可扩展性
计算机科学
量子位元
量子计算机
维数(图论)
降维
理论计算机科学
人工神经网络
量子
人工智能
计算机工程
数学
物理
量子力学
数据库
纯数学
作者
Hankyul Baek,Soo-Hyun Park,Joongheon Kim
标识
DOI:10.1145/3583780.3615240
摘要
In recent years, quantum neural network (QNN) based on quantum computing has attracted attention due to its potential for computation-acceleration and parallelism. However, the intrinsic limitations of QNN, where the output (i.e., observables) can only be obtained through a measurement process, pose scalability challenges. Motivated by this, this paper aims to address the scalability challenges by incorporating Pauli-Z measurement and Basis measurement. In conventional frameworks, QNN typically relies on classical fully connected networks (FCNs) or increases the number of qubits to achieve large output dimensions. However, by leveraging our proposed framework, this paper successfully expands the output dimensions to an exponential scale, surpassing the limitations imposed by the limited number of qubits without relying on FCNs. Through extensive experiments, this paper demonstrates that the proposed framework outperforms existing QNN frameworks in multi-class classification tasks that require numerous output dimensions.
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