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You're reading from  Learning NumPy Array

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Published inJun 2014
Reading LevelIntermediate
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ISBN-139781783983902
Edition1st Edition
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Ivan Idris
Ivan Idris
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Ivan Idris

Ivan Idris has an MSc in experimental physics. His graduation thesis had a strong emphasis on applied computer science. After graduating, he worked for several companies as a Java developer, data warehouse developer, and QA analyst. His main professional interests are business intelligence, big data, and cloud computing. Ivan Idris enjoys writing clean, testable code and interesting technical articles. Ivan Idris is the author of NumPy 1.5. Beginner's Guide and NumPy Cookbook by Packt Publishing.
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Moving-average temperature model with lag 1


The moving average model of a time series represents the data as oscillations around the mean of the data. It is assumed that the lag components are white noise (not a politically incorrect term as far as I know), which forms a linear combination. We will again use the leastsq function to fit a model:

  1. We will start off with a simple moving-average model. It has only one lag component and therefore only one coefficient. The code snippet is as follows:

    def model(p, ma1):
       return p * ma1
  2. Call the leastsq function. Here, we subtract the mean from the data:

    params = leastsq(error, p0, args=(temp[1:cutoff] - mu, temp[:cutoff-1] - mu))[0]
    print params

    The program prints the following parameter:

    [ 0.94809073]
    

    We get the following plot for the absolute error histogram, which is comparable to the autoregressive model results:

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Learning NumPy Array
Published in: Jun 2014Publisher: ISBN-13: 9781783983902

Author (1)

author image
Ivan Idris

Ivan Idris has an MSc in experimental physics. His graduation thesis had a strong emphasis on applied computer science. After graduating, he worked for several companies as a Java developer, data warehouse developer, and QA analyst. His main professional interests are business intelligence, big data, and cloud computing. Ivan Idris enjoys writing clean, testable code and interesting technical articles. Ivan Idris is the author of NumPy 1.5. Beginner's Guide and NumPy Cookbook by Packt Publishing.
Read more about Ivan Idris