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Recently, sequence data containing time information, such as sensor measurement data and purchase history, has been generated in various applications. So far, many methods for finding sequences that are significantly different from other sequences among given sequences have been proposed. However, most of them have a limitation that they consider only the order of elements in the sequences. Therefore, in this paper, we propose a new anomalous sequence detection method that considers both the order of elements and the time interval between elements. The proposed method uses an extended LSTM autoencoder model, which has an additional layer that converts a sequence into a form that can help effectively learn both the order of elements and the time interval between elements. The proposed method learns the features of the given sequences with the extended LSTM autoencoder model, and then detects sequences that the model does not reconstruct well as anomalous sequences. Using experiments on synthetic data that contains both normal and anomalous sequences, we show that the proposed method achieves an accuracy close to 100% compared to the method that uses only the traditional LSTM autoencoder.
키워드
- 제목
- 확장된 LSTM 오토인코더 기반 이상 시퀀스 탐지 기법
- 제목 (타언어)
- An Anomalous Sequence Detection Method Based on An Extended LSTM Autoencoder
- 저자
- 이주연; 이기용
- 발행일
- 2021-02
- 저널명
- 한국전자거래학회지
- 권
- 26
- 호
- 1
- 페이지
- 127 ~ 140