Improving Deep Learning through Automatic Programming
The-Hien Dang-Ha

TL;DR
This paper explores enhancing deep learning models by leveraging automatic programming techniques, specifically ADATE, to discover improvements, demonstrating promising results and encouraging further research in this promising intersection.
Contribution
It introduces the application of automatic programming (ADATE) to improve deep learning models, providing experimental evidence and analysis of ADATE's potential capabilities.
Findings
Good experimental results achieved with ADATE
Limitations identified in current ADATE version
Encourages future research with improved ADATE systems
Abstract
Deep learning and deep architectures are emerging as the best machine learning methods so far in many practical applications such as reducing the dimensionality of data, image classification, speech recognition or object segmentation. In fact, many leading technology companies such as Google, Microsoft or IBM are researching and using deep architectures in their systems to replace other traditional models. Therefore, improving the performance of these models could make a strong impact in the area of machine learning. However, deep learning is a very fast-growing research domain with many core methodologies and paradigms just discovered over the last few years. This thesis will first serve as a short summary of deep learning, which tries to include all of the most important ideas in this research area. Based on this knowledge, we suggested, and conducted some experiments to investigate…
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Taxonomy
TopicsAdvanced Neural Network Applications · Machine Learning and Algorithms · Adversarial Robustness in Machine Learning
