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Mixed continuous/binary quantum-inspired learning system with non-negative least square optimisation for automated design of regularised ensemble extreme learning machines

机译:具有非负最小二乘优化的混合连续/二进制量子启发学习系统,用于正则集成极限学习机的自动化设计

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In this paper, a hybrid quantum-inspired evolutionary algorithm (QIEA) is proposed to automatically design regularised ensemble extreme learning machines (EELMs). Quantum evolutionary computing is a relatively recent spot-lighted concept which takes advantage from both the evolutionary and quantum computing laws. In general, QIEAs have been proven to be really powerful for optimising complex engineering tasks. The fascinating trait of observation operator in QIEA enables us to transform the quantum bits to both the binary and continuous spaces. Here, the authors present a mix continuous/binary version of QIEA, to find out whether it is suited for designing regularised EELMs. Indeed, the design process of EELM is conducted at two different levels, i.e. hyper and low levels. At the low level, some novel criteria are presented in the form of penalty functions to enable the optimiser searching for parsimonious, compact and accurate regularised extreme learning machines, as individual components of the ensemble. At the hyper-level, the non-negative least square error optimisation technique is utilised to deterministically find the most eligible components for designing the ensemble. Through extensive numerical experiments, the authors demonstrate that the proposed method is really efficient for the automated design of EELM identifiers.
机译:本文提出了一种混合量子启发式进化算法(QIEA)来自动设计正则化集成极限学习机(EELM)。量子进化计算是一个相对较新的概念,它充分利用了进化和量子计算定律。一般而言,QIEA已被证明对于优化复杂的工程任务具有强大的功能。 QIEA中观测算子的迷人特性使我们能够将量子位转换为二进制空间和连续空间。在这里,作者提出了QIEA的连续/二进制混合版本,以了解它是否适​​合设计正则化EELM。实际上,EELM的设计过程是在两个不同的级别上进行的,即超级和低级别。在低级,以惩罚函数的形式提出了一些新颖的标准,以使优化器可以搜索简约,紧凑和准确的正规化极限学习机,作为整体的独立组成部分。在超级别上,非负最小二乘误差优化技术用于确定性地找到最合适的组件来设计集成。通过广泛的数值实验,作者证明了该方法对于EELM标识符的自动化设计确实非常有效。

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