# List of tuples into a binary table?

I have a list of transactions/tuples in Python with varying number or elements, like this:

``````lst = [('apple','banana','carrots'),('apple',),('banana','carrots',)]
``````

I would like to store this list in a tabular form (preferably in a `pd.DataFrame`) such as this:

``````   apple  banana  carrots
0      1       1        1
1      1       0        0
2      0       1        1
``````

But if try to convert directly using `pd.DataFrame`, I get his instead:

``````pd.DataFrame(lst)
``````
``````        0        1        2
0   apple   banana  carrots
1   apple     None     None
2  banana  carrots     None
``````

How can I convert this type of list into a binary table?

## 7 Answers

Let's try `get_dummies` + `groupby` + `sum` -

``````pd.get_dummies(pd.DataFrame(lst)).groupby(by=lambda x: x.split('_')[1], axis=1).sum()

apple  banana  carrots
0      1       1        1
1      1       0        0
2      0       1        1
``````

This should be pretty fast.

• Not just pretty fast, but super dooper fast – Bharath Dec 13 '17 at 9:59
• Really fast indeed! It took me 50s to process a list of 4.5 million elements! Thank you COLDSPEED !! – Adriano Arantes Dec 14 '17 at 3:35
• @AdrianoArantes you’re welcome! How long was the previous accepted answer taking? – cs95 Dec 14 '17 at 3:36
• @cᴏʟᴅsᴘᴇᴇᴅ, Robbie solution was taking 1 min and 30 sec – Adriano Arantes Dec 14 '17 at 3:40

This is very simple if you use `value_counts` over columns i.e

``````pd.DataFrame(lst).apply(pd.value_counts,1).fillna(0)

apple  banana  carrots
0    1.0     1.0      1.0
1    1.0     0.0      0.0
2    0.0     1.0      1.0
``````
• `value_counts` seems like 'belong' to you :-) – YOBEN_S Dec 13 '17 at 2:56
• Haha maybe, felt like using it – Bharath Dec 13 '17 at 2:57
• Hi @Dark. Thank you for your solution. It seems simple, but it is taking too long to run. My list actually has more than 4 million elements. And for some reason Robbie's solution is running much faster. Could you help me understand why? Thanks – Adriano Arantes Dec 13 '17 at 6:21
• @AdrianoArantes thats the draw back of apply, do see `coldspeed`'s answer, I dont think that speed can be beaten. – Bharath Dec 13 '17 at 10:00

The following method:

1. Define lst

2. Find all unique strings in lst

3. Count occurrences in each tuple within the list

4. Create dataframe

Is implemented here:

``````import pandas as pd
import numpy as np

lst = [('apple','banana','carrots'),('apple',),('banana','carrots',)]
cols = np.unique(sum(tuple(lst),()))
data = [[i.count(j) for j in cols] for i in lst]
df = pd.DataFrame(columns=cols, data=data)
``````

Output:

``````   apple  banana  carrots
0      1       1        1
1      1       0        0
2      0       1        1
``````
• this wont be binary if a single element occurs more than once in a row – Nate Dec 13 '17 at 1:13
• @Nate yes that's true, though it will be binary if the input is in the same format as in the question. – Robbie Dec 13 '17 at 1:14
• Thanks @Robbie, your solution worked well in my case, and yes, for my problems each element appears only once per row. – Adriano Arantes Dec 13 '17 at 1:28
• @AdrianoArantes counting is nothing but value_counts in pandas, what do you think about my solution. – Bharath Dec 13 '17 at 2:37

Just `stack` and `get_dummies`

``````pd.DataFrame(lst).stack().str.get_dummies().sum(level=0)
Out[114]:
apple  banana  carrots
0      1       1        1
1      1       0        0
2      0       1        1
``````
• Check out my answer when you can! – cs95 Dec 13 '17 at 9:12
• @cᴏʟᴅsᴘᴇᴇᴅ nice usage of groupby ！！ – YOBEN_S Dec 13 '17 at 13:49

You can try this:

``````import itertools
class Table:
def __init__(self, data):
self.lst = data
self.headers = headers = list(set(itertools.chain(*self.lst)))
self.new_count = {i:[b.count(i) for b in self.lst] for i in self.headers}
def __getitem__(self, row):
if isinstance(row, int):
return [d[row] for c, d in sorted(self.new_count.items(), key=lambda x:x[0])]
return self.new_count[row]
def __repr__(self):
return ' '.join(sorted(self.new_count.keys()))+'\n'+'\n'.join('{}. {}'.format(i, ' '.join(map(str, d))) for i, d in enumerate(zip(*[e[-1] for e in sorted(self.new_count.items(), key=lambda x:x[0])])))

lst = [('apple','banana','carrots'),('apple',),('banana','carrots',)]
t = Table(lst)
print(t)
``````

Output:

``````apple banana carrots
0. 1 1 1
1. 1 0 0
2. 0 1 1
``````

Create a temporary list with items converted to binary, then use Dataframe Write a loop that converts each item into binary.

``````def pad_collection(collection, pad_value):
sorted_collection = sorted(collection, key=lambda tup: len(tup))
max_length = len(sorted_collection[-1])
for item in collection:
for i in range (max_length - len(item)):
item.append(pad_value)
return collection

def convert_to_binary(collection):
result = []
padded_collection = pad_collection(collection)
for i in padded_collection:
temp = []
for element in i:
new_element = int(bool(element))
temp.append(new_element)
result.append(tuple(temp))
return padded_collection
``````

You can try in pure logic without importing any external module ,

``````lst = [('apple','banana','carrots'),('apple',),('banana','carrots',)]

track_uniqu=[]
for i in lst:
for k in i:

if k not in track_uniqu:
track_uniqu.append(k)

final={}
for i,j in enumerate(lst):

dummy=[0]*len(track_uniqu)

for k in j:
if k in track_uniqu:

dummy[track_uniqu.index(k)]=1
final[i]=dummy
else:
pass
print(final)
``````

output:

``````{0: [1, 1, 1], 1: [1, 0, 0], 2: [0, 1, 1]}
``````

Result is in dict format but you can create tabular data from this dict as you want.