利用 GraphLIME 建立糖尿病预测模型

Flavia Costi, Darian Onchis, Eduard Hogea, Codruta Istin
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引用次数: 0

摘要

本文旨在详细研究采用 GraphLIME(图形神经网络的局部可解释模型解释)对糖尿病进行可信预测的优势。与深度学习神经网络与原始 LIME 方法的标准耦合相比,我们的目标是确定 GraphLIME 与注意力机制相结合的优势。这样构建的系统为我们提供了一种提取最相关特征并将注意力机制专门应用于这些特征的熟练方法。我们密切关注了两种方法的性能指标,并进行了对比分析。利用注意力机制,我们对所处理问题的准确率达到了 92.6%。在整个研究过程中,我们对模型的性能进行了细致的演示,并使用接收者工作特征曲线(ROC)对结果进行了进一步评估。通过在 768 名被诊断为糖尿病或非糖尿病患者的数据集上实施这项技术,我们成功地将模型的性能提高了 18% 以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Modeling for Diabetes Using GraphLIME
The purpose of this paper is to present a detailed investigation of the advantages of employing GraphLIME (Local Interpretable Model Explanations for Graph Neural Networks) for the trustworthy prediction of diabetes mellitus. Our pursuit involves identifying the strengths of GraphLIME combined with the attention-mechanism over the standard coupling of deep learning neural networks with the original LIME method. The system build this way, provided us a proficient method for extracting the most relevant features and applying the attention mechanism exclusively to those features. We have closely monitored the performance metrics of the two approaches and conducted a comparative analysis. Leveraging attention mechanisms, we have achieved an accuracy of 92.6% for the addressed problem. The model's performance is meticulously demonstrated throughout the study, and the results are furthermore evaluated using the Receiver Operating Characteristic (ROC) curve. By implementing this technique on a dataset of 768 patients diagnosed with or without diabetes mellitus, we have successfully boosted the model's performance by over 18%.
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