Efficient Generative Modeling with Unitary Matrix Product States Using Riemannian Optimization
arXiv cs.LG / 3/13/2026
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Key Points
- The paper studies matrix product states (MPS) for generative modeling and shows unitary MPS improves unsupervised learning by reducing ambiguity in parameter updates and maintaining efficiency.
- It introduces a Riemannian optimization framework that handles probabilistic modeling with manifold constraints and derives a space-decoupling algorithm for efficient training.
- Experiments on Bars-and-Stripes and EMNIST demonstrate fast adaptation to data structure, stable updates, and strong performance while preserving the expressive power of MPS.
- The work presents tensor-network based generative modeling as a promising approach for high-dimensional distribution learning with physical interpretability.
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