基于深度神经网络(CPSO-DNN)的乌鸦粒子群高维数据分析算法

Bibhuprasad Sahu, Amrutanshu Panigrahi, Sasmita Pani, Shrabanee Swagatika, Debabrata Singh, Santosh Kumar
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引用次数: 3

摘要

任何疾病的早期诊断,对患者的正确治疗都是挽救生命的必要条件。不同的研究人员采用了许多技术来早期诊断疾病,但由于量纲困境的过程,没有一种技术是合适的。为了区分所考虑的数据集样本之间的逻辑差异和生物差异,特征选择起着重要作用。从不同的研究中可以看出,在考虑局部最优时,粒子群优化算法过早收敛,降低了种群的多样性。为了避免这种局限性,采用克罗粒子优化(Crow Particle Optimization, CPSO)方法从高维数据集中识别特征基因。这个CPO背后的主要概念与乌鸦有关,乌鸦把大量的食物安全地藏在不同的地方,并根据需要收集食物。为了理解CPSO-DNN的性能,我们使用了三种不同的进化搜索:萤火虫搜索、大象搜索和松鼠搜索。采用带软最大激活函数的基于梯度下降的深度神经网络,通过减少低影响特征来实现特征基因数目的最大化。仿真结果表明,(CPSO-DNN)在准确率方面取得了显著的成就,与其他算法相比,可以认为是一种更好的分类模型。
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A Crow Particle Swarm Optimization Algorithm with Deep Neural Network (CPSO-DNN) for High Dimensional Data Analysis
Diagnosis of any disease at its early stage correct treatment of the patients is necessary to save productive lives. Many techniques are adopted by different researchers to diagnose the disease at an early stage, but none of them are suitable due to the course of dimension dilemma. To differentiate the gap between logical and biological variation between the samples of the considered datasets, feature selection plays an important role. From different research, it is clear that while considering the local optima, PSO algorithm converges prematurely and decreases the diversity of the population. To avoid the limitations Crow Particle Optimization (CPSO) is implemented to identify the featured genes from a high dimensional dataset. The main concepts behind this CPO are related to the bird crow which hides a large number of foods in different places securely and collects it as per the need. To understand performance of the (CPSO-DNN) we have used three different evolutionary searchings like firefly search, elephant search and squirrel search. Gradient descent based Deep neural network with soft-max activation function has been used to maximize the no of feature genes by reducing the low impact features. Simulation results demonstrate that the (CPSO-DNN) exhibits an outstandingly higher accomplishment in terms of accuracy and can be considered as a better classification model as compared to other algorithms.
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