Nearest Neighbors Classification#

This example shows how to use KNeighborsClassifier. We train such a classifier on the iris dataset and observe the difference of the decision boundary obtained with regards to the parameter weights.

Load the data#

In this example, we use the iris dataset. We split the data into a train and test dataset.

from sklearn.datasets import load_iris
from sklearn.model_selection import train_test_split

iris = load_iris(as_frame=True)
X = iris.data[["sepal length (cm)", "sepal width (cm)"]]
y = iris.target
X_train, X_test, y_train, y_test = train_test_split(X, y, stratify=y, random_state=0)

K-nearest neighbors classifier#

We want to use a k-nearest neighbors classifier considering a neighborhood of 11 data points. Since our k-nearest neighbors model uses euclidean distance to find the nearest neighbors, it is therefore important to scale the data beforehand. Refer to the example entitled Importance of feature Scaling for more detailed information.

Thus, we use a Pipeline to chain a scaler before to use our classifier.

from sklearn.neighbors import KNeighborsClassifier
from sklearn.pipeline import Pipeline
from sklearn.preprocessing import StandardScaler

clf = Pipeline(
    steps=[("scaler", StandardScaler()), ("knn", KNeighborsClassifier(n_neighbors=11))]
)

Decision boundary#

Now, we fit two classifiers with different values of the parameter weights. We plot the decision boundary of each classifier as well as the original dataset to observe the difference.

import matplotlib.pyplot as plt

from sklearn.inspection import DecisionBoundaryDisplay

_, axs = plt.subplots(ncols=2, figsize=(12, 5))

for ax, weights in zip(axs, ("uniform", "distance")):
    clf.set_params(knn__weights=weights).fit(X_train, y_train)
    disp = DecisionBoundaryDisplay.from_estimator(
        clf,
        X_test,
        response_method="predict",
        plot_method="pcolormesh",
        xlabel=iris.feature_names[0],
        ylabel=iris.feature_names[1],
        shading="auto",
        alpha=0.5,
        ax=ax,
    )
    scatter = disp.ax_.scatter(X.iloc[:, 0], X.iloc[:, 1], c=y, edgecolors="k")
    disp.ax_.legend(
        scatter.legend_elements()[0],
        iris.target_names,
        loc="lower left",
        title="Classes",
    )
    _ = disp.ax_.set_title(
        f"3-Class classification\n(k={clf[-1].n_neighbors}, weights={weights!r})"
    )

plt.show()
3-Class classification (k=11, weights='uniform'), 3-Class classification (k=11, weights='distance')

Conclusion#

We observe that the parameter weights has an impact on the decision boundary. When weights="unifom" all nearest neighbors will have the same impact on the decision. Whereas when weights="distance" the weight given to each neighbor is proportional to the inverse of the distance from that neighbor to the query point.

In some cases, taking the distance into account might improve the model.

Total running time of the script: (0 minutes 0.528 seconds)

Related examples

Nearest Neighbors regression

Nearest Neighbors regression

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Caching nearest neighbors

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Plot the decision surface of decision trees trained on the iris dataset

Plot the decision surface of decision trees trained on the iris dataset

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