I have a long list of values (here below a shortened version) that I need to count:
ed = [ 0.52309 , 3.1443 , 16.5789 , 24.0643 , 9.70981 , 1.71983 ,
16.3453 , 14.1901 , 22.0353 , 1.71983 , 15.0469 , 13.98 ,
11.4753 , 32.7859 , 9.7098 , 6.36272 , 3.2058 , 1.46917 ,
6.36271 , 11.5869 , 1.72052 , 6.32043 , 1.72052 , 1.72052 ,
5.37679 , 3.15279 , 9.70979 , 1.72052 , 3.44035 , 2.15729 ,
12.0049 ]
and that I count with:
cnt = Counter(ed)
edlist = [list(i) for i in cnt.items()]
the list I obtain has some very similar values among the others
[[1.72052, 60], [1.71983, 34], [6.36271, 16], [9.7098, 14],[9.70979, 5], [0.52309, 3], [9.70981, 3]]
that I would like to add together within a given tolerance. For example
9.7098 has 16 counts
9.70981 has 3 counts
9.70979 has 5 counts
I would like to add all of them together to the item with the highest counts, and I am not sure if there is a function for that that allows to do that within some absolute or relative error. What I would like to obtain is
[[1.72052, 60], [1.71983, 34], [6.36271, 16], [9.7098, 22], [0.52309, 3]]
I have read the questions about grouping and clustering, but I do not know how to apply them. I need to count them with some given tolerance while keeping track of how many times each one has been found.
1.72052
and1.71983
are also close values, why aren't they added? what's the threshold?