Convex Tensor Decomposition via Structured Schatten Norm Regularization
–Neural Information Processing Systems
We study a new class of structured Schatten norms for tensors that includes two recently proposed norms ("overlapped" and "latent") for convex-optimizationbased tensor decomposition. We analyze the performance of "latent" approach for tensor decomposition, which was empirically found to perform better than the "overlapped" approach in some settings. We show theoretically that this is indeed the case. In particular, when the unknown true tensor is low-rank in a specific unknown mode, this approach performs as well as knowing the mode with the smallest rank. Along the way, we show a novel duality result for structured Schatten norms, which is also interesting in the general context of structured sparsity. We confirm through numerical simulations that our theory can precisely predict the scaling behaviour of the mean squared error.
Neural Information Processing Systems
Mar-13-2024, 14:42:32 GMT
- Country:
- Africa > Senegal
- Kolda Region > Kolda (0.04)
- Asia > Japan
- Honshū > Kantō > Tokyo Metropolis Prefecture > Tokyo (0.05)
- Europe > Belgium
- Flanders > Flemish Brabant > Leuven (0.04)
- North America > United States
- Illinois > Cook County > Chicago (0.04)
- Africa > Senegal
- Technology: