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Active Learning for Multi-way Sensitivity Analysis with Application to Disease Screening Modeling

机译:主动学习在疾病筛查建模中的应用

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Sensitivity analysis is an important aspect of model development as it can be used to assess the level of confidence that is associated with the outcomes of a study. In many practical problems, sensitivity analysis involves evaluating a large number of parameter combinations which may require an extensive amount of time and resources. However, such a computational burden can be avoided by identifying smaller subsets of parameter combinations that can be later used to generate the desired outcomes for other parameter combinations. In this study, we investigate machine learning-based approaches for speeding up the sensitivity analysis. Furthermore, we apply feature selection methods to identify the relative importance of quantitative model parameters in terms of their predictive ability on the outcomes. Finally, we highlight the effectiveness of active learning strategies in improving the sensitivity analysis processes by reducing the total number of quantitative model runs required to construct a high-performance prediction model. Our experiments on two datasets obtained from the sensitivity analysis performed for two disease screening modeling studies indicate that ensemble methods such as Random Forests and XGBoost consistently outperform other machine learning algorithms in the prediction task of the associated sensitivity analysis. In addition, we note that active learning can lead to significant speed-ups in sensitivity analysis by enabling the selection of more useful parameter combinations (i.e., instances) to be used for prediction models.
机译:灵敏度分析是一个重要的方面模型开发,因为它可以用来评估的自信程度相关一项研究的结果。敏感性分析包括评估一个大这可能的参数组合需要一个广泛的时间和数量资源。可以避免通过识别较小的子集参数的组合,可以以后使用为其他参数生成想要的结果组合。基于机器学习的方法加速灵敏度分析。特征选择方法来识别相对重要性的量化模型参数的预测能力的结果。主动学习策略的有效性提高灵敏度分析过程减少的总数量化模型需要构建一个高性能的运行预测模型。从敏感性分析获得两个疾病筛查建模研究表明整体方法如随机森林和XGBoost始终胜过其他机器学习算法的预测任务相关的灵敏度分析。我们注意,主动学习可以领先在灵敏度分析显著加速通过启用更有用的选择参数组合(例如,实例)用于预测模型。

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