Predictor importance is a crucial part of data preprocessing pipelines in classical and quantum machine learning (QML). This work presents the first study of its kind in which feature importance for QML models has been explored and contrasted against their classical machine learning (CML) equivalents. We developed a hybrid quantum-classical architecture where QML models are trained and feature importance values are calculated from classical algorithms on a real-world dataset. This architecture has been implemented on ESPN Fantasy Football data using Qiskit statevector simulators and IBM quantum hardware such as the IBMQ Mumbai and IBMQ Montreal systems. Even though we are in the Noisy Intermediate-Scale Quantum (NISQ) era, the physical quantum computing results are promising. To facilitate current quantum scale, we created a data tiering, model aggregation, and novel validation methods. Notably, the feature importance magnitudes from the quantum models had a much higher variation when contrasted to classical models. We can show that equivalent QML and CML models are complementary through diversity measurements. The diversity between QML and CML demonstrates that both approaches can contribute to a solution in different ways. Within this paper we focus on Quantum Support Vector Classifiers (QSVC), Variational Quantum Circuit (VQC), and their classical counterparts. The ESPN and IBM fantasy footballs Trade Assistant combines advanced statistical analysis with the natural language processing of Watson Discovery to serve up personalized trade recommendations that are fair and proposes a trade. Here, player valuation data of each player has been considered and this work can be extended to calculate the feature importance of other QML models such as Quantum Boltzmann machines.
翻译:预测性是古典和量子机器学习(QML)中数据预处理管道的一个关键部分。 这项工作是首次进行同类研究,其中对QML模型具有特别重要的意义,并与其古典机器学习(CML)等同内容进行了探讨和对比。 我们开发了一个混合量子古典结构,对QML模型进行了培训,并从一个真实世界数据集的经典算法中计算出重要值。这个结构使用Qiskit Statevictor模拟器和IBM 量子硬件(如IMBQ孟买和IBMQ蒙特利尔系统)应用了ESPN Fantasy足球数据。 尽管我们在QML模型和IBQMQ等类模型中具有特别重要的意义。尽管我们在Nisy中间量子模型(NISQQQQQ)时代,物理量子计算机计算结果也充满希望。为了促进当前的量级结构,我们创建了一个数据分级算、模型汇总和新验证方法。 值得注意的是,量子模型与经典模型相比,量子模型和CML等等量质数据模型可以通过多样性测量测量测量。 。 。 QML Q 和C QQQQQQ 和C 的多样化分析过程的多样化, 和C 和C 和C 的计算方法可以用来分析方法,我们使用S 的计算。 的阶质值的计算。 的计算。