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LETS Forecast: Learning Embedology for Time Series Forecasting

About

Real-world time series are often governed by complex nonlinear dynamics. Understanding these underlying dynamics is crucial for precise future prediction. While deep learning has achieved major success in time series forecasting, many existing approaches do not explicitly model the dynamics. To bridge this gap, we introduce DeepEDM, a framework that integrates nonlinear dynamical systems modeling with deep neural networks. Inspired by empirical dynamic modeling (EDM) and rooted in Takens' theorem, DeepEDM presents a novel deep model that learns a latent space from time-delayed embeddings, and employs kernel regression to approximate the underlying dynamics, while leveraging efficient implementation of softmax attention and allowing for accurate prediction of future time steps. To evaluate our method, we conduct comprehensive experiments on synthetic data of nonlinear dynamical systems as well as real-world time series across domains. Our results show that DeepEDM is robust to input noise, and outperforms state-of-the-art methods in forecasting accuracy. Our code is available at: https://abrarmajeedi.github.io/deep_edm.

Abrar Majeedi, Viswanatha Reddy Gajjala, Satya Sai Srinath Namburi GNVV, Nada Magdi Elkordi, Yin Li• 2025

Related benchmarks

TaskDatasetResultRank
Multivariate ForecastingETTh1
MSE0.324
830
Multivariate Time-series ForecastingETTm1
MSE0.277
686
Multivariate Time-series ForecastingETTm2
MSE0.224
539
Multivariate Time-series ForecastingWeather
MSE0.145
409
Multivariate Time-series ForecastingTraffic
MSE0.401
310
Multivariate Time-series ForecastingExchange
MAE0.142
262
Multivariate Time-series ForecastingETTh2
MSE0.225
198
Short-term forecastingM4 Yearly
MASE2.973
168
Short-term forecastingM4 Quarterly
MASE1.177
166
Short-term forecastingM4 Monthly
MASE0.933
150
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