Showing posts with label Mode. Show all posts
Showing posts with label Mode. Show all posts

Sunday, 21 July 2024

Measures of Central Tendency: Mean, Median, Mode, examples, definition, formulas

Measures of Central Tendency: Mean, Median, Mode, examples, definition, formulas

Measures of central tendency is an important measure in descriptive statistics. Mean, median, mode in descriptive statistics play a crucial role for data analysis and research. We will learn what is central tendency in statistics and why is matters, definition of central tendency, measures of central tendency, how to calculate mean median mode, mean median mode formulas and examples of central tendency, advantages and disadvantages of mean median mode, Real Life Examples of Central Tendency.

Measures of Central Tendency:  Quantitative data in the mass exhibits the tendency to concentrate at certain values , usually somewhere in the center of the distribution. measures of this tendency are called measures of central tendency or averages. 

 Central Tendency Definition:  According to Bowley, averages are "statistical constants which enables us to comprehend in a single effort the significance of the whole"

Why central tendency?

Measures of central tendency give us an idea about the concentration of the values in the central part of the distribution and hence name measures of central tendency

How to Calculate Measures of Central Tendencyfollowing are the five measures of central tendency that are in common use:

1) Arithmetic Mean or Simple Mean

2) Median 

3) Mode

4) Geometric Mean 

5) Harmonic Mean

Let’s us now understand Definition and examples of Mean Median Mode, How to Calculate Mean Median and Mode and Advantages and Disadvantages of Mean Median Mode.

 MEAN: Definition, Examples, formulas, Advantages and Disadvantages

Mean is an important measure of central tendency. It is also known as ‘ averages’.

There are three types of mean:

1.      Arithmetic mean

2.      Geometric mean

3.      Harmonic mean

d  Definition of Arithmetic mean: arithmetic mean of a set of observations is their sum divided by the number of observations . Arithmetic mean is simply called mean.

Mean Formula

 For the mean (or average) of 𝑛 variables x1,x2,...xn :

mean formula

In case of frequency distribution:

For xi I fi

 where i=1,2,…,n

            xi= variable

            fi= frequency of the variable xi

mean formula

In case of grouped or continuous frequency distribution:

x Is taken as the mid- value of the corresponding class.

 

STEP DEVIATION METHODS OF MEAN

If the values of x and/or f are large, calculation of mean by above formula is quite time consuming. The arithmetic is reduced to a great extent by taking deviations of the given values from any arbitrary point ‘A’ .

step deviation formula of mean

Summing both sides over I from 1 to n, we get

step deviation formula of mean


then mean :

step deviation formula of mean

In case of grouped or continuous frequency distribution, the arithmetic mean is reduced to still greater extent by taking di= (xi-A)/h

Where A = an arbitrary point

            h = the common magnitude of class interval

then we have h*di=xi-A

formula : 

formula of mean

 Example of Mean: Calculate the arithmetic mean of the marks from the following table :

Marks

0-10

10-20

20-30

30-40

40-50

50-60

No. of students

12

18

27

20

17

6

 Solution:

Marks

No. of students

(f)

Mid- points

(x)

fx

0-10

12

5

60

10-20

18

15

270

20-30

27

25

675

30-40

20

35

700

40-50

17

45

765

50-60

6

55

330

Total

100

 

2800

 Arithmetic mean: ‘/bar{x}’= 1/N∑fx=(1/100)*2800=28

Advantages and Disadvantages of Mean

Advantages :

1.      It is rigidly defined.

2.       it is easy to understand and easy to calculate.

3.      It is based upon all the observations.

4.      It is amenable to arithmetic treatment.

5.      It is stable average as it is affected least by fluctuations of sampling.

Disadvantages :

1.      It cannot be determined by inspection, nor it can be located graphically.

2.      It can not be used if we are dealing with qualitative characteristics, which cannot be measured quantitatively; such as honesty, beauty.

