A **Voronoi Diagram** (a plot of a Voronoi Decomposition) is one way to visually represent a Distance Matrix (DM).

They are also simple to create and plot using R--you can do both in a single line of R code.

If you're not famililar with this aspect of computational geometry, the relationship between the two (VD & DM) is straightforward, though a brief summary might be helpful.

Distance Matrices--i.e., a 2D matrix showing the distance between a point and every other point, are an intermediate output during kNN computation (i.e., k-nearest neighbor, a machine learning algorithm which predicts the value of a given data point based on the weighted average value of its 'k' closest neighbors, distance-wise, where 'k' is some integer, usually between 3 and 5.)

kNN is conceptually very simple--each data point in your training set is in essence a 'position' in some n-dimension space, so the next step is to calculate the distance between each point and every other point using some distance metric (e.g., Euclidean, Manhattan, etc.). While the training step--i.e., construcing the distance matrix--is straightforward, using it to predict the value of new data points is practically encumbered by the data retrieval--finding the closest 3 or 4 points from among several thousand or several million scattered in n-dimensional space.

Two data structures are commonly used to address that problem: kd-trees and Voroni decompositions (aka "Dirichlet tesselation").

A Voronoi decomposition (VD) is uniquely determined by a distance matrix--i.e., there's a 1:1 map; so indeed it is a visual representation of the distance matrix, although again, that's not their purpose--their primary purpose is the efficient storage of the data used for kNN-based prediction.

Beyond that, whether it's a good idea to represent a distance matrix this way probably depends most of all on your audience. To most, the relationship between a VD and the antecedent distance matrix will not be intuitive. But that doesn't make it incorrect--if someone without any statistics training wanted to know if two populations had similar probability distributions and you showed them a Q-Q plot, they would probably think you haven't engaged their question. So for those who know what they are looking at, a VD is a compact, complete, and accurate representation of a DM.

So how do you make one?

A Voronoi decomp is constructed by selecting (usually at random) a subset of points from within the training set (this number varies by circumstances, but if we had 1,000,000 points, then 100 is a reasonable number for this subset). These 100 data points are the Voronoi centers ("VC").

The basic idea behind a Voronoi decomp is that rather than having to sift through the 1,000,000 data points to find the nearest neighbors, you only have to look at these 100, then once you find the closest VC, your search for the actual nearest neighbors is restricted to just the points within that Voronoi cell. Next, for each data point in the training set, calculate the VC it is closest to. Finally, for each VC and its associated points, calculate the convex hull--conceptually, just the outer boundary formed by that VC's assigned points that are farthest from the VC. This convex hull around the Voronoi center forms a "Voronoi cell." A complete VD is the result from applying those three steps to each VC in your training set. This will give you a perfect tesselation of the surface (See the diagram below).

To calculate a VD in R, use the **tripack** package. The key function is 'voronoi.mosaic' to which you just pass in the x and y coordinates separately--the raw data, *not* the DM--then you can just pass voronoi.mosaic to 'plot'.

```
library(tripack)
plot(voronoi.mosaic(runif(100), runif(100), duplicate="remove"))
```

allof the values in your distance matrix? Couldn't you just overlay thecrucialvalues on the plot after?per se, but what about Multidimensional Scaling?