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Trending pool: Visual analytics for trending event compositions for time-series categorical log data

机译:趋势池:用于时间级分类日志数据的趋势活动组合的视觉分析

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Although many visualization tools provide us plenty of ways to view the data, users can not easily find the trending events and their explanation from the data. In this work, we address the issue by leveraging the real music streaming log data as an example to better understand a million-scale dataset. Trending event explanation turns out to be challenging when it comes to categorical log data. Therefore, we propose to use a learning-based method with an interface design to uncover the trending event compositions for time-series categorical log data, which can be extend to other datasets, e.g., the hashtags in social media. First, we perform ???trending pool??? operation to save the memory and time cost. Second, we apply sparse coding to learn important trending candidate combination sets instead of traditional brute-force way or manual investigation for generating combinations. Besides the contributions above, we also observe some interesting user behaviors by exploring detected trending candidate combinations visually through our interface.
机译:虽然许多可视化工具为我们提供了大量的方法来查看数据,但用户无法轻松找到数据的趋势事件及其解释。在这项工作中,我们通过利用真实的音乐流记录数据来解决问题,以便更好地理解一百万级数据集。当涉及到分类日志数据时,趋势事件说明事实证明是具有挑战性的。因此,我们建议使用基于学习的方法具有接口设计来揭示时间级分类日志数据的趋势事件组合,这可以扩展到其他数据集,例如社交媒体中的HASHTAG。首先,我们执行???趋势池???操作以保存内存和时间成本。其次,我们应用稀疏编码以学习重要的趋势候选组合组,而不是传统的暴力方式或用于产生组合的手动调查。除了上述贡献外,我们还通过探索通过我们的界面探索检测到的趋势候选组合来观察一些有趣的用户行为。

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