Dense associative memory on the Bures-Wasserstein space
Tankala, Chandan, Balasubramanian, Krishnakumar
Dense associative memories (DAMs) store and retrieve patterns via energy-functional fixed points, but existing models are limited to vector representations. We extend DAMs to probability distributions equipped with the 2-Wasserstein distance, focusing mainly on the Bures-Wasserstein class of Gaussian densities. Our framework defines a log-sum-exp energy over stored distributions and a retrieval dynamics aggregating optimal transport maps in a Gibbs-weighted manner. Stationary points correspond to self-consistent Wasserstein barycenters, generalizing classical DAM fixed points. We prove exponential storage capacity, provide quantitative retrieval guarantees under Wasserstein perturbations, and validate the model on synthetic and real-world distributional tasks. This work elevates associative memory from vectors to full distributions, bridging classical DAMs with modern generative modeling and enabling distributional storage and retrieval in memory-augmented learning.
Sep-30-2025
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- Asia > Japan
- Honshū > Kansai > Osaka Prefecture > Osaka (0.04)
- North America > United States
- California > Yolo County
- Davis (0.04)
- Oregon > Lane County
- Eugene (0.04)
- California > Yolo County
- Asia > Japan
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- Research Report (0.50)
- Technology:
- Information Technology > Artificial Intelligence
- Cognitive Science > Problem Solving (0.82)
- Machine Learning (1.00)
- Natural Language (1.00)
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- Information Technology > Artificial Intelligence