论文标题
无监督的暂时多路数据的异常检测
Unsupervised Anomaly Detection on Temporal Multiway Data
论文作者
论文摘要
颞异常检测在时空上寻找不规则性。到目前为止,无监督的时间模型通常在特征向量的序列上工作,而在时间多路数据上更少。我们将调查集中在双向数据上,其中在每个时间步骤中都观察到数据矩阵。利用矩阵本性复发性神经网络的最新进展,我们研究了数据布置的策略和无监督的时间多路异常检测培训。这些包括压缩解压缩,编码预测和时间数据差异。我们进行了全面的实验套件,以评估在综合数据,移动数字和ECG记录的各种环境下的模型行为。我们发现有趣的现象先前没有报道。其中包括紧凑型矩阵LSTM完美地压缩嘈杂数据的能力,从而使压缩解压缩数据的策略不适合在噪声下检测到异常检测。同样,可以通过允许很长的上下文和多步预测的矩阵模型来直接解决矢量的长序列。总体而言,编码预测策略在执行实验中非常适合矩阵LSTM,这要归功于其紧凑性并更好地适合数据动态。
Temporal anomaly detection looks for irregularities over space-time. Unsupervised temporal models employed thus far typically work on sequences of feature vectors, and much less on temporal multiway data. We focus our investigation on two-way data, in which a data matrix is observed at each time step. Leveraging recent advances in matrix-native recurrent neural networks, we investigated strategies for data arrangement and unsupervised training for temporal multiway anomaly detection. These include compressing-decompressing, encoding-predicting, and temporal data differencing. We conducted a comprehensive suite of experiments to evaluate model behaviors under various settings on synthetic data, moving digits, and ECG recordings. We found interesting phenomena not previously reported. These include the capacity of the compact matrix LSTM to compress noisy data near perfectly, making the strategy of compressing-decompressing data ill-suited for anomaly detection under the noise. Also, long sequence of vectors can be addressed directly by matrix models that allow very long context and multiple step prediction. Overall, the encoding-predicting strategy works very well for the matrix LSTMs in the conducted experiments, thanks to its compactness and better fit to the data dynamics.