A Hybrid Algorithm for Multiple Disease Prediction: Radial Basis Function and Logistic Regression

F. Azmi, A. Saleh
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Abstract

Disease prediction is an important aspect of modern medicine, which aims to diagnose disease early and provide appropriate treatment to patients. This research uses a hybrid approach that combines the RBF (Radial Basis Function) kernel algorithm with logistic regression to predict various diseases in medical datasets. This method is intended to improve prediction performance by exploiting the advantages of each algorithm. This research uses a dataset containing medical information about several diseases collected from the Kaggle dataset. First, the RBF kernel is applied to transform the data features into a more informative, non-linear representation. Then, the logistic regression model is used to make predictions based on the features that have been processed by the RBF kernel. In this research, the hybrid RBF (Radial Basis Function) method was proven to be superior in predicting multiple diseases. This method shows the highest accuracy of 0.9460, as well as excellent precision, recall, and F1-score values of 0.8680, 0.8097, and 0.8294, respectively. The advantage of the hybrid RBF method lies in its ability to capture complex patterns in data that other methods often cannot identify, as well as its ability to handle non-linear decision boundaries, which are a common characteristic in medical datasets. Keywords: Disease prediction, Hybrid approach, RBF kernel algorithm, Logistic regression, medical datasets
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用于多种疾病预测的混合算法:径向基函数和逻辑回归
疾病预测是现代医学的一个重要方面,其目的是及早诊断疾病并为患者提供适当的治疗。本研究采用一种混合方法,将 RBF(径向基函数)核算法与逻辑回归相结合,对医学数据集中的各种疾病进行预测。这种方法旨在通过利用每种算法的优势来提高预测性能。本研究使用的数据集包含从 Kaggle 数据集中收集的几种疾病的医疗信息。首先,应用 RBF 核将数据特征转换为信息量更大的非线性表示。然后,根据经过 RBF 内核处理的特征,使用逻辑回归模型进行预测。在这项研究中,混合 RBF(径向基函数)方法被证明在预测多种疾病方面具有优势。该方法的准确率最高,达到 0.9460,精确度、召回率和 F1 分数也非常出色,分别为 0.8680、0.8097 和 0.8294。混合 RBF 方法的优势在于它能捕捉到其他方法通常无法识别的数据中的复杂模式,还能处理医学数据集中常见的非线性决策边界:疾病预测 混合方法 RBF 核算法 逻辑回归 医学数据集
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