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Main Authors: Li, Jiayu, Zhao, Zilong, Yee, Kevin, Javaid, Uzair, Sikdar, Biplab
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.17021
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author Li, Jiayu
Zhao, Zilong
Yee, Kevin
Javaid, Uzair
Sikdar, Biplab
author_facet Li, Jiayu
Zhao, Zilong
Yee, Kevin
Javaid, Uzair
Sikdar, Biplab
contents The activation functions are fundamental to neural networks as they introduce non-linearity into data relationships, thereby enabling deep networks to approximate complex data relations. Existing efforts to enhance neural network performance have predominantly focused on developing new mathematical functions. However, we find that a well-designed combination of existing activation functions within a neural network can also achieve this objective. In this paper, we introduce the Combined Units activation (CombU), which employs different activation functions at various dimensions across different layers. This approach can be theoretically proven to fit most mathematical expressions accurately. The experiments conducted on four mathematical expression datasets, compared against six State-Of-The-Art (SOTA) activation function algorithms, demonstrate that CombU outperforms all SOTA algorithms in 10 out of 16 metrics and ranks in the top three for the remaining six metrics.
format Preprint
id arxiv_https___arxiv_org_abs_2409_17021
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CombU: A Combined Unit Activation for Fitting Mathematical Expressions with Neural Networks
Li, Jiayu
Zhao, Zilong
Yee, Kevin
Javaid, Uzair
Sikdar, Biplab
Machine Learning
The activation functions are fundamental to neural networks as they introduce non-linearity into data relationships, thereby enabling deep networks to approximate complex data relations. Existing efforts to enhance neural network performance have predominantly focused on developing new mathematical functions. However, we find that a well-designed combination of existing activation functions within a neural network can also achieve this objective. In this paper, we introduce the Combined Units activation (CombU), which employs different activation functions at various dimensions across different layers. This approach can be theoretically proven to fit most mathematical expressions accurately. The experiments conducted on four mathematical expression datasets, compared against six State-Of-The-Art (SOTA) activation function algorithms, demonstrate that CombU outperforms all SOTA algorithms in 10 out of 16 metrics and ranks in the top three for the remaining six metrics.
title CombU: A Combined Unit Activation for Fitting Mathematical Expressions with Neural Networks
topic Machine Learning
url https://arxiv.org/abs/2409.17021