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News: SUOD is now integrated into PyOD <https://github.com/yzhao062/pyod>
.
It can be easily invoked in PyOD by following the SUOD example <https://github.com/yzhao062/pyod/blob/master/examples/suod_example.py>
.
In a nutshell, we could easily initialize a few outlier detectors and then use SUOD for collective training and prediction!
.. code-block:: python
from pyod.models.suod import SUOD
# initialized a group of outlier detectors for acceleration
detector_list = [LOF(n_neighbors=15), LOF(n_neighbors=20),
LOF(n_neighbors=25), LOF(n_neighbors=35),
COPOD(), IForest(n_estimators=100),
IForest(n_estimators=200)]
# decide the number of parallel process, and the combination method
# then clf can be used as any outlier detection model
clf = SUOD(base_estimators=detector_list, n_jobs=2, combination='average',
verbose=False)
Background: Outlier detection (OD) is a key data mining task for identifying abnormal objects from general samples with numerous high-stake applications including fraud detection and intrusion detection. Due to the lack of ground truth labels, practitioners often have to build a large number of unsupervised models that are heterogeneous (i.e., different algorithms and hyperparameters) for further combination and analysis with ensemble learning, rather than relying on a single model. However, this yields severe scalability issues on high-dimensional, large datasets.
SUOD (S\calable U\nsupervised O\utlier D\etection) is an acceleration framework for large-scale unsupervised heterogeneous outlier detector training and prediction. It focuses on three complementary aspects to accelerate (dimensionality reduction for high-dimensional data, model approximation for complex models, and execution efficiency improvement for taskload imbalance within distributed systems), while controlling detection performance degradation.
Since its inception in Sep 2019, SUOD has been successfully used in various academic researches and industry applications with more than 700,000 downloads,
including PyOD [#Zhao2019PyOD]_ and IQVIA <https://www.iqvia.com/>
_ medical claim analysis.
.. image:: https://raw.githubusercontent.com/yzhao062/SUOD/master/figs/system_overview.png :target: https://raw.githubusercontent.com/yzhao062/SUOD/master/figs/system_overview.png :alt: SUOD System
SUOD is featured for:
numba <https://github.com/numba/numba>
_ and joblib <https://github.com/joblib/joblib>
_.Roadmap:
API Demo\ :
.. code-block:: python
from suod.models.base import SUOD
# initialize a set of base outlier detectors to train and predict on
base_estimators = [
LOF(n_neighbors=5, contamination=contamination),
LOF(n_neighbors=15, contamination=contamination),
LOF(n_neighbors=25, contamination=contamination),
HBOS(contamination=contamination),
PCA(contamination=contamination),
OCSVM(contamination=contamination),
KNN(n_neighbors=5, contamination=contamination),
KNN(n_neighbors=15, contamination=contamination),
KNN(n_neighbors=25, contamination=contamination)]
# initialize a SUOD model with all features turned on
model = SUOD(base_estimators=base_estimators, n_jobs=6, # number of workers
rp_flag_global=True, # global flag for random projection
bps_flag=True, # global flag for balanced parallel scheduling
approx_flag_global=False, # global flag for model approximation
contamination=contamination)
model.fit(X_train) # fit all models with X
model.approximate(X_train) # conduct model approximation if it is enabled
predicted_labels = model.predict(X_test) # predict labels
predicted_scores = model.decision_function(X_test) # predict scores
predicted_probs = model.predict_proba(X_test) # predict outlying probability
The corresponding paper <https://www.andrew.cmu.edu/user/yuezhao2/papers/21-mlsys-suod.pdf>
_ is published in Conference on Machine Learning Systems (MLSys).
See https://mlsys.org/ for more information.
If you use SUOD in a scientific publication, we would appreciate citations to the following paper::
@inproceedings{zhao2021suod,
title={SUOD: Accelerating Large-scale Unsupervised Heterogeneous Outlier Detection},
author={Zhao, Yue and Hu, Xiyang and Cheng, Cheng and Wang, Cong and Wan, Changlin and Wang, Wen and Yang, Jianing and Bai, Haoping and Li, Zheng and Xiao, Cao and others},
journal={Proceedings of Machine Learning and Systems},
year={2021}
}
::
Zhao, Y., Hu, X., Cheng, C., Wang, C., Wan, C., Wang, W., Yang, J., Bai, H., Li, Z., Xiao, C. and Wang, Y., 2021. SUOD: Accelerating Large-scale Unsupervised Heterogeneous Outlier Detection. Proceedings of Machine Learning and Systems (MLSys).
Table of Contents\ :
Installation <#installation>
_API Cheatsheet & Reference <#api-cheatsheet--reference>
_Examples <#examples>
_Model Save & Load <#model-save--load>
_Installation ^^^^^^^^^^^^
It is recommended to use pip for installation. Please make sure the latest version is installed, as suod is updated frequently:
.. code-block:: bash
pip install suod # normal install pip install --upgrade suod # or update if needed pip install --pre suod # or include pre-release version for new features
Alternatively, you could clone and run setup.py file:
.. code-block:: bash
git clone https://github.com/yzhao062/suod.git cd suod pip install .
Required Dependencies\ :
API Cheatsheet & Reference ^^^^^^^^^^^^^^^^^^^^^^^^^^
Full API Reference: (https://suod.readthedocs.io/en/latest/api.html).
Examples ^^^^^^^^
All three modules can be executed separately and the demo codes are in /examples/module_examples/{M1_RP, M2_BPS, and M3_PSA}. For instance, you could navigate to /M1_RP/demo_random_projection.py. Demo codes all start with "demo_*.py".
The examples for the full framework can be found under /examples folder; run "demo_base.py" for a simplified example. Run "demo_full.py" for a full example.
It is noted the best performance may be achieved with multiple cores available.
Model Save & Load ^^^^^^^^^^^^^^^^^
SUOD takes a similar approach of sklearn regarding model persistence.
See model persistence <https://scikit-learn.org/stable/modules/model_persistence.html>
_ for clarification.
In short, we recommend to use joblib or pickle for saving and loading SUOD models.
See "examples/demo_model_save_load.py" <https://github.com/yzhao062/suod/blob/master/examples/demo_model_save_load.py>
_ for an example.
In short, it is simple as below:
.. code-block:: python
from joblib import dump, load
# save the fitted model
dump(model, 'model.joblib')
# load the model
model = load('model.joblib')
More to come... Last updated on Jan 14th, 2021.
Feel free to star and watch for the future update :)
.. [#Johnson1984Extensions] Johnson, W.B. and Lindenstrauss, J., 1984. Extensions of Lipschitz mappings into a Hilbert space. Contemporary mathematics, 26(189-206), p.1.
.. [#Zhao2019PyOD] Zhao, Y., Nasrullah, Z. and Li, Z., 2019. PyOD: A Python Toolbox for Scalable Outlier Detection. Journal of Machine Learning Research, 20, pp.1-7.
FAQs
A Scalable Framework for Unsupervised Outlier Detection (Anomaly Detection)
We found that suod demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 1 open source maintainer collaborating on the project.
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