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Main Authors: Wang, Xinyi, Tong, Lang
Format: Preprint
Published: 2021
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Online Access:https://arxiv.org/abs/2106.12382
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author Wang, Xinyi
Tong, Lang
author_facet Wang, Xinyi
Tong, Lang
contents An innovations sequence of a time series is a sequence of independent and identically distributed random variables with which the original time series has a causal representation. The innovation at a time is statistically independent of the history of the time series. As such, it represents the new information contained at present but not in the past. Because of its simple probability structure, an innovations sequence is the most efficient signature of the original. Unlike the principle or independent component analysis representations, an innovations sequence preserves not only the complete statistical properties but also the temporal order of the original time series. An long-standing open problem is to find a computationally tractable way to extract an innovations sequence of non-Gaussian processes. This paper presents a deep learning approach, referred to as Innovations Autoencoder (IAE), that extracts innovations sequences using a causal convolutional neural network. An application of IAE to the one-class anomalous sequence detection problem with unknown anomaly and anomaly-free models is also presented.
format Preprint
id arxiv_https___arxiv_org_abs_2106_12382
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Innovations Autoencoder and its Application in One-class Anomalous Sequence Detection
Wang, Xinyi
Tong, Lang
Machine Learning
An innovations sequence of a time series is a sequence of independent and identically distributed random variables with which the original time series has a causal representation. The innovation at a time is statistically independent of the history of the time series. As such, it represents the new information contained at present but not in the past. Because of its simple probability structure, an innovations sequence is the most efficient signature of the original. Unlike the principle or independent component analysis representations, an innovations sequence preserves not only the complete statistical properties but also the temporal order of the original time series. An long-standing open problem is to find a computationally tractable way to extract an innovations sequence of non-Gaussian processes. This paper presents a deep learning approach, referred to as Innovations Autoencoder (IAE), that extracts innovations sequences using a causal convolutional neural network. An application of IAE to the one-class anomalous sequence detection problem with unknown anomaly and anomaly-free models is also presented.
title Innovations Autoencoder and its Application in One-class Anomalous Sequence Detection
topic Machine Learning
url https://arxiv.org/abs/2106.12382