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Medical Dataset Classification: A Machine Learning Paradigm Integrating Particle Swarm Optimization with Extreme Learning Machine Classifier

机译:医学数据集分类:将粒子群优化与极限学习机分类器集成在一起的机器学习范例

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摘要

Medical data classification is a prime data mining problem being discussed about for a decade that has attracted several researchers around the world. Most classifiers are designed so as to learn from the data itself using a training process, because complete expert knowledge to determine classifier parameters is impracticable. This paper proposes a hybrid methodology based on machine learning paradigm. This paradigm integrates the successful exploration mechanism called self-regulated learning capability of the particle swarm optimization (PSO) algorithm with the extreme learning machine (ELM) classifier. As a recent off-line learning method, ELM is a single-hidden layer feedforward neural network (FFNN), proved to be an excellent classifier with large number of hidden layer neurons. In this research, PSO is used to determine the optimum set of parameters for the ELM, thus reducing the number of hidden layer neurons, and it further improves the network generalization performance. The proposed method is experimented on five benchmarked datasets of the UCI Machine Learning Repository for handling medical dataset classification. Simulation results show that the proposed approach is able to achieve good generalization performance, compared to the results of other classifiers.
机译:医学数据分类是一个已经讨论了十年的主要数据挖掘问题,吸引了世界各地的许多研究人员。大多数分类器的设计目的是通过训练过程从数据本身中学习,因为确定分类器参数的完整专家知识是不可行的。本文提出了一种基于机器学习范式的混合方法。该范例将成功的探索机制(称为粒子群优化(PSO)算法的自调节学习能力)与极限学习机(ELM)分类器集成在一起。作为一种最新的离线学习方法,ELM是单隐藏层前馈神经网络(FFNN),被证明是具有大量隐藏层神经元的优秀分类器。在这项研究中,PSO用于确定ELM的最佳参数集,从而减少了隐层神经元的数量,并进一步提高了网络泛化性能。该方法在UCI机器学习存储库的五个基准数据集上进行了实验,以处理医学数据集分类。仿真结果表明,与其他分类器的结果相比,该方法具有良好的泛化性能。

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