Optimal Weighted Kriging / Gaussian Process
Project description
The Optimal Weighted Cluster Kriging/Gaussian Process class
=======================
This class inherited from GaussianProcess class in sklearn library
Most of the parameters are contained in sklearn.gaussian_process.
Please check the docstring of Gaussian Process parameters in sklearn.
Only newly introduced parameters are documented below.
Install Instructions
================
Just run the install.py or install directly with pip.
You need OpenMPI installed to use the parralel options.
Pip::
pip install OWCK
Parameters
----------
n_cluster : int, optional
The number of clusters, determines the number of the Gaussian Process
model to build. It is the speed-up factor in OWCK.
cluster_method : string, optional
The clustering algorithm used to partition the data set.
Built-in clustering algorithm are:
'k-mean', 'GMM', 'fuzzy-c-mean', 'random', 'tree'
Note that GMM, fuzzy-c-mean are fuzzy clustering algorithms
With these algorithms you can set the overlap you desire.
tree is a regression tree clustering-based approach
overlap : float, optional
The percentage of overlap when using a fuzzy cluster method.
Each cluster will be of the same size.
is_parallel : boolean, optional
A boolean switching parallel model fitting on. If it is True, then
all the underlying Gaussian Process model will be fitted in parallel,
supported by MPI. Otherwise, all the models will be fitted sequentially.
Attributes
----------
cluster_label : the cluster label of the training set after clustering
clusterer : the clustering algorithm used.
models : a list of (fitted) Gaussian Process models built on each cluster.
Usage
----------
Example code::
from OWCK import OWCK
owck_model = OWCK(cluster_method='tree')
owck_model.fit(X,y)
pred_y, var_y = owck_model.predict(x_new)
References
----------
.. [SWKBE15] `Bas van Stein, Hao Wang, Wojtek Kowalczyk, Thomas Baeck
and Michael Emmerich. Optimally Weighted Cluster Kriging for Big
Data Regression. In 14th International Symposium, IDA 2015, pages
310-321, 2015`
http://link.springer.com/chapter/10.1007%2F978-3-319-24465-5_27#
=======================
This class inherited from GaussianProcess class in sklearn library
Most of the parameters are contained in sklearn.gaussian_process.
Please check the docstring of Gaussian Process parameters in sklearn.
Only newly introduced parameters are documented below.
Install Instructions
================
Just run the install.py or install directly with pip.
You need OpenMPI installed to use the parralel options.
Pip::
pip install OWCK
Parameters
----------
n_cluster : int, optional
The number of clusters, determines the number of the Gaussian Process
model to build. It is the speed-up factor in OWCK.
cluster_method : string, optional
The clustering algorithm used to partition the data set.
Built-in clustering algorithm are:
'k-mean', 'GMM', 'fuzzy-c-mean', 'random', 'tree'
Note that GMM, fuzzy-c-mean are fuzzy clustering algorithms
With these algorithms you can set the overlap you desire.
tree is a regression tree clustering-based approach
overlap : float, optional
The percentage of overlap when using a fuzzy cluster method.
Each cluster will be of the same size.
is_parallel : boolean, optional
A boolean switching parallel model fitting on. If it is True, then
all the underlying Gaussian Process model will be fitted in parallel,
supported by MPI. Otherwise, all the models will be fitted sequentially.
Attributes
----------
cluster_label : the cluster label of the training set after clustering
clusterer : the clustering algorithm used.
models : a list of (fitted) Gaussian Process models built on each cluster.
Usage
----------
Example code::
from OWCK import OWCK
owck_model = OWCK(cluster_method='tree')
owck_model.fit(X,y)
pred_y, var_y = owck_model.predict(x_new)
References
----------
.. [SWKBE15] `Bas van Stein, Hao Wang, Wojtek Kowalczyk, Thomas Baeck
and Michael Emmerich. Optimally Weighted Cluster Kriging for Big
Data Regression. In 14th International Symposium, IDA 2015, pages
310-321, 2015`
http://link.springer.com/chapter/10.1007%2F978-3-319-24465-5_27#
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
OWCK-1.5.8.tar.gz
(26.4 kB
view details)
Built Distribution
OWCK-1.5.8-py2-none-any.whl
(48.7 kB
view details)
File details
Details for the file OWCK-1.5.8.tar.gz
.
File metadata
- Download URL: OWCK-1.5.8.tar.gz
- Upload date:
- Size: 26.4 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 467bf1b2a810cd38d972e5ec1b63ea060525097d1f76cdcf62fbafc26f4e15f7 |
|
MD5 | d5dc407a48a01d6e6cca76e2da397536 |
|
BLAKE2b-256 | d57fa322993f7dc7ad5147e3ddb682feaa8b8d06f0c1bdfa12127ffc6e885261 |
File details
Details for the file OWCK-1.5.8-py2-none-any.whl
.
File metadata
- Download URL: OWCK-1.5.8-py2-none-any.whl
- Upload date:
- Size: 48.7 kB
- Tags: Python 2
- Uploaded using Trusted Publishing? No
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 8374f1be47b50ed85c592edf730e9f68070d04a0858600c09f9fbea9f65c95be |
|
MD5 | b3120046402bb247a158c3f04ff874e9 |
|
BLAKE2b-256 | f37f5afb64a309bff3800bc959d36825c630c490db4811084237f820a001ef53 |