SlideShare a Scribd company logo
Descriptions of Data Measures of Central Tendency Definition:  A Measure of Central Tendency has been defined as a statistic calculated from a set of observations or scores and designed to typify or represent that series. It is also defined as the tendency of the same observations or cases to cluster about a point, with either to an absolute value or to a frequency of occurrence; usually but not necessarily, about midway between the extreme high and the extreme low values in the distribution.
Measures of Central Tendency The Mean Definition:  The arithmetic mean or simply the mean is the average of a group of measures. Characteristics of the mean 1. The arithmetic mean, or simply mean is the center of gravity  or balance point of a group of measures. 2. The mean is easily affected by a change in the magnitude of  any of the measures.
Characteristics of the Mean 3. The mean is the most reliable measure of central tendency because it is always the center of gravity of any group of measures. Uses of the Mean Compute the mean when 1. the mean of a group of measures is needed. 2. the center of gravity or balanced point of a group of  measures is wanted. 3. every measure should have an effect upon the measure of  central tendency.
Uses of the Mean Compute the mean when 4. the most reliable measure of central tendency is desired. 5. the group from which the mean has been derived is more or  less homogeneous and a more realistic mean is desired. For  instance, the mean of the measure 11, 12, 13, 50, and 64 is  30 which is very far from any of the measures and therefore  not realistic. 6. other statistical measures involving the mean are to be  computed. Examples of such measures are the standard  deviation, coefficient of correlation, critical ratio, etc..
Definition:  The arithmetic mean or simply the mean of a data set is the sum of the values divided by the number of values. That is, if  X 1 ,  X 2 , . . . ,  X N  are the individual scores in a population of size  N , then the population mean  is defined as: Definition:  If  X 1 ,  X 2 , . . . ,  X n   are the individual scores in a sample size  n,  then the sample mean  is defined as:
Example  1: Find the mean of the following scores: 4, 10, 7, 5, 9,7. Example 2:  A sample of  n  = 6 scores has a mean of  M  = 40. One new score is added to the sample and the new mean is found to be  M  = 42. What can you conclude about the value of the new score? Definition: For group data or those which are placed in a frequency distribution table, the mean can be approximated by the following formula:
Example:  Consider the following frequency distribution table  of the 15 graduate behavioral statistics students.   Classes Frequency   10 – 19  5 20 – 29  4 30 – 39   3 40 – 49  2 50 – 59  1
The Weighted Mean Definition:  The Weighted Mean is a variation of the arithmetic mean which assigns weight to the individual scores in a data set. where  - the weighted mean - the weight - the individual scores - number of cases
Example:  Suppose we have determined the digit span for a brief time period) in thirty  - seven – 4 year – olds. What is the mean digit span for our sample? X f 6  2 5   7 4   17 3   5 2   3 1   2 0   1
Example:  Consider the following  item in a questionnaire . Do you agree that RH bill be implemented?  Please check your attitude.   _____ Strongly agree   _____ Agree   _____ Fairly agree   _____ Disagree   _____ Strongly disagree Suppose 10 individuals were asked to answer the preceding question and the following responses are obtained: 3  - Strongly Agree, 4 – Agree, 2 – Disagree, and 1 – Strongly disagree. What is the average numerical response and its categorical equivalent?
Note: Consider the following Hypothetical Mean Range for a 5 point scale categorical responses: 4.20  -  5.00   -  Strongly Agree 3.40  -  4.19  -  Agree 2.60  -  3.39   - Fairly Agree 1.80  -  2.59   -  Disagree 1.00  -  1.79   -  Strongly Disagree
The Median Definition:  The median is the middle most value in an ordered sequence of data. Remark:  The median is unaffected by any extreme observations in a set of data and hence, whenever an extreme observation is present, it is appropriate to use the median rather than the mean to describe a set of data. Statistical Treatment: For an even number of observations:
For an odd number of observations: Example: A manufacturer of flashlight batteries took a sample of 13 from a day’s production and burned them continuously until they failed. The number of hours they burned were 342   426  317  545  264  451  1049 631  512  266  492  562  298.  Determine the median.
Example:  The following data are the amount of calories in a 30 – gram serving for a random sample of 10 types of fresh – baked chocolate chip cookies.   _______________________________________________ Product   Calories _______________________________________________ Hillary Rodham Clinton’s   153 Original Nestle Toll House   152 Mrs. Fields  146 Stop and Shop  138 Duncan Hines  130 David’s  146 David’s Chocolate Chunk  149 Great American Cookie Company  138 What is the median amount of calories?
The Mode Definition:  The mode is the value in a set of data that appears most frequently. It may be obtained from an ordered array. Remark:  Unlike the arithmetic mean, the mode is not affected by the occurrence of any extreme values. However, the mode is used only for descriptive purposes because it is more variable from sample to sample than other measures of central tendency. Example: Consider the out – of – state tuition rates for the six – school sample from Pennsylvania. 4.9  6.3  7.7  8.9  7.7  10.3  11.7
The Midrange Definition:  The midrange is the average of the smallest and largest observations in a set of data. Statistical Treatment:  Remark:  The midrange is often used as a summary measure both by financial  analysts and by weather reporters, since it can provide an adequate, quick, and simple measure to characterize the entire data set – be it a series of daily closing stock prices over a whole year or a series of recorded hourly temperature readings over a whole day.
Note: In dealing with data such as daily closing stock prices or hourly temperature readings, an extreme value is not likely to occur. Nevertheless, in most applications, despite its simplicity, the midrange must be used cautiously. Remark:  The midrange becomes distorted as a summary measure of central tendency if an outlier is present.
Measures of  Non-central Location Definition:  The measures of non-central location or fractiles are values below which a specified fraction or percentage of a given observation in a data set must fall. Remark: The measures of non-central location are employed particularly when summarizing or describing the properties of large sets of numerical data Types of Fractiles Definition:  The percentiles are the 99 score points which divide a distribution of scores into 100 equal parts. Notation:  where
Ungrouped Data: Formula:  observation of the data set  placed in array where  i  = 1, 2, 3, . . . , 99. Grouped Data: Definition:  The deciles are the 9 score points which divide the array of observations into 10 equal parts. Ungrouped Data:  score  where  i  = 1, 2, 3, . . . , 9
Grouped Data: Definition:  The quartiles are the 3 score points which divide the array of observations into 4 equal parts. Ungrouped Data:  observation of the  data set placed in array  where  i  = 1, 2, 3, . . . , 9
Grouped Data:
Measures of Variation Definition:  Variation is the amount of dispersion or “spread” in the data. Types of Measures of Variation I. The Range –  the difference between the largest and smallest  observations in a set of data.   Range =  X largest   -  X smallest
Remark:  The range measures the total spread in the set of data. Although the range is a simple measure of total variation in the data, its distinct weakness is that it does not make into account how the data are actually distributed between the smallest and largest values. The Inter - quartile Range Definition:  The inter – quartile range (also called midspread) is the difference between the third and first quartiles in a set of data. Inter – quartile = Q 3  – Q 1
The Variance and the Standard Deviation -  the measures of variation that takes into account on how all  the values in the data set are distributed. -  the measures evaluate how the values fluctuate about the  mean. Statistical Treatment: Population Standard Deviation: Population Variance:
Sample Standard Deviation: Sample Variance: Computational Formula:
Example:  Consider again the out – of – state tuition rates for the six – school sample from Pennsylvania. 4.9  6.3  7.7  8.9  7.7  10.3  11.7 Determine the following: 1. Range 2. Inter – quartile Range 3. Standard Deviation 4. Variance
The Coefficient of Variation Definition:  The coefficient of variation is a relative measure of variation. It is expressed as a percentage rather than in terms of the units of the particular data. Statistical Treatment:
Measures of Skewness Definition:  The measures of skewness show the degree of symmetry or asymmetry of a distribution and also indicate the direction of skewness. Types of Skewness I.  Positively Skewed – has a longer tail to the right. -  more concentration of values below than above the mean.   -
II. Negatively Skewed – has a longer tail to the left.   - more concentration of values above than below the mean.   -  Pearson’s Coefficient of Skewness  -  use to determine the direction of skewness. Remark:  a) If  SK  > 0, then the distribution is skewed to the right. b)  SK  < 0, then the distribution of the data set is skewed to left. c) If  SK  = 0, then the distribution is symmetric.
Example:  Consider again the out – of – state tuition rates for the six – school sample from Pennsylvania. 4.9  6.3  7.7  8.9  7.7  10.3  11.7 Determine the direction of skewness of the preceding data. Measures of Kurtosis Definition:  The measures of kurtosis show the relative flatness or peakedness of a distribution.
Types of Kurtosis I. Platykurtic – a distribution which is relatively flat. II. Mesokurtic – a distribution which is between platykurtic  and leptokurtic. III. Leptokurtic – a usually peaked distribution. Coefficient of Kurtosis  – use to determine the relative flatness of peakedness of a distribution.
Statistical Treatment: Remark: a)  Ku  = 3, then the distribution is mesokurtic b)  Ku  > 3, then the distribution is leptokurtic.   c)  Ku  < 3, then the distribution is platykurtic Example:  Consider again the out – of – state tuition rates for the six – school sample from Pennsylvania. 4.9  6.3  7.7  8.9  7.7  10.3  11.7 Determine the direction of skewness of the preceding data.
Ad

