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Full-Text Articles in Engineering
Association Learning Via Deep Neural Networks, Trevor J. Landeen
Association Learning Via Deep Neural Networks, Trevor J. Landeen
All Graduate Theses and Dissertations, Spring 1920 to Summer 2023
Deep learning has been making headlines in recent years and is often portrayed as an emerging technology on a meteoric rise towards fully sentient artificial intelligence. In reality, deep learning is the most recent renaissance of a 70 year old technology and is far from possessing true intelligence. The renewed interest is motivated by recent successes in challenging problems, the accessibility made possible by hardware developments, and dataset availability.
The predecessor to deep learning, commonly known as the artificial neural network, is a computational network setup to mimic the biological neural structure found in brains. However, unlike human brains, artificial …
Neural Networks And The Natural Gradient, Michael R. Bastian
Neural Networks And The Natural Gradient, Michael R. Bastian
All Graduate Theses and Dissertations, Spring 1920 to Summer 2023
Neural network training algorithms have always suffered from the problem of local minima. The advent of natural gradient algorithms promised to overcome this shortcoming by finding better local minima. However, they require additional training parameters and computational overhead. By using a new formulation for the natural gradient, an algorithm is described that uses less memory and processing time than previous algorithms with comparable performance.