I have a dataset which has a DateTime index and I'm using PCA from sklearn to reduce the number of dimensions.

The following question bugs me - will PCA keep the order of the points in my series so that I can reuse the index from the original dataframe?

df = pd.DataFrame(...)
df2 = pca.fit_transform(df)
df2.index = df.index

Moreover, is there a better (safer) approach than doing this?

  • Maybe reindexing would help - pca.fit_transform(df).reindex(index=df.index)? Commented Feb 1, 2017 at 13:53
  • And is there any difference in what I am doing? Commented Feb 1, 2017 at 14:00
  • Not likely though. This would get rid of the unnecessary re-assignment of index axis. Commented Feb 1, 2017 at 14:04

2 Answers 2


Though the indices are removed by PCA but the underlying order of rows remains(see implementation for the transform function of PCA*). So it is safe to have df2.index = df1.index

*fit_transform is same as fit and then transform. None of them reorder the rows.


Moreover, is there a better (safer) approach than doing this?

What you do is safe. But a cleaner way to do this is to wrap the output in either a DataFrame or Series and provide the original index. In your example:

df = pd.DataFrame(...)
df2 = pd.DataFrame(pca.fit_transform(df), index=df.index)

This is very useful when dealing with prediction vectors (np.ndarrays) out of a sci-kit learn model:

y_pred = pd.Series(clf.predict(X_train), index=X_train.index)

This is important when you have a more complicated index, like a MultiIndex.

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