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Neurogenesis-Inspired Dictionary Learning: Online Model Adaption in a Changing World

机译:神经发生激发的译力译立学习:在不断变化的世界中的在线模型适应

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We address the problem of online model adaptation when learning representations from non-stationary data streams. Specifically, we focus here on online dictionary learning (i.e. sparse linear autoencoder), and propose a simple but effective online modelselection approach involving "birth" (addition) and "death" (removal) of hidden units representing dictionary elements, in response to changing inputs; we draw inspiration from the adult neurogenesis phenomenon in the dentate gyrus of the hippocampus, known to be associated with better adaptation to new environments. Empirical evaluation on real-life datasets (images and text), as well as on synthetic data, demonstrates that the proposed approach can considerably outperform the state-of-art non-adaptive online sparse coding of [Mairal et al., 2009] in the presence of non-stationary data. Moreover, we identify certain data- and model properties associated with such improvements.
机译:当从非静止数据流学习表示时,我们解决了在线模型适应问题。具体来说,我们专注于在线文字典学习(即稀疏线性AutoEncoder),并提出一种简单但有效的在线模型,涉及“出生”(添加)和“死亡”(删除)的隐藏单位代表字典元素,响应于改变输入;我们从海马的牙齿牙齿血管过滤现象中汲取灵感,已知与对新环境的更好适应相关联。实验数据集(图像和文本)以及合成数据的实证评估表明,所提出的方法可以大大倾销[Mairal等,2009]的最先进的非自适应在线稀疏编码存在非稳定性数据。此外,我们确定与这种改进相关的某些数据和模型属性。

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