Arxiv paper - MCNC: MANIFOLD-CONSTRAINED REPARAMETERIZATION FOR NEURAL COMPRESSION
AI Breakdown

Arxiv paper - MCNC: MANIFOLD-CONSTRAINED REPARAMETERIZATION FOR NEURAL COMPRESSION

2025-04-28
In this episode, we discuss MCNC: MANIFOLD-CONSTRAINED REPARAMETERIZATION FOR NEURAL COMPRESSION by The authors of the paper are: - Chayne Thrash - Ali Abbasi - Reed Andreas - Parsa Nooralinejad - Soroush Abbasi Koohpayegani - Hamed Pirsiavash - Soheil Kolouri. The paper introduces Manifold-Constrained Neural Compression (MCNC), a novel model compression technique that confines parameters to low-dimensional, pre-defined nonlinear manifolds. This approach leverages the over-parameterization of...
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