It is common to scale the training and testing data separately before training and predicting progress of a classification task.
I want to embed the aforementioned process in RFECV which runs CV tests thus I tried the following:
Do
X_scaled = preprocessing.scale(X) in the first place, where X is the whole data set. By doing so, training and testing data are not scaled separately, which is not considered.
The other way I tried is to pass:
scaling_svm = Pipeline([('scaler', preprocessing.StandardScaler()),
('svm',LinearSVC(penalty=penalty, dual=False, class_weight='auto'))])
as parameter to the argument in RFECV :
rfecv = RFECV(estimator=scaling_svm, step=1, cv=StratifiedKFold(y, 7),
scoring=score, verbose=0)
However, I got an error since RFECV needs the estimator to have attribute .coef_.
What should I suppose to do? Any help would be appreciated.
A bit late to the party, admittedly, but if anyone is interested you can create a customised pipeline as follows:
from sklearn.pipeline import Pipeline
class RfePipeline(Pipeline):
#property
def coef_(self):
return self._final_estimator.coef_
And then replace Pipeline with RfePipeline in your code.
See similar question here.
Related
I am generating a predictive model for cancer diagnosis from a moderately large dataset (>4500 features).
I have got the rfecv to work, providing me with a model that I can evaluate nicely using ROC curves, confusion matrices etc., and which is performing acceptably for classifying novel data.
please find a truncated version of my code below.
logo = LeaveOneGroupOut()
model = RFECV(LinearDiscriminantAnalysis(), step=1, cv=logo.split(X, y, groups=trial_number))
model.fit(X, y)
As I say, this works well and provides a model I'm happy with. The trouble is, I would like to be able to save this model, so that I don't need to do the lengthy retraining everytime I want to evaluate new data.
When I have tried to pickle a standard LDA or other model object, this has worked fine. When I try to pickle this RFECV object, however, I get the following error:
Traceback (most recent call last):
File "/rds/general/user/***/home/data_analysis/analysis_report_generator.py", line 56, in <module>
pickle.dump(key, file)
TypeError: cannot pickle 'generator' object
In trying to address this, I have spent a long time trying to RTFM, google extensively and dug as deep as I dared into Stack without any luck.
I would be grateful if anyone could identify what I could do to pickle this model successfully for future extraction and re-use, or whether there is an equivalent way to save the parameters of the feature-extracted LDA model for rapid analysis of new data.
This occurs because LeaveOneGroupOut().split(X, y, groups=groups) returns a generator object—which cannot be pickled for reasons previously discussed.
To pickle it, you'd have to cast it to a finite number of splits with something like the following, or replace it with StratifiedKFold which does not have this issue.
rfecv = RFECV(
# ...
cv=list(LeaveOneGroupOut().split(X, y, groups=groups)),
)
MRE putting all the pieces together (here I've assigned groups randomly):
import pickle
from sklearn.datasets import make_classification
from sklearn.feature_selection import RFECV
from sklearn.discriminant_analysis import LinearDiscriminantAnalysis
from sklearn.model_selection import LeaveOneGroupOut
from numpy.random import default_rng
rng = default_rng()
X, y = make_classification(n_samples=500, n_features=15, n_informative=3, n_redundant=2, n_repeated=0, n_classes=8, n_clusters_per_class=1, class_sep=0.8, random_state=0)
groups = rng.integers(0, 5, size=len(y))
rfecv = RFECV(
estimator=LinearDiscriminantAnalysis(),
step=1,
cv=list(LeaveOneGroupOut().split(X, y, groups=groups)),
scoring="accuracy",
min_features_to_select=1,
n_jobs=4,
)
rfecv.fit(X, y)
with open("rfecv_lda.pickle", "wb") as fh:
pickle.dump(rfecv, fh)
Side note: A better method would be to avoid pickling the RFECV in the first place. rfecv.transform(X) masks feature columns that the search deemed unnecessary. If you have >4500 features and only need 10, you might want to simplify your data pipeline elsewhere.
I am trying to use the GridSearchCV to evaluate different models with different parameter sets. Logistic Regression and k-NN do not cause a problem but Decision Tree, Random Forest and some of the other types of classifiers do not work when n_jobs=-1.
for classifier, paramSet, classifierName in zip(list_classifiers, list_paramSets, list_clfNames):
gs = GridSearchCV(
estimator = classifier,
param_grid = paramSet,
cv = 10,
n_jobs = -1
)
gs.fit(X_train, y_train)
plot_learning_curve(gs, "Learning Curve", X_train, y_train, n_jobs=-1)
I am working on Google Colab and either of the solution proposals below did not solve my problem.
from sklearn.externals.joblib import parallel_backend
clf = GridSearchCV(...)
with parallel_backend('threading',n_jobs = -1):
clf.fit(x_train, y_train)
if __name__ == "__main__":
import multiprocessing as mp; mp.set_start_method('forkserver', force=True) // 'spawn' has also failed
/// Gridsearch and fit here ///
Here is my source code : https://github.com/bahadirbasaran/pulsarDetection/blob/master/main.ipynb
The error log:
Any help will be appreciated!
you shouldn't need to use any additional calls to create threads. Your first code snippet should work. If you call:
n_cpus = multiprocessing.cpu_count()
what does it return?