More Related Content

What's hot (20)

Data organization and presentation (statistics for research)
Data organization and presentation (statistics for research)Data organization and presentation (statistics for research)
Data organization and presentation (statistics for research)
Harve Abella
 
2 way ANOVA(Analysis Of VAriance
2 way ANOVA(Analysis Of VAriance2 way ANOVA(Analysis Of VAriance
2 way ANOVA(Analysis Of VAriance
musadoto
 
Measures of Dispersion
Measures of DispersionMeasures of Dispersion
Measures of Dispersion
Birinder Singh Gulati
 
Experimental Method of Data Collection
Experimental Method of Data CollectionExperimental Method of Data Collection
Experimental Method of Data Collection
Dhanusha Dissanayake
 
quartiles,deciles,percentiles.ppt
quartiles,deciles,percentiles.pptquartiles,deciles,percentiles.ppt
quartiles,deciles,percentiles.ppt
SyedSaifUrRehman3
 
Quartile deviation (statiscs)
Quartile deviation (statiscs)Quartile deviation (statiscs)
Quartile deviation (statiscs)
Dr Rajesh Verma
 
Measures of variability
Measures of variabilityMeasures of variability
Measures of variability
jennytuazon01630
 
Chapter 3: Prsentation of Data
Chapter 3: Prsentation of DataChapter 3: Prsentation of Data
Chapter 3: Prsentation of Data
Andrilyn Alcantara
 
Descriptive statistics
Descriptive statisticsDescriptive statistics
Descriptive statistics
Sarfraz Ahmad
 
Parametric Test -T test.pptx by Dr. Neha Deo
Parametric Test -T test.pptx by Dr. Neha DeoParametric Test -T test.pptx by Dr. Neha Deo
Parametric Test -T test.pptx by Dr. Neha Deo
Neha Deo
 
Median & mode
Median & modeMedian & mode
Median & mode
Raj Teotia
 
Properties of Standard Deviation
Properties of Standard DeviationProperties of Standard Deviation
Properties of Standard Deviation
Rizwan Sharif
 
Introduction To Statistics
Introduction To StatisticsIntroduction To Statistics
Introduction To Statistics
albertlaporte
 
