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首页> 外文期刊>International Journal of Applied Systemic Studies >A comparative study on machine classification model in lung cancer cases analysis
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A comparative study on machine classification model in lung cancer cases analysis

机译:肺癌病例分析机器分类模型的比较研究

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摘要

Due to the differences of machine classification models in the application of medical data, this paper selected different classification methods to study lung cancer data collected from HIS system with plenty of experiment and analysis, applying the R language on decision tree algorithm, bagging algorithm, Adaboost algorithm, conditions decision tree, random forests, naive Bayes, and neural network algorithm for lung cancer data analysis, in order to explore the advantages and disadvantages of each machine classification algorithm. The results confirmed that in lung cancer data research, naive Bayes, Adaboost algorithm and neural network algorithm have relatively high accuracy, with a good diagnostic performance.
机译:由于机器分类模型在应用中的应用中的差异,本文选择了不同的分类方法,以研究从他的系统中收集的肺癌数据,并在大量的实验和分析中应用R语言,堆积算法,adaboost。 算法,条件决策树,随机林,幼稚贝叶斯和神经网络算法,探讨各机分类算法的优缺点。 结果证实,在肺癌数据研究中,幼稚贝叶斯,Adaboost算法和神经网络算法的准确性相对高,具有良好的诊断性能。

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