This paper focuses on the problem of semi-supervised domain adaptation for time-series forecasting, which is underexplored in literatures, despite being often encountered in practice. Existing methods on time-series domain adaptation mainly follow the paradigm designed for the static data, which cannot handle domain-specific complex conditional dependencies raised by data offset, time lags, and variant data distributions. In order to address these challenges, we analyze variational conditional dependencies in time-series data and find that the causal structures are usually stable among domains, and further raise the causal conditional shift assumption. Enlightened by this assumption, we consider the causal generation process for time-series...
We consider a case of covariate shift where prior causal inference or expert knowledge has identifie...
In this work, we propose novel transfer learning methods for time series analysis. Motivated by appl...
Unsupervised domain adaptation (UDA) has successfully addressed the domain shift problem for visual ...
University of Technology Sydney. Faculty of Engineering and Information Technology.A main goal of st...
Due to the nonstationary nature, the distribution of real-world multivariate time series (MTS) chang...
The performance of a machine learning model degrades when it is applied to data from a similar but d...
In many scientific fields, such as economics and neuroscience, we are often faced with nonstationary...
Because of its high dimensionality, complex dynamics and irregularity, forecasting of time series da...
Deep learning models have shown impressive results in a variety of time series forecasting tasks, wh...
Domain adaptation (DA) arises as an important problem in statistical machine learning when the sourc...
Domain adaptation on time series data is an important but challenging task. Most of the existing wor...
Domain adaptation on time-series data is often encountered in the industry but received limited atte...
Causal Forces: Structuring Knowledge for Time Series Extrapolation This paper examines a strategy fo...
We propose to learn an invariant causal predictor that is robust to distributional shifts, in the su...
Contains fulltext : 199865.pdf (publisher's version ) (Open Access
We consider a case of covariate shift where prior causal inference or expert knowledge has identifie...
In this work, we propose novel transfer learning methods for time series analysis. Motivated by appl...
Unsupervised domain adaptation (UDA) has successfully addressed the domain shift problem for visual ...
University of Technology Sydney. Faculty of Engineering and Information Technology.A main goal of st...
Due to the nonstationary nature, the distribution of real-world multivariate time series (MTS) chang...
The performance of a machine learning model degrades when it is applied to data from a similar but d...
In many scientific fields, such as economics and neuroscience, we are often faced with nonstationary...
Because of its high dimensionality, complex dynamics and irregularity, forecasting of time series da...
Deep learning models have shown impressive results in a variety of time series forecasting tasks, wh...
Domain adaptation (DA) arises as an important problem in statistical machine learning when the sourc...
Domain adaptation on time series data is an important but challenging task. Most of the existing wor...
Domain adaptation on time-series data is often encountered in the industry but received limited atte...
Causal Forces: Structuring Knowledge for Time Series Extrapolation This paper examines a strategy fo...
We propose to learn an invariant causal predictor that is robust to distributional shifts, in the su...
Contains fulltext : 199865.pdf (publisher's version ) (Open Access
We consider a case of covariate shift where prior causal inference or expert knowledge has identifie...
In this work, we propose novel transfer learning methods for time series analysis. Motivated by appl...
Unsupervised domain adaptation (UDA) has successfully addressed the domain shift problem for visual ...