Standard scores and normal distribution
Standard scores and normal distributionStandard scores and normal distribution
Standard scores and normal distribution
Regent University
 
non parametric statistics
non parametric statisticsnon parametric statistics
non parametric statistics
Anchal Garg
 
Estimation
EstimationEstimation
Estimation
Mmedsc Hahm
 
Analysis of variance (ANOVA)
Analysis of variance (ANOVA)Analysis of variance (ANOVA)
Analysis of variance (ANOVA)
Sneh Kumari
 
Correlation ppt...
Correlation ppt...Correlation ppt...
Correlation ppt...
Shruti Srivastava
 
Level of measurement
Level of measurementLevel of measurement
Level of measurement
Subodh Khanal
 
MEASURESOF CENTRAL TENDENCY
MEASURESOF CENTRAL TENDENCYMEASURESOF CENTRAL TENDENCY
MEASURESOF CENTRAL TENDENCY
Richelle Saberon
 
Data organization and presentation (statistics for research)
Data organization and presentation (statistics for research)Data organization and presentation (statistics for research)
Data organization and presentation (statistics for research)
Harve Abella
 
2 way ANOVA(Analysis Of VAriance
2 way ANOVA(Analysis Of VAriance2 way ANOVA(Analysis Of VAriance
2 way ANOVA(Analysis Of VAriance
musadoto
 
Experimental Method of Data Collection
Experimental Method of Data CollectionExperimental Method of Data Collection
Experimental Method of Data Collection
Dhanusha Dissanayake
 
quartiles,deciles,percentiles.ppt
quartiles,deciles,percentiles.pptquartiles,deciles,percentiles.ppt
quartiles,deciles,percentiles.ppt
SyedSaifUrRehman3
 
Quartile deviation (statiscs)
Quartile deviation (statiscs)Quartile deviation (statiscs)
Quartile deviation (statiscs)
Dr Rajesh Verma
 
Chapter 3: Prsentation of Data
Chapter 3: Prsentation of DataChapter 3: Prsentation of Data
Chapter 3: Prsentation of Data
Andrilyn Alcantara
 
Descriptive statistics
Descriptive statisticsDescriptive statistics
Descriptive statistics
Sarfraz Ahmad
 
Parametric Test -T test.pptx by Dr. Neha Deo
Parametric Test -T test.pptx by Dr. Neha DeoParametric Test -T test.pptx by Dr. Neha Deo
Parametric Test -T test.pptx by Dr. Neha Deo
Neha Deo
 
Properties of Standard Deviation
Properties of Standard DeviationProperties of Standard Deviation
Properties of Standard Deviation
Rizwan Sharif
 
Introduction To Statistics
Introduction To StatisticsIntroduction To Statistics
Introduction To Statistics
albertlaporte
 
Standard scores and normal distribution
Standard scores and normal distributionStandard scores and normal distribution
Standard scores and normal distribution
Regent University
 
non parametric statistics
non parametric statisticsnon parametric statistics
non parametric statistics
Anchal Garg
 
Analysis of variance (ANOVA)
Analysis of variance (ANOVA)Analysis of variance (ANOVA)
Analysis of variance (ANOVA)
Sneh Kumari
 
Level of measurement
Level of measurementLevel of measurement
Level of measurement
Subodh Khanal
 
MEASURESOF CENTRAL TENDENCY
MEASURESOF CENTRAL TENDENCYMEASURESOF CENTRAL TENDENCY
MEASURESOF CENTRAL TENDENCY
Richelle Saberon
 

Viewers also liked (6)

Lesson 1 07 measures of variation
Lesson 1 07 measures of variationLesson 1 07 measures of variation
Lesson 1 07 measures of variation
Perla Pelicano Corpez
 
Lesson 6 measures of central tendency
Lesson 6 measures of central tendencyLesson 6 measures of central tendency
Lesson 6 measures of central tendency
nurun2010
 
Correlation in simple terms
Correlation in simple termsCorrelation in simple terms
Correlation in simple terms
stats2analytics
 
Measures of Variation
Measures of VariationMeasures of Variation
Measures of Variation
Rica Joy Pontilar
 
Fs 1 episode 3 classroom management and learning
Fs 1 episode 3 classroom management and learningFs 1 episode 3 classroom management and learning
Fs 1 episode 3 classroom management and learning
Noel Parohinog
 
Test construction
Test constructionTest construction
Test construction
Mental Health Center
 
Lesson 6 measures of central tendency
Lesson 6 measures of central tendencyLesson 6 measures of central tendency
Lesson 6 measures of central tendency
nurun2010
 
Correlation in simple terms
Correlation in simple termsCorrelation in simple terms
Correlation in simple terms
stats2analytics
 
Fs 1 episode 3 classroom management and learning
Fs 1 episode 3 classroom management and learningFs 1 episode 3 classroom management and learning
Fs 1 episode 3 classroom management and learning
Noel Parohinog
 
Ad

Similar to Descriptions of data statistics for research (20)

CABT Math 8 measures of central tendency and dispersion
CABT Math 8   measures of central tendency and dispersionCABT Math 8   measures of central tendency and dispersion
CABT Math 8 measures of central tendency and dispersion
Gilbert Joseph Abueg
 
Statistics and permeability engineering reports
Statistics and permeability engineering reportsStatistics and permeability engineering reports
Statistics and permeability engineering reports
wwwmostafalaith99
 
Data analysis
Data analysisData analysis
Data analysis
metalkid132
 
Describing quantitative data with numbers
Describing quantitative data with numbersDescribing quantitative data with numbers
Describing quantitative data with numbers
Ulster BOCES
 
Machine learning pre requisite
Machine learning pre requisiteMachine learning pre requisite
Machine learning pre requisite
Ram Singh
 
