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Sequence-to-Sequence Imputation of Missing Sensor Data

机译:缺失传感器数据的顺序序列归档

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Although the sequence-to-sequence (encoder-decoder) model is considered the state-of-the-art in deep learning sequence models, there is little research into using this model for recovering missing sensor data. The key challenge is that the missing sensor data problem typically comprises three sequences (a sequence of observed samples, followed by a sequence of missing samples, followed by another sequence of observed samples) whereas, the sequence-to-sequence model only considers two sequences (an input sequence and an output sequence). We address this problem by formulating a sequence-to-sequence in a novel way. A forward RNN encodes the data observed before the missing sequence and a backward RNN encodes the data observed after the missing sequence. A decoder decodes the two encoders in a novel way to predict the missing data. We demonstrate that this model produces the lowest errors in 12% more cases than the current state-of-the-art.
机译:虽然序列到序列(编码器 - 解码器)模型被认为是深度学习序列模型的最先进的,但是几乎没有研究使用该模型来恢复丢失的传感器数据。关键挑战是缺失的传感器数据问题通常包括三个序列(一系列观察样本,然后是一系列缺失样本,其次是观察样本的另一个序列),而序列到序列模型仅考虑两个序列(输入序列和输出序列)。我们通过以新颖的方式制定序列到序列来解决这个问题。向前RNN对缺失序列和后向RNN进行编码观察到的数据进行编码,对丢失的序列后观察到的数据。解码器以新颖的方式解码两个编码器以预测丢失的数据。我们证明,该模型在比当前最先进的情况下产生12%的最低误差。

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