# Python: Uniquefying a list with a twist

Lets say I have a list:

``````L = [15,16,57,59,14]
``````

The list contains mesurements, that are not very accurate: that is the real value of an element is +-2 of the recorded value. So 14,15 and 16 can have the same value. What I want to do is to uniquefy that list, taking into account the mesurement errors. The output should therefor be:

``````l_out = [15,57]
``````

or

``````l_out = [(14,15,16),(57,59)]
``````

I have no problem producing either result with a for loop. However, I am curious if there could be a more elegant solution. Ideas much appriciated.

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What result do you expect for `L = [1,2,3,4,5,6,7,8,10]`? – sloth Jun 22 '12 at 10:56
And what would be the output of [15,16,57,59,14,13]? – kosii Jun 22 '12 at 10:57
I am aware of the problem, but the data that I have in mind is groped so that the distance between groups is >2 – root Jun 22 '12 at 10:58
@kosii, in that case it should again have the values in two groups. that is 15+-2. – root Jun 22 '12 at 11:00
See this question and its answers. – Lauritz V. Thaulow Jun 22 '12 at 11:09

As lazyr pointed out in the comments, a similar problem has been posted here. Using the cluster module the solution to my problem would be:

``````>>> from cluster import *
>>> L = [15,16,57,59,14]
>>> cl = HierarchicalClustering(L, lambda x,y: abs(x-y))
>>> cl.getlevel(2)
[[14, 15, 16], [57, 59]]
``````

or (to get unique list with mean values of each group):

``````>>> [mean(cluster) for cluster in cl.getlevel(2)]
[15, 58]
``````
-

If you want standard lib python, `itertool`'s `groupby` is your friend:

``````from itertools import groupby

L = [15,16,57,59,14]

# Stash state outside key function. (a little hacky).
# Better way would be to create stateful class with a __call__ key fn.
state = {'group': 0, 'prev': None}
thresh = 2

def _group(cur):
"""Group if within threshold."""
if state["prev"] is not None and abs(state["prev"] - cur) > thresh:
state["group"] += 1 # Advance group
state["prev"] = cur
return state["group"]

# Group, then drop the group key and inflate the final tuples.
l_out = [tuple(g) for _, g in groupby(sorted(L), key=_group)]

print l_out
# -> [(14, 15, 16), (57, 59)]
``````
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@ +1 Ryan not bad :) – root Jun 22 '12 at 12:05
I think you could avoid the global state by grouping the values into pairs first via `l = sorted(L); zip(l, l[1:])` – Niklas B. Jun 22 '12 at 12:51
@NiklasB. -- yep! The other way would be a more classical decorate-sort-undecorate pattern... Or I guess sort-decorate-group-undecorate ;) – Ryan Roemer Jun 22 '12 at 14:01

Here's how I'd do this in a pure-Python approach:

``````s = sorted(L)
b = [i + 1 for i, (x, y) in enumerate(zip(s, s[1:])) if y > x + 2]
result = [s[i:j] for i, j in zip([None] + b, b + [None])]
``````

Here `b` is the list of "breaks", indices where a cluster ends.

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@NiklasB. thanks, off-by-one error; fixed. – ecatmur Jun 22 '12 at 13:11

For loop is the simplest way, but if you really want a single-line code:
`l_out = list(set(tuple([tuple(filter(lambda i: abs(item - i) < 3, L)) for item in L])))`
Very unclear though, I would prefer the for version :)

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This wouldn't work for the example `[15,16,57,59,14,13]` – Niklas B. Jun 22 '12 at 12:31
he said "I am aware of the problem, but the data that I have in mind is groped so that the distance between groups is >2" – lolopop Jun 22 '12 at 17:31
that condition is fulfilled here. still your program doesn't partition the list properly. – Niklas B. Jun 22 '12 at 18:34