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reachability_plot

Reachability Plots


Description

Reachability plots can be used to show hierarchical relationships between data points. The idea was originally introduced by Ankerst et al (1999) for OPTICS. Later, Sanders et al (2003) showed that the visualization is useful for other hierarchical structures and introduced an algorithm to convert dendrogram representation to reachability plots.

Usage

## S3 method for class 'reachability'
plot(
  x,
  order_labels = FALSE,
  xlab = "Order",
  ylab = "Reachability dist.",
  main = "Reachability Plot",
  ...
)

## S3 method for class 'dendrogram'
as.reachability(object, ...)

Arguments

x

object of class reachability.

order_labels

whether to plot text labels for each points reachability distance.

xlab

x-axis label.

ylab

y-axis label.

main

Title of the plot.

...

graphical parameters are passed on to plot(), or arguments for other methods.

object

any object that can be coerced to class reachability, such as an object of class optics or stats::dendrogram.

Details

A reachability plot displays the points as vertical bars, were the height is the reachability distance between two consecutive points. The central idea behind reachability plots is that the ordering in which points are plotted identifies underlying hierarchical density representation as mountains and valleys of high and low reachability distance. The original ordering algorithm OPTICS as described by Ankerst et al (1999) introduced the notion of reachability plots.

OPTICS linearly orders the data points such that points which are spatially closest become neighbors in the ordering. Valleys represent clusters, which can be represented hierarchically. Although the ordering is crucial to the structure of the reachability plot, its important to note that OPTICS, like DBSCAN, is not entirely deterministic and, just like the dendrogram, isomorphisms may exist

Reachability plots were shown to essentially convey the same information as the more traditional dendrogram structure by Sanders et al (2003). An dendrograms can be converted into reachability plots.

Different hierarchical representations, such as dendrograms or reachability plots, may be preferable depending on the context. In smaller datasets, cluster memberships may be more easily identifiable through a dendrogram representation, particularly is the user is already familiar with tree-like representations. For larger datasets however, a reachability plot may be preferred for visualizing macro-level density relationships.

A variety of cluster extraction methods have been proposed using reachability plots. Because both cluster extraction depend directly on the ordering OPTICS produces, they are part of the optics() interface. Nonetheless, reachability plots can be created directly from other types of linkage trees, and vice versa.

Note: The reachability distance for the first point is by definition not defined (it has no preceeding point). Also, the reachability distances can be undefined when a point does not have enough neighbors in the epsilon neighborhood. We represent these undefined cases as Inf and represent them in the plot as a dashed line.

Value

An object of class reachability with components:

order

order to use for the data points in x.

reachdist

reachability distance for each data point in x.

Author(s)

Matthew Piekenbrock

References

Ankerst, M., M. M. Breunig, H.-P. Kriegel, J. Sander (1999). OPTICS: Ordering Points To Identify the Clustering Structure. ACM SIGMOD international conference on Management of data. ACM Press. pp. 49–60.

Sander, J., X. Qin, Z. Lu, N. Niu, and A. Kovarsky (2003). Automatic extraction of clusters from hierarchical clustering representations. Pacific-Asia Conference on Knowledge Discovery and Data Mining. Springer Berlin Heidelberg.

See Also

Examples

set.seed(2)
n <- 20

x <- cbind(
  x = runif(4, 0, 1) + rnorm(n, sd = 0.1),
  y = runif(4, 0, 1) + rnorm(n, sd = 0.1)
)

plot(x, xlim = range(x), ylim = c(min(x) - sd(x), max(x) + sd(x)), pch = 20)
text(x = x, labels = 1:nrow(x), pos = 3)

### run OPTICS
res <- optics(x, eps = 10,  minPts = 2)
res

### plot produces a reachability plot.
plot(res)

### Manually extract reachability components from OPTICS
reach <- as.reachability(res)
reach

### plot still produces a reachability plot; points ids
### (rows in the original data) can be displayed with order_labels = TRUE
plot(reach, order_labels = TRUE)

### Reachability objects can be directly converted to dendrograms
dend <- as.dendrogram(reach)
dend
plot(dend)

### A dendrogram can be converted back into a reachability object
plot(as.reachability(dend))

dbscan

Density-Based Spatial Clustering of Applications with Noise (DBSCAN) and Related Algorithms

v1.1-10
GPL (>= 2)
Authors
Michael Hahsler [aut, cre, cph], Matthew Piekenbrock [aut, cph], Sunil Arya [ctb, cph], David Mount [ctb, cph]
Initial release
2022-01-14

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