Hybrid Crow Search and RBFNN: A Novel Approach to Medical Data Classification

Marai Ali, Faisal Khan, Muhammad Nouman Atta, Abdullah Khan, Asfandyar Khan
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Abstract

The Radial Basis Function Neural Network (RBFNN) is frequently employed in artificial neural networks for diverse classification tasks, yet it encounters certain limitations, including issues related to network latency and local minima. To tackle these challenges, researchers have explored various algorithms to enhance learning performance and alleviate local minima problems. This study introduces a novel approach that integrates the Crow Search Algorithm (CSA) with RBFNN to augment the learning process and address the local minima issue associated with RBFNN. The study evaluates the performance of this innovative model by comparing it to state-of-the-art models like Flower-pollination-RBNN (FP-NN), Artificial Neural Network (ANN), and the conventional RBFNN. To assess the efficacy of the proposed model, the study employs specific datasets, such as the Breast Cancer and Thyroid Disease datasets from the UCI Machine Repository. The simulation results illustrate that the proposed model surpasses other models in terms of accuracy, exhibiting lower Mean Squared Error (MSE) and Mean Absolute Error (MAE) values. Specifically, for the Breast Cancer dataset, the proposed model attains an accuracy of 99.9693%, MSE of 0.000307024, and MAE of 0.00789449. Likewise, for the Thyroid Disease dataset, the proposed model achieves an accuracy of 99.9535%, along with MSE of 0.000464932 and MAE of 0.0057098. For the diabetes dataset, the proposed model demonstrates an accuracy of 98.8073%, MSE of 0.003024, and MAE of 0.009449. In summary, this analysis underscores the enhanced accuracy and effectiveness of the proposed model when compared to traditional approaches.
混合乌鸦搜索和 RBFNN:医疗数据分类的新方法
径向基函数神经网络 (Radial Basis Function Neural Network, RBFNN) 经常被用于人工神经网络中的各种分类任务,但它也存在一些局限性,包括与网络延迟和局部极小值相关的问题。为了应对这些挑战,研究人员探索了各种算法来提高学习性能和缓解局部最小值问题。本研究介绍了一种将乌鸦搜索算法(CSA)与 RBFNN 相结合的新方法,以增强学习过程并解决与 RBFNN 相关的局部最小值问题。研究通过将这一创新模型与花粉授粉-RBNN(FP-NN)、人工神经网络(ANN)和传统 RBFNN 等最先进模型进行比较,对其性能进行了评估。为了评估拟议模型的功效,研究采用了特定的数据集,如 UCI 机器库中的乳腺癌和甲状腺疾病数据集。仿真结果表明,所提出的模型在准确性方面超越了其他模型,表现出较低的平均平方误差(MSE)和平均绝对误差(MAE)值。具体来说,对于乳腺癌数据集,所提出的模型准确率达到 99.9693%,MSE 为 0.000307024,MAE 为 0.00789449。同样,对于甲状腺疾病数据集,建议的模型准确率为 99.9535%,MSE 为 0.000464932,MAE 为 0.0057098。对于糖尿病数据集,所提出的模型的准确率为 98.8073%,MSE 为 0.003024,MAE 为 0.009449。总之,与传统方法相比,该分析凸显了拟议模型更高的准确性和有效性。
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