starting by another my question I've done yesterday Pandas set value if all columns are equal in a dataframe
Starting by @anky_91 solution I'm working on something similar.
Instead of put 1
or -1
if all columns are equals I want something more flexible.
In fact I want 1
if (for example) the 70% percentage of the columns are 1
, -1
for the same but inverse condition and 0
else.
So this is what I've wrote:
# Instead of using .all I use .sum to count the occurence of 1 and 0 for each row
m1 = local_df.eq(1).sum(axis=1)
m2 = local_df.eq(0).sum(axis=1)
# Debug print, it work
print(m1)
print(m2)
But I don't know how to change this part:
local_df['enseamble'] = np.select([m1, m2], [1, -1], 0)
m = local_df.drop(local_df.columns.difference(['enseamble']), axis=1)
I write in pseudo code what I want:
tot = m1 + m2
if m1 > m2
if(m1 * 100) / tot > 0.7 # simple percentage calculus
df['enseamble'] = 1
else if m2 > m1
if(m2 * 100) / tot > 0.7 # simple percentage calculus
df['enseamble'] = -1
else:
df['enseamble'] = 0
Thanks
Edit 1
This is an example of expected output:
NET_0 NET_1 NET_2 NET_3 NET_4 NET_5 NET_6
date
2009-08-02 0 1 1 1 0 1
2009-08-03 1 0 0 0 1 0
2009-08-04 1 1 1 0 0 0
date enseamble
2009-08-02 1 # because 1 is more than 70%
2009-08-03 -1 # because 0 is more than 70%
2009-08-04 0 # because 0 and 1 are 50-50
1
if the 70% in that row is1
,-1
if the 70% is0
,0
else