Python | Tuple Column element frequency
In Python, we need to handle various forms of data and one among them is a list of tuples in which we may have to perform any kind of operation. This particular article discusses the ways of finding the frequency of the Kth element in the list of tuples. Let’s discuss certain ways in which this can be performed.
Method #1 : Using map() + count()
The map function can be used to accumulate the indices of all the tuples in a list and the task of counting the frequency can be done using the generic count function of python library.
Python3
# Python3 code to demonstrate # Tuple Column element frequency # using map() + count() # initializing list of tuples test_list = [( 1 , 'Geeks' ), ( 2 , 'for' ), ( 3 , 'Geeks' )] # printing the original list print ( "The original list is : " + str (test_list)) # initializing K K = 1 # using map() + count() # Tuple Column element frequency res = list ( map ( lambda i: i[K], test_list)).count( 'Geeks' ) # printing result print ( "The frequency of element at Kth index is : " + str (res)) |
The original list is : [(1, 'Geeks'), (2, 'for'), (3, 'Geeks')] The frequency of element at Kth index is : 2
Time complexity: O(n),
Auxiliary space: O(1).
Method #2: Using Counter() + list comprehension
List comprehension performs the task of getting the Kth element of the tuples and the counting part is handled by Counter function of collection library.
Python3
# Python3 code to demonstrate # Tuple Column element frequency # using Counter() + list comprehension from collections import Counter # initializing list of tuples test_list = [( 1 , 'Geeks' ), ( 2 , 'for' ), ( 3 , 'Geeks' )] # printing the original list print ( "The original list is : " + str (test_list)) # initializing K K = 1 # using Counter() + list comprehension # Tuple Column element frequency res = Counter(i[K] for i in test_list) # printing result print ( "The frequency of element at Kth index is : " + str (res[ 'Geeks' ])) |
The original list is : [(1, 'Geeks'), (2, 'for'), (3, 'Geeks')] The frequency of element at Kth index is : 2
Time complexity: O(n), where n is the length of the input list.
Space complexity: O(k), where k is the number of unique elements at the Kth index of the input list.
Method 3: Iterative using loop
using a simple for loop to iterate through the list of tuples and maintain a dictionary to keep track of the frequency of elements at Kth index.
Python3
# initializing list of tuples test_list = [( 1 , 'Geeks' ), ( 2 , 'for' ), ( 3 , 'Geeks' )] # initializing K K = 1 # using for loop to count frequency freq_dict = {} for tup in test_list: if tup[K] in freq_dict: freq_dict[tup[K]] + = 1 else : freq_dict[tup[K]] = 1 # printing result print ( "The frequency of element at Kth index is :" , freq_dict[ 'Geeks' ]) |
The frequency of element at Kth index is : 2
Time complexity: O(n), where n is the length of the list of tuples.
Auxiliary space: O(k), where k is the number of distinct elements at Kth index.
Method 4: Use defaultdict from collections module
Stepwise Approach:
- Import the defaultdict module from collections.
- Initialize a defaultdict with an integer as the default value. This means that when a key is not present in the dictionary, it will be assigned a default value of 0.
- Loop through the tuples in the test_list.
- For each tuple, access the element at the Kth index and increment its count in the defaultdict.
- Print the frequency of the element at the Kth index.
Python3
from collections import defaultdict # initializing list of tuples test_list = [( 1 , 'Geeks' ), ( 2 , 'for' ), ( 3 , 'Geeks' )] # initializing K K = 1 # using defaultdict to count frequency freq_dict = defaultdict( int ) for tup in test_list: freq_dict[tup[K]] + = 1 # printing result print ( "The frequency of element at Kth index is :" , freq_dict[ 'Geeks' ]) |
The frequency of element at Kth index is : 2
Time complexity: O(n), where n is the length of the input list.
Auxiliary space: O(n), since we are creating a dictionary with n unique keys.
Method 5: Use the groupby function from the itertools module.
Steps:
- Import groupby function from itertools module
- Sort the list of tuples based on the element at the Kth index
- Use groupby function to group the tuples based on the element at the Kth index
- Create a dictionary comprehension to count the frequency of each group
- Finally, print the frequency of the element at the Kth index
Python3
from itertools import groupby # Initializing list of tuples test_list = [( 1 , 'Geeks' ), ( 2 , 'for' ), ( 3 , 'Geeks' )] # Initializing K K = 1 # sorting the list of tuples based on Kth index sorted_list = sorted (test_list, key = lambda x: x[K]) # Grouping tuples based on Kth index # using groupby() function grouped = groupby(sorted_list, key = lambda x: x[K]) # Counting the frequency of each group # using dictionary comprehension freq_dict = {key: len ( list (group)) for key, group in grouped} # Printing result print ( "The frequency of element at Kth index is:" , freq_dict[ 'Geeks' ]) |
The frequency of element at Kth index is: 2
Time complexity: O(nlogn) due to the sorting operation, where n is the length of the input list of tuples.
Auxiliary space: O(n) due to the creation of the sorted list and dictionary.
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