# Assign same random value to A-B , B-A pairs in python Dataframe

I have a Dataframe like

`````` Sou  Des
1    3
1    4
2    3
2    4
3    1
3    2
4    1
4    2
``````

I need to assign random value for each pair between 0 and 1 but have to assign the same random value for both similar pairs like "1-3", "3-1" and other pairs. I'm expecting a result dataframe like

`````` Sou  Des   Val
1    3    0.1
1    4    0.6
2    3    0.9
2    4    0.5
3    1    0.1
3    2    0.9
4    1    0.6
4    2    0.5
``````

How to assign same random value similar pairs like "A-B" and "B-A" in python pandas .

Let's create first a sorted by `axis=1` helper DF:

``````In [304]: x = pd.DataFrame(np.sort(df, axis=1), df.index, df.columns)

In [305]: x
Out[305]:
Sou  Des
0    1    3
1    1    4
2    2    3
3    2    4
4    1    3
5    2    3
6    1    4
7    2    4
``````

now we can group by its columns:

``````In [306]: df['Val'] = (x.assign(c=1)
.groupby(x.columns.tolist())
.transform(lambda x: np.random.rand(1)))

In [307]: df
Out[307]:
Sou  Des       Val
0    1    3  0.989035
1    1    4  0.918397
2    2    3  0.463653
3    2    4  0.313669
4    3    1  0.989035
5    3    2  0.463653
6    4    1  0.918397
7    4    2  0.313669
``````
• Find a new way :-) – YOBEN_S Feb 25 '18 at 3:57

This is new way

``````s=pd.crosstab(df.Sou,df.Des)

b = np.random.random_integers(-2000,2000,size=(len(s),len(s)))
sy = (b + b.T)/2

s.mul(sy).replace(0,np.nan).stack().reset_index()

Out[292]:
Sou  Des       0
0    1    3   -60.0
1    1    4  -867.0
2    2    3   269.0
3    2    4  1152.0
4    3    1   -60.0
5    3    2   269.0
6    4    1  -867.0
7    4    2  1152.0
``````

The trick here is to do a bit of work away from the dataframe. You can break this down into three steps:

• assemble a list of all tuples `(a,b)`
• assign a random value to each pair so that `(a,b)` and `(b,a)` have the same value
• fill in the new column

Assuming your dataframe is called `df`, we can make a list of all the pairs ordered so that `a <= b`. I think this will be easier than trying to keep track of both `(a,b)` and `(b,a)`.

``````pairs = set([(a,b) if a <= b else (b,a)
for a, b in df.itertuples(index=False,name=None))
``````

It's simple enough to assign a random number to each of these pairs and store it in a dictionary, so I'll leave that to you. Call it `pair_dict`.

Now, we just have to lookup the values. We'll ultimately want to write

``````df['Val'] = df.apply(<some function>, axis=1)
``````

where our function looks up the appropriate value in `pair_dict`.

Rather than try to cram it into a lambda (though we could), let's write it separately.

``````def func(row):
if row['Sou'] <= row['Des']:
key = (row['Sou'], row['Des'])
else:
key = (row['Des'], row['Sou'])
return pair_dict[key]
``````

if you are ok having the "random" value coming from the hash() method you can achieve with frozenset()

``````df = pd.DataFrame([[1,1,2,2,3,3,4,4],[3,4,3,4,1,2,1,2]]).T
df.columns = ['Sou','Des']
df['Val']= df.apply(lambda x: hash(frozenset([x["Sou"],x["Des"]])),axis=1)
print df
``````

which gives:

``````   Sou  Des         Val
0    1    3  1580307032
1    1    4 -1736016661
2    2    3   741508915
3    2    4 -1930135584
4    3    1  1580307032
5    3    2   741508915
6    4    1 -1736016661
7    4    2 -1930135584
``````

reference: Why aren't Python sets hashable?