Given a list, find the most frequent element in it. If there are multiple elements that appear maximum number of times, print any one of them.
Examples:
Input : [2, 1, 2, 2, 1, 3] Output : 2 Input : ['Dog', 'Cat', 'Dog'] Output : Dog
Approach #1 : Naive Approach
This is a brute force approach in which we make use of for loop to count the frequency of each element. If the current frequency is greater than the previous frequency, update the counter and store the element.
Python3
# Program to find most frequent # element in a list def most_frequent( List ): counter = 0 num = List [ 0 ] for i in List : curr_frequency = List .count(i) if (curr_frequency> counter): counter = curr_frequency num = i return num List = [ 2 , 1 , 2 , 2 , 1 , 3 ] print (most_frequent( List )) |
2
Approach #2 : Pythonic Naive approach
Make a set of the list so that the duplicate elements are deleted. Then find the highest count of occurrences of each element in the set and thus, we find the maximum out of it.
Python3
# Program to find most frequent # element in a list def most_frequent( List ): return max ( set ( List ), key = List .count) List = [ 2 , 1 , 2 , 2 , 1 , 3 ] print (most_frequent( List )) |
2
Approach #3 : Using Counter
Make use of Python Counter which returns count of each element in the list. Thus, we simply find the most common element by using most_common() method.
Python3
# Program to find most frequent # element in a list from collections import Counter def most_frequent( List ): occurence_count = Counter( List ) return occurence_count.most_common( 1 )[ 0 ][ 0 ] List = [ 2 , 1 , 2 , 2 , 1 , 3 ] print (most_frequent( List )) |
2
Approach #4 : By finding mode
Finding most frequent element means finding mode of the list. Hence, we use mode method from statistics.
Python3
import statistics from statistics import mode def most_common( List ): return (mode( List )) List = [ 2 , 1 , 2 , 2 , 1 , 3 ] print (most_common( List )) |
2
Approach #5 : Using Python dictionary
Use python dictionary to save element as a key and its frequency as the value, and thus find the most frequent element.
Python3
# Program to find most frequent # element in a list def most_frequent( List ): dict = {} count, itm = 0 , '' for item in reversed ( List ): dict [item] = dict .get(item, 0 ) + 1 if dict [item] > = count : count, itm = dict [item], item return (itm) List = [ 2 , 1 , 2 , 2 , 1 , 3 ] print (most_frequent( List )) |
2
Approach #6 : Using pandas library.
Incase of multiple values getting repeated. Print all values.
Python3
import pandas as pd List = [ 2 , 1 , 2 , 2 , 1 , 3 , 1 ] # Create a panda DataFrame using the list df = pd.DataFrame({ 'Number' : List }) # Creating a new dataframe to store the values # with appropriate column name # value_counts() returns the count based on # the grouped column values df1 = pd.DataFrame(data = df[ 'Number' ].value_counts(), columns = [[ 'Number' , 'Count' ]]) # The values in the List become the index of the new dataframe. # Setting these index as a column df1[ 'Count' ] = df1[ 'Number' ].index # Fetch the list of frequently repeated columns list (df1[df1[ 'Number' ] = = df1.Number. max ()][ 'Count' ]) |
[2,1]
Approach #7: Using numpy library
Note: Install numpy module using command “pip install numpy”
Use numpy library to create an array of unique elements and their corresponding counts. Then, find the index of the maximum count and return the corresponding element from the unique array.
Python
import numpy as np # Program to find most frequent # element in a list def most_frequent( List ): unique, counts = np.unique( List , return_counts = True ) index = np.argmax(counts) return unique[index] List = [ 2 , 1 , 2 , 2 , 1 , 3 ] print (most_frequent( List )) |
Output:
2
Time complexity: O(n) for numpy unique function and argmax
Space complexity: O(n) for storing unique values