I have a list:
d = [23, 67, 110, 25, 69, 24, 102, 109]
how can I group nearest values with a dynamic gap, and create a tuple like this, what is the fastest method? :
[(23, 24, 25), (67, 69), (102, 109, 110)]
I have a list:
d = [23, 67, 110, 25, 69, 24, 102, 109]
how can I group nearest values with a dynamic gap, and create a tuple like this, what is the fastest method? :
[(23, 24, 25), (67, 69), (102, 109, 110)]
Like
d = [23,67,110,25,69,24,102,109]
d.sort()
diff = [y - x for x, y in zip(*[iter(d)] * 2)]
avg = sum(diff) / len(diff)
m = [[d[0]]]
for x in d[1:]:
if x - m[-1][0] < avg:
m[-1].append(x)
else:
m.append([x])
print m
## [[23, 24, 25], [67, 69], [102, 109, 110]]
Fist we calculate an average difference between sequential elements and then group together elements whose difference is less than average.
d = [1,2,4,5]
then m
becomes [[1], [2], [4], [5]]
instead of [[1, 2], [4, 5]]
. I think this can be fixed by changing diff
to diff = [data[i+1]-data[i] for i in range(len(data)-1)]
and the condition to x - m[-1][-1] < avg
.
You can use DBSCAN clustering algorithm for this.
import numpy as np
from sklearn.cluster import DBSCAN
d = [23, 67, 110, 25, 69, 24, 102, 109]
threshold=3 # max distance between numbers
dbscan = DBSCAN(eps=3, min_samples=1)
labels = dbscan.fit(np.asarray(d).reshape(-1, 1)).labels_
print(d)
print(labels)
#[23, 67, 110, 25, 69, 24, 102, 109]
#[0, 1, 2, 0, 1, 0, 3, 2]