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Uncertainty Autoencoders: Learning Compressed Representations via Variational Information Maximization

机译:不确定性AutoEncoders:通过变分信息最大化学习压缩表示

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Compressed sensing techniques enable efficient acquisition and recovery of sparse, highdimensional data signals via low-dimensional projections. In this work, we propose Uncertainty Autoencoders, a learning framework for unsupervised representation learning inspired by compressed sensing. We treat the low-dimensional projections as noisy latent representations of an autoencoder and directly learn both the acquisition (i.e., encoding) and amortized recovery (i.e., decoding) procedures. Our learning objective optimizes for a tractable variational lower bound to the mutual information between the datapoints and the latent representations. We show how our framework provides a unified treatment to several lines of research in dimensionality reduction, compressed sensing, and generative modeling. Empirically, we demonstrate a 32% improvement on average over competing approaches for the task of statistical compressed sensing of high-dimensional datasets.
机译:压缩传感技术通过低维投影可以高效地获取和恢复稀疏,高度数据信号。在这项工作中,我们提出了不确定性的自动化器,这是一个由压缩感测的无监督代表学习的学习框架。我们将低维投影视为自动化器的嘈杂潜在表示,并直接学习获取(即,编码)和摊销恢复(即解码)程序。我们的学习客观优化了对数据点与潜在表示之间的互信息的贸易变异下限。我们展示了我们的框架如何为多维程度减少,压缩传感和生成建模的几种研究提供统一的处理。经验上,我们在竞争方法的平均竞争方法中展示了32%的改进,用于高维数据集的统计压缩感测的任务。

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