Quantum Temporal Fusion Transformer
Krishnakanta Barik, Goutam Paul

TL;DR
This paper introduces the Quantum Temporal Fusion Transformer (QTFT), a hybrid quantum-classical model that enhances multi-horizon time series forecasting by leveraging quantum computing, demonstrating improved performance over classical models on real datasets.
Contribution
The work presents the first quantum-enhanced extension of the Temporal Fusion Transformer, enabling implementation on NISQ devices and showing superior forecasting accuracy.
Findings
QTFT outperforms classical TFT in training and test loss.
Successfully trained on real forecasting datasets.
Demonstrates potential of quantum computing in deep learning tasks.
Abstract
The \textit{Temporal Fusion Transformer} (TFT), proposed by Lim \textit{et al.}, published in \textit{International Journal of Forecasting} (2021), is a state-of-the-art attention-based deep neural network architecture specifically designed for multi-horizon time series forecasting. It has demonstrated significant performance improvements over existing benchmarks. In this work, we introduce the Quantum Temporal Fusion Transformer (QTFT), a quantum-enhanced hybrid quantum-classical architecture that extends the capabilities of the classical TFT framework. The core idea of this work is inspired by the foundation studies, \textit{The Power of Quantum Neural Networks} by Amira Abbas \textit{et al.} and \textit{Quantum Vision Transformers} by El Amine Cherrat \textit{et al.}, published in \textit{ Nature Computational Science} (2021) and \textit{Quantum} (2024), respectively. A key advantage…
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