Domain Adaptation Time Series
Domain adaptation is a field associated with machine learning and transfer learning this scenario arises when we aim at learning from a source data distribution a well performing model on a different but related target data distribution.
Domain adaptation time series. However robust techniques have n. 10 13 19 data driven models are becoming essential parts in modern mechanical systems commonly used to capture the behavior of various equ. 05 22 20 domain adaptation da offers a valuable means to reuse data and models for new problem domains.
However robust techniques have not yet been considered for time series data with varying amounts of data availability. Inspired by adversarial domain adaptation 12 professor forcing involved training an auxiliary discriminator to distinguish between free running. Garrett wilson janardhan rao doppa and diane j.
Multi source deep domain adaptation with weak supervision for time series sensor data. Transfer learning domain adaptation time series human activity recognition weak supervision acm reference format. Time series generative adversarial networks jinsung yoon university of california los angeles usa jsyoon0823 g ucla edu daniel jarrett.
Temporal domain adaptation under time warping abstract. Domain adaptation da offers a valuable means to reuse data and models for new problem domains. The proposed method can predict the time dependent reliability for the performance function involving.
Specifically a medical time series generation network with similarity distillation is developed to reduce the domain gap caused by the difference in laboratory parameters. Satellite image time series are becoming increasingly available and will continue to do so in the coming years thanks to the launch of space missions which aim at providing a coverage of the earth every few days with high spatial resolution. This article proposes to solve this problem with an unsupervised time series adaptation method that generates time series across laboratory parameters.
In 26th acm sigkdd conference on knowledge discovery and. The domain adaptation of the neural predictors is investigated evaluating their accuracy on other irradiance time series with different geographical conditions.