基于随机森林的超参数优化诊断COVID-19

Anna Baita, Inggar Adi Prasetyo, Nuri Cahyono
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引用次数: 0

摘要

RT-PCR(逆转录聚合酶链反应)检测诊断新冠肺炎成本高,耗时长。因此,需要另一种能够快速准确诊断新冠肺炎的方法。随机森林是一种流行的分类算法,用于建立预测模型。随机森林涉及许多控制每棵树、森林及其随机性结构的超参数。随机森林是一种对超参数值非常敏感的方法,预先定义优化后的超参数,然后按照程序进行调整,可以显著提高超参数的预测精度。对随机森林算法进行超参数调优的目的是提高covid-19诊断的准确性。采用网格搜索法和随机搜索法对超参数的最优值进行搜索。结果表明,随机森林用于诊断Covid-19的准确率为94%,通过超参数调优,可以将随机森林的准确率提高2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HYPERPARAMETER TUNING ON RANDOM FOREST FOR DIAGNOSE COVID-19
Diagnosis of Covid using the RT-PCR (Reverse Transcription Polymerase Chain Reaction) test requires high costs and takes a long time. For this reason, another method is needed that can be used to diagnose Covid-19 quickly and accurately. Random Forest is one of the popular classification algorithms for making predictive models. Random forest involves many hyperparameters that control the structure of each tree, the forest, and its randomness. Random Forest is a method which very sensitive to hyperparameter values, as their prediction accuracy can increase significantly when optimized hyperparameters are predefined and then adjusted according to the procedure. The purpose of doing hyperparameter tuning on the random forest algorithm is to increase accuracy in the diagnosis of covid-19. Searching for optimal values of hyperparameters is done by the Grid Search method and Random Search. The result explains that the Random Forest can be used to diagnose Covid-19 with an accuracy of 94%, and with hyperparameter tuning, it can increase the accuracy of the random forest by 2%.
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