On the Architectural Complexity of Neural Networks

📅 2026-05-05
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📝 Abstract
We introduce a unified theoretical framework for the rigorous analysis and systematic construction of deep neural networks (DNNs). This framework addresses a gap in existing theory by explicitly modeling the structure of tensor operations -- lower level information that is often abstracted. Our framework enables two novel objectives: (1) analysis of the evolution of architectural complexity over deep learning history, and (2) automatic construction of novel architectures based on new types of tensor operations. Our study of DNNs introduced over the past 40 years reveals a connection between groundbreaking architectures and increases in different types of architectural complexity. Moreover, we identify several large classes of higher complexity architectures that have not yet been explored. We then collect a dataset of 3,000+ higher complexity architectures, which we publicly release at: https://github.com/combinatoriallabs/ArchitecturalComplexity.
Problem

Research questions and friction points this paper is trying to address.

architectural complexity
neural networks
tensor operations
deep learning
network architecture
Innovation

Methods, ideas, or system contributions that make the work stand out.

architectural complexity
tensor operations
neural architecture construction
deep neural networks
theoretical framework
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