Beyond Multilayer Perceptrons: Investigating Complex Topologies in Neural Networks
March 31, 2023 ยท Declared Dead ยท ๐ Neural Networks
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Authors
Tommaso Boccato, Matteo Ferrante, Andrea Duggento, Nicola Toschi
arXiv ID
2303.17925
Category
cs.NE: Neural & Evolutionary
Cross-listed
cond-mat.dis-nn,
cs.LG
Citations
12
Venue
Neural Networks
Last Checked
4 months ago
Abstract
In this study, we explore the impact of network topology on the approximation capabilities of artificial neural networks (ANNs), with a particular focus on complex topologies. We propose a novel methodology for constructing complex ANNs based on various topologies, including Barabรกsi-Albert, Erdลs-Rรฉnyi, Watts-Strogatz, and multilayer perceptrons (MLPs). The constructed networks are evaluated on synthetic datasets generated from manifold learning generators, with varying levels of task difficulty and noise, and on real-world datasets from the UCI suite. Our findings reveal that complex topologies lead to superior performance in high-difficulty regimes compared to traditional MLPs. This performance advantage is attributed to the ability of complex networks to exploit the compositionality of the underlying target function. However, this benefit comes at the cost of increased forward-pass computation time and reduced robustness to graph damage. Additionally, we investigate the relationship between various topological attributes and model performance. Our analysis shows that no single attribute can account for the observed performance differences, suggesting that the influence of network topology on approximation capabilities may be more intricate than a simple correlation with individual topological attributes. Our study sheds light on the potential of complex topologies for enhancing the performance of ANNs and provides a foundation for future research exploring the interplay between multiple topological attributes and their impact on model performance.
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