Li Yuan, Huang Duan
School of Electronic Information Engineering, Shanghai Dianji University, Shanghai 200240, China.
School of Computer Sciences and Engineering, Central South University, Changsha 410083, China.
Entropy (Basel). 2023 May 29;25(6):870. doi: 10.3390/e25060870.
In terms of the logical structure of data in machine learning (ML), we apply a novel graphical encoding method in quantum computing to build the mapping between feature space of sample data and two-level nested graph state that presents a kind of multi-partite entanglement state. By implementing swap-test circuit on the graphical training states, a binary quantum classifier to large-scale test states is effectively realized in this paper. In addition, for the error classification caused by noise, we further explored the subsequent processing scheme by adjusting the weights so that a strong classifier is formed and its accuracy is greatly boosted. In this paper, the proposed boosting algorithm demonstrates superiority in certain aspects as demonstrated via experimental investigation. This work further enriches the theoretical foundation of quantum graph theory and quantum machine learning, which may be exploited to assist the classification of massive-data networks by entangling subgraphs.
就机器学习(ML)中数据的逻辑结构而言,我们在量子计算中应用一种新颖的图形编码方法,以构建样本数据的特征空间与呈现一种多体纠缠态的二级嵌套图态之间的映射。通过在图形训练态上实现交换测试电路,本文有效地实现了针对大规模测试态的二元量子分类器。此外,针对由噪声引起的错误分类,我们通过调整权重进一步探索了后续处理方案,从而形成一个强大的分类器并大幅提高其准确性。本文所提出的增强算法通过实验研究表明在某些方面具有优越性。这项工作进一步丰富了量子图论和量子机器学习的理论基础,可用于通过纠缠子图来辅助海量数据网络的分类。