1

I have a dictionary called purchases that has the payment method as the key and a dictionary containing payment types and their frequency as the values. Example formatting is as follows:

{'Credit card': {'Grocery': 3, 'Gas': 1, 'Store': 2},
'Debit card': {'Food': 2},
'Check': {'Rent': 1, 'Utilities': 1}, … }

I want to create a new dictionary with the frequency of payment methods as the key and the payment method as the values. Desired output:

[{6: ['Credit card']}, {2: ['Debit card', 'Check']}]

Here's my code so far:

artist_count = {}
for artist in artist_songs.keys():
    if artist in artist_count:
        artist_count[artist] += 1
    else:
        artist_count[artist] = 1
print(artist_count)

Currently, this outputs a dictionary with each unique payment method as a key and 1 as its value. I am having difficulty calculating the frequency of each, as well as switching the keys and the values. (I believe I can use the len function for the former, but I have not had luck with that yet.)

How can I create a new dictionary with the frequency of payment methods as the key and the payment method as the values?

  • Please pose a real question instead. Thanks in advance. – Peter Mortensen Nov 27 at 1:18
  • @PeterMortensen just edited it. – markellefultz20 Nov 27 at 1:21
  • You will have to first count the frequency of the payment methods. Once you have that you can loop over the values and populate a new dictionary where if a frequency exists you add the payment to its list, otherwise you add a new item to the dict with a new frequency and a list with a single payment method. Hope this helps. – k88 Nov 27 at 1:31
  • 1
    Do you really want the frequency of payment methods as the key? I'm not seeing a good use case for that. Wouldn't you rather have the payment method remain as the key, but have a new dict with key=payment method, and value=frequency? – topher217 Nov 27 at 1:37
  • 1
    Did you want a list or dict as the desired output? You wrote dict, but your example was a list. I edited your question assuming it to be a dict as the desired output, but you could equally well edit the text of the question to require a list as the output. – topher217 Nov 27 at 3:34
2

Let us do this in two steps:

  1. We first make a dictionary where the key is payment type and value is the frequency.
  2. Then, we reverse this dictionary to obtain the dictionary that you want.

For the first part,

freq_dict = {}
for key in given_dict:
    freq_dict[key] = 0
    for item in given_dict[key]:
        freq_dict[key]+=given_dict[key][item]

For the second part:

result_dict = {}
for key in freq_dict:
    value = freq_dict[key]
    if value not in result_dict:
        result_dict[value] = []
    result_dict[value].append(key) 

given_dict is the dictionary that we start with.

Let me know if something is not clear :)

2
purchases = {'Credit card': {'Grocery': 3, 'Gas': 1, 'Store': 2},
'Debit card': {'Food': 2}, 'Check': {'Rent': 1, 'Utilities': 1}}

paymentFreq = {}

for method, category in purchases.items():
    countSum = 0
    for item, count in category.items():
        countSum = countSum + count
    if countSum not in paymentFreq:
        paymentFreq[countSum] = [method]
    else:
        paymentFreq[countSum].append(method)

print(paymentFreq)
2

My solution follows the same logic as @Shagun Sodhani but uses one loop instead of two

payments = {'Credit card': {'Grocery': 3, 'Gas': 1, 'Store': 2},
'Debit card': {'Food': 2},
'Check': {'Rent': 1, 'Utilities': 1}}

sums = {}

for payment_type, payment_entries in payments.items():
    # calculate the number of times that a payment was used
    payment_type_frequency = sum(payment_entries.values())

    # check if the frequencu is already in the result array
    if payment_type_frequency in sums.keys():
        # if yes, append
        sums[payment_type_frequency].append(payment_type)
    else:
        # else add a new key and assign a one element list to it
        sums[payment_type_frequency] = [payment_type]

print(sums)

We can also simplify this code using a defaultdict:

import collections 

payments = {'Credit card': {'Grocery': 3, 'Gas': 1, 'Store': 2},
'Debit card': {'Food': 2},
'Check': {'Rent': 1, 'Utilities': 1}}

sums = collections.defaultdict(list)

for payment_type, payment_entries in payments.items():
    # calculate the number of times that a payment was used
    payment_type_frequency = sum(payment_entries.values())
    # check if the frequency is already in the result array
    sums[payment_type_frequency].append(payment_type)

print(sums)

or we can also use a list comprehension to have a smarter-looking, but unreadable code (not suggested in any production code):

import collections 

payments = {'Credit card': {'Grocery': 3, 'Gas': 1, 'Store': 2},
'Debit card': {'Food': 2},
'Check': {'Rent': 1, 'Utilities': 1}}

sums = collections.defaultdict(list)

[sums[sum(payment_entries.values())].append(payment_type) for payment_type, payment_entries in payments.items()]

print(sums)
  • When I run this i get "NameError: name 'type_key' is not defined" in the else statement – markellefultz20 Nov 27 at 1:49
  • 1
    Oh sorry, I did a lousy renaming job when refactoring the code. Please try my updated the answer – Simas Joneliunas Nov 27 at 1:53
1

can also do it in pandas this way:

df = pd.DataFrame({'vals':[*in_dict.values()],'vars':[*in_dict.keys()]})
df['vals'] = df['vals'].apply(lambda x: sum(x.values())) #because nested dict
out_dict = df.groupby('vals')['vars'].agg(list).to_dict()

output:

{2: ['Debit card', 'Check'], 6: ['Credit card']}
1

An easy way would be to use a collections.defaultdict of lists here to group by sums and append the payment methods:

from collections import defaultdict

data = {
    "Credit card": {"Grocery": 3, "Gas": 1, "Store": 2},
    "Debit card": {"Food": 2},
    "Check": {"Rent": 1, "Utilities": 1},
}

payment_map = defaultdict(list)
for method, payments in data.items():
    total = sum(payments.values())
    payment_map[total].append(method)

print([{k: v} for k, v in payment_map.items()])
# [{6: ['Credit card']}, {2: ['Debit card', 'Check']}]

The benefit of using a defaultdict here is because it automatically creates the list for you when a new key is added. You don't have to do it yourself, which also leads to cleaner code.

If you prefer a non-library solution, you can use dict.setdefault() here instead:

payment_map = {}
for method, payments in data.items():
    total = sum(payments.values())
    payment_map.setdefault(total, []).append(method)

Note: How does collections.defaultdict work? is a good question to explore for more information about how defaultdict works.

  • Despite your explanation, I'm still not seeing the advantage of defaultdict over the non-library solution you gave. Can you expand this to show an example of when this would be useful (i.e. some changes to data)? Regardless, your non-library solution is more straightforward than mine so +1. – topher217 Nov 27 at 3:17
  • @topher217 I added a link at the bottom of my answer as to why its better than using setdefault. Some of the answers in that question will interest you. From what I've seen there is a slight performance gain in using defaultdict, but not by much. IMO its the pythonic way to group items cleanly. – RoadRunner Nov 27 at 3:21
0

If pandas is an option, Try this:

import pandas as pd
import collections

mycounter=[]
dff = {'Credit card': {'Grocery': 3, 'Gas': 1, 'Store': 2},'Debit card': {'Food': 2},'Check': {'Rent': 1, 'Utilities': 1}}

newdf2 = pd.read_json(json.dumps(dff))
for i,j in newdf2.iteritems():
    mycounter.append({ newdf2[i].sum().astype(int) :[i]})

res = {}
for d in mycounter:
    for k, v in d.items():
        res.setdefault(k, []).extend(v)

res
#[{6: ['Credit card']}, {2: ['Debit card', 'Check']}]


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.