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We Didn't Miss You: Interpolating Missing Opinions

机译:我们没有想念您:插入遗漏的意见

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When mining user streams from social media, activity gaps are inevitable, which is known as the sparsity of user data. Such sparsity can significantly degrade the performance of a predictive system that relies on time-sensitive user content. To mitigate this issue, conventional approaches generally tend to discard periods with missing data. However, this solution leads to neglecting information generated by other users which, if utilized, could potentially enhance the quality of the predictive model. So the following question arises: is it possible to alleviate the impact of absent data while preserving the available content contributed within the same timespan? Despite the fact that this problem is well-known, it has not been thoroughly studied before. The goal of this work is to find a way of interpolating missing data from user's network and his previous activities. We investigate how different types of user profiles affect overall behavior predictability. Proposed models are evaluated on a case study of a micro-blogging system for the investment community.
机译:当从社交媒体挖掘用户流时,活动差距是不可避免的,这被称为用户数据的稀疏性。这种稀疏性可能会严重降低依赖于对时间敏感的用户内容的预测系统的性能。为了减轻这个问题,常规方法通常倾向于丢弃具有丢失数据的时间段。但是,此解决方案导致忽略其他用户生成的信息,如果使用该信息,则可能会提高预测模型的质量。因此,出现了以下问题:是否可以减轻缺少数据的影响,同时保留在同一时间段内贡献的可用内容?尽管这个问题是众所周知的,但以前尚未对其进行彻底研究。这项工作的目的是找到一种从用户网络及其先前活动中插值丢失数据的方法。我们调查了不同类型的用户配置文件如何影响整体行为的可预测性。在针对投资界的微博系统的案例研究中评估了建议的模型。

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