Trans4mers is a sklearn compatible python package that implements some methods of data preprocessing. Currently the methods implemented are:
- Imputation:
- KNN Regression: This method imput values for missing values based on KNN Regression.
- Feature Extraction: I'm not sure if the above methods are really feature
extractors.
- Hyberbolic Location Fingerprint: This method is used on Indoor Wifi Localization when there are heterogeneous devices environment. For more details: M. Kjaergaard and C. Munk, "Hyperbolic Location Fingerprint: A calibration-free solution for handling differences in signal strength", in PerCom, pp. 110-116, 2008
- Relative Location Fingerprint: This method is just a variation of the above. Instead of use Hyberbolic tranformation it just take the relation betwee two variables.
- Normalization:
- Standard Normalization: This method normalize each row of a dataset based on the mean and standard variation among the variables of the row.
First clone the repository to your machine:
git clone [email protected]:rloliveirajr/sklearn_transformers.git
Then, install the package using pip or easy_install:
pip setup.py install
...
Any contribution is welcome!