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You're reading from  Regression Analysis with Python

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Published inFeb 2016
Reading LevelIntermediate
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ISBN-139781785286315
Edition1st Edition
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Authors (2):
Luca Massaron
Luca Massaron
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Luca Massaron

Having joined Kaggle over 10 years ago, Luca Massaron is a Kaggle Grandmaster in discussions and a Kaggle Master in competitions and notebooks. In Kaggle competitions he reached no. 7 in the worldwide rankings. On the professional side, Luca is a data scientist with more than a decade of experience in transforming data into smarter artifacts, solving real-world problems, and generating value for businesses and stakeholders. He is a Google Developer Expert(GDE) in machine learning and the author of best-selling books on AI, machine learning, and algorithms.
Read more about Luca Massaron

Alberto Boschetti
Alberto Boschetti
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Alberto Boschetti

Alberto Boschetti is a data scientist with expertise in signal processing and statistics. He holds a Ph.D. in telecommunication engineering and currently lives and works in London. In his work projects, he faces challenges ranging from natural language processing (NLP) and behavioral analysis to machine learning and distributed processing. He is very passionate about his job and always tries to stay updated about the latest developments in data science technologies, attending meet-ups, conferences, and other events.
Read more about Alberto Boschetti

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Batch learning


When the dataset is fully available at the beginning of a supervised task, and doesn't exceed the quantity of RAM on your machine, you can train the classifier or the regression using batch learning. As seen in previous chapters, during training the learner scans the full dataset. This also happens when stochastic gradient descent (SGD)-based methods are used (see Chapter 2, Approaching Simple Linear Regression and Chapter 3, Multiple Regression in Action). Let's now compare how much time is needed to train a linear regressor and relate its performance with the number of observations in the dataset (that is, the number of rows of the feature matrix X) and the number of features (that is, the number of columns of X). In this first experiment, we will use the plain vanilla LinearRegression() and SGDRegressor() classes provided by Scikit-learn, and we will store the actual time taken to fit a classifier, without any parallelization.

Let's first create a function to create fake...

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Regression Analysis with Python
Published in: Feb 2016Publisher: ISBN-13: 9781785286315

Authors (2)

author image
Luca Massaron

Having joined Kaggle over 10 years ago, Luca Massaron is a Kaggle Grandmaster in discussions and a Kaggle Master in competitions and notebooks. In Kaggle competitions he reached no. 7 in the worldwide rankings. On the professional side, Luca is a data scientist with more than a decade of experience in transforming data into smarter artifacts, solving real-world problems, and generating value for businesses and stakeholders. He is a Google Developer Expert(GDE) in machine learning and the author of best-selling books on AI, machine learning, and algorithms.
Read more about Luca Massaron

author image
Alberto Boschetti

Alberto Boschetti is a data scientist with expertise in signal processing and statistics. He holds a Ph.D. in telecommunication engineering and currently lives and works in London. In his work projects, he faces challenges ranging from natural language processing (NLP) and behavioral analysis to machine learning and distributed processing. He is very passionate about his job and always tries to stay updated about the latest developments in data science technologies, attending meet-ups, conferences, and other events.
Read more about Alberto Boschetti