We introduce SwitchPath, a novel stochastic activation function that enhances neural network exploration, performance, and generalization, by probabilistically toggling between the activation of a neuron and its negation. SwitchPath draws inspiration from the analogies between neural networks and decision trees, and from the exploratory and regularizing properties of DropOut as well. Unlike Dropout, which intermittently reduces network capacity by deactivating neurons, SwitchPath maintains continuous activation, allowing networks to dynamically explore alternative information pathways while fully utilizing their capacity. Building on the concept of ϵ-greedy algorithms to balance exploration and exploitation, SwitchPath enhances generalization capabilities over traditional activation functions. The exploration of alternative paths happens during training without sacrificing computational efficiency. This paper presents the theoretical motivations, practical implementations, and empirical results, showcasing all the described advantages of SwitchPath over established stochastic activation mechanisms.

SwitchPath: Enhancing Exploration in Neural Networks Learning Dynamics

Di Cecco, Antonio;Metta, Carlo;Parton, Maurizio
2025-01-01

Abstract

We introduce SwitchPath, a novel stochastic activation function that enhances neural network exploration, performance, and generalization, by probabilistically toggling between the activation of a neuron and its negation. SwitchPath draws inspiration from the analogies between neural networks and decision trees, and from the exploratory and regularizing properties of DropOut as well. Unlike Dropout, which intermittently reduces network capacity by deactivating neurons, SwitchPath maintains continuous activation, allowing networks to dynamically explore alternative information pathways while fully utilizing their capacity. Building on the concept of ϵ-greedy algorithms to balance exploration and exploitation, SwitchPath enhances generalization capabilities over traditional activation functions. The exploration of alternative paths happens during training without sacrificing computational efficiency. This paper presents the theoretical motivations, practical implementations, and empirical results, showcasing all the described advantages of SwitchPath over established stochastic activation mechanisms.
2025
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
Inglese
27th International Conference on Discovery Science, DS 2024
2024
ita
15243
275
291
17
9783031789762
9783031789779
Springer Science and Business Media Deutschland GmbH
Deep Learning Theory; Deep Neural Network Algorithms
none
Di Cecco, Antonio; Papini, Andrea; Metta, Carlo; Fantozzi, Marco; Galfré, Silvia Giulia; Morandin, Francesco; Parton, Maurizio
273
info:eu-repo/semantics/conferenceObject
7
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11564/876874
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