摘要
With the sweeping digitalization of societal, medical, industrial, and scientific processes, sensing technologies are being deployed that produce increasing volumes of time series data, thus fueling a plethora of new or improved applications. In this setting, outlier detection is frequently important, and while solutions based on neural networks exist, they leave room for improvement in terms of both accuracy and efficiency. With the objective of achieving such improvements, we propose a diversity-driven, convolutional ensemble. To improve accuracy, the ensemble employs multiple basic outlier detection models built on convolutional sequence-to-sequence autoencoders that can capture temporal dependencies in time series. Further, a novel diversity-driven training method maintains diversity among the basic models, with the aim of improving the ensemble’s accuracy. To improve efficiency, the approach enables a high degree of parallelism during training. In addition, it is able to transfer some model parameters from one basic model to another, which reduces training time. We report on extensive experiments using real-world multivariate time series that offer insight into the design choices underlying the new approach and offer evidence that it is capable of improved accuracy and efficiency.
| 源语言 | 英语 |
|---|---|
| 页(从-至) | 611-623 |
| 页数 | 13 |
| 期刊 | Proceedings of the VLDB Endowment |
| 卷 | 15 |
| 期 | 3 |
| DOI | |
| 出版状态 | 已出版 - 2021 |
| 已对外发布 | 是 |
| 活动 | 48th International Conference on Very Large Data Bases, VLDB 2022 - Sydney, 澳大利亚 期限: 5 9月 2022 → 9 9月 2022 |
指纹
探究 'Unsupervised Time Series Outlier Detection with Diversity-Driven Convolutional Ensembles' 的科研主题。它们共同构成独一无二的指纹。引用此
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