Difference between revisions of "Tutorial: Playing with the Boston Housing Data"
(→Building a Linear Regression Model with SKLearn on the Boston Data) |
|||
Line 29: | Line 29: | ||
The tutorial is best viewed as a Jupyter notebook (available in zipped form below), or as a static pdf (you'll have to retype all the commands...)<br /> | The tutorial is best viewed as a Jupyter notebook (available in zipped form below), or as a static pdf (you'll have to retype all the commands...)<br /> | ||
<br /> | <br /> | ||
− | * [[Media: | + | * [[Media:SKLearnLinearRegression_BostonData.pdf | pdf]] |
* [[Media:SKLearnLinearRegressionBostonData.ipynb.zip | Jupyter Notebook]] (Unzip before using) | * [[Media:SKLearnLinearRegressionBostonData.ipynb.zip | Jupyter Notebook]] (Unzip before using) | ||
Revision as of 16:25, 8 August 2016
--D. Thiebaut (talk) 16:06, 8 August 2016 (EDT)
Deep Neural-Network Regressor (DNNRegressor from Tensorflow)
This tutorial uses SKFlow and follows very closely two other good tutorials and merges elements from both:
- https://github.com/tensorflow/tensorflow/blob/master/tensorflow/examples/skflow/boston.py
- http://bigdataexaminer.com/uncategorized/how-to-run-linear-regression-in-python-scikit-learn/
We use the Boston housing prices data for this tutorial.
The tutorial is best viewed as a Jupyter notebook (available in zipped form below), or as a static pdf (you'll have to retype all the commands...)
- Jupyter Notebook (Unzip before using)
Building a Linear Regression Model with SKLearn on the Boston Data
This tutorial also uses SKFlow and follows very closely two other good tutorials and merges elements from both:
- https://github.com/tensorflow/tensorflow/blob/master/tensorflow/examples/skflow/boston.py
- http://bigdataexaminer.com/uncategorized/how-to-run-linear-regression-in-python-scikit-learn/
We also use the Boston housing prices data for this tutorial.
The tutorial is best viewed as a Jupyter notebook (available in zipped form below), or as a static pdf (you'll have to retype all the commands...)
- Jupyter Notebook (Unzip before using)