# Algorithm to minimize distance variance between coordinates

I've been looking around for an algorithm that would optimize the distance between 2 list of coordinates and choose which coordinate should go together.

Say I have List 1:

``````205|200
220|210
200|220
200|180
``````

List 2:

``````210|200
207|190
230|200
234|190
``````

Calculated Distance between Coords:

``````205|200 to 210|200 == 5.00
205|200 to 207|190 == 10.20
205|200 to 230|200 == 25.00
205|200 to 234|190 == 30.68

220|210 to 210|200 == 14.14
220|210 to 207|190 == 23.85
220|210 to 230|200 == 14.14
220|210 to 234|190 == 24.41

200|220 to 210|200 == 22.36
200|220 to 207|190 == 30.81
200|220 to 230|200 == 36.06
200|220 to 234|190 == 45.34

200|180 to 210|200 == 22.36
200|180 to 207|190 == 12.21
200|180 to 230|200 == 36.06
200|180 to 234|190 == 35.44
``````

This Algorithm would pick:

``````205|200 to 230|200 == 25.00
220|210 to 207|190 == 23.85
200|220 to 210|200 == 22.36
200|180 to 234|190 == 35.44
``````

The Algorithm would pick these numbers as they would be the group that would have the littlest variance between the distance. Conditions:

1. A Coordinate may only be used ones from each list
2. If List 1 or List2 is larger than it still only uses each coordinate once, but it tries to get the smallest distance variance and does nothing with the unused coordinates.