If you use that and then pass n_jobs=n_cpus or n_jobs=n_cpus-1 (if you don't want your computer pegged), see if that works.
From the sklearn logistic regression documentation:
n_jobs int, default=None Number of CPU cores used when parallelizing
over classes if multi_class=’ovr’”. This parameter is ignored when the
solver is set to ‘liblinear’ regardless of whether ‘multi_class’ is
specified or not.
So it may be that the models that are working are actually not using more than 1 CPU.
Hope some of these ideas help.
I've read through a few pages but need someone to help explain how to make this work for.
I'm using TPOTRegressor() to get an optimal pipeline, but from there I would love to be able to plot the .feature_importances_ of the pipeline it returns:
best_model = TPOTRegressor(cv=folds, generations=2, population_size=10, verbosity=2, random_state=seed) #memory='./PipelineCache', memory='auto',
best_model.fit(X_train, Y_train)
feature_importance = best_model.fitted_pipeline_.steps[-1][1].feature_importances_
I saw this kind of set up from a now closed issue on Github, but currently I get the error:
Best pipeline: LassoLarsCV(input_matrix, normalize=True)
Traceback (most recent call last):
File "main2.py", line 313, in <module>
feature_importance = best_model.fitted_pipeline_.steps[-1][1].feature_importances_
AttributeError: 'LassoLarsCV' object has no attribute 'feature_importances_'
So, how would I get these feature importances from the optimal pipeline, regardless of which one it lands on? Or is this even possible? Or does someone have a better way of going about trying to plot feature importances from a TPOT run?
Thanks!
UPDATE
For clarification, what is meant by Feature Importance is the determination of how important each feature (X's) of your dataset is in determining the predicted (Y) label, using a barchart to plot each feature's level of importance in coming up with its predictions. TPOT doesn't do this directly (I don't think), so I was thinking I'd grab the pipeline it came up with, re-run it on the training data, and then somehow use a .feature_imprtances_ to then be able to graph the feature importances, as these are all sklearn regressor's I'm using?
Very nice question.
You just need to fit again the best model in order to get the feature importances.
best_model.fit(X_train, Y_train)
exctracted_best_model = best_model.fitted_pipeline_.steps[-1][1]
The last line returns the best model based on the CV.
You can then use:
exctracted_best_model.fit(X_train, Y_train)
to train it. If the best model has the desired attribure, then you will be able to access it after exctracted_best_model.fit(X_train, Y_train)
More details (in my comments) and a Toy example:
from tpot import TPOTRegressor
from sklearn.datasets import load_digits
from sklearn.model_selection import train_test_split
import matplotlib.pyplot as plt
digits = load_digits()
X_train, X_test, y_train, y_test = train_test_split(digits.data, digits.target,
train_size=0.75, test_size=0.25)
# reduce training features for time sake
X_train = X_train[:100,:]
y_train = y_train[:100]
# Fit the TPOT pipeline
tpot = TPOTRegressor(cv=2, generations=5, population_size=50, verbosity=2)
# Fit the pipeline
tpot.fit(X_train, y_train)
# Get the best model
exctracted_best_model = tpot.fitted_pipeline_.steps[-1][1]
print(exctracted_best_model)
AdaBoostRegressor(base_estimator=None, learning_rate=0.5, loss='square',
n_estimators=100, random_state=None)
# Train the `exctracted_best_model` using THE WHOLE DATASET.
# You need to use the whole dataset in order to get feature importance for all the
# features in your dataset.
exctracted_best_model.fit(X, y) # X,y IMPORTNANT
# Access it's features
exctracted_best_model.feature_importances_
# Plot them using barplot
# Here I fitted the model on X_train, y_train and not on the whole dataset for TIME SAKE
# So I got importances only for the features in `X_train`
# If you use `exctracted_best_model.fit(X, y)` we will have importances for all the features !!!
positions= range(exctracted_best_model.feature_importances_.shape[0])
plt.bar(positions, exctracted_best_model.feature_importances_)
plt.show()
IMPORTNANT NOTE: *In the above example, the best model based on the pipeline was AdaBoostRegressor(base_estimator=None, learning_rate=0.5, loss='square'). This model indeed has the attribute feature_importances_.
