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Our package scikit-activeml is a Python library for active learning on top of SciPy and scikit-learn.

Project description

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Machine learning applications often need large amounts of training data to perform well. Whereas unlabeled data can be easily gathered, the labeling process is difficult, time-consuming, or expensive in most applications. Active learning can help solve this problem by querying labels for those data samples that will improve the performance the most. Thereby, the goal is that the learning algorithm performs sufficiently well with fewer labels

With this goal in mind, scikit-activeml has been developed as a Python module for active learning on top of scikit-learn. The project was initiated in 2020 by the Intelligent Embedded Systems Group at the University of Kassel and is distributed under the 3-Clause BSD licence.

Overview

Our philosophy is to extend the sklearn eco-system with the most relevant query strategies for active learning and to implement tools for working with partially unlabeled data. An overview of our repository’s structure is given in the image below. Each node represents a class or interface. The arrows illustrate the inheritance hierarchy among them. The functionality of a dashed node is not yet available in our library.

https://raw.githubusercontent.com/scikit-activeml/scikit-activeml/master/docs/logos/scikit-activeml-structure.png

In our package skactiveml, there three major components, i.e., SkactivemlClassifier, QueryStrategy, and the not yet supported SkactivemlRegressor. The classifier and regressor modules are necessary to deal with partially unlabeled data and to implement active-learning specific estimators. This way, an active learning cycle can be easily implemented to start with zero initial labels. Regarding the active learning query strategies, we currently differ between the pool-based (a large pool of unlabeled samples is available) and stream-based (unlabeled samples arrive sequentially, i.e., as a stream) paradigm. On top of both paradigms, we also distinguish the single- and multi-annotator setting. In the latter setting, multiple error-prone annotators are queried to provide labels. As a result, an active learning query strategy not only decides which samples but also which annotators should be queried.

User Installation

The easiest way of installing scikit-activeml is using pip:

pip install -U scikit-activeml

Examples

In the following, there are two simple examples illustrating the straightforwardness of implementing active learning cycles with our Python package skactiveml. For more in-depth examples, we refer to our tutorial section offering a broad overview of different use-cases:

Pool-based Active Learning

The following code implements an active learning cycle with 20 iterations using a Gaussian process classifier and uncertainty sampling. To use other classifiers, you can simply wrap classifiers from sklearn or use classifiers provided by skactiveml. Note that the main difficulty using active learning with sklearn is the ability to handle unlabeled data, which we denote as a specific value (MISSING_LABEL) in the label vector y. More query strategies can be found in the documentation.

import numpy as np
import matplotlib.pyplot as plt
from sklearn.gaussian_process import GaussianProcessClassifier
from sklearn.datasets import make_blobs
from skactiveml.pool import UncertaintySampling
from skactiveml.utils import unlabeled_indices, MISSING_LABEL
from skactiveml.classifier import SklearnClassifier
from skactiveml.visualization import plot_decision_boundary, plot_utilities

# Generate data set.
X, y_true = make_blobs(n_samples=200, centers=4, random_state=0)
y = np.full(shape=y_true.shape, fill_value=MISSING_LABEL)

# GaussianProcessClassifier needs initial training data otherwise a warning will
# be raised by SklearnClassifier. Therefore, the first 10 instances are used as
# training data.
y[:10] = y_true[:10]

# Create classifier and query strategy.
clf = SklearnClassifier(GaussianProcessClassifier(random_state=0),classes=np.unique(y_true), random_state=0)
qs = UncertaintySampling(method='entropy')

# Execute active learning cycle.
n_cycles = 20
for c in range(n_cycles):
    query_idx = qs.query(X=X, y=y, clf=clf)
    y[query_idx] = y_true[query_idx]

# Fit final classifier.
clf.fit(X, y)

# Visualize resulting classifier and current utilities.
bound = [[min(X[:, 0]), min(X[:, 1])], [max(X[:, 0]), max(X[:, 1])]]
unlbld_idx = unlabeled_indices(y)
fig, ax = plt.subplots(1, 1, figsize=(8, 8))
ax.set_title(f'Accuracy score: {clf.score(X,y_true)}', fontsize=15)
plot_utilities(qs, X=X, y=y, clf=clf, feature_bound=bound, ax=ax)
plot_decision_boundary(clf, feature_bound=bound, confidence=0.6)
plt.scatter(X[unlbld_idx,0], X[unlbld_idx,1], c='gray')
plt.scatter(X[:,0], X[:,1], c=y, cmap='jet')
plt.show()

As output of this code snippet, we obtain the actively trained Gaussian process classifier including a visualization of its decision boundary and the sample utilities computed with uncertainty sampling.

https://raw.githubusercontent.com/scikit-activeml/scikit-activeml/master/docs/logos/pal-example-output.png

Stream-based Active Learning

The following code implements an active learning cycle with 200 data points and the default budget of 10% using a pwc classifier and split uncertainty sampling. Like in the pool-based example you can wrap other classifiers from sklearn, sklearn compatible classifiers or like the example classifiers provided by skactiveml.

import numpy as np
import matplotlib.pyplot as plt
from scipy.ndimage import gaussian_filter1d
from sklearn.datasets import make_blobs
from skactiveml.classifier import ParzenWindowClassifier
from skactiveml.stream import Split
from skactiveml.utils import MISSING_LABEL

# Generate data set.
X, y_true = make_blobs(n_samples=200, centers=4, random_state=0)

# Create classifier and query strategy.
clf = ParzenWindowClassifier(random_state=0, classes=np.unique(y_true))
qs = Split(random_state=0)

# Initializing the training data as an empty array.
X_train = []
y_train = []

# Initialize the list that stores the result of the classifier's prediction.
correct_classifications = []

# Execute active learning cycle.
for x_t, y_t in zip(X, y_true):
    X_cand = x_t.reshape([1, -1])
    y_cand = y_t
    clf.fit(X_train, y_train)
    correct_classifications.append(clf.predict(X_cand)[0] == y_cand)
    sampled_indices = qs.query(candidates=X_cand, clf=clf)
    qs.update(candidates=X_cand, queried_indices=sampled_indices)
    X_train.append(x_t)
    y_train.append(y_cand if len(sampled_indices) > 0 else MISSING_LABEL)

# Plot the classifier's learning accuracy.
fig, ax = plt.subplots(1, 1, figsize=(8, 6))
ax.set_title(f'Learning curve', fontsize=15)
ax.set_xlabel('number of learning cycles')
ax.set_ylabel('accuracy')
ax.plot(gaussian_filter1d(np.array(correct_classifications, dtype=float), 4))
plt.show()

As output of this code snippet, we obtain the actively trained pwc classifier incuding a visualization of its accuracy over the 200 samples.

https://raw.githubusercontent.com/scikit-activeml/scikit-activeml/master/docs/logos/stream-example-output.png

Citing

If you use scikit-activeml in one of your research projects and find it helpful, please cite the following:

@article{skactiveml2021,
    title={scikitactiveml: {A} {L}ibrary and {T}oolbox for {A}ctive {L}}earning {A}lgorithms},
    author={Daniel Kottke and Marek Herde and Tuan Pham Minh and Alexander Benz and Pascal Mergard and Atal Roghman and Christoph Sandrock and Bernhard Sick},
    journal={Preprints},
    doi={10.20944/preprints202103.0194.v1},
    year={2021},
    url={https://github.com/scikit-activeml/scikit-activeml}
}

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