Authors
Sunil Gandhi, Tim Oates, Tinoosh Mohsenin, David Hairston
Publication date
2018
Conference
Advances in Knowledge Discovery and Data Mining: 22nd Pacific-Asia Conference, PAKDD 2018, Melbourne, VIC, Australia, June 3-6, 2018, Proceedings, Part III 22
Pages
285-296
Publisher
Springer International Publishing
Description
Denoising data is a preprocessing step for several time series mining algorithms. This step is especially important if the noise in data originates from diverse sources. Consequently, it is commonly used in biomedical applications that use Electroencephalography (EEG) data. In EEG data noise can occur due to ocular, muscular and cardiac activities. In this paper, we explicitly learn to remove noise from time series data without assuming a prior distribution of noise. We propose an online, fully automated, end-to-end system for denoising time series data. Our model for denoising time series is trained using unpaired training corpora and does not need information about the source of the noise or how it is manifested in the time series. We propose a new architecture called AsymmetricGAN that uses a generative adversarial network for denoising time series data. To analyze our approach, we create a synthetic …
Total citations
201920202021202220232024134321
Scholar articles
S Gandhi, T Oates, T Mohsenin, D Hairston - Advances in Knowledge Discovery and Data Mining …, 2018