Cone-Constrained Principal Component Analysis
–Neural Information Processing Systems
Estimating a vector from noisy quadratic observations is a task that arises naturally in many contexts, from dimensionality reduction, to synchronization and phase retrieval problems. It is often the case that additional information is available about the unknown vector (for instance, sparsity, sign or magnitude of its entries). Many authors propose non-convex quadratic optimization problems that aim at exploiting optimally this information. However, solving these problems is typically NP-hard. We consider a simple model for noisy quadratic observation of an unknown vector \bvz .
artificial intelligence, cone-constrained principal component analysis, machine learning, (6 more...)
Neural Information Processing Systems
Jan-18-2025, 07:36:36 GMT
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