Polynomial and Spline interpolation#
This example demonstrates how to approximate a function with polynomials up to
degree degree
by using ridge regression. We show two different ways given
n_samples
of 1d points x_i
:
Polynomialfeatures
generates all monomials up todegree
. This gives us the so called Vandermonde matrix withn_samples
rows anddegree + 1
columns:[[1, x_0, x_0 ** 2, x_0 ** 3, ..., x_0 ** degree], [1, x_1, x_1 ** 2, x_1 ** 3, ..., x_1 ** degree], ...]
Intuitively, this matrix can be interpreted as a matrix of pseudo features (the points raised to some power). The matrix is akin to (but different from) the matrix induced by a polynomial kernel.
SplineTransformer
generates B-spline basis functions. A basis function of a B-spline is a piece-wise polynomial function of degreedegree
that is non-zero only betweendegree+1
consecutive knots. Givenn_knots
number of knots, this results in matrix ofn_samples
rows andn_knots + degree - 1
columns:[[basis_1(x_0), basis_2(x_0), ...], [basis_1(x_1), basis_2(x_1), ...], ...]
This example shows that these two transformers are well suited to model non-linear effects with a linear model, using a pipeline to add non-linear features. Kernel methods extend this idea and can induce very high (even infinite) dimensional feature spaces.
# Author: Mathieu Blondel
# Jake Vanderplas
# Christian Lorentzen
# Malte Londschien
# License: BSD 3 clause
import matplotlib.pyplot as plt
import numpy as np
from sklearn.linear_model import Ridge
from sklearn.pipeline import make_pipeline
from sklearn.preprocessing import Polynomialfeatures, SplineTransformer
We start by defining a function that we intend to approximate and prepare plotting it.
def f(x):
"""function to be approximated by polynomial interpolation."""
return x * np.sin(x)
# whole range we want to plot
x_plot = np.linspace(-1, 11, 100)
To make it interesting, we only give a small subset of points to train on.
x_train = np.linspace(0, 10, 100)
rng = np.random.RandomState(0)
x_train = np.sort(rng.choice(x_train, size=20, replace=false))
y_train = f(x_train)
# create 2D-array versions of these arrays to feed to transformers
X_train = x_train[:, np.newaxis]
X_plot = x_plot[:, np.newaxis]
Now we are ready to create polynomial features and splines, fit on the training points and show how well they interpolate.
# plot function
lw = 2
fig, ax = plt.subplots()
ax.set_prop_cycle(
color=["black", "teal", "yellowgreen", "gold", "darkorange", "tomato"]
)
ax.plot(x_plot, f(x_plot), linewidth=lw, label="ground truth")
# plot training points
ax.scatter(x_train, y_train, label="training points")
# polynomial features
for degree in [3, 4, 5]:
model = make_pipeline(Polynomialfeatures(degree), Ridge(alpha=1e-3))
model.fit(X_train, y_train)
y_plot = model.predict(X_plot)
ax.plot(x_plot, y_plot, label=f"degree {degree}")
# B-spline with 4 + 3 - 1 = 6 basis functions
model = make_pipeline(SplineTransformer(n_knots=4, degree=3), Ridge(alpha=1e-3))
model.fit(X_train, y_train)
y_plot = model.predict(X_plot)
ax.plot(x_plot, y_plot, label="B-spline")
ax.legend(loc="lower center")
ax.set_ylim(-20, 10)
plt.show()
This shows nicely that higher degree polynomials can fit the data better. But
at the same time, too high powers can show unwanted oscillatory behaviour
and are particularly dangerous for extrapolation beyond the range of fitted
data. This is an advantage of B-splines. They usually fit the data as well as
polynomials and show very nice and smooth behaviour. They have also good
options to control the extrapolation, which defaults to continue with a
constant. Note that most often, you would rather increase the number of knots
but keep degree=3
.
In order to give more insights into the generated feature bases, we plot all columns of both transformers separately.
fig, axes = plt.subplots(ncols=2, figsize=(16, 5))
pft = Polynomialfeatures(degree=3).fit(X_train)
axes[0].plot(x_plot, pft.transform(X_plot))
axes[0].legend(axes[0].lines, [f"degree {n}" for n in range(4)])
axes[0].set_title("Polynomialfeatures")
splt = SplineTransformer(n_knots=4, degree=3).fit(X_train)
axes[1].plot(x_plot, splt.transform(X_plot))
axes[1].legend(axes[1].lines, [f"spline {n}" for n in range(6)])
axes[1].set_title("SplineTransformer")
# plot knots of spline
knots = splt.bsplines_[0].t
axes[1].vlines(knots[3:-3], ymin=0, ymax=0.8, linestyles="dashed")
plt.show()
In the left plot, we recognize the lines corresponding to simple monomials
from x**0
to x**3
. In the right figure, we see the six B-spline
basis functions of degree=3
and also the four knot positions that were
chosen during fit
. Note that there are degree
number of additional
knots each to the left and to the right of the fitted interval. These are
there for technical reasons, so we refrain from showing them. Every basis
function has local support and is continued as a constant beyond the fitted
range. This extrapolating behaviour could be changed by the argument
extrapolation
.
Periodic Splines#
In the previous example we saw the limitations of polynomials and splines for extrapolation beyond the range of the training observations. In some settings, e.g. with seasonal effects, we expect a periodic continuation of the underlying signal. Such effects can be modelled using periodic splines, which have equal function value and equal derivatives at the first and last knot. In the following case we show how periodic splines provide a better fit both within and outside of the range of training data given the additional information of periodicity. The splines period is the distance between the first and last knot, which we specify manually.
Periodic splines can also be useful for naturally periodic features (such as
day of the year), as the smoothness at the boundary knots prevents a jump in
the transformed values (e.g. from Dec 31st to Jan 1st). for such naturally
periodic features or more generally features where the period is known, it is
advised to explicitly pass this information to the SplineTransformer
by
setting the knots manually.
def g(x):
"""function to be approximated by periodic spline interpolation."""
return np.sin(x) - 0.7 * np.cos(x * 3)
y_train = g(x_train)
# Extend the test data into the future:
x_plot_ext = np.linspace(-1, 21, 200)
X_plot_ext = x_plot_ext[:, np.newaxis]
lw = 2
fig, ax = plt.subplots()
ax.set_prop_cycle(color=["black", "tomato", "teal"])
ax.plot(x_plot_ext, g(x_plot_ext), linewidth=lw, label="ground truth")
ax.scatter(x_train, y_train, label="training points")
for transformer, label in [
(SplineTransformer(degree=3, n_knots=10), "spline"),
(
SplineTransformer(
degree=3,
knots=np.linspace(0, 2 * np.pi, 10)[:, None],
extrapolation="periodic",
),
"periodic spline",
),
]:
model = make_pipeline(transformer, Ridge(alpha=1e-3))
model.fit(X_train, y_train)
y_plot_ext = model.predict(X_plot_ext)
ax.plot(x_plot_ext, y_plot_ext, label=label)
ax.legend()
fig.show()
fig, ax = plt.subplots()
knots = np.linspace(0, 2 * np.pi, 4)
splt = SplineTransformer(knots=knots[:, None], degree=3, extrapolation="periodic").fit(
X_train
)
ax.plot(x_plot_ext, splt.transform(X_plot_ext))
ax.legend(ax.lines, [f"spline {n}" for n in range(3)])
plt.show()
Total running time of the script: (0 minutes 0.502 seconds)
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Comparing Linear Bayesian Regressors
Time-related feature engineering
Release Highlights for scikit-learn 1.0