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You're reading from  Python for Finance Cookbook

Product typeBook
Published inJan 2020
Reading LevelIntermediate
PublisherPackt
ISBN-139781789618518
Edition1st Edition
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Author (1)
Eryk Lewinson
Eryk Lewinson
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Eryk Lewinson

Eryk Lewinson received his master's degree in Quantitative Finance from Erasmus University Rotterdam. In his professional career, he has gained experience in the practical application of data science methods while working in risk management and data science departments of two "big 4" companies, a Dutch neo-broker and most recently the Netherlands' largest online retailer. Outside of work, he has written over a hundred articles about topics related to data science, which have been viewed more than 3 million times. In his free time, he enjoys playing video games, reading books, and traveling with his girlfriend.
Read more about Eryk Lewinson

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Modeling time series with exponential smoothing methods

Exponential smoothing methods are suitable for non-stationary data (that is, data with a trend and/or seasonality) and work similarly to exponential moving averages. The forecasts are weighted averages of past observations. These models put more emphasis on recent observations as the weights become exponentially smaller with time. Smoothing methods are popular because they are fast (not a lot of computations are required) and relatively reliable when it comes to forecasts:

Simple exponential smoothing: The most basic model is called Simple Exponential Smoothing (SES). This class of models is most apt for cases when the considered time series does not exhibit any trend or seasonality. They also work well with series with only a few data points.

The model is parameterized by a smoothing parameter α with values between...

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Python for Finance Cookbook
Published in: Jan 2020Publisher: PacktISBN-13: 9781789618518

Author (1)

author image
Eryk Lewinson

Eryk Lewinson received his master's degree in Quantitative Finance from Erasmus University Rotterdam. In his professional career, he has gained experience in the practical application of data science methods while working in risk management and data science departments of two "big 4" companies, a Dutch neo-broker and most recently the Netherlands' largest online retailer. Outside of work, he has written over a hundred articles about topics related to data science, which have been viewed more than 3 million times. In his free time, he enjoys playing video games, reading books, and traveling with his girlfriend.
Read more about Eryk Lewinson