The promise of quantum computing to open new unexplored possibilities in several scientific fields has been long discussed, but until recently the lack of a functional quantum computer has confined this discussion mostly to theoretical algorithmic papers. It was only in the last few years that small but functional quantum computers have become available to the broader research community. One paradigm in particular, quantum annealing, can be used to sample optimal solutions for a number of NP-hard optimization problems represented with classical operations research tools, providing an easy access to the potential of this emerging technology. One of the tasks that most naturally fits in this mathematical formulation is feature selection. In this paper, we investigate how to design a hybrid feature selection algorithm for recommender systems that leverages the domain knowledge and behavior hidden in the user interactions data. We represent the feature selection as an optimization problem and solve it on a real quantum computer, provided by D-Wave. The results indicate that the proposed approach is effective in selecting a limited set of important features and that quantum computers are becoming powerful enough to enter the wider realm of applied science.
翻译:量子计算为在若干科学领域开拓未探索的新可能性的许诺已经讨论很久,但直到最近,缺乏功能量子计算机将这一讨论主要限于理论算法文件。只是在过去几年中,才为更广泛的研究界提供了小型但功能量子计算机。特别是量子射线,可以用来为古典操作研究工具所代表的一些NP-硬性优化问题抽样最佳解决办法,为获取这种新兴技术的潜力提供方便。在这个数学公式中最自然适合的任务之一是特征选择。在本文件中,我们研究如何为利用用户互动数据中隐藏的域知识和行为的建议系统设计混合特征选择算法。我们把特征选择作为一种优化问题,在由D-Wave提供的真正的量子计算机上加以解决。结果显示,拟议的方法在选择有限的一套重要特征方面是有效的,量子计算机正在变得强大,足以进入更广泛的应用科学领域。