I'm wondering how best to define parameters for datamapper transforms in a pipeline using pandas-sklearn.
Here is a reproducible example notebook using titanic data.
I'm setting it up as:
# use pandas sklearn to do some preprocessing
full_mapper = DataFrameMapper([
('Name', Pipeline([ ('name_vect', CountVectorizer()) , ('name_tfidf', TfidfTransformer()) ]) ),
('Ticket', Pipeline([ ('ticket_vect', CountVectorizer()) , ('ticket_tfidf', TfidfTransformer()) ]) ),
('Sex', LabelBinarizer()),
(['Age', 'Fare'], None), # i tried to use Impute() but got an error
])
I'd like to also cross validate the params in the CountVectorizer() and TfidfTransformer() that i'm using on the 'Name' and 'Ticket' fields.
However in defining my pipeline as:
# build full pipeline
full_pipeline = Pipeline([
('mapper',full_mapper),
('clf', SGDClassifier(n_iter=15, warm_start=True))
])
And then my params as:
# determine full param search space (need to get the params for the mapper parts in here somehow)
full_params = {'clf__alpha': [1e-2,1e-3,1e-4],
'clf__loss':['modified_huber','hinge'],
'clf__penalty':['l2','l1']}
I'm not sure how to include in the above options to go to 'name_vect', 'name_tfidf' etc.
I could not really find an example similar to what i'm trying to do here in the pandas-sklearn docs.
Note: just using the titanic data here for reproducibility. Really just trying to get the plumbing working here.
UPDATE (trying to adapt approach from here.)
If i do:
# make pipeline for individual variables
name_to_tfidf = Pipeline([ ('name_vect', CountVectorizer()) , ('name_tfidf', TfidfTransformer()) ])
ticket_to_tfidf = Pipeline([ ('ticket_vect', CountVectorizer()) , ('ticket_tfidf', TfidfTransformer()) ])
# data frame mapper
full_mapper = DataFrameMapper([
('Name', name_to_tfidf ),
('Ticket', ticket_to_tfidf ),
('Sex', LabelBinarizer()),
(['Age', 'Fare'], None), # i tried to use Impute() but got an error
])
# build full pipeline
full_pipeline = Pipeline([
('mapper',full_mapper),
('clf', SGDClassifier(n_iter=15, warm_start=True))
])
# determine full param search space
full_params = {'clf__alpha': [1e-2,1e-3,1e-4],
'clf__loss':['modified_huber','hinge'],
'clf__penalty':['l2','l1'],
# now set the params for the datamapper part of the pipeline
'mapper__features':[[
('Name',deepcopy(name_to_tfidf).set_params(name_vect__analyzer = 'char_wb')), # How can i set up a list for searching in here
('Ticket',deepcopy(ticket_to_tfidf).set_params(ticket_vect__analyzer = 'char')) # How can i set up a list for searching in here
]]
}
# set up grid search
gs_clf = GridSearchCV(full_pipeline, full_params, n_jobs=-1)
# do the fit
gs_clf.fit(df,df['Survived'])
print("Best score: %0.3f" % gs_clf.best_score_)
print("Best parameters set:")
best_parameters = gs_clf.best_estimator_.get_params()
for param_name in sorted(full_params.keys()):
print("\t%s: %r" % (param_name, best_parameters[param_name]))
Then i get:
> Best score: 0.746 Best parameters set: clf__alpha: 0.01 clf__loss:
> 'modified_huber' clf__penalty: 'l1' mapper__features: [('Name',
> Pipeline(memory=None,
> steps=[('name_vect', CountVectorizer(analyzer='char_wb', binary=False, decode_error='strict',
> dtype=<class 'numpy.int64'>, encoding='utf-8', input='content',
> lowercase=True, max_df=1.0, max_features=None, min_df=1,
> ngram_range=(1, 1), preprocessor=None, stop_words=None,
> strip_accents=None, token_pattern='(?u)\\b\\w\\w+\\b',
> tokenizer=None, vocabulary=None)), ('name_tfidf', TfidfTransformer(norm='l2', smooth_idf=True, sublinear_tf=False,
> use_idf=True))])), ('Ticket', Pipeline(memory=None,
> steps=[('ticket_vect', CountVectorizer(analyzer='char', binary=False, decode_error='strict',
> dtype=<class 'numpy.int64'>, encoding='utf-8', input='content',
> lowercase=True, max_df=1.0, max_features=None, min_df=1,
> ngram_range=(1, 1), preprocessor=None, stop_words=None,
> strip_accents=None, token_pattern='(?u)\\b\\w\\w+\\b',
> tokenizer=None, vocabulary=None)), ('ticket_tfidf', TfidfTransformer(norm='l2', smooth_idf=True, sublinear_tf=False,
> use_idf=True))]))]
So it looks like i am able to set the params here. However if i pass a list in like:
# determine full param search space (need to get the params for the mapper parts in here somehow)
full_params = {'clf__alpha': [1e-2,1e-3,1e-4],
'clf__loss':['modified_huber','hinge'],
'clf__penalty':['l2','l1'],
# now set the params for the datamapper part of the pipeline
'mapper__features':[[
('Name',deepcopy(name_to_tfidf).set_params(name_vect__analyzer = ['char', 'char_wb'])),
('Ticket',deepcopy(ticket_to_tfidf).set_params(ticket_vect__analyzer = ['char', 'char_wb']))
]]
}
I get error such as:
C:\Users\Andrew\Miniconda3\lib\site-packages\sklearn\feature_extraction\text.py in build_analyzer(self=CountVectorizer(analyzer=['char', 'char_wb'], bi...)\\b\\w\\w+\\b', tokenizer=None, vocabulary=None))
265 return lambda doc: self._word_ngrams(
266 tokenize(preprocess(self.decode(doc))), stop_words)
267
268 else:
269 raise ValueError('%s is not a valid tokenization scheme/analyzer' %
--> 270 self.analyzer)
self.analyzer = ['char', 'char_wb']
271
272 def _validate_vocabulary(self):
273 vocabulary = self.vocabulary
274 if vocabulary is not None:
ValueError: ['char', 'char_wb'] is not a valid tokenization scheme/analyzer
So unsure how to set the params of DataFrameMapper transfomations to options for the CV to search over.
Surely there must be a way. Agree though at this stage might be better to go pandas > numpy > FeatureUnion...