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Using Ensemble of Bayesian Classifying Algorithms for Medical Systematic Reviews

机译:使用贝叶斯分类算法集成进行医学系统评价

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Systematic reviews are considered fundamental tools for Evidence-Based Medicine. Such reviews require frequent and time-consuming updating. This study aims to compare the performance of combining relatively simple Bayesian classifiers using a fixed rule, to the relatively complex linear Support Vector Machine for medical systematic reviews. A collection of four systematic drug reviews is used to compare the performance of the classifiers in this study. Cross-validation experiments were performed to evaluate performance. We found that combining Discriminative Multinomial Naive Bayes and Complement Naive Bayes performs equally well or better than SVM while being about 25% faster than SVM in training time. The results support the usefulness of using an ensemble of Bayesian classifiers for machine learning-based automation of systematic reviews of medical topics, especially when datasets have a large number of abstracts. Further work is needed to integrate the powerful features of such Bayesian classifiers together.
机译:系统评价被认为是循证医学的基本工具。此类审查需要频繁且耗时的更新。这项研究旨在比较使用固定规则将相对简单的贝叶斯分类器与相对复杂的线性支持向量机进行医学系统评价的性能。四个系统的药物综述的集合用于比较本研究中分类器的性能。进行交叉验证实验以评估性能。我们发现,将判别多项式朴素贝叶斯和互补朴素贝叶斯相结合的效果与SVM相同或更好,而在训练时间上却比SVM快25%。结果支持使用贝叶斯分类器的集成来进行基于机器学习的医学主题系统综述的自动化,特别是在数据集包含大量摘要的情况下。需要进一步的工作来将此类贝叶斯分类器的强大功能集成在一起。

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