ROCKET
· MINIROCKET
· HYDRA
MINIROCKET: A Very Fast (Almost) Deterministic Transform for Time Series Classification
KDD 2021 / arXiv:2012.08791 (preprint)
Until recently, the most accurate methods for time series classification were limited by high computational complexity. ROCKET achieves state-of-the-art accuracy with a fraction of the computational expense of most existing methods by transforming input time series using random convolutional kernels, and using the transformed features to train a linear classifier. We reformulate ROCKET into a new method, MINIROCKET, making it up to 75 times faster on larger datasets, and making it almost deterministic (and optionally, with additional computational expense, fully deterministic), while maintaining essentially the same accuracy. Using this method, it is possible to train and test a classifier on all of 109 datasets from the UCR archive to state-of-the-art accuracy in less than 10 minutes. MINIROCKET is significantly faster than any other method of comparable accuracy (including ROCKET), and significantly more accurate than any other method of even roughly-similar computational expense. As such, we suggest that MINIROCKET should now be considered and used as the default variant of ROCKET.
Please cite as:
@inproceedings{dempster_etal_2021,
author = {Dempster, Angus and Schmidt, Daniel F and Webb, Geoffrey I},
title = {{MiniRocket}: A Very Fast (Almost) Deterministic Transform for Time Series Classification},
booktitle = {Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery and Data Mining},
publisher = {ACM},
address = {New York},
year = {2021},
pages = {248--257}
}
Hear more about MINIROCKET and time series classification on the Data Skeptic podcast!
A GPU implementation of MINIROCKET, developed by Malcolm McLean and Ignacio Oguiza, is available through tsai
. See the examples. Many thanks to Malcolm and Ignacio for their work in developing the GPU implementation and making it part of tsai
.
MINIROCKET (including a basic multivariate implementation) is also available through sktime
. See the examples.
* for larger datasets (10,000+ training examples), the sktime
methods should be integrated with SGD or similar as per softmax.py
(replace calls to fit(...)
and transform(...)
from minirocket.py
with calls to the relevant sktime
methods as appropriate)
- UCR Archive (109 Datasets, 30 Resamples)
- Scalability / Training Set Size*
- MosquitoSound (139,780 × 3,750)
- InsectSound (25,000 × 600)
- FruitFlies (17,259 × 5,000)
- Scalability / Time Series Length
- DucksAndGeese (50 × 236,784)
* num_training_examples
does not include the validation set of 2,048 training examples, but the transform time for the validation set is included in time_training_seconds
- Python, NumPy, pandas
- Numba (0.50+)
- scikit-learn or similar
- PyTorch or similar (for larger datasets)
* all pre-packaged with or otherwise available through Anaconda
minirocket_dv.py
(MINIROCKETDV)
softmax.py
(PyTorch / 10,000+ Training Examples)
minirocket_multivariate.py
(equivalent to sktime/MiniRocketMultivariate)
minirocket_variable.py
(variable-length input; experimental)
The functions in minirocket.py
and minirocket_dv.py
are compiled by Numba on import, which may take some time. By default, the compiled functions are now cached, so this should only happen once (i.e., on the first import).
Input data should be of type np.float32
. Alternatively, you can change the Numba signatures to accept, e.g., np.float64
.
Unlike ROCKET, MINIROCKET does not require the input time series to be normalised. (However, whether or not it makes sense to normalise the input time series may depend on your particular application.)
MINIROCKET
from minirocket import fit, transform
from sklearn.linear_model import RidgeClassifierCV
[...] # load data, etc.
# note:
# * input time series do *not* need to be normalised
# * input data should be np.float32
parameters = fit(X_training)
X_training_transform = transform(X_training, parameters)
classifier = RidgeClassifierCV(alphas = np.logspace(-3, 3, 10), normalize = True)
classifier.fit(X_training_transform, Y_training)
X_test_transform = transform(X_test, parameters)
predictions = classifier.predict(X_test_transform)
MINIROCKETDV
from minirocket_dv import fit_transform
from minirocket import transform
from sklearn.linear_model import RidgeClassifierCV
[...] # load data, etc.
# note:
# * input time series do *not* need to be normalised
# * input data should be np.float32
parameters, X_training_transform = fit_transform(X_training)
classifier = RidgeClassifierCV(alphas = np.logspace(-3, 3, 10), normalize = True)
classifier.fit(X_training_transform, Y_training)
X_test_transform = transform(X_test, parameters)
predictions = classifier.predict(X_test_transform)
PyTorch / 10,000+ Training Examples
from softmax import train, predict
model_etc = train("InsectSound_TRAIN_shuffled.csv", num_classes = 10, training_size = 22952)
# note: 22,952 = 25,000 - 2,048 (validation)
predictions, accuracy = predict("InsectSound_TEST.csv", *model_etc)
Variable-Length Input (Experimental)
from minirocket_variable import fit, transform, filter_by_length
from sklearn.linear_model import RidgeClassifierCV
[...] # load data, etc.
# note:
# * input time series do *not* need to be normalised
# * input data should be np.float32
# special instructions for variable-length input:
# * concatenate variable-length input time series into a single 1d numpy array
# * provide another 1d array with the lengths of each of the input time series
# * input data should be np.float32 (as above); lengths should be np.int32
# optionally, use a different reference length when setting dilation (default is
# the length of the longest time series), and use fit(...) with time series of
# at least this length, e.g.:
# >>> reference_length = X_training_lengths.mean()
# >>> X_training_1d_filtered, X_training_lengths_filtered = \
# >>> filter_by_length(X_training_1d, X_training_lengths, reference_length)
# >>> parameters = fit(X_training_1d_filtered, X_training_lengths_filtered, reference_length)
parameters = fit(X_training_1d, X_training_lengths)
X_training_transform = transform(X_training_1d, X_training_lengths, parameters)
classifier = RidgeClassifierCV(alphas = np.logspace(-3, 3, 10), normalize = True)
classifier.fit(X_training_transform, Y_training)
X_test_transform = transform(X_test_1d, X_test_lengths, parameters)
predictions = classifier.predict(X_test_transform)
We thank Professor Eamonn Keogh and all the people who have contributed to the UCR time series classification archive. Figures in our paper showing mean ranks were produced using code from Ismail Fawaz et al. (2019).