AUNET (Attention-based unified network): leveraging attention based N-BEATS for enhanced univariate time series forecasting
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Date
2024-11Publisher
BRAC UniversityAuthor
Habib, Adria BinteMetadata
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This study presents AUNET, an enhanced version of the N-BEATS model specifically
designed for univariate time series forecasting by incorporating a multi-head
self-attention mechanism. The motivation behind AUNET is to address key limitations
of the traditional N-BEATS model, such as redundancy in feature learning,
inefficiency in capturing temporal dependencies, and over-complexity for univariate
datasets. The proposed model aims to improve the representation of temporal features
by selectively focusing on relevant parts of the input sequence, thus enhancing
predictive accuracy while maintaining computational efficiency.
The AUNET architecture leverages multi-head self-attention layers to capture both
short-term fluctuations and long-term dependencies effectively. By integrating attention
mechanisms, AUNET dynamically focuses on significant time intervals, minimizing
redundancy and improving generalization capabilities. The model’s modular
structure allows for an interpretable approach to time series forecasting, providing
insights into critical temporal patterns.
Experimental results demonstrate that AUNET outperforms the original N-BEATS
and other attention-based variations, achieving lower Mean Absolute Error (MAE)
0.8857 and Root Mean Squared Error (RMSE) 0.9896, along with a higher
R² score 0.9948, indicating improved prediction accuracy and robustness. Comparisons
with models incorporating Neural Attention Memory (NAM), ProbSparse
Attention, and Multi-Query Attention further highlight the superiority of AUNET in
terms of capturing diverse temporal relationships while balancing model complexity.
The findings suggest that AUNET offers a powerful solution for accurate, interpretable,
and efficient time series forecasting, particularly applicable in domains
such as finance, climate modeling, and energy demand prediction. Future work will
explore expanding AUNET’s applicability to multivariate time series and enhancing
its interpretability for real-time forecasting applications.