Topic 2 Measures of Central Tendency.pptx
Topic 2   Measures of Central Tendency.pptxTopic 2   Measures of Central Tendency.pptx
Topic 2 Measures of Central Tendency.pptx
CallplanetsDeveloper
 
LESSON-8-ANALYSIS-INTERPRETATION-AND-USE-OF-TEST-DATA.pptx
LESSON-8-ANALYSIS-INTERPRETATION-AND-USE-OF-TEST-DATA.pptxLESSON-8-ANALYSIS-INTERPRETATION-AND-USE-OF-TEST-DATA.pptx
LESSON-8-ANALYSIS-INTERPRETATION-AND-USE-OF-TEST-DATA.pptx
MarjoriAnneDelosReye
 
Measures of central tendancy easy to under this stats topic
Measures of central tendancy easy to under this stats topicMeasures of central tendancy easy to under this stats topic
Measures of central tendancy easy to under this stats topic
Nishant Taralkar
 
Stat11t chapter3
Stat11t chapter3Stat11t chapter3
Stat11t chapter3
raylenepotter
 
Statistics (GE 4 CLASS).pptx
Statistics (GE 4 CLASS).pptxStatistics (GE 4 CLASS).pptx
Statistics (GE 4 CLASS).pptx
YollyCalamba
 
polar pojhjgfnbhggnbh hnhghgnhbhnhbjnhhhhhh
polar pojhjgfnbhggnbh hnhghgnhbhnhbjnhhhhhhpolar pojhjgfnbhggnbh hnhghgnhbhnhbjnhhhhhh
polar pojhjgfnbhggnbh hnhghgnhbhnhbjnhhhhhh
NathanAndreiBoongali
 
Answer the questions in one paragraph 4-5 sentences. · Why did t.docx
Answer the questions in one paragraph 4-5 sentences. · Why did t.docxAnswer the questions in one paragraph 4-5 sentences. · Why did t.docx
Answer the questions in one paragraph 4-5 sentences. · Why did t.docx
boyfieldhouse
 
Basic Statistical Descriptions of Data.pptx
Basic Statistical Descriptions of Data.pptxBasic Statistical Descriptions of Data.pptx
Basic Statistical Descriptions of Data.pptx
Anusuya123
 
3. measures of central tendency
3. measures of central tendency3. measures of central tendency
3. measures of central tendency
renz50
 
Descriptive Statistics: Mean, Median Mode and Standard Deviation.
Descriptive Statistics: Mean, Median Mode and Standard Deviation.Descriptive Statistics: Mean, Median Mode and Standard Deviation.
Descriptive Statistics: Mean, Median Mode and Standard Deviation.
Megha Sharma
 
data
datadata
data
som allul
 
Hcai 5220 lecture notes on campus sessions fall 11(2)
Hcai 5220 lecture notes on campus sessions fall 11(2)Hcai 5220 lecture notes on campus sessions fall 11(2)
Hcai 5220 lecture notes on campus sessions fall 11(2)
Twene Peter
 
Measures of Central Tendency With Variance and Ranges.pptx
Measures of Central Tendency With Variance and Ranges.pptxMeasures of Central Tendency With Variance and Ranges.pptx
Measures of Central Tendency With Variance and Ranges.pptx
NecroManXer
 
Basic Concepts of Statistics & Its Analysis
Basic Concepts of Statistics & Its AnalysisBasic Concepts of Statistics & Its Analysis
Basic Concepts of Statistics & Its Analysis
chachachola
 
Section 6 - Chapter 1 - Introduction to Statistics Part I
Section 6 - Chapter 1 - Introduction to Statistics Part ISection 6 - Chapter 1 - Introduction to Statistics Part I
Section 6 - Chapter 1 - Introduction to Statistics Part I
Professional Training Academy
 
CABT Math 8 measures of central tendency and dispersion
CABT Math 8   measures of central tendency and dispersionCABT Math 8   measures of central tendency and dispersion
CABT Math 8 measures of central tendency and dispersion
Gilbert Joseph Abueg
 
Statistics and permeability engineering reports
Statistics and permeability engineering reportsStatistics and permeability engineering reports
Statistics and permeability engineering reports
wwwmostafalaith99
 
Describing quantitative data with numbers
Describing quantitative data with numbersDescribing quantitative data with numbers
Describing quantitative data with numbers
Ulster BOCES
 
Machine learning pre requisite
Machine learning pre requisiteMachine learning pre requisite
Machine learning pre requisite
Ram Singh
 
Topic 2 Measures of Central Tendency.pptx
Topic 2   Measures of Central Tendency.pptxTopic 2   Measures of Central Tendency.pptx
Topic 2 Measures of Central Tendency.pptx
CallplanetsDeveloper
 
LESSON-8-ANALYSIS-INTERPRETATION-AND-USE-OF-TEST-DATA.pptx
LESSON-8-ANALYSIS-INTERPRETATION-AND-USE-OF-TEST-DATA.pptxLESSON-8-ANALYSIS-INTERPRETATION-AND-USE-OF-TEST-DATA.pptx
LESSON-8-ANALYSIS-INTERPRETATION-AND-USE-OF-TEST-DATA.pptx
MarjoriAnneDelosReye
 
Measures of central tendancy easy to under this stats topic
Measures of central tendancy easy to under this stats topicMeasures of central tendancy easy to under this stats topic
Measures of central tendancy easy to under this stats topic
Nishant Taralkar
 
Statistics (GE 4 CLASS).pptx
Statistics (GE 4 CLASS).pptxStatistics (GE 4 CLASS).pptx
Statistics (GE 4 CLASS).pptx
YollyCalamba
 
polar pojhjgfnbhggnbh hnhghgnhbhnhbjnhhhhhh
polar pojhjgfnbhggnbh hnhghgnhbhnhbjnhhhhhhpolar pojhjgfnbhggnbh hnhghgnhbhnhbjnhhhhhh
polar pojhjgfnbhggnbh hnhghgnhbhnhbjnhhhhhh
NathanAndreiBoongali
 
