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Dense Associative Memory with Epanechnikov Energy

Published: June 12, 2025 | arXiv ID: 2506.10801v1

By: Benjamin Hoover , Zhaoyang Shi , Krishnakumar Balasubramanian and more

Potential Business Impact:

Stores more memories, finds new ideas.

Business Areas:
Energy Storage Energy

We propose a novel energy function for Dense Associative Memory (DenseAM) networks, the log-sum-ReLU (LSR), inspired by optimal kernel density estimation. Unlike the common log-sum-exponential (LSE) function, LSR is based on the Epanechnikov kernel and enables exact memory retrieval with exponential capacity without requiring exponential separation functions. Moreover, it introduces abundant additional \emph{emergent} local minima while preserving perfect pattern recovery -- a characteristic previously unseen in DenseAM literature. Empirical results show that LSR energy has significantly more local minima (memories) that have comparable log-likelihood to LSE-based models. Analysis of LSR's emergent memories on image datasets reveals a degree of creativity and novelty, hinting at this method's potential for both large-scale memory storage and generative tasks.

Page Count
23 pages

Category
Computer Science:
Machine Learning (CS)