论文标题
部分可观测时空混沌系统的无模型预测
Feature Selection for Classification with QAOA
论文作者
论文摘要
特征选择在机器学习中非常重要,可以使用它来减少分类,排名和预测问题的维度。去除冗余和嘈杂的特征可以提高受过训练的模型的准确性和可扩展性。但是,功能选择是一个具有计算昂贵的任务,其解决方案空间可以组合成长。在这项工作中,我们特别考虑了一个二次特征选择问题,该问题可以通过量子近似优化算法(QAOA)来解决,该算法已经用于组合优化。首先,我们代表QUBO公式的特征选择问题,然后将其映射到Ising Spin Hamiltonian。然后,我们应用QAOA,目的是找到该哈密顿量的基态,这与最佳特征选择相对应。在我们的实验中,我们考虑了七个不同的现实世界数据集,其维度高达21,并在量子模拟器上运行QAOA,对于小型数据集,我们的7 Quit IBM(IBM-珀斯)量子计算机。我们使用一组选定的功能来训练分类模型并评估其准确性。我们的分析表明,可以通过QAOA解决特征选择问题,目前可以有效地使用量子设备。未来的研究可以测试更广泛的分类模型,并通过探索更好的经典步骤来提高QAOA的有效性。
Feature selection is of great importance in Machine Learning, where it can be used to reduce the dimensionality of classification, ranking and prediction problems. The removal of redundant and noisy features can improve both the accuracy and scalability of the trained models. However, feature selection is a computationally expensive task with a solution space that grows combinatorically. In this work, we consider in particular a quadratic feature selection problem that can be tackled with the Quantum Approximate Optimization Algorithm (QAOA), already employed in combinatorial optimization. First we represent the feature selection problem with the QUBO formulation, which is then mapped to an Ising spin Hamiltonian. Then we apply QAOA with the goal of finding the ground state of this Hamiltonian, which corresponds to the optimal selection of features. In our experiments, we consider seven different real-world datasets with dimensionality up to 21 and run QAOA on both a quantum simulator and, for small datasets, the 7-qubit IBM (ibm-perth) quantum computer. We use the set of selected features to train a classification model and evaluate its accuracy. Our analysis shows that it is possible to tackle the feature selection problem with QAOA and that currently available quantum devices can be used effectively. Future studies could test a wider range of classification models as well as improve the effectiveness of QAOA by exploring better performing optimizers for its classical step.