基于社区检测和量子计算的推荐系统

Riccardo Nembrini, Costantino Carugno, Maurizio Ferrari Dacrema, P. Cremonesi
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引用次数: 2

摘要

经过几十年主要局限于理论研究,量子计算现在正在成为解决现实问题的有用工具。本工作旨在实验探索利用现有量子计算机,基于量子退火范式,构建一个利用社区检测的推荐系统的可行性。社区检测通过将用户和项目划分为紧密连接的集群,可以通过假设每个社区内的用户具有相似的品味来提高非个性化推荐的准确性。然而,社区检测是一个计算成本很高的过程。最近量子退火器作为基于云的设备的可用性,构成了探索社区检测的一个新的和有前途的方向,尽管有效利用这项新技术是一个长期的道路,仍然需要硬件和算法的进步。这项工作的目的是通过评估社区检测的质量,将其表述为真实推荐场景中的二次无约束二进制优化问题,从而开始这条道路。在多个数据集上的结果表明,量子求解器能够检测到与经典求解器质量相当的社区,但具有更好的加速,并且基于这些社区构建的非个性化推荐模型显示出更高的推荐质量。结论是,尽管量子计算还处于成熟和适用性的早期阶段,但它在支持新的推荐模型以及随着技术的发展带来更好的可扩展性方面显示出了前景。
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Towards Recommender Systems with Community Detection and Quantum Computing
After decades of being mainly confined to theoretical research, Quantum Computing is now becoming a useful tool for solving realistic problems. This work aims to experimentally explore the feasibility of using currently available quantum computers, based on the Quantum Annealing paradigm, to build a recommender system exploiting community detection. Community detection, by partitioning users and items into densely connected clusters, can boost the accuracy of non-personalized recommendation by assuming that users within each community share similar tastes. However, community detection is a computationally expensive process. The recent availability of Quantum Annealers as cloud-based devices, constitutes a new and promising direction to explore community detection, although effectively leveraging this new technology is a long-term path that still requires advancements in both hardware and algorithms. This work aims to begin this path by assessing the quality of community detection formulated as a Quadratic Unconstrained Binary Optimization problem on a real recommendation scenario. Results on several datasets show that the quantum solver is able to detect communities of comparable quality with respect to classical solvers, but with better speedup, and the non-personalized recommendation models built on top of these communities exhibit improved recommendation quality. The takeaway is that quantum computing, although in its early stages of maturity and applicability, shows promise in its ability to support new recommendation models and to bring improved scalability as technology evolves.
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