Change-point detection (CPD), which detects abrupt changes in the data distribution, is recognized as one of the most significant tasks in time series analysis. Despite the extensive literature on offline CPD, unsupervised online CPD still suffers from major challenges, including scalability, hyperparameter tuning, and learning constraints. To mitigate some of these challenges, in this paper, we propose a novel deep learning approach for unsupervised online CPD from multi-dimensional time series, named Adaptive LSTM-Autoencoder Change-Point Detection (ALACPD). ALACPD exploits an LSTM-autoencoder-based neural network to perform unsupervised online CPD. It continuously adapts to the incoming samples without keeping the previously received input, thus being memory-free. We perform an extensive evaluation on several real-world time series CPD benchmarks. We show that ALACPD, on average, ranks first among state-of-the-art CPD algorithms in terms of quality of the time series segmentation, and it is on par with the best performer in terms of the accuracy of the estimated change-points. The implementation of ALACPD is available online on Github\footnote{\url{https://github.com/zahraatashgahi/ALACPD}}.
翻译:发现数据分布突变的改变点检测(CPD)被认为是时间序列分析中最重要的任务之一。尽管在离线CPD上有大量文献,但不受监督的在线CPD仍面临重大挑战,包括可缩放性、超参数调制和学习限制。为了减轻其中一些挑战,我们在本文件中建议对多维时间序列中不受监督的在线CPD采用新的深层次学习方法,名为适应LSTM-Autoencoder Change-point section(ALACAPD ) 。ALACAPD利用基于 LSTM-autoencoder的神经网络进行不受监督的在线CPD。它不断适应收到的样本,而不保留先前得到的投入,因此没有记忆性。我们对一些真实世界时间序列CPD基准进行了广泛的评价。我们显示ALACAPD平均在时间序列分解质量方面排在州-最先进的CPD算法中位列第一位,在估计变化点/拉加委/在线实施AHRPA/AHRPA的精确度上。