一种优化的混合模糊加权k近邻预测糖尿病患者再入院

Soha Bahanshal, Byung Kim
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引用次数: 2

摘要

预测糖尿病患者的再入院率已经成为许多研究人员和健康决策者提供高质量和具有成本效益的医疗保健的重要兴趣。在本文中,我们优化了一种有效的分类器,用于出院后30天内的再入院预测,混合模糊加权k-最近邻(HFWkNN)方法。通过引入HFWkNN隶属度函数中的超参数γ、ε和εmin进行优化。这些超参数非常重要,因为它们直接控制训练阶段的行为,并显著影响方法的性能。利用两种强大的优化算法建立了HFWkNN的性能与超参数之间的关系;网格搜索和随机搜索。实验结果表明,利用优化后的超参数,所得到的再入院预测模型的性能得到了提高。为了证明HFWkNN模型可以普遍化,除了医院再入院数据集外,还使用另外两个分类数据集将结果与几种基于knn的算法的结果进行了比较。它们是IRIS数据集和乳腺癌数据集。这些是具有实际数据的常见基准集。目前该模型的分类精度高于FkNN模型。网格搜索HFWkNN的最佳超参数值为γ=0.2249, ε=1.112, εmin=0.01。此外,HFWkNN的性能为80.00%,这意味着它在不同的数据集上都有很好的泛化效果。
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An Optimized Hybrid Fuzzy Weighted k-Nearest Neighbor to Predict Hospital Readmission for Diabetic Patients
Predicting hospital readmissions among diabetic patients has been of substantial interest to many researchers and health decision makers to provide quality and cost effective health care. In this paper, we optimize an efficient classifier for hospital readmission prediction within 30 days of discharge, the hybrid fuzzy weighted k-nearest neighbor (HFWkNN) method. The optimization is performed through the hyperparameter γ, ε and εmin introduced in the membership function of HFWkNN. These hyperparameters are important since they directly control the behavior of the training phase and significantly affect the performance of the method. A relationship is established between the performance of the proposed HFWkNN and the hyperparameters using two powerful optimization algorithms; grid search and random search. Experimental results show improved performance using the optimized hyperparameters in the resulting hospital readmission prediction model. To show that HFWkNN model can be generalized, the results are compared with those of several kNN-based algorithms using two additional classification datasets in addition to the hospital readmission dataset. They are IRIS dataset and breast cancer dataset. These are common benchmark sets with real-world data. The model so far achieved higher classification accuracy than FkNN model. The best hyperparameter values for HFWkNN with grid search are γ=0.2249, ε=1.112 and εmin=0.01. Also, HFWkNN shows a performance of 80.00%, meaning that it has generalized well on the different data sets.
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