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Supervised Machine Learning with Python

You're reading from   Supervised Machine Learning with Python Develop rich Python coding practices while exploring supervised machine learning

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Product type Paperback
Published in May 2019
Publisher Packt
ISBN-13 9781838825669
Length 162 pages
Edition 1st Edition
Languages
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Author (1):
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Taylor Smith Taylor Smith
Author Profile Icon Taylor Smith
Taylor Smith
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Matrix factorization in Python

In the previous section, we wanted to decompose our ratings matrix into two low-rank matrices in order to discover the intangible latent factors that drive consumers' decisions. One matrix maps the users' affinities for the discovered factors and the other maps the items' rankings on those factors.

So, let's look at how this can be implemented in Python. We've two files, als.py and example_als_recommender. Let's see our als.py file. In the last section, we saw the item-to-item collaborative filter; ALS is very similar. It's going to implement RecommenderMixin:

def __init__(self, R, factors=0.25, n_iter=10, lam=0.001,
random_state=None):

We have several parameters for ALS. The first one, and the only non-optional one, is R, our ratings matrix. In some of the math we've seen, we've referred to this interchangeably...

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