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Multi-task feature selection neural networks

机译:多任务特征选择神经网络

摘要

The present approach relates to feature ranking within deep neural networks in a multi-task and/or multi-label setting. Approaches are described to identify features that are task-specific as well as features that are shared across multiple tasks. In addition to facilitating interpretability, the selected subset of features can be used to make efficient models leading to better stability & regularization along with reduced compute and memory.
机译:本方法涉及多任务和/或多标签设置中的深神经网络内的特征。 描述了方法来标识特定于任务的功能以及跨多个任务共享的功能。 除了促进解释性之外,所选择的特征子集可用于进行高效模型,导致更好的稳定性和正则化以及减少的计算和内存。

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