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Euclidean Distances on Hexagonal Grid
I believe there is an issue with the way the routines euclideanDistanceOnHexagonalPlanarMap
and euclideanDistanceOnHexagonalToroidMap
are calculating the Euclidean distance between cells on a hexagonal grid.
If we consider the standard indexing system for a hexagonal grid to be as Kohonen intended:
then the Euclidean distance between a node and any of its six neighbours is 1 by definition.
If calculating the distance between e.g. nodes (1,1) and (2,2) using euclideanDistanceOnHexagonalPlanarMap
, as far as I can see, the result would be approximately 1.11803:
x1 = 1
y1 = 1
x2 = 2
y2 = 2
xdist = 1
ydist = 1
xdist += -0.5 /* so now xdist = 0.5 */
return sqrt(float(0.5 * 0.5 + 1 * 1)) /* Return value is 1.11803... */
This is of little consequence - though still some - when using a 'gaussian' neighbourhood. However, when using 'bubble', the conditional if (distance <= radius) {
in getWeight
will e.g. fail to connect a node with four of its six neighbours when 'radius' is 1.
The simplest fix I can see for this is to change the return expression to
return sqrt(float(xdist * xdist + ydist * ydist * 0.75));
The factor of 0.75 is the square of cos(30), which is the height of an equilateral triangle of base 1. Cos(30) is therefore the factor by which ydist needs to be scaled to correct the Euclidean distance calculation. This fix should also be applied to euclideanDistanceOnHexagonalToroidMap
.
Pull Request created.
Thanks Peter. Is there any way I can incorporate this fix into the Python version before you do the next 'official' Python release?
Just rebuild it from git. I don't think there will be a new release this year. The code is very much in maintenance mode.