Answer the questions in one paragraph 4-5 sentences. · Why did t.docx
Answer the questions in one paragraph 4-5 sentences. · Why did t.docxAnswer the questions in one paragraph 4-5 sentences. · Why did t.docx
Answer the questions in one paragraph 4-5 sentences. · Why did t.docx
boyfieldhouse
 
Basic Statistical Descriptions of Data.pptx
Basic Statistical Descriptions of Data.pptxBasic Statistical Descriptions of Data.pptx
Basic Statistical Descriptions of Data.pptx
Anusuya123
 
3. measures of central tendency
3. measures of central tendency3. measures of central tendency
3. measures of central tendency
renz50
 
Descriptive Statistics: Mean, Median Mode and Standard Deviation.
Descriptive Statistics: Mean, Median Mode and Standard Deviation.Descriptive Statistics: Mean, Median Mode and Standard Deviation.
Descriptive Statistics: Mean, Median Mode and Standard Deviation.
Megha Sharma
 
Hcai 5220 lecture notes on campus sessions fall 11(2)
Hcai 5220 lecture notes on campus sessions fall 11(2)Hcai 5220 lecture notes on campus sessions fall 11(2)
Hcai 5220 lecture notes on campus sessions fall 11(2)
Twene Peter
 
Measures of Central Tendency With Variance and Ranges.pptx
Measures of Central Tendency With Variance and Ranges.pptxMeasures of Central Tendency With Variance and Ranges.pptx
Measures of Central Tendency With Variance and Ranges.pptx
NecroManXer
 
Basic Concepts of Statistics & Its Analysis
Basic Concepts of Statistics & Its AnalysisBasic Concepts of Statistics & Its Analysis
Basic Concepts of Statistics & Its Analysis
chachachola
 
Section 6 - Chapter 1 - Introduction to Statistics Part I
Section 6 - Chapter 1 - Introduction to Statistics Part ISection 6 - Chapter 1 - Introduction to Statistics Part I
Section 6 - Chapter 1 - Introduction to Statistics Part I
Professional Training Academy
 
Ad

More from Harve Abella (20)

Know Your Rights when you are Arrested
Know Your Rights when you are ArrestedKnow Your Rights when you are Arrested
Know Your Rights when you are Arrested
Harve Abella
 
8 reminders for ftf trial-witnesses
8 reminders for ftf trial-witnesses8 reminders for ftf trial-witnesses
8 reminders for ftf trial-witnesses
Harve Abella
 
7 reminders for ftf trial-judges
7 reminders for ftf trial-judges7 reminders for ftf trial-judges
7 reminders for ftf trial-judges
Harve Abella
 
6 reminders for ftf trial-counsels parties
6 reminders for ftf trial-counsels parties6 reminders for ftf trial-counsels parties
6 reminders for ftf trial-counsels parties
Harve Abella
 
5 manual for lawyers and parties rules 22 and 24 (1)
5 manual for lawyers and parties rules 22 and 24 (1)5 manual for lawyers and parties rules 22 and 24 (1)
5 manual for lawyers and parties rules 22 and 24 (1)
Harve Abella
 
3 flowchart of rules 22 and 24
3 flowchart of rules 22 and 243 flowchart of rules 22 and 24
3 flowchart of rules 22 and 24
Harve Abella
 
2 procedure in trial courts - atty. lazatin presentation
2 procedure in trial courts - atty. lazatin presentation2 procedure in trial courts - atty. lazatin presentation
2 procedure in trial courts - atty. lazatin presentation
Harve Abella
 
1 publication rules22-24 (4)
1 publication rules22-24 (4)1 publication rules22-24 (4)
1 publication rules22-24 (4)
Harve Abella
 
P29: Basic Kinesics for the Investigator
P29: Basic Kinesics for the InvestigatorP29: Basic Kinesics for the Investigator
P29: Basic Kinesics for the Investigator
Harve Abella
 
P29 PRELIM NOTES
P29 PRELIM NOTESP29 PRELIM NOTES
P29 PRELIM NOTES
Harve Abella
 
Basic Consti Law for Undergrads: Powers of congress
Basic Consti Law for Undergrads: Powers of congressBasic Consti Law for Undergrads: Powers of congress
Basic Consti Law for Undergrads: Powers of congress
Harve Abella
 
Basic Consti Law for Undergrads: Executive department
Basic Consti Law for Undergrads: Executive departmentBasic Consti Law for Undergrads: Executive department
Basic Consti Law for Undergrads: Executive department
Harve Abella
 
Basic Consti Law for Undergrads: Legislative department
Basic Consti Law for Undergrads: Legislative departmentBasic Consti Law for Undergrads: Legislative department
Basic Consti Law for Undergrads: Legislative department
Harve Abella
 
Annulment Symposium
Annulment SymposiumAnnulment Symposium
Annulment Symposium
Harve Abella
 
Justice Abad: Judicial Affidavit Slides
Justice Abad: Judicial Affidavit SlidesJustice Abad: Judicial Affidavit Slides
Justice Abad: Judicial Affidavit Slides
Harve Abella
 
Brgy. Labangon, Cebu City and the Threat to its Territorial Integrity
Brgy. Labangon, Cebu City and the Threat to its Territorial IntegrityBrgy. Labangon, Cebu City and the Threat to its Territorial Integrity
Brgy. Labangon, Cebu City and the Threat to its Territorial Integrity
Harve Abella
 
Management Prerogatives
Management PrerogativesManagement Prerogatives
Management Prerogatives
Harve Abella
 