3.      It cannot be obtained if a single observation is mission or lost unless we drop it out.

4.      It is affected very much by extreme values.

5.      Arithmetic mean cannot be calculated if the extreme class is open, e.g. below 10 or above 90.

6.      In extremely asymmetric distribution, usually arithmetic mean is not a suitable measure of location.

Median: Definition, Examples, formulas, Advantages and Disadvantages

Median definition:

 Median is the value of the variable which divides it into two equal parts. It is the value which exceeds and is exceeded by the same number of observations. Such that number of observations above it is equal to the number of observations below it. Median is thus a positional average.

Median formula:

In case of ungrouped data:

If number of observations is odd then median is the middle value after the values have been arranged in ascending or descending order of magnitude.

If number of observations is even then , there are two middle terms and median is obtained by taking the arithmetic mean of middle terms.

In case of discrete frequency distribution:

Median is obtained by considering the cumulative frequencies. The steps for calculating median are given below:

i)                    Find N/2 , where N=∑fi

ii)                  See the less then cumulative frequency (c.f.) just greater than N/2.

iii)                The corresponding value of x is median.

 

In case of continuous frequency distribution:

In case of continuous frequency distribution, the class corresponding to the c.f. just greater than N/2 is called the median class and the value of median is obtained by the following formula:

formula of median
Where l = lower limit of the median class

            f = frequency of the median class

            h = magnitude of the median class

            c = c.f. of the class preceding  the median class.

            N = ∑f

Advantages and Disadvantages of Median:

Advantages:

1.      It is rigidly defined.

2.      It is easily understood and is easy to calculate. In some cases it can be located merely by inspection.

3.       It is not at all affected by extreme values.

4.      It can be calculated for distribution with open-end classes.

 

Disadvantages:

1.      In case of even number of observations, median cannot be determined exactly. We merely estimate it by taking the mean of two middle terms.

2.      Median is not based on all the observations. This property is sometimes described by saying that median is insensitive.

3.      It is not amenable to algebraic treatment.

4.      As compared with mean, it is affected much by fluctuations of sampling.

 

Mode: Definition, Examples, formulas, Advantages and Disadvantages

Mode definition:

Mode is the value which occurs most frequently in a set of observations and around which the other items of the set of cluster densely. In other words , mode is the value of the variable which is predominant in the series.

In case of discrete frequency distribution:

Mode is the value of x corresponding to maximum frequency.

Example:

x

1

2

3

4

5

6

7

8

f

4

9

16

25

22

15

7

3

Value of x corresponding to the maximum frequency , viz, 25 is 4 .

Hence, mode is 4.

 

In case of continuous frequency distribution:

In case of continuous frequency distribution, mode is given by the formula:

how to calculate mode
Where l = lower limit

            h = magnitude

            f1 = frequency of modal class

            f0 = frequency of the class preceding modal class

            f2 = frequency of the class succeeding the modal class.

Advantages and Disadvantages of Mode:

Advantages:

1.      Mode is readily comprehensive and easy to calculate. Like median, mode can also be located in some cases merely by inspection.

2.      Mode is not at all affected by extreme values.

3.      Mode can be located even if frequency distribution has unequal class interval. Open end classes also do not pose any problem in the location of mode.

Disadvantages:

1.      Mode is ill-defined. It is not always possible to find a clearly defined mode.

2.      It is not based upon all the observations.

3.      It is not capable of further mathematical treatment.

4.      As compared with mean, mode is affected to a greater extent, by fluctuations of sampling.

 Real Life Examples of Central Tendency: if a company wants to produce shoes for particular market. if company want profit in the business then company has to produce the shoes of that size which has more demand in market. so that they can fulfill the demand and make profits . in this case , company has to collect data and check which size of shoes is in demand. this can be measures by measures of central tendency. like the size of shoes is in huge demand which is shown by mode of data. then company will get profit by producing that size of shoes in more quantity to meet the supply and demand conditions.

 

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