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Deep Learning for Time Series Cookbook

You're reading from   Deep Learning for Time Series Cookbook Use PyTorch and Python recipes for forecasting, classification, and anomaly detection

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Product type Paperback
Published in Mar 2024
Publisher Packt
ISBN-13 9781805129233
Length 274 pages
Edition 1st Edition
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Authors (2):
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Luís Roque Luís Roque
Author Profile Icon Luís Roque
Luís Roque
Vitor Cerqueira Vitor Cerqueira
Author Profile Icon Vitor Cerqueira
Vitor Cerqueira
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Table of Contents (12) Chapters Close

Preface 1. Chapter 1: Getting Started with Time Series 2. Chapter 2: Getting Started with PyTorch FREE CHAPTER 3. Chapter 3: Univariate Time Series Forecasting 4. Chapter 4: Forecasting with PyTorch Lightning 5. Chapter 5: Global Forecasting Models 6. Chapter 6: Advanced Deep Learning Architectures for Time Series Forecasting 7. Chapter 7: Probabilistic Time Series Forecasting 8. Chapter 8: Deep Learning for Time Series Classification 9. Chapter 9: Deep Learning for Time Series Anomaly Detection 10. Index 11. Other Books You May Enjoy

Handling seasonality – seasonal dummies and Fourier series

In this recipe, we’ll describe how to deal with seasonality in time series using seasonal dummy variables and a Fourier series.

Getting ready

Seasonality represents repeatable patterns that recur over a given period, such as every year. Seasonality is an important piece of time series, and it is important to capture it. The consensus in the literature is that neural networks cannot capture seasonal effects optimally. The best way to model seasonality is by feature engineering or data transformation. One way to handle seasonality is to add extra information that captures the periodicity of patterns. This can be done with seasonal dummies or a Fourier series.

We start by preparing the data using the series_to_supervised() function:

train, test = train_test_split(series, test_size=0.2, shuffle=False)
scaler = MinMaxScaler(feature_range=(-1, 1))
train_norm = scaler.fit_transform(
    ...
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