Restricted Bayesian Neural Network
- URL: http://arxiv.org/abs/2403.04810v3
- Date: Mon, 8 Apr 2024 11:51:31 GMT
- Title: Restricted Bayesian Neural Network
- Authors: Sourav Ganguly, Saprativa Bhattacharjee,
- Abstract summary: This study explores the concept of Bayesian Neural Networks, presenting a novel architecture designed to significantly alleviate the storage space complexity of a network.
We introduce an algorithm adept at efficiently handling uncertainties, ensuring robust convergence values without becoming trapped in local optima.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Modern deep learning tools are remarkably effective in addressing intricate problems. However, their operation as black-box models introduces increased uncertainty in predictions. Additionally, they contend with various challenges, including the need for substantial storage space in large networks, issues of overfitting, underfitting, vanishing gradients, and more. This study explores the concept of Bayesian Neural Networks, presenting a novel architecture designed to significantly alleviate the storage space complexity of a network. Furthermore, we introduce an algorithm adept at efficiently handling uncertainties, ensuring robust convergence values without becoming trapped in local optima, particularly when the objective function lacks perfect convexity.
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