Roerich
is a python library for online and offline change point detection for time series analysis, signal processing, and segmentation. It was named after the painter Nicholas Roerich, known as the Master of the Mountains. Read more at: https://www.roerich.org.
Currently, the library contains official implementations of change point detection algorithms based on direct density ratio estimation from the following articles:
- Mikhail Hushchyn and Andrey Ustyuzhanin. “Generalization of Change-Point Detection in Time Series Data Based on Direct Density Ratio Estimation.” J. Comput. Sci. 53 (2021): 101385. [journal] [arxiv]
- Mikhail Hushchyn, Kenenbek Arzymatov and Denis Derkach. “Online Neural Networks for Change-Point Detection.” ArXiv abs/2010.01388 (2020). [arxiv]
pip install roerich
or
git clone https://github.com/HSE-LAMBDA/roerich.git
cd roerich
pip install -e .
(See more examples in the documentation.)
The following code snippet generates a noisy synthetic data, performs change point detection, and displays the results. If you use own dataset, make
sure that it has a shape (seq_len, n_dims)
.
import roerich
from roerich.change_point import ChangePointDetectionClassifier
# generate time series
X, cps_true = roerich.generate_dataset(period=200, N_tot=2000)
# detection
# base_classifier = 'logreg', 'qda', 'dt', 'rf', 'mlp', 'knn', 'nb'
# metric = 'klsym', 'pesym', 'jsd', 'mmd', 'fd'
cpd = ChangePointDetectionClassifier(base_classifier='mlp', metric='klsym', window_size=100)
score, cps_pred = cpd.predict(X)
# visualization
roerich.display(X, cps_true, score, cps_pred)
- Home: https://github.com/HSE-LAMBDA/roerich
- Documentation: https://hse-lambda.github.io/roerich
- For any usage questions, suggestions and bugs use the issue page, please.