Implementation of the Robust Random Cut Forest Algorithm for anomaly detection by Guha et al. (2016).
S. Guha, N. Mishra, G. Roy, & O. Schrijvers, Robust random cut forest based anomaly detection on streams, in Proceedings of the 33rd International conference on machine learning, New York, NY, 2016 (pp. 2712-2721).
The Robust Random Cut Forest (RRCF) algorithm is an ensemble method for detecting outliers in streaming data. RRCF offers a number of features that many competing anomaly detection algorithms lack. Specifically, RRCF:
- Is designed to handle streaming data.
- Performs well on high-dimensional data.
- Reduces the influence of irrelevant dimensions.
- Gracefully handles duplicates and near-duplicates that could otherwise mask the presence of outliers.
- Features an anomaly-scoring algorithm with a clear underlying statistical meaning.
This repository provides an open-source implementation of the RRCF algorithm and its core data structures for the purposes of facilitating experimentation and enabling future extensions of the RRCF algorithm.
Read the docs here π.
Use pip
to install rrcf
via pypi:
$ pip install rrcf
Currently, only Python 3 is supported.
The following dependencies are required to install and use rrcf
:
- numpy (>= 1.15)
The following optional dependencies are required to run the examples shown in the documentation:
- pandas (>= 0.23)
- scipy (>= 1.2)
- scikit-learn (>= 0.20)
- matplotlib (>= 3.0)
Listed version numbers have been tested and are known to work (this does not necessarily preclude older versions).
A robust random cut tree (RRCT) is a binary search tree that can be used to detect outliers in a point set. A RRCT can be instantiated from a point set. Points can also be added and removed from an RRCT.
import numpy as np
import rrcf
# A (robust) random cut tree can be instantiated from a point set (n x d)
X = np.random.randn(100, 2)
tree = rrcf.RCTree(X)
# A random cut tree can also be instantiated with no points
tree = rrcf.RCTree()
tree = rrcf.RCTree()
for i in range(6):
x = np.random.randn(2)
tree.insert_point(x, index=i)
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tree.forget_point(2)
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The likelihood that a point is an outlier is measured by its collusive displacement (CoDisp): if including a new point significantly changes the model complexity (i.e. bit depth), then that point is more likely to be an outlier.
# Seed tree with zero-mean, normally distributed data
X = np.random.randn(100,2)
tree = rrcf.RCTree(X)
# Generate an inlier and outlier point
inlier = np.array([0, 0])
outlier = np.array([4, 4])
# Insert into tree
tree.insert_point(inlier, index='inlier')
tree.insert_point(outlier, index='outlier')
tree.codisp('inlier')
>>> 1.75
tree.codisp('outlier')
>>> 39.0
This example shows how a robust random cut forest can be used to detect outliers in a batch setting. Outliers correspond to large CoDisp.
import numpy as np
import pandas as pd
import rrcf
# Set parameters
np.random.seed(0)
n = 2010
d = 3
num_trees = 100
tree_size = 256
# Generate data
X = np.zeros((n, d))
X[:1000,0] = 5
X[1000:2000,0] = -5
X += 0.01*np.random.randn(*X.shape)
# Construct forest
forest = []
while len(forest) < num_trees:
# Select random subsets of points uniformly from point set
ixs = np.random.choice(n, size=(n // tree_size, tree_size),
replace=False)
# Add sampled trees to forest
trees = [rrcf.RCTree(X[ix], index_labels=ix) for ix in ixs]
forest.extend(trees)
# Compute average CoDisp
avg_codisp = pd.Series(0.0, index=np.arange(n))
index = np.zeros(n)
for tree in forest:
codisp = pd.Series({leaf : tree.codisp(leaf) for leaf in tree.leaves})
avg_codisp[codisp.index] += codisp
np.add.at(index, codisp.index.values, 1)
avg_codisp /= index
This example shows how the algorithm can be used to detect anomalies in streaming time series data.
