Real-world time series is characterized by intrinsic non-stationarity th...
Out-of-distribution (OOD) generalization, where the model needs to handl...
Time series analysis is widely used in extensive areas. Recently, to red...
Deep models have achieved impressive progress in solving partial differe...
Time series analysis is of immense importance in extensive applications,...
Node-link diagrams are widely used to visualize graphs. Most graph layou...
Transfer learning aims to leverage knowledge from pre-trained models to
...
Transformers have shown great power in time series forecasting due to th...
General visualization recommendation systems typically make design decis...
Deep learning techniques for point clouds have achieved strong performan...
Domain adaptation targets at knowledge acquisition and dissemination fro...
Deep neural networks achieve remarkable performances on a wide range of ...
Transformers based on the attention mechanism have achieved impressive
s...
Policy constraint methods to offline reinforcement learning (RL) typical...
Future Event Generation aims to generate fluent and reasonable future ev...
The success of deep learning algorithms generally depends on large-scale...
Pre-trained model hubs with many pre-trained models (PTMs) have been a
c...
Learning a generalizable deep model from a few examples in a short time
...
To mitigate the burden of data labeling, we aim at improving data effici...
Learning predictive models for unlabeled spatiotemporal data is challeng...
Unsupervisedly detecting anomaly points in time series is challenging, w...
Cross-domain object detection is more challenging than object classifica...
Utilizing Visualization-oriented Natural Language Interfaces (V-NLI) as ...
With the development of deep networks on various large-scale datasets, a...
Extending the forecasting time is a critical demand for real application...
Leveraging datasets available to learn a model with high generalization
...
The predictive learning of spatiotemporal sequences aims to generate fut...
Domain adaptation (DA) aims at transferring knowledge from a labeled sou...
Mainstream approaches for unsupervised domain adaptation (UDA) learn
dom...
This paper tackles video prediction from a new dimension of predicting
s...
Deep learning has made revolutionary advances to diverse applications in...
This paper studies task adaptive pre-trained model selection, an
underex...
The real-world networks often compose of different types of nodes and ed...
Event data are prevalent in diverse domains such as financial trading,
b...
It is common within the deep learning community to first pre-train a dee...
This paper explores a new research problem of unsupervised transfer lear...
We propose the discrepancy-based generalization theories for unsupervise...
Domain Adaptation (DA) enables transferring a learning machine from a la...
Missing numerical values are prevalent, e.g., owing to unreliable sensor...
Errors are prevalent in time series data, such as GPS trajectories or se...
This paper introduces a new research problem of video domain generalizat...
Domain Adaptation (DA) transfers a learning model from a labeled source
...
Deep neural networks trained on a wide range of datasets demonstrate
imp...
Under StepDecay learning rate strategy (decaying the learning rate after...
Domain adaptation is critical for learning in new and unseen environment...
Two-stream convolutional networks have shown strong performance in video...
Deep hashing establishes efficient and effective image retrieval by
end-...
Network embedding aims to find a way to encode network by learning an
em...
We discuss the robustness and generalization ability in the realm of act...
Natural spatiotemporal processes can be highly non-stationary in many wa...