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FIX fix some typos #759

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Jan 19, 2024
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Original file line number Diff line number Diff line change
Expand Up @@ -350,10 +350,10 @@ def plot_decision_boundary(model, title=None):

# %% [markdown]
#
# The polynomial kernel approach would be interesting in cases were the
# The polynomial kernel approach would be interesting in cases where the
# original feature space is already of high dimension: in these cases,
# **computing the complete polynomial expansion** with `PolynomialFeatures`
# could be **intractable**, while Nyström method can control the output
# could be **intractable**, while the Nyström method can control the output
# dimensionality with the `n_components` parameter.
#
# Let's now explore the use of a radial basis function (RBF) kernel:
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