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Disease Prediction using Hybrid Optimization Methods based on Tuning Parameters

机译:基于调整参数的混合优化方法进行疾病预测

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Swarm Intelligence (SI) is increasing day by day in the various research fields. There are many swarm-based optimizations introduced since the early ’60s, Evolutionary Algorithms (EA) is the most updated one. All Evolutionary Algorithms have proved their capability to resolve most of the optimization problems. These algorithms are using for training the neural networks in this paper. The main difficulty for any optimization problem is selecting the correct values of parameters to get possible results. The main idea to get the best convergence rate and best performance is to vary the parameters of the algorithms. This paper provides a comparison of the most used and essential swarm-based optimization algorithms. Here, comparing the optimization algorithms, Particle Swarm Optimization (PSO), and Multi-Verse Optimization (MVO) before and after tuning the parameters with three different datasets.
机译:Swarm Intelligence(SI)在各个研究领域中都在日趋增加。自从60年代初期以来,引入了许多基于群体的优化方法,进化算法(EA)是最新的算法。所有进化算法都证明了其解决大多数优化问题的能力。这些算法在本文中用于训练神经网络。任何优化问题的主要困难是选择正确的参数值以获得可能的结果。获得最佳收敛速度和最佳性能的主要思想是改变算法的参数。本文提供了最常用和必要的基于群体的优化算法的比较。在这里,比较优化算法,粒子群优化(PSO)和多版本优化(MVO)之前和之后使用三个不同的数据集调整参数的情况。

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