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Social Book Search: Comparing Topical Relevance Judgements and Book Suggestions for Evaluation

机译:社交图书搜索:比较主题相关性判断和评价书的建议

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The Web and social media give us access to a wealth of information, not only different in quantity but also in character-traditional descriptions from professionals are now supplemented with user generated content. This challenges modern search systems based on the classical model of topical relevance and ad hoc search: How does their effectiveness transfer to the changing nature of information and to the changing types of information needs and search tasks? We use the INEX 2011 Books and Social Search Track's collection of book descriptions from Amazon and social cataloguing site LibraryThing. We compare classical 1R with social book search in the context of the LibraryThing discussion forums where members ask for book suggestions. Specifically, we compare book suggestions on the forum with Mechanical Turk judgements on topical relevance and recommendation, both the judgements directly and their resulting evaluation of retrieval systems. First, the book suggestions on the forum are a complete enough set of relevance judgements for system evaluation. Second, topical relevance judgements result in a different system ranking from evaluation based on the forum suggestions. Although it is an important aspect for social book search, topical relevance is not sufficient for evaluation. Third, professional metadata alone is often not enough to determine the topical relevance of a book. User reviews provide a better signal for topical relevance. Fourth, user-generated content is more effective for social book search than professional metadata. Based on our findings, we propose an experimental evaluation that better reflects the complexities of social book search.
机译:网络和社交媒体使我们可以访问大量信息,不仅数量不同,而且专业人员提供的字符传统描述现在都由用户生成的内容进行了补充。这对基于主题相关性和即席搜索的经典模型的现代搜索系统提出了挑战:它们的有效性如何转移到不断变化的信息性质以及不断变化的信息需求和搜索任务的类型上?我们使用Amazon和社交编目网站LibraryThing的INEX 2011图书和社交搜索路径的图书说明集合。我们在LibraryThing讨论论坛的上下文中将经典的1R与社交图书搜索进行了比较,在该论坛中,成员要求提供图书建议。具体来说,我们将论坛上的书本建议与Mechanical Turk对主题相关性和推荐的判断进行了比较,包括直接的判断以及它们对检索系统的评估。首先,论坛上的书籍建议是用于系统评估的足够完整的相关性判断集。其次,主题相关性判断导致的系统排名与基于论坛建议的评估有所不同。尽管这是社会图书搜索的重要方面,但主题相关性不足以进行评估。第三,仅专业元数据通常不足以确定书籍的主题相关性。用户评论为主题相关性提供了更好的信号。第四,用户生成的内容比专业元数据对社交图书搜索更有效。根据我们的发现,我们提出了一项实验评估,可以更好地反映社交图书搜索的复杂性。

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