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首页> 外文期刊>ACM transactions on knowledge discovery from data >Reducing Cumulative Errors of Incremental CP Decomposition in Dynamic Online Social Networks
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Reducing Cumulative Errors of Incremental CP Decomposition in Dynamic Online Social Networks

机译:减少动态在线社交网络中增量CP分解的累积误差

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摘要

CANDECOMP/PARAFAC (CP) decomposition is widely used in various online social network (OSN) applications. However, it is inefficient when dealing with massive and incremental data. Some incremental CP decomposition (ICP) methods have been proposed to improve the efficiency and process evolving data, by updating decomposition results according to the newly added data. The ICP methods are efficient, but inaccurate because of serious error accumulation caused by approximation in the incremental updating. To promote the wide use of ICP, we strive to reduce its cumulative errors while keeping high efficiency. We first differentiate all possible errors in ICP into two types: the cumulative reconstruction error and the prediction error. Next, we formulate two optimization problems for reducing the two errors. Then, we propose several restarting strategies to address the two problems. Finally, we test the effectiveness in three typical dynamic OSN applications. To the best of our knowledge, this is the first work on reducing the cumulative errors of the ICP methods in dynamic OSNs.
机译:CANDECOMP / PARAFAC(CP)分解广泛用于各种在线社交网络(OSN)应用程序。但是,在处理大规模和增量数据时效率低下。已经提出了一些增量CP分解(ICP)方法以通过根据新添加的数据更新分解结果来提高效率和过程不断发展的数据。 ICP方法是有效的,但由于增量更新中的近似引起的严重误差累积是有效的,但不准确。为了促进ICP广泛使用,我们努力降低其累积误差,同时保持高效。我们首先将ICP中的所有可能的错误分为两种类型:累积重建误差和预测误差。接下来,我们制定了两个优化问题来减少两个错误。然后,我们提出了几次重新启动策略来解决这两个问题。最后,我们在三个典型的动态OSN应用中测试效果。据我们所知,这是第一个关于减少动态OSN中ICP方法累积误差的工作。

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