A Temporal Linear Network for Time Series Forecasting
- URL: http://arxiv.org/abs/2410.21448v1
- Date: Mon, 28 Oct 2024 18:51:19 GMT
- Title: A Temporal Linear Network for Time Series Forecasting
- Authors: Remi Genet, Hugo Inzirillo,
- Abstract summary: We introduce the Temporal Linear Net (TLN), that extends the capabilities of linear models while maintaining interpretability and computational efficiency.
Our approach is a variant of TSMixer that maintains strict linearity throughout its architecture.
A key innovation of TLN is its ability to compute an equivalent linear model, offering a level of interpretability not found in more complex architectures such as TSMixer.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Recent research has challenged the necessity of complex deep learning architectures for time series forecasting, demonstrating that simple linear models can often outperform sophisticated approaches. Building upon this insight, we introduce a novel architecture the Temporal Linear Net (TLN), that extends the capabilities of linear models while maintaining interpretability and computational efficiency. TLN is designed to effectively capture both temporal and feature-wise dependencies in multivariate time series data. Our approach is a variant of TSMixer that maintains strict linearity throughout its architecture. TSMixer removes activation functions, introduces specialized kernel initializations, and incorporates dilated convolutions to handle various time scales, while preserving the linear nature of the model. Unlike transformer-based models that may lose temporal information due to their permutation-invariant nature, TLN explicitly preserves and leverages the temporal structure of the input data. A key innovation of TLN is its ability to compute an equivalent linear model, offering a level of interpretability not found in more complex architectures such as TSMixer. This feature allows for seamless conversion between the full TLN model and its linear equivalent, facilitating both training flexibility and inference optimization.
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