Recommender systems inspired by the structure of quantum theory
Cyril Stark

TL;DR
This paper explores the use of quantum-inspired models in data science, demonstrating their theoretical advantages in efficiency and interpretability, and empirically showing competitive performance in recommender systems.
Contribution
It introduces quantum models to data science, showing their exponential efficiency, interpretability, and applicability in recommender systems, with both theoretical insights and empirical validation.
Findings
Quantum models can be exponentially more efficient than probabilistic models.
Quantum models achieve competitive accuracy in item recommendation tasks.
Quantum models enable hierarchical property orderings for interpretability.
Abstract
Physicists use quantum models to describe the behavior of physical systems. Quantum models owe their success to their interpretability, to their relation to probabilistic models (quantization of classical models) and to their high predictive power. Beyond physics, these properties are valuable in general data science. This motivates the use of quantum models to analyze general nonphysical datasets. Here we provide both empirical and theoretical insights into the application of quantum models in data science. In the theoretical part of this paper, we firstly show that quantum models can be exponentially more efficient than probabilistic models because there exist datasets that admit low-dimensional quantum models and only exponentially high-dimensional probabilistic models. Secondly, we explain in what sense quantum models realize a useful relaxation of compressed probabilistic models.…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Quantum Computing Algorithms and Architecture · Stochastic Gradient Optimization Techniques
MethodsInterpretability
