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Machine Learning With Go

You're reading from   Machine Learning With Go Implement Regression, Classification, Clustering, Time-series Models, Neural Networks, and More using the Go Programming Language

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Product type Paperback
Published in Sep 2017
Publisher Packt
ISBN-13 9781785882104
Length 304 pages
Edition 1st Edition
Languages
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Author (1):
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Joseph Langstaff Whitenack Joseph Langstaff Whitenack
Author Profile Icon Joseph Langstaff Whitenack
Joseph Langstaff Whitenack
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Table of Contents (11) Chapters Close

Preface 1. Gathering and Organizing Data FREE CHAPTER 2. Matrices, Probability, and Statistics 3. Evaluation and Validation 4. Regression 5. Classification 6. Clustering 7. Time Series and Anomaly Detection 8. Neural Networks and Deep Learning 9. Deploying and Distributing Analyses and Models 10. Algorithms/Techniques Related to Machine Learning

Validation

So, now we know some ways to measure how well our model is performing. In fact, if we wanted to, we could create a super sophisticated, complicated model that could predict every observation without error. For example, we could create a model that would take the index of the row of the observation and return the exact answer for each of those rows. It might be a really big function with a lot of parameters, but it would return the correct answers.

So, what's the problem with this? Well, the problem is that it would not generalize to new data. Our complicated model would predict really well for the data that we would expose it to, but once we try some new input data (that isn't part of our training dataset), the model would likely perform poorly.

We call this type of model (that doesn't generalize) a model that has been overfit. That is, our process of...

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