Predicting Lung Cancer Survivability: A Machine Learning Ensemble Method On Seer Data

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引用次数: 2

Abstract

Ensemble methods are powerful techniques used in machine learning to improve the prediction accuracy of classifier learning systems. In this study, different ensemble learning methods for lung cancer survival prediction were evaluated on the Surveillance, Epidemiology and End Results (SEER) dataset. Data were preprocessed in several steps before applying classification models. The popular ensemble methods Bagging, Adaboost and three classification algorithms, K-Nearest Neighbours, Decision Tree and Neural Networks as base classifiers were evaluated for lung cancer survival prediction. The results empirically showed that ensemble methods are able to evaluate the performance of their base classifiers and they are appropriate methods for analysis of cancer survival.
预测肺癌生存能力:基于Seer数据的机器学习集成方法
集成方法是机器学习中用于提高分类器学习系统预测精度的强大技术。在本研究中,在监测、流行病学和最终结果(SEER)数据集上评估了不同的肺癌生存预测集成学习方法。在应用分类模型之前,对数据进行了几个步骤的预处理。评估了流行的集成方法Bagging、Adaboost和三种分类算法(k -近邻、决策树和神经网络)作为基本分类器对肺癌生存预测的影响。实验结果表明,集成方法能够评估其基分类器的性能,是分析癌症生存的合适方法。
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