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Don't look stupid

机译:不要看起来愚蠢

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摘要

If recommenders are to help people be more productive, they need to support a wide variety of real-world information seeking tasks, such as those found when seeking research papers in a digital library. There are many potential pitfalls, including not knowing what tasks to support, generating recommendations for the wrong task, or even failing to generate any meaningful recommendations whatsoever. We posit that different recommender algorithms are better suited to certain information seeking tasks. In this work, we perform a detailed user study with over 130 users to understand these differences between recommender algorithms through an online survey of paper recommendations from the ACM Digital Library. We found that pitfalls are hard to avoid. Two of our algorithms generated 'atypical' recommendations recommendations that were unrelated to their input baskets. Users reacted accordingly, providing strong negative results for these algorithms. Results from our 'typical' algorithms show some qualitative differences, but since users were exposed to two algorithms, the results may be biased. We present a wide variety of results, teasing out differences between algorithms. Finally, we succinctly summarize our most striking results as "Don't Look Stupid" in front of users.
机译:如果推荐者可以帮助人们更加富有成效,他们需要支持各种各样的真实信息寻求任务,例如在数字图书馆寻找研究论文时发现的那些。有许多潜在的陷阱,包括不知道支持哪些任务,为错误任务产生建议,甚至无法生成任何有意义的建议。我们对不同的推荐算法提供了优于寻求任务的某些信息。在这项工作中,我们使用超过130名用户执行详细的用户学习,以通过来自ACM数字图书馆的纸质建议的在线调查来了解推荐算法之间的这些差异。我们发现陷阱很难避免。我们的两个算法生成了与他们的输入篮子无关的“非典型”建议建议。用户相应地反应,为这些算法提供了强的负面结果。我们“典型”算法的结果显示了一些定性差异,但由于用户接触到两个算法,因此结果可能偏置。我们提出了各种各样的结果,缩短了算法之间的差异。最后,我们简单地将我们最引人注目的结果总结为在用户面前的“不要看起来愚蠢”。

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