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Time Series Forecasting in Python
book

Time Series Forecasting in Python

by Marco Peixeiro
October 2022
Beginner to intermediate
456 pages
12h 12m
English
Manning Publications
Content preview from Time Series Forecasting in Python

inside back cover

Core concepts for time series forecasting (continued from inside front cover)

Core concept

Chapter

Section

SARIMA model

8

8.1

Frequency of seasonality

8

8.1

Time series decomposition

8

8.2

Forecasting with SARIMA

8

8.3

SARIMAX model

9

9.1

Caveat of SARIMAX

9

9.1.2

Forecasting with SARIMAX

9

9.2

Vector autoregression model (VAR)

10

10.1

Granger causality test

10

10.2.1

Forecasting with VAR

10

10.3

Types of deep learning models

12

12.2

Data windowing

13

13.1

Deep neural network

14

14.2

Long short-term memory (LSTM)

15

15.2

Convolutional neural network (CNN)

16

16.1

Autoregressive LSTM

17 ...

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Publisher Resources

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