import os
from os.path import dirname
import numpy as np
import pandas as pd
from sklearn.base import BaseEstimator, ClassifierMixin
from ..impute import get_observed_mod_indicator, simple_mod_imputer
from ..utils import check_Xs
matlabmodule_installed = False
oct2py_module_error = "Module 'matlab' needs to be installed."
try:
import oct2py
matlabmodule_installed = True
except ImportError:
pass
[docs]
class OPIMC(BaseEstimator, ClassifierMixin):
r"""
One-Pass Incomplete Multi-View Clustering (OPIMC). [#opimcpaper1]_ [#opimcpaper2]_ [#opimccode]_
OPIMC deals with large scale incomplete multi-view clustering problem by considering the instance missing
information with the help of regularized matrix factorization and weighted matrix factorization.
Parameters
----------
n_clusters : int, default=8
The number of clusters to generate.
alpha : float, default=10
Nonnegative parameter.
max_iter : int, default=30
Maximum number of iterations.
tol : float, default=1e-6
Tolerance of the stopping condition.
block_size : int, default=50
Size of the chunk.
random_state : int, default=None
Determines the randomness. Use an int to make the randomness deterministic.
engine : str, default=matlab
Engine to use for computing the model. Current options are 'matlab'.
verbose : bool, default=False
Verbosity mode.
clean_space : bool, default=True
If engine is 'matlab' and clean_space is True, the session will be closed after fitting the model.
Attributes
----------
labels_ : array-like of shape (n_samples,)
Labels of each point in training data.
embedding_ : array-like of shape (n_samples, n_clusters)
Consensus clustering matrix to be used as input for the KMeans clustering step.
References
----------
.. [#opimcpaper1] Hu, M., & Chen, S. (2019). One-Pass Incomplete Multi-View Clustering. Proceedings of the AAAI
Conference on Artificial Intelligence, 33(01), 3838-3845.
https://doi.org/10.1609/aaai.v33i01.33013838.
.. [#opimcpaper2] Jie Wen, Zheng Zhang, Lunke Fei, Bob Zhang, Yong Xu, Zhao Zhang, Jinxing Li, A Survey on
Incomplete Multi-view Clustering, IEEE TRANSACTIONS ON SYSTEMS, MAN, AND CYBERNETICS:
SYSTEMS, 2022.
.. [#opimccode] https://github.com/software-shao/online-multiview-clustering-with-incomplete-view
Example
--------
>>> import numpy as np
>>> import pandas as pd
>>> from imml.cluster import OPIMC
>>> Xs = [pd.DataFrame(np.random.default_rng(42).random((20, 10))) for i in range(3)]
>>> estimator = OPIMC(n_clusters = 2)
>>> labels = estimator.fit_predict(Xs)
"""
def __init__(self, n_clusters: int = 8, alpha: float = 10, num_passes: int = 1, max_iter: int = 30,
tol: float = 1e-6, block_size: int = 250, random_state:int = None, engine: str ="matlab",
verbose = False, clean_space: bool = True):
if not isinstance(n_clusters, int):
raise ValueError(f"Invalid n_clusters. It must be an int. A {type(n_clusters)} was passed.")
if n_clusters < 2:
raise ValueError(f"Invalid n_clusters. It must be an greater than 1. {n_clusters} was passed.")
engines_options = ["matlab"]
if engine not in engines_options:
raise ValueError(f"Invalid engine. Expected one of {engines_options}. {engine} was passed.")
if (engine == "matlab") and (not matlabmodule_installed):
raise ImportError(oct2py_module_error)
self.n_clusters = n_clusters
self.alpha = alpha
self.num_passes = num_passes
self.max_iter = max_iter
self.tol = tol
self.block_size = block_size
self.random_state = random_state
self.engine = engine
self.verbose = verbose
self.clean_space = clean_space
if self.engine == "matlab":
matlab_folder = dirname(__file__)
matlab_folder = os.path.join(matlab_folder, "_" + (os.path.basename(__file__).split(".")[0]))
self._matlab_folder = matlab_folder
matlab_files = [x for x in os.listdir(matlab_folder) if x.endswith(".m")]
self._oc = oct2py.Oct2Py(temp_dir= matlab_folder)
for matlab_file in matlab_files:
with open(os.path.join(matlab_folder, matlab_file)) as f:
self._oc.eval(f.read())
[docs]
def fit(self, Xs, y=None):
r"""
Fit the transformer to the input data.
Parameters
----------
Xs : list of array-likes objects
- Xs length: n_mods
- Xs[i] shape: (n_samples, n_features_i)
A list of different modalities.
y : Ignored
Not used, present here for API consistency by convention.
Returns
-------
self : Fitted estimator.
"""
Xs = check_Xs(Xs, ensure_all_finite='allow-nan')
if self.engine=="matlab":
if isinstance(Xs[0], pd.DataFrame):
transformed_Xs = [X.values for X in Xs]
elif isinstance(Xs[0], np.ndarray):
transformed_Xs = Xs
observed_mod_indicator = get_observed_mod_indicator(transformed_Xs)
transformed_Xs = simple_mod_imputer(transformed_Xs, value="zeros")
transformed_Xs = [X.T for X in transformed_Xs]
transformed_Xs = tuple(transformed_Xs)
w = tuple([self._oc.diag(missing_mod) for missing_mod in observed_mod_indicator])
options = {"block_size": self.block_size, "k": self.n_clusters, "maxiter": self.max_iter,
"tol": self.tol, "pass": self.num_passes, "loss": 0, "alpha": self.alpha}
if self.random_state is not None:
self._oc.rand('seed', self.random_state)
labels, V = self._oc.OPIMC(transformed_Xs, w, options, observed_mod_indicator, nout= 2)
if self.clean_space:
self._clean_space()
self.labels_ = pd.factorize(labels[:,0])[0]
self.embedding_ = V
return self
def _predict(self, Xs):
r"""
Return clustering results for samples.
Parameters
----------
Xs : list of array-likes objects
- Xs length: n_mods
- Xs[i] shape: (n_samples, n_features_i)
A list of different modalities.
Returns
-------
labels : ndarray of shape (n_samples,)
Index of the cluster each sample belongs to.
"""
return self.labels_
[docs]
def fit_predict(self, Xs, y=None):
r"""
Fit the model and return clustering results.
Convenience method; equivalent to calling fit(X) followed by predict(X).
Parameters
----------
Xs : list of array-likes objects
- Xs length: n_mods
- Xs[i] shape: (n_samples, n_features_i)
A list of different modalities.
Returns
-------
labels : ndarray of shape (n_samples,)
Index of the cluster each sample belongs to.
"""
labels = self.fit(Xs)._predict(Xs)
return labels
def _clean_space(self):
[os.remove(os.path.join(self._matlab_folder, x)) for x in ["reader.mat", "writer.mat"]]
self._oc.exit()
del self._oc
return None