Conducting Employee Investigations 2
Conducting Employee Investigations 2Conducting Employee Investigations 2
Conducting Employee Investigations 2
Harve Abella
 
Management Prerogatives
Management PrerogativesManagement Prerogatives
Management Prerogatives
Harve Abella
 
Conducting Employee Investigations
Conducting Employee InvestigationsConducting Employee Investigations
Conducting Employee Investigations
Harve Abella
 
Know Your Rights when you are Arrested
Know Your Rights when you are ArrestedKnow Your Rights when you are Arrested
Know Your Rights when you are Arrested
Harve Abella
 
8 reminders for ftf trial-witnesses
8 reminders for ftf trial-witnesses8 reminders for ftf trial-witnesses
8 reminders for ftf trial-witnesses
Harve Abella
 
7 reminders for ftf trial-judges
7 reminders for ftf trial-judges7 reminders for ftf trial-judges
7 reminders for ftf trial-judges
Harve Abella
 
6 reminders for ftf trial-counsels parties
6 reminders for ftf trial-counsels parties6 reminders for ftf trial-counsels parties
6 reminders for ftf trial-counsels parties
Harve Abella
 
5 manual for lawyers and parties rules 22 and 24 (1)
5 manual for lawyers and parties rules 22 and 24 (1)5 manual for lawyers and parties rules 22 and 24 (1)
5 manual for lawyers and parties rules 22 and 24 (1)
Harve Abella
 
3 flowchart of rules 22 and 24
3 flowchart of rules 22 and 243 flowchart of rules 22 and 24
3 flowchart of rules 22 and 24
Harve Abella
 
2 procedure in trial courts - atty. lazatin presentation
2 procedure in trial courts - atty. lazatin presentation2 procedure in trial courts - atty. lazatin presentation
2 procedure in trial courts - atty. lazatin presentation
Harve Abella
 
1 publication rules22-24 (4)
1 publication rules22-24 (4)1 publication rules22-24 (4)
1 publication rules22-24 (4)
Harve Abella
 
P29: Basic Kinesics for the Investigator
P29: Basic Kinesics for the InvestigatorP29: Basic Kinesics for the Investigator
P29: Basic Kinesics for the Investigator
Harve Abella
 
Basic Consti Law for Undergrads: Powers of congress
Basic Consti Law for Undergrads: Powers of congressBasic Consti Law for Undergrads: Powers of congress
Basic Consti Law for Undergrads: Powers of congress
Harve Abella
 
Basic Consti Law for Undergrads: Executive department
Basic Consti Law for Undergrads: Executive departmentBasic Consti Law for Undergrads: Executive department
Basic Consti Law for Undergrads: Executive department
Harve Abella
 
Basic Consti Law for Undergrads: Legislative department
Basic Consti Law for Undergrads: Legislative departmentBasic Consti Law for Undergrads: Legislative department
Basic Consti Law for Undergrads: Legislative department
Harve Abella
 
Annulment Symposium
Annulment SymposiumAnnulment Symposium
Annulment Symposium
Harve Abella
 
Justice Abad: Judicial Affidavit Slides
Justice Abad: Judicial Affidavit SlidesJustice Abad: Judicial Affidavit Slides
Justice Abad: Judicial Affidavit Slides
Harve Abella
 
Brgy. Labangon, Cebu City and the Threat to its Territorial Integrity
Brgy. Labangon, Cebu City and the Threat to its Territorial IntegrityBrgy. Labangon, Cebu City and the Threat to its Territorial Integrity
Brgy. Labangon, Cebu City and the Threat to its Territorial Integrity
Harve Abella
 
Management Prerogatives
Management PrerogativesManagement Prerogatives
Management Prerogatives
Harve Abella
 
Conducting Employee Investigations 2
Conducting Employee Investigations 2Conducting Employee Investigations 2
Conducting Employee Investigations 2
Harve Abella
 
Management Prerogatives
Management PrerogativesManagement Prerogatives
Management Prerogatives
Harve Abella
 
Conducting Employee Investigations
Conducting Employee InvestigationsConducting Employee Investigations
Conducting Employee Investigations
Harve Abella
 

Recently uploaded (20)

The Future of Cisco Cloud Security: Innovations and AI Integration
The Future of Cisco Cloud Security: Innovations and AI IntegrationThe Future of Cisco Cloud Security: Innovations and AI Integration
The Future of Cisco Cloud Security: Innovations and AI Integration
Re-solution Data Ltd
 
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep DiveDesigning Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
ScyllaDB
 
Transcript: Canadian book publishing: Insights from the latest salary survey ...
Transcript: Canadian book publishing: Insights from the latest salary survey ...Transcript: Canadian book publishing: Insights from the latest salary survey ...
Transcript: Canadian book publishing: Insights from the latest salary survey ...
BookNet Canada
 
TrsLabs Consultants - DeFi, WEb3, Token Listing
TrsLabs Consultants - DeFi, WEb3, Token ListingTrsLabs Consultants - DeFi, WEb3, Token Listing
TrsLabs Consultants - DeFi, WEb3, Token Listing
Trs Labs
 
Q1 2025 Dropbox Earnings and Investor Presentation
Q1 2025 Dropbox Earnings and Investor PresentationQ1 2025 Dropbox Earnings and Investor Presentation
Q1 2025 Dropbox Earnings and Investor Presentation
Dropbox
 
Vibe Coding_ Develop a web application using AI (1).pdf
Vibe Coding_ Develop a web application using AI (1).pdfVibe Coding_ Develop a web application using AI (1).pdf
Vibe Coding_ Develop a web application using AI (1).pdf
Baiju Muthukadan
 
Viam product demo_ Deploying and scaling AI with hardware.pdf
Viam product demo_ Deploying and scaling AI with hardware.pdfViam product demo_ Deploying and scaling AI with hardware.pdf
Viam product demo_ Deploying and scaling AI with hardware.pdf
camilalamoratta
 
