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An Information-Theoretic Lower Bound on the Generalization Error of Autoencoders

Publication ,  Journal Article
Venkatasubramanian, S; Moushegian, S; Aloui, A; Tarokh, V
Published in: Transactions on Machine Learning Research
January 1, 2025

Quantifying the limitations of classical neural network architectures is a critically underexplored area of machine learning research. Deriving lower bounds on the optimal performance of these architectures can facilitate improved neural architecture search and overfitting detection. We present an information-theoretic lower bound on the generalization mean squared error of autoencoders with sigmoid activation functions. Through the Estimation Error and Differential Entropy (EEDE) inequality for continuous random vectors, we derive this lower bound, which provides a new perspective on the inherent limitations and capabilities of autoencoders. Our analysis extends to the examination of how this lower bound is influenced by various architectural features and data distribution characteristics. This study enriches our theoretical understanding of autoencoders and has substantial practical implications for their design, optimization, and application in the field of deep learning.

Duke Scholars

Published In

Transactions on Machine Learning Research

EISSN

2835-8856

Publication Date

January 1, 2025

Volume

2025-September
 

Citation

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Venkatasubramanian, S., Moushegian, S., Aloui, A., & Tarokh, V. (2025). An Information-Theoretic Lower Bound on the Generalization Error of Autoencoders. Transactions on Machine Learning Research, 2025-September.
Venkatasubramanian, S., S. Moushegian, A. Aloui, and V. Tarokh. “An Information-Theoretic Lower Bound on the Generalization Error of Autoencoders.” Transactions on Machine Learning Research 2025-September (January 1, 2025).
Venkatasubramanian S, Moushegian S, Aloui A, Tarokh V. An Information-Theoretic Lower Bound on the Generalization Error of Autoencoders. Transactions on Machine Learning Research. 2025 Jan 1;2025-September.
Venkatasubramanian, S., et al. “An Information-Theoretic Lower Bound on the Generalization Error of Autoencoders.” Transactions on Machine Learning Research, vol. 2025-September, Jan. 2025.
Venkatasubramanian S, Moushegian S, Aloui A, Tarokh V. An Information-Theoretic Lower Bound on the Generalization Error of Autoencoders. Transactions on Machine Learning Research. 2025 Jan 1;2025-September.

Published In

Transactions on Machine Learning Research

EISSN

2835-8856

Publication Date

January 1, 2025

Volume

2025-September