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Selective Model Averaging with Bayesian Rule Learning for Predictive Biomedicine

机译:贝叶斯规则学习平均预测模型用于预测性生物医学

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摘要

Accurate disease classification and biomarker discovery remain challenging tasks in biomedicine. In this paper, we develop and test a practical approach to combining evidence from multiple models when making predictions using selective Bayesian model averaging of probabilistic rules. This method is implemented within a Bayesian Rule Learning system and compared to model selection when applied to twelve biomedical datasets using the area under the ROC curve measure of performance. Cross-validation results indicate that selective Bayesian model averaging statistically significantly outperforms model selection on average in these experiments, suggesting that combining predictions from multiple models may lead to more accurate quantification of classifier uncertainty. This approach would directly impact the generation of robust predictions on unseen test data, while also increasing knowledge for biomarker discovery and mechanisms that underlie disease.
机译:准确的疾病分类和生物标记物发现仍然是生物医学中具有挑战性的任务。在本文中,当使用概率规则的选择性贝叶斯模型平均进行预测时,我们开发并测试了一种实用的方法来组合来自多个模型的证据。该方法在贝叶斯规则学习系统内实现,并且在使用性能的ROC曲线下的面积应用于十二个生物医学数据集时与模型选择进行比较。交叉验证的结果表明,在这些实验中,平均的选择性贝叶斯模型在统计学上平均显着优于模型选择,这表明将多个模型的预测相结合可能会导致对分类器不确定性进行更准确的量化。这种方法将直接影响对看不见的测试数据的可靠预测的生成,同时还将增加对生物标记物发现和疾病基础机理的了解。

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