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Multi-model and network inference based on ensemble estimates: avoiding the madness of crowds

机译:基于集合估计的多模型和网络推断:避免人群的疯狂

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摘要

Recent progress in theoretical systems biology, applied mathematics and computational statistics allows us to compare the performance of different candidate models at describing a particular biological system quantitatively. Model selection has been applied with great success to problems where a small number—typically less than 10—of models are compared, but recent studies have started to consider thousands and even millions of candidate models. Often, however, we are left with sets of models that are compatible with the data, and then we can use ensembles of models to make predictions. These ensembles can have very desirable characteristics, but as I show here are not guaranteed to improve on individual estimators or predictors. I will show in the cases of model selection and network inference when we can trust ensembles, and when we should be cautious. The analyses suggest that the careful construction of an ensemble—choosing good predictors—is of paramount importance, more than had perhaps been realized before: merely adding different methods does not suffice. The success of ensemble network inference methods is also shown to rest on their ability to suppress false-positive results. A Jupyter notebook which allows carrying out an assessment of ensemble estimators is provided.
机译:理论体系生物学的最新进展,应用数学和计算统计数据允许我们在定量地描述特定生物系统时不同候选模型的性能。模型选择已经取得了巨大的成功,其中比较了较小的数量少于10款模型,但最近的研究已经开始考虑数千甚至数百万的候选模型。然而,通常,我们留下了与数据兼容的模型集,然后我们可以使用模型的集合来进行预测。这些集合可以具有非常理想的特征,但随着我在此显示的情况下,不保证改善各个估算器或预测因子。我将在模型选择和网络推论的情况下显示我们可以信任合奏,当我们应该谨慎时。该分析表明,仔细建设合奏选择的良好预测因子 - 是至关重要的,而不是可能在之前实现:仅仅添加不同的方法并不足够。合奏网络推理方法的成功也显示出依赖于抑制假阳性结果的能力。提供了一个允许执行集合估算器的评估的Jupyter笔记本。

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