AILGAug 22, 2024

Deep Learning with CNNs: A Compact Holistic Tutorial with Focus on Supervised Regression (Preprint)

arXiv:2408.12308v3Has Code
Originality Synthesis-oriented
AI Analysis

It addresses the need for accessible and comprehensive tutorials on Deep Learning foundations, but it is incremental as it synthesizes existing knowledge without new research contributions.

This tutorial provides a compact and holistic overview of Deep Learning with a focus on Convolutional Neural Networks and supervised regression, aiming to fill a gap by offering a foundational yet rigorous resource for students and educators.

In this tutorial, we present a compact and holistic discussion of Deep Learning with a focus on Convolutional Neural Networks (CNNs) and supervised regression. While there are numerous books and articles on the individual topics we cover, comprehensive and detailed tutorials that address Deep Learning from a foundational yet rigorous and accessible perspective are rare. Most resources on CNNs are either too advanced, focusing on cutting-edge architectures, or too narrow, addressing only specific applications like image classification.This tutorial not only summarizes the most relevant concepts but also provides an in-depth exploration of each, offering a complete yet agile set of ideas. Moreover, we highlight the powerful synergy between learning theory, statistic, and machine learning, which together underpin the Deep Learning and CNN frameworks. We aim for this tutorial to serve as an optimal resource for students, professors, and anyone interested in understanding the foundations of Deep Learning. Upon acceptance we will provide an accompanying repository under \href{https://github.com/neoglez/deep-learning-tutorial}{https://github.com/neoglez/deep-learning-tutorial} Keywords: Tutorial, Deep Learning, Convolutional Neural Networks, Machine Learning.

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