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Generating Possible Interpretations for Statistics from Linked Open Data

机译:从链接的开放数据生成统计信息的可能解释

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摘要

Statistics are very present in our daily lives. Every day, new statistics are published, showing the perceived quality of living in different cities, the corruption index of different countries, and so on. Interpreting those statistics, on the other hand, is a difficult task. Often, statistics collect only very few attributes, and it is difficult to come up with hypotheses that explain, e.g., why the perceived quality of living in one city is higher than in another. In this paper, we introduce Explain-a-LOD, an approach which uses data from Linked Open Data for generating hypotheses that explain statistics. We show an implemented prototype and compare different approaches for generating hypotheses by analyzing the perceived quality of those hypotheses in a user study.
机译:统计数字在我们的日常生活中非常重要。每天都会发布新的统计数据,显示在不同城市中感知的生活质量,不同国家的腐败指数等。另一方面,解释这些统计数据是一项艰巨的任务。统计数据通常只收集很少的属性,并且很难提出假设来解释例如为什么一个城市的感知生活质量高于另一个城市的假设。在本文中,我们介绍Explain-a-LOD,该方法使用链接的开放数据中的数据来生成解释统计的假设。我们展示了一个已实现的原型,并通过分析用户研究中这些假设的感知质量,比较了生成假设的不同方法。

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