Metadata-Version: 2.1
Name: feature-stuff
Version: 0.0.dev6
Summary: Feature extraction, processing and interpretation algorithms and functions for machine learning and data science.
Home-page: https://github.com/hiflyin/Advanced-Feature-Stuff-Lib
Author: Mihaela Mares
Author-email: mihaela.andreea.mares@gmail.com
License: UNKNOWN
Keywords: machine_learning data_science AI ML feature_extraction
Platform: UNKNOWN
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Developers
Classifier: Topic :: Scientific/Engineering :: Artificial Intelligence
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 2
Classifier: Programming Language :: Python :: 2.7
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.4
Classifier: Programming Language :: Python :: 3.5
Classifier: Programming Language :: Python :: 3.6
Description-Content-Type: text/markdown
Provides-Extra: test
Provides-Extra: dev
Requires-Dist: pandas (>=0.19.2)
Requires-Dist: numpy (>=1.12.1)
Requires-Dist: scikit-learn (>=0.18)
Requires-Dist: scipy (>=0.19.0)
Requires-Dist: xgboost (>=0.6)
Provides-Extra: dev
Requires-Dist: check-manifest; extra == 'dev'
Provides-Extra: test
Requires-Dist: coverage; extra == 'test'


-----------------

# feature_stuff: a python machine learning library for advanced feature extraction, processing and interpretation.

<table>
<tr>
  <td>Latest Release</td>
  <td>
    <a href="https://pypi.org/project/feature-stuff/"> see on pypi.org</a>
  </td>
</tr>
<tr>
  <td>Package Status</td>
  <td>
		<a href="https://pypi.org/project/feature-stuff/">see on pypi.org</a>
    </td>
</tr>
<tr>
  <td>License</td>
  <td>
    <a href="https://github.com/hiflyin/Feature-Stuff/blob/master/LICENSE">  see on github</a>
</td>
</tr>
<tr>
  <td>Build Status</td>
  <td>
    <a href="https://travis-ci.org/hiflyin/Feature-Stuff/"> see on travis
    </a>
  </td>
</tr>
</table>



## What is it

**feature_stuff** is a Python package providing fast and flexible algorithms and functions
for extracting, processing and interpreting features:

**Numeric feature extraction**
<table>
<tr>
  <td>feature_stuff.add_interactions</td>
  <td>
    generic function for adding interaction features to a data frame either by passing them as a list or
        by passing a boosted trees model to extract the interactions from.
  </td>
</tr>
<tr>
  <td>feature_stuff.target_encoding</td>
  <td>
		target encoding of a feature column using exponential prior smoothing or mean prior smoothing
    </td>
</tr>
<tr>
  <td>feature_stuff.cv_target_encoding</td>
  <td>
    target encoding of a feature column taking cross-validation folds as input
</td>
</tr>
<tr>
  <td>feature_stuff.add_knn_values</td>
  <td>
    creates a new feature with the K-nearest-neighbours of the values of a given feature
  </td>
</tr>
<tr>
  <td>feature_stuff.model_features_insights_extractions.add_group_values</td>
  <td>
    generic and memory efficient enrichment of features dataframe with group values
  </td>
</tr>
</table>

**Model feature insights extraction**
<table>
<tr>
  <td>get_xgboost_interactions</td>
  <td>
    takes a trained xgboost model and returns a list of interactions between features, to the order of maximum
        depth of all trees.
  </td>
</tr>
<tr>
</table>


## Installation

Binary installers for the latest released version are available at the [Python
package index](https://pypi.org/project/feature-stuff) .

```sh
# or PyPI
pip install feature_stuff
```

The source code is currently hosted on GitHub at:
https://github.com/hiflyin/Feature-Stuff


## Installation from sources

In the `Feature-Stuff` directory (same one where you found this file after
cloning the git repo), execute:

```sh
python setup.py install
```

or for installing in [development mode](https://pip.pypa.io/en/latest/reference/pip_install.html#editable-installs):

```sh
python setup.py develop
```

Alternatively, you can use `pip` if you want all the dependencies pulled
in automatically (the `-e` option is for installing it in [development
mode](https://pip.pypa.io/en/latest/reference/pip_install.html#editable-installs)):

```sh
pip install -e .
```

## How to use it

Below are examples for some functions. See the attached API of each function/ algorithm, for a complete documentation.

