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Builds a logistic regression Estimator for binary classification.
tf.contrib.learn.LogisticRegressor(
model_fn, thresholds=None, model_dir=None, config=None,
feature_engineering_fn=None
)
THIS CLASS IS DEPRECATED. See contrib/learn/README.md for general migration instructions.
This method provides a basic Estimator with some additional metrics for custom binary classification models, including AUC, precision/recall and accuracy.
Example:
# See tf.contrib.learn.Estimator(...) for details on model_fn structure
def my_model_fn(...):
pass
estimator = LogisticRegressor(model_fn=my_model_fn)
# Input builders
def input_fn_train:
pass
estimator.fit(input_fn=input_fn_train)
estimator.predict(x=x)
Args | |
---|---|
model_fn
|
Model function with the signature:
(features, labels, mode) -> (predictions, loss, train_op) .
Expects the returned predictions to be probabilities in [0.0, 1.0].
|
thresholds
|
List of floating point thresholds to use for accuracy,
precision, and recall metrics. If None , defaults to [0.5] .
|
model_dir
|
Directory to save model parameters, graphs, etc. This can also be used to load checkpoints from the directory into a estimator to continue training a previously saved model. |
config
|
A RunConfig configuration object. |
feature_engineering_fn
|
Feature engineering function. Takes features and
labels which are the output of input_fn and
returns features and labels which will be fed
into the model.
|
Returns | |
---|---|
An Estimator instance.
|