Predictive Coding with Topographic Variational Autoencoders

Thomas Anderson Keller, M. Welling
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引用次数: 2

Abstract

Predictive coding is a model of visual processing which suggests that the brain is a generative model of input, with prediction error serving as a signal for both learning and attention. In this work, we show how the equivariant capsules learned by a Topographic Variational Autoen-coder can be extended to fit within the predictive coding framework by treating the slow rolling of capsule activations as the forward prediction operator. We demonstrate quantitatively that such an extension leads to improved sequence modeling compared with both topographic and non-topographic baselines, and that the resulting forward predictions are qualitatively more coherent with the provided partial input transformations.
预测编码与地形变分自编码器
预测编码是一种视觉处理模型,它表明大脑是一个输入的生成模型,预测错误作为学习和注意力的信号。在这项工作中,我们展示了如何通过将胶囊激活的缓慢滚动作为前向预测算子来扩展由地形变分自动编码器学习的等变胶囊以适应预测编码框架。我们定量地证明,与地形和非地形基线相比,这种扩展导致了改进的序列建模,并且所得到的前向预测在质量上与提供的部分输入转换更加一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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