pdc (version 1.0.3)

pdcDist: Permutation Distribution Clustering Distance Matrix

Description

This function computes and returns the distance matrix computed by the divergence between permutation distributions of time series.

Usage

pdcDist(X, m = NULL, t = NULL, divergence = symmetricAlphaDivergence)

Arguments

X
A matrix representing a set of time series. Columns are time series and rows represent time points.

m
Embedding dimension for calculating the permutation distributions. Reasonable values range usually somewhere between 2 and 10. If no embedding dimension is chosen, the MinE heuristic is used to determine the embedding dimension automatically.

t
Time-delay of the embedding
divergence
Divergence measure between discrete distributions. Default is the symmetric alpha divergence.

Value

Returns the dissimilarity between two codebooks as floating point number (larger or equal than zero).

Details

A valid divergence is always non-negative.

References

Brandmaier, A. M. (2015). pdc: An R Package for Complexity-Based Clustering of Time Series. Journal of Statistical Software, 67(5), 1--23.

See Also

pdclust

hclust kmeans

Examples

Run this code

# create a set of time series consisting
# of sine waves with different degrees of added noise
# and two white noise time series
X <- cbind(
sin(1:500)+rnorm(500,0,.1),
sin(1:500)+rnorm(500,0,.2),
sin(1:500)+rnorm(500,0,.3),
sin(1:500)+rnorm(500,0,.4),
rnorm(500,0,1),
rnorm(500,0,1)
)

# calculate the distance matrix
D <- pdcDist(X,3)

# and plot with lattice package, you will
# be able to spot two clusters: a noise cluster
# and a sine wave cluster
require("lattice")
levelplot(as.matrix(D), col.regions=grey.colors(100,start=0.9, end=0.3))


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