In the case where the best model does not have an attribute feature_importances_, the exact same code will not work. You will need to read the docs and see the attributes of each returned best model. E.g. if the best model was LassoCV then you would use the coef_ attribute.
Output:
If I fit a LassoCV using sklearn, I can do
model_LassoCV = LassoCV(cv=3,random_state=2018).fit(X, y)
and get reproducible splits for the cross-validation.
However, if I do
model_LassoCV = LassoLarsCV(cv=3,random_state=2018).fit(X, y)
according to the documentation, LassoLarsCV does not have a random_state.
So how to get reproducible results with LassoLarsCV ?
An object to be used as a cross-validation generator can be passed as cv param. So you can pass your own CV iterator to control the train test generation.
Something like:
from sklearn.model_selection import KFold
kfold = KFold(n_splits=3, random_state=2018)
model_LassoCV = LassoLarsCV(cv=kfold)
model_LassoCV.fit(X, y)
Now you need to make sure that randomness is not present anywhere else in the algorithm and if it does not, then this will be duplicateable code.
I am implementing a pipeline using important features selection and then using the same features to train my random forest classifier. Following is my code.
m = ExtraTreesClassifier(n_estimators = 10)
m.fit(train_cv_x,train_cv_y)
sel = SelectFromModel(m, prefit=True)
X_new = sel.transform(train_cv_x)
clf = RandomForestClassifier(5000)
model = Pipeline([('m', m),('sel', sel),('X_new', X_new),('clf', clf),])
params = {'clf__max_features': ['auto', 'sqrt', 'log2']}
gs = GridSearchCV(model, params)
gs.fit(train_cv_x,train_cv_y)
So X_new are the new features selected via SelectFromModel and sel.transform. Then I want to train my RF using the new features selected.
I am getting the following error:
All intermediate steps should be transformers and implement fit and transform,
ExtraTreesClassifier ...
Like the traceback says: each step in your pipeline needs to have a fit() and transform() method (except the last, which just needs fit(). This is because a pipeline chains together transformations of your data at each step.
sel.transform(train_cv_x) is not an estimator and doesn't meet this criterion.
In fact, it looks like based on what you're trying to do, you can leave this step out. Internally, ('sel', sel) already does this transformation--that's why it's included in the pipeline.
Secondly, ExtraTreesClassifier (the first step in your pipeline), doesn't have a transform() method, either. You can verify that here, in the class docstring. Supervised learning models aren't made for transforming data; they're made for fitting on it and predicting based off that.
What type of classes are able to do transformations?
Ones that scale your data. See preprocessing and normalization.
Ones that transform your data (in some other way than the above). Decomposition and other unsupervised learning methods do this.
Without reading between the lines too much about what you're trying to do here, this would work for you:
First split x and y using train_test_split. The test dataset produced by this is held out for final testing, and the train dataset within GridSearchCV's cross-validation will be further broken out into smaller train and validation sets.
Build a pipeline that satisfies what your traceback is trying to tell you.
Pass that pipeline to GridSearchCV, .fit() that grid search on X_train/y_train, then .score() it on X_test/y_test.
Roughly, that would look like this:
from sklearn.model_selection import train_test_split
X_train, X_test, y_train, y_test = train_test_split(
X, y, test_size=0.33, random_state=444)
sel = SelectFromModel(ExtraTreesClassifier(n_estimators=10, random_state=444),
threshold='mean')
clf = RandomForestClassifier(n_estimators=5000, random_state=444)
model = Pipeline([('sel', sel), ('clf', clf)])
params = {'clf__max_features': ['auto', 'sqrt', 'log2']}
gs = GridSearchCV(model, params)
gs.fit(X_train, y_train)
# How well do your hyperparameter optimizations generalize
# to unseen test data?
gs.score(X_test, y_test)
Two examples for further reading:
Pipelining: chaining a PCA and a logistic regression
Sample pipeline for text feature extraction and evaluation
You may also get the error in the title if you were oversampling or undersampling your data using imblearn module and fitting it into a model in a pipeline. If you got this message, then it means you have imported sklearn.pipeline.Pipeline. Import imblearn.pipeline.Pipeline instead and you're golden. For example,
from imblearn.pipeline import Pipeline
pipe = Pipeline([('o', SMOTE()), ('svc', SVC())])
The problem is, if you're sampling your data, the intermediate steps obviously need to sample the data as well, which is not supported by sklearn's Pipeline but is supported by imblearn's Pipeline.
This has happened because the first transformer you pass in a pipeline must have both a fit and transform method.
m = ExtraTreesClassifier(n_estimators = 10)
m.fit(train_cv_x,train_cv_y)
Here m does not have a transform method as ExtraTreesClassifier model does not have a transform method and so fails in the pipeline.
So change the order of the pipeline and add another transformer for the first step in the pipeline