Machine Learning · Computer Science
Variational Mode Decomposition and Linear Embeddings are What You Need For Time-Series Forecasting
Hafizh Raihan Kurnia Putra, Novanto Yudistira, Tirana Noor Fatyanosa
2024-09-05
Machine Learning · Computer Science
Feature Likelihood Divergence: Evaluating the Generalization of Generative Models Using Samples
Marco Jiralerspong, Avishek Joey Bose, Ian Gemp, Chongli Qin +2
2024-03-14
Applications · Statistics
Efficient Modelling & Forecasting with range based volatility models and application
Kok-Haur Ng, Shelton Peiris, Jennifer So-kuen-Chan, David Allen +1
2017-02-09
Signal Processing · Electrical Eng. & Systems
Empirical Fourier Decomposition
Wei Zhou, Zhongren Feng, Xiongjiang Wang, Hao Lv
2019-12-03
Computational Engineering, Finance, and Science · Computer Science
Dynamic correlations at different time-scales with Empirical Mode Decomposition
Noemi Nava, T. Di Matteo, Tomaso Aste
2018-04-04
Dynamical Systems · Mathematics
Featurizing Koopman Mode Decomposition For Robust Forecasting
David Aristoff, Jeremy Copperman, Nathan Mankovich, Alexander Davies
2024-08-13
Computational Physics · Physics
PF-DMD: Physics-fusion dynamic mode decomposition for accurate and robust forecasting of dynamical systems with imperfect data and physics
Yuhui Yin, Chenhui Kou, Shengkun Jia, Lu Lu +2
2023-11-29
Computer Vision and Pattern Recognition · Computer Science
Fourier Amplitude and Correlation Loss: Beyond Using L2 Loss for Skillful Precipitation Nowcasting
Chiu-Wai Yan, Shi Quan Foo, Van Hoan Trinh, Dit-Yan Yeung +2
2024-10-31
Computational Engineering, Finance, and Science · Computer Science
Error Approximation and Bias Correction in Dynamic Problems using a Recurrent Neural Network/Finite Element Hybrid Model
Moritz von Tresckow, Herbert De Gersem, Dimitrios Loukrezis
2024-02-20
Machine Learning · Computer Science
Functional Latent Dynamics for Irregularly Sampled Time Series Forecasting
Christian Klötergens, Vijaya Krishna Yalavarthi, Maximilian Stubbemann, Lars Schmidt-Thieme
2024-10-04
Signal Processing · Electrical Eng. & Systems
Improve the Fitting Accuracy of Deep Learning for the Nonlinear Schr\"odinger Equation Using Linear Feature Decoupling Method
Yunfan Zhang, Zekun Niu, Minghui Shi, Weisheng Hu +1
2024-11-08
Machine Learning · Computer Science
Fed-ADE: Adaptive Learning Rate for Federated Post-adaptation under Distribution Shift
Heewon Park, Mugon Joe, Miru Kim, Kyungjin Im +1
2026-03-03