Representation Learning via Manifold Flattening and Reconstruction
Psenka, Michael, Pai, Druv, Raman, Vishal, Sastry, Shankar, Ma, Yi
–arXiv.org Artificial Intelligence
This work proposes an algorithm for explicitly constructing a pair of neural networks that linearize and reconstruct an embedded submanifold, from finite samples of this manifold. Our such-generated neural networks, called Flattening Networks (FlatNet), are theoretically interpretable, computationally feasible at scale, and generalize well to test data, a balance not typically found in manifold-based learning methods. We present empirical results and comparisons to other models on synthetic high-dimensional manifold data and 2D image data. Our code is publicly available.
arXiv.org Artificial Intelligence
Sep-7-2023
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