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Modern Time Series Forecasting with Python
book

Modern Time Series Forecasting with Python

by Manu Joseph
November 2022
Beginner to intermediate
552 pages
16h 4m
English
Packt Publishing
Content preview from Modern Time Series Forecasting with Python

10

Global Forecasting Models

In previous chapters, we saw how we can use modern machine learning models on time series forecasting problems, essentially replacing traditional models such as ARIMA or exponential smoothing. However, before now, we were looking at the different time series in any dataset (such as households in the London Smart Meters dataset) in isolation, just as the traditional models did.

However, we will now explore a different paradigm of modeling where we use a single machine learning model to forecast a bunch of time series together. As we will learn in the chapter, this paradigm brings many benefits with it, from the perspective of both computation and accuracy.

In this chapter, we will be covering these main topics:

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Publisher Resources

ISBN: 9781803246802Supplemental Content