Book Image

Hands-On Deep Learning with R

By : Michael Pawlus, Rodger Devine
Book Image

Hands-On Deep Learning with R

By: Michael Pawlus, Rodger Devine

Overview of this book

Deep learning enables efficient and accurate learning from a massive amount of data. This book will help you overcome a number of challenges using various deep learning algorithms and architectures with R programming. This book starts with a brief overview of machine learning and deep learning and how to build your first neural network. You’ll understand the architecture of various deep learning algorithms and their applicable fields, learn how to build deep learning models, optimize hyperparameters, and evaluate model performance. Various deep learning applications in image processing, natural language processing (NLP), recommendation systems, and predictive analytics will also be covered. Later chapters will show you how to tackle recognition problems such as image recognition and signal detection, programmatically summarize documents, conduct topic modeling, and forecast stock market prices. Toward the end of the book, you will learn the common applications of GANs and how to build a face generation model using them. Finally, you’ll get to grips with using reinforcement learning and deep reinforcement learning to solve various real-world problems. By the end of this deep learning book, you will be able to build and deploy your own deep learning applications using appropriate frameworks and algorithms.
Table of Contents (16 chapters)
1
Section 1: Deep Learning Basics
5
Section 2: Deep Learning Applications
12
Section 3: Reinforcement Learning

Tuning hyperparameters to improve performance

To improve our model, we will now tune our hyperparameters. There are a number of options for tuning our LSTM model. We will focus on adjusting the length value when creating the time-series data with our data generator. In addition, we will add additional layers, adjust the number of units in the layer, and modify our optimizer.

We will do so using the following steps:

  1. To get started, let's switch the value that we pass to the length argument in the timeseries_generator function from 3 to 10 so that our model has a longer window of prices to use for forecasting calculations. To make this change, we run the following code:
train_gen <- timeseries_generator(
closing_deltas,
closing_deltas,
length = 10,
sampling_rate = 1,
stride = 1,
start_index = 1,
end_index = 1258,
shuffle = FALSE,
reverse = FALSE,
batch_size ...