# feature_stuff.add_interactions

    Inputs:
        df: a pandas dataframe
        model: boosted trees model (currently xgboost supported only). Can be None in which case the interactions have
        to be provided
        interactions: list in which each element is a list of features/columns in df, default: None

    Output: df containing the group values added to it


Example on extracting interactions from tree based models and adding
them as new features to your dataset.

```python
import feature_stuff as fs
import pandas as pd
import xgboost as xgb

data = pd.DataFrame({"x0":[0,1,0,1], "x1":range(4), "x2":[1,0,1,0]})
print data
   x0  x1  x2
0   0   0   1
1   1   1   0
2   0   2   1
3   1   3   0

target = data.x0 * data.x1 + data.x2*data.x1
print target.tolist()
[0, 1, 2, 3]

model = xgb.train({'max_depth': 4, "seed": 123}, xgb.DMatrix(data, label=target), num_boost_round=2)
fs.addInteractions(data, model)

# at least one of the interactions in target must have been discovered by xgboost
print data
   x0  x1  x2  inter_0
0   0   0   1        0
1   1   1   0        1
2   0   2   1        0
3   1   3   0        3

# if we want to inspect the interactions extracted
from feature_stuff import model_features_insights_extractions as insights
print insights.get_xgboost_interactions(model)
[['x0', 'x1']]

```

# feature_stuff.target_encoding

    Inputs:
        df: a pandas dataframe containing the column for which to calculate target encoding (categ_col)
        ref_df: a pandas dataframe containing the column for which to calculate target encoding and the target (y_col)
            for example we might want to use train data as ref_df to encode test data
        categ_col: the name of the categorical column for which to calculate target encoding
        y_col: the name of the target column, or target variable to predict
        smoothing_func: the name of the function to be used for calculating the weights of the corresponding target
            value inside ref_df. Default: exponentialPriorSmoothing.
        aggr_func: the statistic used to aggregate the target variable values inside each category of the categ_col
        smoothing_prior_weight: a prior weight to put on each category. Default 1.

    Output: df containing a new column called <categ_col + "_bayes_" + aggr_func> containing the encodings of categ_col

Example on extracting target encodings from categorical features and adding them as new features to your dataset.

```
import feature_stuff as fs
import pandas as pd

train_data = pd.DataFrame({"x0":[0,1,0,1]})
test_data = pd.DataFrame({"x0":[1, 0, 0, 1]})
target = range(4)

train_data = fs.target_encoding(train_data, train_data, "x0", target, smoothing_func=fs.exponentialPriorSmoothing,
                                        aggr_func="mean", smoothing_prior_weight=1)
test_data = fs.target_encoding(test_data, train_data, "x0", target, smoothing_func=fs.exponentialPriorSmoothing,
                                        aggr_func="mean", smoothing_prior_weight=1)

#train data with target encoding of "x0"
print(train_data)
   x0  y_xx  g_xx  x0_bayes_mean
0   0     0     0       1.134471
1   1     1     0       1.865529
2   0     2     0       1.134471
3   1     3     0       1.865529

#test data with target encoding of "x0"
print(test_data)
   x0  x0_bayes_mean
0   1       1.865529
1   0       1.134471
2   0       1.134471
3   1       1.865529


```

# feature_stuff.cv_target_encoding

    Inputs:
        df: a pandas dataframe containing the column for which to calculate target encoding (categ_col) and the target
        categ_cols: a list or array with the the names of the categorical columns for which to calculate target encoding
        y_col: a numpy array of the target variable to predict
        cv_folds: a list with fold pairs as tuples of numpy arrays for cross-val target encoding
        smoothing_func: the name of the function to be used for calculating the weights of the corresponding target
            value inside ref_df. Default: exponentialPriorSmoothing.
        aggr_func: the statistic used to aggregate the target variable values inside each category of the categ_col
        smoothing_prior_weight: a prior weight to put on each category. Default 1.
        verbosity: 0-none, 1-high_level, 2-detailed

    Output: df containing a new column called <categ_col + "_bayes_" + aggr_func> containing the encodings of categ_col

See feature_stuff.target_encoding example above.


## Contributing to feature-stuff

All contributions, bug reports, bug fixes, documentation improvements, enhancements and ideas are welcome.



