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Python Machine Learning - Code Examples | ||
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## Chapter 3: A Tour of Machine Learning Classifiers Using scikit-learn | ||
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### Chapter Outline | ||
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- Choosing a classification algorithm | ||
- First steps with scikit-learn -- training a perceptron | ||
- Modeling class probabilities via logistic regression | ||
- Logistic regression intuition and conditional probabilities | ||
- Learning the weights of the logistic cost function | ||
- Converting an Adaline implementation into an algorithm for logistic regression | ||
- Training a logistic regression model with scikit-learn | ||
- Tackling over tting via regularization | ||
- Maximum margin classification with support vector machines | ||
- Maximum margin intuition | ||
- Dealing with a nonlinearly separable case using slack variables | ||
- Alternative implementations in scikit-learn | ||
- Solving nonlinear problems using a kernel SVM | ||
- Kernel methods for linearly inseparable data | ||
- Using the kernel trick to find separating hyperplanes in high-dimensional space | ||
- Decision tree learning | ||
- Maximizing information gain – getting the most bang for your buck | ||
- Building a decision tree | ||
- Combining multiple decision trees via random forests | ||
- K-nearest neighbors – a lazy learning algorithm | ||
- Summary | ||
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### A note on using the code examples | ||
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The recommended way to interact with the code examples in this book is via Jupyter Notebook (the `.ipynb` files). Using Jupyter Notebook, you will be able to execute the code step by step and have all the resulting outputs (including plots and images) all in one convenient document. | ||
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![](../ch02/images/jupyter-example-1.png) | ||
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Setting up Jupyter Notebook is really easy: if you are using the Anaconda Python distribution, all you need to install jupyter notebook is to execute the following command in your terminal: | ||
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conda install jupyter notebook | ||
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Then you can launch jupyter notebook by executing | ||
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jupyter notebook | ||
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A window will open up in your browser, which you can then use to navigate to the target directory that contains the `.ipynb` file you wish to open. | ||
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**More installation and setup instructions can be found in the [README.md file of Chapter 1](../ch01/README.md)**. | ||
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**(Even if you decide not to install Jupyter Notebook, note that you can also view the notebook files on GitHub by simply clicking on them: [`ch03.ipynb`](ch03.ipynb))** | ||
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In addition to the code examples, I added a table of contents to each Jupyter notebook as well as section headers that are consistent with the content of the book. Also, I included the original images and figures in hope that these make it easier to navigate and work with the code interactively as you are reading the book. | ||
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![](../ch02/images/jupyter-example-2.png) | ||
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When I was creating these notebooks, I was hoping to make your reading (and coding) experience as convenient as possible! However, if you don't wish to use Jupyter Notebooks, I also converted these notebooks to regular Python script files (`.py` files) that can be viewed and edited in any plaintext editor. |
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