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Attractor Memory for Long-Term Time Series Forecasting: A Chaos Perspective

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In long-term time series forecasting (LTSF) tasks, an increasing number of models have acknowledged that discrete time series originate from continuous dynamic systems and have attempted to model their dynamical structures. Recognizing the chaotic nature of real-world data, our model, \textbf{\textit{Attraos}}, incorporates chaos theory into LTSF, perceiving real-world time series as observations from unknown high-dimensional chaotic dynamic systems. Under the concept of attractor invariance, Attraos utilizes non-parametric Phase Space Reconstruction embedding and the proposed multi-scale dynamic memory unit to memorize historical dynamics structure and predicts by a frequency-enhanced local evolution strategy. Detailed theoretical analysis and abundant empirical evidence consistently show that Attraos outperforms various LTSF methods on mainstream LTSF datasets and chaotic datasets with only one-twelfth of the parameters compared to PatchTST.

Jiaxi Hu, Yuehong Hu, Wei Chen, Ming Jin, Shirui Pan, Qingsong Wen, Yuxuan Liang• 2024

Related benchmarks

TaskDatasetResultRank
Multivariate ForecastingETTh1
MSE0.423
645
Multivariate long-term series forecastingETTh2
MSE0.376
319
Multivariate long-term series forecastingWeather
MSE0.246
288
Multivariate long-term series forecastingETTm1
MSE0.382
257
Long-term time-series forecastingETTh1 (test)
MSE0.423
221
Multivariate long-term series forecastingETTm2
MSE0.28
175
Long-term forecastingExchange (test)
MAE0.395
127
Long-term time-series forecastingWeather (test)
MSE0.246
103
Multivariate long-term series forecastingExchange
MSE0.349
90
Time Series ForecastingLorenz96-3d
MSE0.835
40
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