2022
DOI: 10.48550/arxiv.2207.00310
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Integrative Learning of Structured High-Dimensional Data from Multiple Datasets

Abstract: Integrative learning of multiple datasets has the potential to mitigate the challenge of small n and large p that is often encountered in analysis of big biomedical data such as genomics data. Detection of weak yet important signals can be enhanced by jointly selecting features for all datasets.However, the set of important features may not always be the same across all datasets. Although some existing integrative learning methods allow heterogeneous sparsity structure where a subset of datasets can have zero … Show more

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References 28 publications
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