Seminar on MEASURES OF DISPERSION

Slides:



Advertisements
Similar presentations
Data Analysis Techniques II: Measures of Central Tendencies, Dispersion and Symmetry Advanced Planning Techniques, Lecture 9 Prof. Dr. S. Shabih-ul-Hassan.
Advertisements

SUMMARIZING DATA: Measures of variation Measure of Dispersion (variation) is the measure of extent of deviation of individual value from the central value.
Measures of Dispersion
Descriptive Statistics
Measures of Dispersion
Measures of Dispersion or Measures of Variability
B a c kn e x t h o m e Parameters and Statistics statistic A statistic is a descriptive measure computed from a sample of data. parameter A parameter is.
WFM 5201: Data Management and Statistical Analysis
Measures of Dispersion
Measures of Central Tendency U. K. BAJPAI K. V. PITAMPURA.
Lecture 4 Dustin Lueker.  The population distribution for a continuous variable is usually represented by a smooth curve ◦ Like a histogram that gets.
Quiz 2 Measures of central tendency Measures of variability.
Chapter 3 Descriptive Measures
Chapter 13 Section 5 - Slide 1 Copyright © 2009 Pearson Education, Inc. AND.
LECTURE 12 Tuesday, 6 October STA291 Fall Five-Number Summary (Review) 2 Maximum, Upper Quartile, Median, Lower Quartile, Minimum Statistical Software.
Chapter 13 Statistics © 2008 Pearson Addison-Wesley. All rights reserved.
Descriptive Statistics Anwar Ahmad. Central Tendency- Measure of location Measures descriptive of a typical or representative value in a group of observations.
Dispersion Geeta Sukhija Associate Professor Department of Commerce Post Graduate Government College for Girls Sector 11, Chandigarh.
Overview Summarizing Data – Central Tendency - revisited Summarizing Data – Central Tendency - revisited –Mean, Median, Mode Deviation scores Deviation.
Modified by ARQ, from © 2002 Prentice-Hall.Chap 3-1 Numerical Descriptive Measures Chapter %20ppts/c3.ppt.
Statistics 1 Measures of central tendency and measures of spread.
BUS250 Seminar 4. Mean: the arithmetic average of a set of data or sum of the values divided by the number of values. Median: the middle value of a data.
Chapter 4 Variability. Variability In statistics, our goal is to measure the amount of variability for a particular set of scores, a distribution. In.
Measures of Dispersion
“STANDARD DEVIATION” Standard Deviation: Std deviation is the best and scientific method of dispersion. It is widely used method used in statistical.
1 PUAF 610 TA Session 2. 2 Today Class Review- summary statistics STATA Introduction Reminder: HW this week.
13-1 Copyright  2010 McGraw-Hill Australia Pty Ltd PowerPoint slides to accompany Croucher, Introductory Mathematics and Statistics, 5e Chapter 13 Measures.
SECTION 12-3 Measures of Dispersion Slide
A tour of fundamental statistics introducing Basic Statistics.
According to researchers, the average American guy is 31 years old, 5 feet 10 inches, 172 pounds, works 6.1 hours daily, and sleeps 7.7 hours. These numbers.
INVESTIGATION 1.
Basic Measurement and Statistics in Testing. Outline Central Tendency and Dispersion Standardized Scores Error and Standard Error of Measurement (Sm)
© 2008 Pearson Addison-Wesley. All rights reserved Chapter 1 Section 13-3 Measures of Dispersion.
INVESTIGATION Data Colllection Data Presentation Tabulation Diagrams Graphs Descriptive Statistics Measures of Location Measures of Dispersion Measures.
LECTURE CENTRAL TENDENCIES & DISPERSION POSTGRADUATE METHODOLOGY COURSE.
Lecture 4 Dustin Lueker.  The population distribution for a continuous variable is usually represented by a smooth curve ◦ Like a histogram that gets.
1 Descriptive Statistics Descriptive Statistics Ernesto Diaz Faculty – Mathematics Redwood High School.
Summary Statistics: Measures of Location and Dispersion.
1.  In the words of Bowley “Dispersion is the measure of the variation of the items” According to Conar “Dispersion is a measure of the extent to which.
Lesson 25 Finding measures of central tendency and dispersion.
Session 8 MEASURES Of DISPERSION. Learning Objectives  Why do we study dispersion?  Measures of Dispersion Range Standard Deviation Variance.
Adapted from Pearson Education, Inc. Copyright © 2009 Pearson Education, Inc. Welcome to MM150! Kirsten Meymaris Thursday, Mar. 31st Plan for the hour.
Medical Statistics (full English class) Ji-Qian Fang School of Public Health Sun Yat-Sen University.
By Tatre Jantarakolica1 Fundamental Statistics and Economics for Evaluating Survey Data of Price Indices.
1 STAT 500 – Statistics for Managers STAT 500 Statistics for Managers.
Descriptive Statistics(Summary and Variability measures)
Dr Hidayathulla Shaikh. At the end of the lecture students should be able to  Enumerate various measures of central tendency  Enumerate various measures.
Introduction Dispersion 1 Central Tendency alone does not explain the observations fully as it does reveal the degree of spread or variability of individual.
MM150 ~ Unit 9 Statistics ~ Part II. WHAT YOU WILL LEARN Mode, median, mean, and midrange Percentiles and quartiles Range and standard deviation z-scores.
 2012 Pearson Education, Inc. Slide Chapter 12 Statistics.
Central Tendency Quartiles and Percentiles (الربيعيات والمئينات)
Descriptive statistics
Descriptive Statistics Ernesto Diaz Faculty – Mathematics
Business Decision Making
MATHEMATICS The Measure of Data Location
Descriptive Statistics
Measures of dispersion
INTRODUCTION Dispersion refers to the extent to which the items vary from one another and from the central value.It may be noted that the measures of dispersion.
Measures of Central Tendency
Mathematical Presentation of Data Measures of Dispersion
Chapter 12 Statistics 2012 Pearson Education, Inc.
Measures of Central Tendency
Description of Data (Summary and Variability measures)
Variance and Standard Deviation
Numerical Descriptive Measures
Measures of Dispersion
BUSINESS MATHEMATICS & STATISTICS.
Week 11.
Numerical Descriptive Measures
Presentation transcript:

Seminar on MEASURES OF DISPERSION Presented by JAYAKUMARA Research Scholar

INTRODUCTION The Measures of central tendency gives us a birds eye view of the entire data they are called averages of the first order, it serve to locate the centre of the distribution but they do not reveal how the items are spread out on either side of the central value. The measure of the scattering of items in a distribution about the average is called dispersion.

INTRODUCTION Dispersion measures the extent to which the items vary from some central value. It may be noted that the measures of dispersion or variation measure only the degree but not the direction of the variation. The measures of dispersion are also called averages of the second order because they are based on the deviations of the different values from the mean or other measures of central tendency which are called averages of the first order.

DEFINITION In the words of Bowley “Dispersion is the measure of the variation of the items” According to Conar “Dispersion is a measure of the extent to which the individual items vary”

METHODS OF MEASURING DISPERSION Range Quartile Deviation Mean Deviation Standard Deviation

RANGE It is defined as the difference between the smallest and the largest observations in a given set of data. Formula is R = L – S Ex. Find out the range of the given distribution: 1, 3, 5, 9, 11 The range is 11 – 1 = 10.

The formula of Quartile Deviation is It is the second measure of dispersion, no doubt improved version over the range. It is based on the quartiles so while calculating this may require upper quartile (Q3) and lower quartile (Q1) and then is divided by 2. Hence it is half of the deference between two quartiles it is also a semi inter quartile range. The formula of Quartile Deviation is (Q D) = Q3 - Q1 2

MEAN DEVIATION Mean Deviation is also known as average deviation. In this case deviation taken from any average especially Mean, Median or Mode. While taking deviation we have to ignore negative items and consider all of them as positive. The formula is given below

MEAN DEVIATION The formula of MD is given below MD = d N (deviation taken from mean) MD = m N (deviation taken from median) MD = z N (deviation taken from mode)

STANDARD DEVIATION The concept of standard deviation was first introduced by Karl Pearson in 1893. The standard deviation is the most useful and the most popular measure of dispersion. Just as the arithmetic mean is the most of all the averages, the standard deviation is the best of all measures of dispersion.

STANDARD DEVIATION The standard deviation is represented by the Greek letter (sigma). It is always calculated from the arithmetic mean, median and mode is not considered. While looking at the earlier measures of dispersion all of them suffer from one or the other demerit i.e. Range –it suffer from a serious drawback considers only 2 values and neglects all the other values of the series.

STANDARD DEVIATION Quartile deviation considers only 50% of the item and ignores the other 50% of items in the series. Mean deviation no doubt an improved measure but ignores negative signs without any basis. Karl Pearson after observing all these things has given us a more scientific formula for calculating or measuring dispersion. While calculating SD we take deviations of individual observations from their AM and then each squares. The sum of the squares is divided by the number of observations. The square root of this sum is knows as standard deviation.

MERITS OF STANDARD DEVIATION Very popular scientific measure of dispersion From SD we can calculate Skewness, Correlation etc It considers all the items of the series The squaring of deviations make them positive and the difficulty about algebraic signs which was expressed in case of mean deviation is not found here.

DEMERITS OF STANDARD DEVIATION Calculation is difficult not as easier as Range and QD It always depends on AM Extreme items gain great importance The formula of SD is = √∑d2 N Problem: Calculate Standard Deviation of the following series X – 40, 44, 54, 60, 62, 64, 70, 80, 90, 96

NO OF YOUNG ADULTS VISIT TO THE LIBRARY IN 10 DAYS (X) Solution : NO OF YOUNG ADULTS VISIT TO THE LIBRARY IN 10 DAYS (X) d=X - A.M d2 40 -26 676 44 -22 484 54 -12 144 60 -6 36 62 -4 16 64 -2 4 70 80 14 196 90 24 596 96 30 900 N=10 X=660 d2 = 3048

Standard deviation AM = X N = 660 = 66 AM 10 SD = √∑d2

Thank you Bibliography Sony, R.S.(2009). Essential business mathematics and statistics. New Delhi: Ane books. Thank you