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Positional binding with distributed representations

机译:具有分布式表示的位置绑定

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Positional binding specifies feature positions for an image (or for text). We show how to incorporate position into a fully distributed vector formed from Vector Quantization, or add position to a vector formed from a Vector Symbolic Architecture. The method guarantees that small shifts in position result in small changes to the representation vector, and does not require an increase in vector size. The incorporation of positional binding improves performance on CIFAR-10 and on a new database of noisy abstract face images, which we hereby make public. For Deep Learning approaches, we emphasize the importance of positional binding, and this sheds light on why multiple layers and pooling are beneficial.
机译:位置绑定指定图像(或文本)的特征位置。我们展示了如何将位置合并到由矢量量化形成的完全分布的矢量中,或将位置添加到由矢量符号体系结构形成的矢量中。该方法保证了位置的小偏移导致表示向量的小的改变,并且不需要向量大小的增加。位置绑定的合并可提高CIFAR-10和嘈杂的抽象人脸图像新数据库的性能,我们特此将其公开。对于深度学习方法,我们强调了位置绑定的重要性,这阐明了为什么多层和池化是有益的。

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