| findOutliers {MazamaRollUtils} | R Documentation |
Outlier Detection with a Rolling Hampel Filter
Description
A wrapper for the roll_hampel() function that counts
outliers using either a user specified threshold value or a threshold value
based on the statistics of the incoming data.
Usage
findOutliers(
x,
width = 25,
thresholdMin = 7,
selectivity = NA,
fixedThreshold = TRUE
)
Arguments
x |
Numeric vector. |
width |
Integer width of the rolling window. |
thresholdMin |
Numeric threshold for outlier detection |
selectivity |
Value between [0-1] used in determining outliers, or
|
fixedThreshold |
Logical specifying whether outlier detection uses
|
Details
The thresholdMin level is similar to a sigma value for normally
distributed data. Hampel filter values above 6 indicate a data value that is
extremely unlikely to be part of a normal distribution (~ 1/500 million) and
therefore very likely to be an outlier. By choosing a relatively large value
for thresholdMin we make it less likely that we will generate false
positives. False positives can include high frequency environmental noise.
With the default setting of fixedThreshold = TRUE any value above the
threshold is considered an outlier and the selectivity is ignored.
The selectivity is a value between 0 and 1 and is used to generate an
appropriate threshold for outlier detection based on the statistics of the
incoming data. A lower value for selectivity will result in more
outliers while a value closer to 1.0 will result in fewer. If
fixedThreshold=TRUE, selectivity may have a value of NA.
When the user specifies fixedThreshold=FALSE, the thresholdMin
and selectivity parameters work like squelch and volume on a CB radio:
thresholdMin sets a noise threshold below which you don't want anything
returned while selectivity adjusts the number of points defined as
outliers by setting a new threshold defined by the maximum value of
roll_hampel multiplied by selectivity.
width, the window width, is a parameter that is passed to
roll_hampel().
Value
A vector of indices associated with outliers in the incoming data x.
Note
This function is copied from the seismicRoll package.
See Also
Examples
# Noisy sinusoid with outliers
a <- jitter(sin(0.1*seq(1e4)),amount=0.2)
indices <- sample(seq(1e4),20)
a[indices] <- a[indices]*10
# Outlier detection should identify many of these altered indices
sort(indices)
o_indices <- findOutliers(a)
o_indices
plot(a)
points(o_indices, a[o_indices], pch = 16, cex = 0.8, col = 'red')
title("Outlier detection using a Hampel filter")