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Bypass Rates: Reducing Query Abandonment using Negative Inferences

机译:绕过率:使用负推论减少查询放弃

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We introduce a new approach to analyzing click logs by examining both the documents that are clicked and those that are bypassed-documents returned higher in the ordering of the search results but skipped by the user. This approach complements the popular click-through rate analysis, and helps to draw negative inferences in the click logs. We formulate a natural objective that finds sets of results that are unlikely to be collectively bypassed by a typical user. This is closely related to the problem of reducing query abandonment. We analyze a greedy approach to optimizing this objective, and establish theoretical guarantees of its performance. We evaluate our approach on a large set of queries, and demonstrate that it compares favorably to the maximal marginal relevance approach on a number of metrics including mean average precision and mean reciprocal rank.
机译:通过检查被单击的文档和被绕过的文档,我们引入了一种分析单击日志的新方法,这些文档在搜索结果的顺序中返回较高,但被用户跳过。这种方法是对流行的点击率分析的补充,并有助于在点击日志中得出否定的推论。我们制定了一个自然的目标,即寻找不太可能被典型用户集体绕过的结果集。这与减少查询放弃的问题密切相关。我们分析了一种优化此目标的贪婪方法,并为其性能建立了理论保证。我们在大量查询中评估了我们的方法,并证明了它在包括平均平均精度和平均倒数排名在内的许多指标上与最大边际相关性方法相比具有优势。

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