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Weighted elastic net for unsupervised domain adaptation with application to age prediction from DNA methylation data

机译:加权弹性网用于无监督域自适应并应用于DNA甲基化数据的年龄预测

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摘要

MotivationPredictive models are a powerful tool for solving complex problems in computational biology. They are typically designed to predict or classify data coming from the same unknown distribution as the training data. In many real-world settings, however, uncontrolled biological or technical factors can lead to a distribution mismatch between datasets acquired at different times, causing model performance to deteriorate on new data. A common additional obstacle in computational biology is scarce data with many more features than samples. To address these problems, we propose a method for unsupervised domain adaptation that is based on a weighted elastic net. The key idea of our approach is to compare dependencies between inputs in training and test data and to increase the cost of differently behaving features in the elastic net regularization term. In doing so, we encourage the model to assign a higher importance to features that are robust and behave similarly across domains.
机译:动机预测模型是解决计算生物学中复杂问题的强大工具。它们通常用于预测或分类来自与训练数据相同的未知分布的数据。但是,在许多实际环境中,不受控制的生物学或技术因素会导致在不同时间获取的数据集之间的分布不匹配,从而导致新数据的模型性能下降。计算生物学中的另一个常见障碍是数据稀少,特征多于样本。为了解决这些问题,我们提出了一种基于加权弹性网的无监督域自适应方法。我们方法的关键思想是比较训练数据和测试数据中输入之间的依赖性,并增加弹性网正则化项中行为不同的特征的成本。这样做时,我们鼓励模型将更重要的功能赋予健壮的功能,并在跨域中表现相似。

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