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Main Authors: AlShinaifi, Faisal, Almoaigel, Zeyad, Li, Johnny Jingze, Kuleib, Abdulla, Silva, Gabriel A.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.01568
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author AlShinaifi, Faisal
Almoaigel, Zeyad
Li, Johnny Jingze
Kuleib, Abdulla
Silva, Gabriel A.
author_facet AlShinaifi, Faisal
Almoaigel, Zeyad
Li, Johnny Jingze
Kuleib, Abdulla
Silva, Gabriel A.
contents Emergence, where complex behaviors develop from the interactions of simpler components within a network, plays a crucial role in enhancing neural network capabilities. We introduce a quantitative framework to measure emergence during the training process and examine its impact on network performance, particularly in relation to pruning and training dynamics. Our hypothesis posits that the degree of emergence, defined by the connectivity between active and inactive nodes, can predict the development of emergent behaviors in the network. Through experiments with feedforward and convolutional architectures on benchmark datasets, we demonstrate that higher emergence correlates with improved trainability and performance. We further explore the relationship between network complexity and the loss landscape, suggesting that higher emergence indicates a greater concentration of local minima and a more rugged loss landscape. Pruning, which reduces network complexity by removing redundant nodes and connections, is shown to enhance training efficiency and convergence speed, though it may lead to a reduction in final accuracy. These findings provide new insights into the interplay between emergence, complexity, and performance in neural networks, offering valuable implications for the design and optimization of more efficient architectures.
format Preprint
id arxiv_https___arxiv_org_abs_2409_01568
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Quantifying Emergence in Neural Networks: Insights from Pruning and Training Dynamics
AlShinaifi, Faisal
Almoaigel, Zeyad
Li, Johnny Jingze
Kuleib, Abdulla
Silva, Gabriel A.
Machine Learning
Emergence, where complex behaviors develop from the interactions of simpler components within a network, plays a crucial role in enhancing neural network capabilities. We introduce a quantitative framework to measure emergence during the training process and examine its impact on network performance, particularly in relation to pruning and training dynamics. Our hypothesis posits that the degree of emergence, defined by the connectivity between active and inactive nodes, can predict the development of emergent behaviors in the network. Through experiments with feedforward and convolutional architectures on benchmark datasets, we demonstrate that higher emergence correlates with improved trainability and performance. We further explore the relationship between network complexity and the loss landscape, suggesting that higher emergence indicates a greater concentration of local minima and a more rugged loss landscape. Pruning, which reduces network complexity by removing redundant nodes and connections, is shown to enhance training efficiency and convergence speed, though it may lead to a reduction in final accuracy. These findings provide new insights into the interplay between emergence, complexity, and performance in neural networks, offering valuable implications for the design and optimization of more efficient architectures.
title Quantifying Emergence in Neural Networks: Insights from Pruning and Training Dynamics
topic Machine Learning
url https://arxiv.org/abs/2409.01568