Title
dLSTM: a new approach for anomaly detection using deep learning with delayed prediction
Abstract
In this paper, we propose delayed Long Short-Term Memory (dLSTM), an anomaly detection method for time-series data. We first build a predictive model from normal (non-anomalous) training data, then perform anomaly detection based on the prediction error for observed data. However, there are multiple states in the waveforms of normal data, which may lower prediction accuracy. To deal with this problem, we utilize multiple prediction models based on LSTM for anomaly detection. In this scheme, the prediction accuracy strongly depends on the method of selecting a proper predictive model from multiple possible models. We propose a novel method to determine the proper predictive model for anomaly detection. Our approach provides multiple predicted value candidates in advance and selects the one that is closest to the measured value. We delay the model selection until the corresponding measured values are acquired. Using this concept for anomaly detection, dLSTM selects the proper predictive model to enhance prediction accuracy. In our experimental evaluation using real and artificial data, dLSTM detects anomalies more accurately than methods in comparison.
Year
DOI
Venue
2019
10.1007/s41060-019-00186-0
International Journal of Data Science and Analytics
Keywords
Field
DocType
Anomaly detection, Deep learning, LSTM, Time-series data
Training set,Time series,Anomaly detection,Mean squared prediction error,Pattern recognition,Computer science,Waveform,Model selection,Artificial intelligence,Deep learning,Predictive modelling
Journal
Volume
Issue
ISSN
8
2
2364-415X
Citations 
PageRank 
References 
2
0.41
0
Authors
3
Name
Order
Citations
PageRank
Shigeru Maya140.79
Ken Ueno212413.27
Takeichiro Nishikawa320.75