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After I make an MDS object mds, and fit it with mds.fit(X), I thought I would be able to project new points using mds.transform(X_new). I think that's the API in other manifold classes. But there is only fit_transform. I guess from the description that fit_transform does some more fitting, and I don't want to change the projection which has already been calculated!

EDIT: wait, maybe this doesn't make sense. I did some more reading. If I now understand right, the MDS algorithm is an iterative one that "just moves points around" until the stress value gets low -- and doesn't actually allow for projection.

But still, I'm a bit confused about what fit_transform does. The docs say "Fit the data from X, and returns the embedded coordinates". How is that different from just fitting and taking mds.embedding_?

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For a scikit-learn transformer, estimator.fit_transform(X) is always equivalent to estimator.fit(X).transform(X), but usually implemented more efficiently. In this case, it is indeed the same as estimator.fit(X).embedding_; it's there because scikit-learn classes such as Pipeline may call it.

It seems there's no transform method on any of the manifold learners, perhaps by mistake; I just opened an issue about this.

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Thanks larsmans. I think I read your reply before your edit. I'll join in on Github. –  jmmcd Feb 24 '14 at 20:21

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