import numpy as np
import rrcf
# Generate data
n = 730
A = 50
center = 100
phi = 30
T = 2*np.pi/100
t = np.arange(n)
sin = A*np.sin(T*t-phi*T) + center
sin[235:255] = 80
# Set tree parameters
num_trees = 40
shingle_size = 4
tree_size = 256
# Create a forest of empty trees
forest = []
for _ in range(num_trees):
tree = rrcf.RCTree()
forest.append(tree)
# Use the "shingle" generator to create rolling window
points = rrcf.shingle(sin, size=shingle_size)
# Create a dict to store anomaly score of each point
avg_codisp = {}
# For each shingle...
for index, point in enumerate(points):
# For each tree in the forest...
for tree in forest:
# If tree is above permitted size, drop the oldest point (FIFO)
if len(tree.leaves) > tree_size:
tree.forget_point(index - tree_size)
# Insert the new point into the tree
tree.insert_point(point, index=index)
# Compute codisp on the new point and take the average among all trees
if not index in avg_codisp:
avg_codisp[index] = 0
avg_codisp[index] += tree.codisp(index) / num_trees
This example shows how to estimate the feature importance using the dimension of cut obtained during the calculation of the CoDisp.
import numpy as np
import pandas as pd
import rrcf
# Set parameters
np.random.seed(0)
n = 2010
d = 3
num_trees = 100
tree_size = 256
# Generate data
X = np.zeros((n, d))
X[:1000,0] = 5
X[1000:2000,0] = -5
X += 0.01*np.random.randn(*X.shape)
# Construct forest
forest = []
while len(forest) < num_trees:
# Select random subsets of points uniformly from point set
ixs = np.random.choice(n, size=(n // tree_size, tree_size),
replace=False)
# Add sampled trees to forest
trees = [rrcf.RCTree(X[ix], index_labels=ix) for ix in ixs]
forest.extend(trees)
# Compute average CoDisp with the cut dimension for each point
dim_codisp = np.zeros([n,d],dtype=float)
index = np.zeros(n)
for tree in forest:
for leaf in tree.leaves:
codisp,cutdim = tree.codisp_with_cut_dimension(leaf)
dim_codisp[leaf,cutdim] += codisp
index[leaf] += 1
avg_codisp = dim_codisp.sum(axis=1)/index
#codisp anomaly threshold and calculate the mean over each feature
feature_importance_anomaly = np.mean(dim_codisp[avg_codisp>50,:],axis=0)
#create a dataframe with the feature importance
df_feature_importance = pd.DataFrame(feature_importance_anomaly,columns=['feature_importance'])
df_feature_importance
We welcome contributions to the rrcf
repo. To contribute, submit a pull request to the dev
branch.
Some suggested types of contributions include:
- Bug fixes
- Documentation improvements
- Performance enhancements
- Extensions to the algorithm
Check the issue tracker for any specific issues that need help. If you encounter a problem using rrcf
, or have an idea for an extension, feel free to raise an issue.
Please consider the following guidelines when contributing to the codebase:
- Ensure that any new methods, functions or classes include docstrings. Docstrings should include a description of the code, as well as descriptions of the inputs (arguments) and outputs (returns). Providing an example use case is recommended (see existing methods for examples).
- Write unit tests for any new code and ensure that all tests are passing with no warnings. Please ensure that overall code coverage does not drop below 80%.
To run unit tests, first ensure that pytest
and pytest-cov
are installed:
$ pip install pytest pytest-cov
To run the tests, navigate to the root directory of the repo and run:
$ pytest --cov=rrcf/
If you have used this codebase in a publication and wish to cite it, please use the Journal of Open Source Software article
.
M. Bartos, A. Mullapudi, & S. Troutman, rrcf: Implementation of the Robust Random Cut Forest algorithm for anomaly detection on streams, in: Journal of Open Source Software, The Open Journal, Volume 4, Number 35. 2019
@article{bartos_2019_rrcf,
title={{rrcf: Implementation of the Robust Random Cut Forest algorithm for anomaly detection on streams}},
authors={Matthew Bartos and Abhiram Mullapudi and Sara Troutman},
journal={{The Journal of Open Source Software}},
volume={4},
number={35},
pages={1336},
year={2019}
}