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  4. Improved Auto-Encoding Using Deterministic Projected Belief Networks and Compound Activation Functions
 
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2023
Conference Paper
Title

Improved Auto-Encoding Using Deterministic Projected Belief Networks and Compound Activation Functions

Abstract
In this paper, we exploit the unique properties of a deterministic projected belief network (D-PBN) to take full advantage of trainable compound activation functions (TCAs). A D-PBN is a type of auto-encoder that operates by "backing up" through a feed-forward neural network. TCAs are activation functions with complex monotonic-increasing shapes that change the distribution of the data so that the linear transformation that follows is more effective. Because a D-PBN operates by "backing up", the TCAs are inverted in the reconstruction process, restoring the original distribution of the data, thus taking advantage of a given TCA in both analysis and reconstruction. In this paper, we show that a D-PBN auto-encoder with TCAs can significantly out-perform standard auto-encoders including variational auto-encoders.
Author(s)
Baggenstoss, Paul Marcel
Fraunhofer-Institut für Kommunikation, Informationsverarbeitung und Ergonomie FKIE  
Mainwork
31st European Signal Processing Conference, EUSIPCO 2023. Proceedings  
Conference
European Signal Processing Conference 2023  
DOI
10.23919/EUSIPCO58844.2023.10290080
Language
English
Fraunhofer-Institut für Kommunikation, Informationsverarbeitung und Ergonomie FKIE  
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