Book Image

Hands-On Neural Networks

By : Leonardo De Marchi, Laura Mitchell
Book Image

Hands-On Neural Networks

By: Leonardo De Marchi, Laura Mitchell

Overview of this book

Neural networks play a very important role in deep learning and artificial intelligence (AI), with applications in a wide variety of domains, right from medical diagnosis, to financial forecasting, and even machine diagnostics. Hands-On Neural Networks is designed to guide you through learning about neural networks in a practical way. The book will get you started by giving you a brief introduction to perceptron networks. You will then gain insights into machine learning and also understand what the future of AI could look like. Next, you will study how embeddings can be used to process textual data and the role of long short-term memory networks (LSTMs) in helping you solve common natural language processing (NLP) problems. The later chapters will demonstrate how you can implement advanced concepts including transfer learning, generative adversarial networks (GANs), autoencoders, and reinforcement learning. Finally, you can look forward to further content on the latest advancements in the field of neural networks. By the end of this book, you will have the skills you need to build, train, and optimize your own neural network model that can be used to provide predictable solutions.
Table of Contents (16 chapters)
Free Chapter
1
Section 1: Getting Started
4
Section 2: Deep Learning Applications
9
Section 3: Advanced Applications

Fine-tuning

The objective of fine-tuning is to improve the accuracy of the model, better discriminating between classes. It aims to find the optimal values of the weights between layers. Fine-tuning slightly tweaks the original features in order to obtain more precise boundaries of the classes.

A small labelled dataset is used for fine-tuning, as this helps the model to associate patterns and features to the datasets. Back propagation is a method used to fine-tune and helps the model to generalize better.

Once we have identified some reasonable feature detectors, backward propagation only needs to perform a local search.

Fine-tuning can be applied as a stochastic bottom-up pass and adjust the top-down weights. Once the top is reached, recursion is applied to the top layer. In order to fine-tune further, we can do a stochastic top-down pass and adjust the bottom-up weights.

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