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Reciprocal Rank Using Web Page Popularity

机译:使用网页受欢迎程度的倒数排名

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In recent years, predicting user behavior has drawn much attention in the fields of information retrieval. To that extend, many models and even more evaluation metrics have been proposed, aiming at the accurate evaluation of the information retrieval process. Most of the proposed metrics, including the well-known nDCG and ERR, rely on the assumption that the probability (R) a user finds a document relevant, depends only on its relevance grade. In this paper, we employ the assumption that this probability is a function of a combination of two factors; its relevance grade and its popularity grade. Popularity, as we define it from daily page views, can be considered as users' vote for a document, and by combining this factor in the probability R we can capture user behavior more accurately. We present a new evaluation metric called Reciprocal Rank using Webpage Popularity (RRP) which takes into account not only the document's relevance judgment, but also its popularity, and as a result correlates better with click metrics than the other evaluation metrics do.
机译:近年来,预测用户行为已引起信息检索领域的广泛关注。为此,已经提出了许多模型,甚至更多的评估指标,旨在对信息检索过程进行准确的评估。大多数提议的度量标准,包括众所周知的nDCG和ERR,都基于这样的假设:用户发现文档相关的概率(R)仅取决于文档的相关性等级。在本文中,我们假设此概率是两个因素的组合。其相关性等级和受欢迎度等级。正如我们从日常浏览量中定义的那样,受欢迎程度可以视为用户对文档的投票,并且通过将概率R中的这一因素结合起来,我们可以更准确地捕获用户行为。我们提出了一种新的评估指标,称为“使用网页受欢迎程度(RRP)的倒数排名”,该指标不仅考虑了文档的相关性判断,还考虑了其​​受欢迎程度,因此与点击指标的相关性要比其他评估指标更好。

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