基于理解的结果片段

Abhijith Kashyap, Vagelis Hristidis
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引用次数: 5

摘要

大多数搜索界面都使用结果片段来预览查询结果。摘要帮助用户快速确定结果的相关性,从而减少整体搜索的时间和精力。大多数关于片段的工作都集中在Web搜索中Web页面的文本片段上。然而,很少有研究结构化数据片段问题的工作,例如产品目录。此外,所有的工作都集中在创建信息片段的重要目标上,但忽略了用户理解所需的工作量,即阅读和消化显示的片段。特别是,它们隐含地假设理解工作或成本仅取决于代码片段的长度,我们认为这对于结构化数据是不正确的。我们提出了构建结构化异构结果片段的新技术,它不仅为每个结果选择最具信息量的属性,而且最大限度地减少了用户理解这些片段的预期工作量(时间)。我们创建了一个理解模型来量化用户在理解结果片段列表时所付出的努力。我们的模型得到了广泛的用户研究的支持。一个关键的观察是,用户在多个片段中理解一个属性的努力只取决于该属性显示的唯一位置(例如,缩进)的数量,而不是出现的次数。我们分析了片段构造问题的复杂性,并表明即使只考虑理解代价,该问题也是np困难的。我们提出了高效的近似算法,并通过实验验证了其有效性和效率。
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Comprehension-based result snippets
Result snippets are used by most search interfaces to preview query results. Snippets help users quickly decide the relevance of the results, thereby reducing the overall search time and effort. Most work on snippets have focused on text snippets for Web pages in Web search. However, little work has studied the problem of snippets for structured data, e.g., product catalogs. Furthermore, all works have focused on the important goal of creating informative snippets, but have ignored the amount of user effort required to comprehend, i.e., read and digest, the displayed snippets. In particular, they implicitly assume that the comprehension effort or cost only depends on the length of the snippet, which we show is incorrect for structured data. We propose novel techniques to construct snippets of structured heterogeneous results, which not only select the most informative attributes for each result, but also minimize the expected user effort (time) to comprehend these snippets. We create a comprehension model to quantify the effort incurred by users in comprehending a list of result snippets. Our model is supported by an extensive user-study. A key observation is that the user effort for comprehending an attribute across multiple snippets only depends on the number of unique positions (e.g., indentations) where this attribute is displayed and not on the number of occurrences. We analyze the complexity of the snippet construction problem and show that the problem is NP-hard, even when we only consider the comprehension cost. We present efficient approximate algorithms, and experimentally demonstrate their effectiveness and efficiency.
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