# Fitting data vs. transforming data in scikit-learn

In scikit-learn, all estimators have a `fit()` method, and depending on whether they are supervised or unsupervised, they also have a `predict()` or `transform()` method.

I am in the process of writing a transformer for an unsupervised learning task and was wondering if there is a rule of thumb where to put which kind of learning logic. The official documentation is not very helpful in this regard:

`fit_transform(X, y=None, **fit_params)`
Fit to data, then transform it.

In this context, what is meant by both fitting data and transforming data?

• Is it true that "depending on whether they are supervised or unsupervised, they also have a predict() or transform() method". Is that stated in docs somewhere? Seems that most models have both methods. Jul 19, 2017 at 23:20

Fitting finds the internal parameters of a model that will be used to transform data. Transforming applies the parameters to data. You may fit a model to one set of data, and then transform it on a completely different set.

For example, you fit a linear model to data to get a slope and intercept. Then you use those parameters to transform (i.e., map) new or existing values of `x` to `y`.

`fit_transform` is just doing both steps to the same data.

A scikit example: You fit data to find the principal components. Then you transform your data to see how it maps onto these components:

``````from sklearn.decomposition import PCA

pca = PCA(n_components=2)

X = [[1,2],[2,4],[1,3]]

pca.fit(X)

# This is the model to map data
pca.components_

array([[ 0.47185791,  0.88167459],
[-0.88167459,  0.47185791]], dtype=float32)

# Now we actually map the data
pca.transform(X)

array([[-1.03896057, -0.17796634],
[ 1.19624651, -0.11592512],
[-0.15728599,  0.29389156]])

# Or we can do both "at once"
pca.fit_transform(X)

array([[-1.03896058, -0.1779664 ],
[ 1.19624662, -0.11592512],
[-0.15728603,  0.29389152]], dtype=float32)
``````
• Wait, then what's the difference between transform and predict? Apr 8, 2017 at 3:01
• Let's use `PLSRegression` as an example. It has both `transform` and `predict` methods. `predict(X)` applies the learned model to `X`, and returns `y_pred`. `transform(X)` applies dimensionality reduction to `X`, and returns `X_reduced`. `transform(X, y)` returns both `X_reduced` and `y_pred` Apr 10, 2017 at 14:47
• Thanks! I couldn't find what you just plainly stated in any braod scikit-learn documentation. Apr 10, 2017 at 16:37
• I agree, the documentation is less than clear. Glad it helped. Apr 11, 2017 at 12:07
• So does that mean you can use transform() to predict?
– Andy
Sep 11, 2017 at 4:07

As other answers explain it, `fit` does not need to be doing anything (except from returning the transformer object). It is there so that all transformers have the same interface and work nicely with stuff like pipelines.
Of course some transformers need a `fit` method (think tf-idf, PCA...) that actually does things.
The `transform` method needs to return the transformed data.

`fit_transform` is a convenience method that chains the fit and transform operations. You can get it for free (!) by deriving your custom transformer class from `TransformerMixin` and implementing `fit` and `transform`.

In this case, calling the `fit` method does not do anything. As you can see in this example, not all transformers need to actually do something with `fit` or `transform` methods. My guess is that every class in scikit-learn should implement the fit, transform and/or predict in order for it to be consistent with the rest of the package. But I guess this is indeed quite an overkill.