95% confidence interval) of the mean CTR by about 40%. These results demonstrate that our approach of identifying typical and atypical user sessions is extremely valuable for cleaning “noisy" user session data for increased accuracy in evaluating user experience.
机译:数百万的用户使用搜索引擎从Internet检索信息。挖掘这些用户会话可以提供有关用户体验质量和搜索结果的感知质量的有价值的信息。搜索引擎通常依靠点击率(CTR)的准确估算来评估用户体验的质量。用户群体的巨大异质性和自动化软件程序(机器人程序)的存在会导致点击率估算值出现较大差异。为了提高CTR等用户体验指标的估算准确性,我们认为确定点击流中的典型和非典型用户会话非常重要。我们识别这些会话的方法是基于在用户会话空间中使用马氏距离检测异常值。我们的用户会话模型结合了几个关键的点击流特征,包括通过马尔可夫链分析获得的新颖一致性得分。编辑结果显示,我们识别典型和非典型会话的方法的精度约为89%。过滤掉这些非典型会话可以将平均CTR的不确定性(95%置信区间)降低约40%。这些结果表明,我们识别典型用户会话和非典型用户会话的方法对于清除“嘈杂的”用户会话数据以提高评估用户体验的准确性非常有价值。

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