AsyncAPI v3 : Streamlining Event-Driven API Design
AsyncAPI v3 : Streamlining Event-Driven API DesignAsyncAPI v3 : Streamlining Event-Driven API Design
AsyncAPI v3 : Streamlining Event-Driven API Design
leonid54
 
GyrusAI - Broadcasting & Streaming Applications Driven by AI and ML
GyrusAI - Broadcasting & Streaming Applications Driven by AI and MLGyrusAI - Broadcasting & Streaming Applications Driven by AI and ML
GyrusAI - Broadcasting & Streaming Applications Driven by AI and ML
Gyrus AI
 
Financial Services Technology Summit 2025
Financial Services Technology Summit 2025Financial Services Technology Summit 2025
Financial Services Technology Summit 2025
Ray Bugg
 
Unlocking Generative AI in your Web Apps
Unlocking Generative AI in your Web AppsUnlocking Generative AI in your Web Apps
Unlocking Generative AI in your Web Apps
Maximiliano Firtman
 
UiPath Agentic Automation: Community Developer Opportunities
UiPath Agentic Automation: Community Developer OpportunitiesUiPath Agentic Automation: Community Developer Opportunities
UiPath Agentic Automation: Community Developer Opportunities
DianaGray10
 
Challenges in Migrating Imperative Deep Learning Programs to Graph Execution:...
Challenges in Migrating Imperative Deep Learning Programs to Graph Execution:...Challenges in Migrating Imperative Deep Learning Programs to Graph Execution:...
Challenges in Migrating Imperative Deep Learning Programs to Graph Execution:...
Raffi Khatchadourian
 
TrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business ConsultingTrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business Consulting
Trs Labs
 
AI 3-in-1: Agents, RAG, and Local Models - Brent Laster
AI 3-in-1: Agents, RAG, and Local Models - Brent LasterAI 3-in-1: Agents, RAG, and Local Models - Brent Laster
AI 3-in-1: Agents, RAG, and Local Models - Brent Laster
All Things Open
 
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
SOFTTECHHUB
 
AI You Can Trust: The Critical Role of Governance and Quality.pdf
AI You Can Trust: The Critical Role of Governance and Quality.pdfAI You Can Trust: The Critical Role of Governance and Quality.pdf
AI You Can Trust: The Critical Role of Governance and Quality.pdf
Precisely
 
How to Install & Activate ListGrabber - eGrabber
How to Install & Activate ListGrabber - eGrabberHow to Install & Activate ListGrabber - eGrabber
How to Install & Activate ListGrabber - eGrabber
eGrabber
 
Cybersecurity Identity and Access Solutions using Azure AD
Cybersecurity Identity and Access Solutions using Azure ADCybersecurity Identity and Access Solutions using Azure AD
Cybersecurity Identity and Access Solutions using Azure AD
VICTOR MAESTRE RAMIREZ
 
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à GenèveUiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPathCommunity
 
The Future of Cisco Cloud Security: Innovations and AI Integration
The Future of Cisco Cloud Security: Innovations and AI IntegrationThe Future of Cisco Cloud Security: Innovations and AI Integration
The Future of Cisco Cloud Security: Innovations and AI Integration
Re-solution Data Ltd
 
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep DiveDesigning Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
ScyllaDB
 
Transcript: Canadian book publishing: Insights from the latest salary survey ...
Transcript: Canadian book publishing: Insights from the latest salary survey ...Transcript: Canadian book publishing: Insights from the latest salary survey ...
Transcript: Canadian book publishing: Insights from the latest salary survey ...
BookNet Canada
 
TrsLabs Consultants - DeFi, WEb3, Token Listing
TrsLabs Consultants - DeFi, WEb3, Token ListingTrsLabs Consultants - DeFi, WEb3, Token Listing
TrsLabs Consultants - DeFi, WEb3, Token Listing
Trs Labs
 
Q1 2025 Dropbox Earnings and Investor Presentation
Q1 2025 Dropbox Earnings and Investor PresentationQ1 2025 Dropbox Earnings and Investor Presentation
Q1 2025 Dropbox Earnings and Investor Presentation
Dropbox
 
Vibe Coding_ Develop a web application using AI (1).pdf
Vibe Coding_ Develop a web application using AI (1).pdfVibe Coding_ Develop a web application using AI (1).pdf
Vibe Coding_ Develop a web application using AI (1).pdf
Baiju Muthukadan
 
Viam product demo_ Deploying and scaling AI with hardware.pdf
Viam product demo_ Deploying and scaling AI with hardware.pdfViam product demo_ Deploying and scaling AI with hardware.pdf
Viam product demo_ Deploying and scaling AI with hardware.pdf
camilalamoratta
 
AsyncAPI v3 : Streamlining Event-Driven API Design
AsyncAPI v3 : Streamlining Event-Driven API DesignAsyncAPI v3 : Streamlining Event-Driven API Design
AsyncAPI v3 : Streamlining Event-Driven API Design
leonid54
 
GyrusAI - Broadcasting & Streaming Applications Driven by AI and ML
GyrusAI - Broadcasting & Streaming Applications Driven by AI and MLGyrusAI - Broadcasting & Streaming Applications Driven by AI and ML
GyrusAI - Broadcasting & Streaming Applications Driven by AI and ML
Gyrus AI
 
Financial Services Technology Summit 2025
Financial Services Technology Summit 2025Financial Services Technology Summit 2025
Financial Services Technology Summit 2025
Ray Bugg
 
Unlocking Generative AI in your Web Apps
Unlocking Generative AI in your Web AppsUnlocking Generative AI in your Web Apps
Unlocking Generative AI in your Web Apps
Maximiliano Firtman
 
