QLAM: A Quantum Long-Attention Memory Approach to Long-Sequence Token Modeling
Hoang-Quan Nguyen, Sankalp Pandey, Khoa Luu

TL;DR
This paper introduces QLAM, a hybrid quantum-classical memory model that leverages quantum superposition to enhance long-sequence token modeling, maintaining linear complexity while capturing complex global dependencies.
Contribution
It presents one of the first quantum-inspired memory mechanisms for sequence modeling, enriching state-space models with quantum superposition for better global interaction capture.
Findings
QLAM outperforms recurrent baselines on image sequence tasks.
QLAM achieves competitive results compared to transformer models.
Quantum superposition enhances memory representation in sequence modeling.
Abstract
Modeling long-range dependencies in sequential data remains a central challenge in machine learning. Transformers address this challenge through attention mechanisms, but their quadratic complexity with respect to sequence length limits scalability to long contexts. State-space models (SSMs) provide an efficient alternative with linear-time computation by evolving a latent state through recurrent updates, but their memory is typically formed via additive or linear transitions, which can limit their ability to capture complex global interactions across tokens. In this work, we introduce one of the first studies to leverage the superposition property of quantum systems to enhance state-based sequence modeling. In particular, we propose Quantum Long-Attention Memory (QLAM), a hybrid quantum-classical memory mechanism that can be viewed as a quantum extension of state-space models. Instead…
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