Metadata-Version: 2.1
Name: pycaltransfer
Version: 0.1.4
Summary: Calibration transfer for chemometrics and spectral data applications
Home-page: https://gitlab.com/chemsoftware/python/pycaltransfer
Author: Valeria Fonseca Diaz
Author-email: valeria.fonseca.diaz@gmail.com
License: UNKNOWN
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Requires-Python: >=3.7
Description-Content-Type: text/markdown
License-File: LICENSE

# Calibration transfer for chemometrics and spectral data applications

This package contains methods to perform calibration transfer based on bilinear models, mainly Partial Least Squares Regression.
Numpy and Sci-Kit Learn are mandatory dependencies

The methods included are:

(Piecewise) Direct standardization (PDS, DS) (Wang 1991, Bouveresse1996)

Orthogonal projection (EPO transfer) (Zeaiter 2006, Roger 2003)

Domain invariant PLS (Nikzad-Langerodi 2018, 2020)

Joint Y PLS (Folch-Fortuny 2017, Garcia Munoz 2005)

Spectral Space Transformation (SST) (W. Du, 2011)

Transfer by orthogonal projection (TOP) (A. Andrew and T. Fearn, 2004)

Dynamic orthogonal projection (DOP) (Zeater, et al 2006)


## Installation options

### Option 1. Install via pip

```python
pip install pycaltransfer
```

### Option 2. Clone repository

```git
git clone https://gitlab.com/chemosoftware/python/pycaltransfer.git
```

To start using this package and get the documentation of the methods, do:

```python
import pycaltransfer.caltransfer as caltransfer
help(caltransfer.ds_pc_transfer_fit)
help(caltransfer.pds_pls_transfer_fit)
help(caltransfer.epo_fit)
help(caltransfer.jointypls_regression)
help(caltransfer.slope_bias_correction)
help(caltransfer.dipals)
help(caltransfer.sst)
help(caltransfer.top)
help(caltransfer.dop)
```


