dist_one_many {philentropy} | R Documentation |
Distances and Similarities between One and Many Probability Density Functions
Description
This functions computes the distance/dissimilarity between one probability density functions and a set of probability density functions.
Usage
dist_one_many(
P,
dists,
method,
p = NA_real_,
testNA = TRUE,
unit = "log",
epsilon = 1e-05
)
Arguments
P |
a numeric vector storing the first distribution.
|
dists |
a numeric matrix storing distributions in its rows.
|
method |
a character string indicating whether the distance measure that should be computed.
|
p |
power of the Minkowski distance.
|
testNA |
a logical value indicating whether or not distributions shall be checked for NA values.
|
unit |
type of log function. Option are
-
unit = "log"
-
unit = "log2"
-
unit = "log10"
|
epsilon |
epsilon a small value to address cases in the distance computation where division by zero occurs. In
these cases, x / 0 or 0 / 0 will be replaced by epsilon . The default is epsilon = 0.00001 .
However, we recommend to choose a custom epsilon value depending on the size of the input vectors,
the expected similarity between compared probability density functions and
whether or not many 0 values are present within the compared vectors.
As a rough rule of thumb we suggest that when dealing with very large
input vectors which are very similar and contain many 0 values,
the epsilon value should be set even smaller (e.g. epsilon = 0.000000001 ),
whereas when vector sizes are small or distributions very divergent then
higher epsilon values may also be appropriate (e.g. epsilon = 0.01 ).
Addressing this epsilon issue is important to avoid cases where distance metrics
return negative values which are not defined and only occur due to the
technical issues of computing x / 0 or 0 / 0 cases.
|
Value
A vector of distance values
Examples
set.seed(2020-08-20)
P <- 1:10 / sum(1:10)
M <- t(replicate(100, sample(1:10, size = 10) / 55))
dist_one_many(P, M, method = "euclidean", testNA = FALSE)
[Package
philentropy version 0.9.0
Index]