Collaborative Filtering using Variational Quantum Hopfield Associative Memory
Amir Kermanshahani, Ebrahim Ardeshir-Larijani, Rakesh Saini, Saif Al-Kuwari

TL;DR
This paper introduces a hybrid quantum-classical recommendation system combining Variational Quantum Hopfield Associative Memory with deep neural networks, demonstrating robust performance on real-world datasets even under noisy conditions.
Contribution
It presents a novel framework integrating variational quantum computing with deep learning for recommendation systems, optimizing qubit usage and maintaining performance in noisy environments.
Findings
Achieved ROC of 0.9795 in ideal conditions
Maintained ROC of 0.9177 under noise
Optimized qubit overhead by targeted qubit updates
Abstract
Quantum computing, with its ability to do exponentially faster computation compared to classical systems, has found novel applications in various fields such as machine learning and recommendation systems. Quantum Machine Learning (QML), which integrates quantum computing with machine learning techniques, presents powerful new tools for data processing and pattern recognition. This paper proposes a hybrid recommendation system that combines Quantum Hopfield Associative Memory (QHAM) with deep neural networks to improve the extraction and classification on the MovieLens 1M dataset. User archetypes are clustered into multiple unique groups using the K-Means algorithm and converted into polar patterns through the encoder's activation function. These polar patterns are then integrated into the variational QHAM-based hybrid recommendation model. The system was trained using the MSE loss over…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum many-body systems · Quantum Information and Cryptography
