基于集成学习的多种疾病预测分析

P. Ghadekar, Khushi Jhanwar, Ameya Karpe, Tanishka Shetty, Akash Sivanandan, Prannay Khushalani
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引用次数: 0

摘要

随着大数据革命的到来,医疗机构正在转向机器学习和预测分析,以做出数据驱动的决策,并改善患者的治疗效果。早期预测有助于预防疾病的发展。它使医疗保健企业能够及时采取快速行动,避免流行病的长期影响。可以设置一个工具来基于不同的数据集预测和创建风险评分。在提出的模型中,观察了各种集成技术如何影响机器学习算法的结果。该模型使用支持向量分类器、超参数调优支持向量分类器、朴素贝叶斯和决策树等多种模型进行预测分析。然后将这些模型与集成技术的模型进行了比较。这样一来,做决定的过程就容易多了。这有助于预测分析的整个过程,通过优于单一分类器模型的准确性,提供更好的疾病预测,其最高准确率为95%。所提出的模型使用集成学习,准确率达到99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive analysis of multiple diseases using ensemble learning
With the big data revolution, medical organizations are turning to machine learning and predictive analytics to make data-driven decisions and improve patient outcomes. Early predictions can help prevent the progression of diseases. It allows healthcare businesses to take quick actions in time and avoid the long-term effects of epidemics. A tool can be set up to predict and create a risk score based on different datasets. In the proposed model how various ensembling techniques affects the results over machine learning algorithms is observed. The suggested model uses various models like Support vector classifier, Hyper parameter tuned Support vector classifier, Naive Bayes and Decision tree are used to perform the predictive analysis. Later these models are compared with models using the ensemble techniques. By doing so the process of decision making got much easier. This helped the overall process of predictive analysis by giving better predictions of diseases by outperforming the accuracy of single classifier models which gave the maximum accuracy of 95%. The proposed models using ensemble learning gave accuracy of 99%.
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