Origami in N dimensions: How feed-forward networks manufacture linear separability
Christian Keup, Moritz Helias

TL;DR
This paper proposes that deep neural networks achieve linear separability through progressive folding of data manifolds in high-dimensional spaces, linking origami principles to neural network transformations.
Contribution
It introduces the concept that folding operations, akin to origami, are the primary mechanism for data transformation in neural networks, providing a new mechanistic understanding.
Findings
Folding operations enable efficient data separability in wide layers.
Bimodal tuning curves emerge during training, supporting the folding hypothesis.
The folding analogy links neural network theory to origami mathematics.
Abstract
Neural networks can implement arbitrary functions. But, mechanistically, what are the tools at their disposal to construct the target? For classification tasks, the network must transform the data classes into a linearly separable representation in the final hidden layer. We show that a feed-forward architecture has one primary tool at hand to achieve this separability: progressive folding of the data manifold in unoccupied higher dimensions. The operation of folding provides a useful intuition in low-dimensions that generalizes to high ones. We argue that an alternative method based on shear, requiring very deep architectures, plays only a small role in real-world networks. The folding operation, however, is powerful as long as layers are wider than the data dimensionality, allowing efficient solutions by providing access to arbitrary regions in the distribution, such as data points of…
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Taxonomy
TopicsAdvanced Materials and Mechanics · Advanced Sensor and Energy Harvesting Materials · Tactile and Sensory Interactions