UiPath Agentic Automation: Community Developer Opportunities
UiPath Agentic Automation: Community Developer OpportunitiesUiPath Agentic Automation: Community Developer Opportunities
UiPath Agentic Automation: Community Developer Opportunities
DianaGray10
 
Challenges in Migrating Imperative Deep Learning Programs to Graph Execution:...
Challenges in Migrating Imperative Deep Learning Programs to Graph Execution:...Challenges in Migrating Imperative Deep Learning Programs to Graph Execution:...
Challenges in Migrating Imperative Deep Learning Programs to Graph Execution:...
Raffi Khatchadourian
 
TrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business ConsultingTrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business Consulting
Trs Labs
 
AI 3-in-1: Agents, RAG, and Local Models - Brent Laster
AI 3-in-1: Agents, RAG, and Local Models - Brent LasterAI 3-in-1: Agents, RAG, and Local Models - Brent Laster
AI 3-in-1: Agents, RAG, and Local Models - Brent Laster
All Things Open
 
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
SOFTTECHHUB
 
AI You Can Trust: The Critical Role of Governance and Quality.pdf
AI You Can Trust: The Critical Role of Governance and Quality.pdfAI You Can Trust: The Critical Role of Governance and Quality.pdf
AI You Can Trust: The Critical Role of Governance and Quality.pdf
Precisely
 
How to Install & Activate ListGrabber - eGrabber
How to Install & Activate ListGrabber - eGrabberHow to Install & Activate ListGrabber - eGrabber
How to Install & Activate ListGrabber - eGrabber
eGrabber
 
Cybersecurity Identity and Access Solutions using Azure AD
Cybersecurity Identity and Access Solutions using Azure ADCybersecurity Identity and Access Solutions using Azure AD
Cybersecurity Identity and Access Solutions using Azure AD
VICTOR MAESTRE RAMIREZ
 
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à GenèveUiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPathCommunity
 

Descriptions of data statistics for research

  • 1. Descriptions of Data Measures of Central Tendency Definition: A Measure of Central Tendency has been defined as a statistic calculated from a set of observations or scores and designed to typify or represent that series. It is also defined as the tendency of the same observations or cases to cluster about a point, with either to an absolute value or to a frequency of occurrence; usually but not necessarily, about midway between the extreme high and the extreme low values in the distribution.
  • 2. Measures of Central Tendency The Mean Definition: The arithmetic mean or simply the mean is the average of a group of measures. Characteristics of the mean 1. The arithmetic mean, or simply mean is the center of gravity or balance point of a group of measures. 2. The mean is easily affected by a change in the magnitude of any of the measures.
  • 3. Characteristics of the Mean 3. The mean is the most reliable measure of central tendency because it is always the center of gravity of any group of measures. Uses of the Mean Compute the mean when 1. the mean of a group of measures is needed. 2. the center of gravity or balanced point of a group of measures is wanted. 3. every measure should have an effect upon the measure of central tendency.
  • 4. Uses of the Mean Compute the mean when 4. the most reliable measure of central tendency is desired. 5. the group from which the mean has been derived is more or less homogeneous and a more realistic mean is desired. For instance, the mean of the measure 11, 12, 13, 50, and 64 is 30 which is very far from any of the measures and therefore not realistic. 6. other statistical measures involving the mean are to be computed. Examples of such measures are the standard deviation, coefficient of correlation, critical ratio, etc..
  • 5. Definition: The arithmetic mean or simply the mean of a data set is the sum of the values divided by the number of values. That is, if X 1 , X 2 , . . . , X N are the individual scores in a population of size N , then the population mean is defined as: Definition: If X 1 , X 2 , . . . , X n are the individual scores in a sample size n, then the sample mean is defined as:
  • 6. Example 1: Find the mean of the following scores: 4, 10, 7, 5, 9,7. Example 2: A sample of n = 6 scores has a mean of M = 40. One new score is added to the sample and the new mean is found to be M = 42. What can you conclude about the value of the new score? Definition: For group data or those which are placed in a frequency distribution table, the mean can be approximated by the following formula:
  • 7. Example: Consider the following frequency distribution table of the 15 graduate behavioral statistics students. Classes Frequency 10 – 19 5 20 – 29 4 30 – 39 3 40 – 49 2 50 – 59 1
  • 8. The Weighted Mean Definition: The Weighted Mean is a variation of the arithmetic mean which assigns weight to the individual scores in a data set. where - the weighted mean - the weight - the individual scores - number of cases
  • 9. Example: Suppose we have determined the digit span for a brief time period) in thirty - seven – 4 year – olds. What is the mean digit span for our sample? X f 6 2 5 7 4 17 3 5 2 3 1 2 0 1
  • 10. Example: Consider the following item in a questionnaire . Do you agree that RH bill be implemented? Please check your attitude. _____ Strongly agree _____ Agree _____ Fairly agree _____ Disagree _____ Strongly disagree Suppose 10 individuals were asked to answer the preceding question and the following responses are obtained: 3 - Strongly Agree, 4 – Agree, 2 – Disagree, and 1 – Strongly disagree. What is the average numerical response and its categorical equivalent?
  • 11. Note: Consider the following Hypothetical Mean Range for a 5 point scale categorical responses: 4.20 - 5.00 - Strongly Agree 3.40 - 4.19 - Agree 2.60 - 3.39 - Fairly Agree 1.80 - 2.59 - Disagree 1.00 - 1.79 - Strongly Disagree
  • 12. The Median Definition: The median is the middle most value in an ordered sequence of data. Remark: The median is unaffected by any extreme observations in a set of data and hence, whenever an extreme observation is present, it is appropriate to use the median rather than the mean to describe a set of data. Statistical Treatment: For an even number of observations:
  • 13. For an odd number of observations: Example: A manufacturer of flashlight batteries took a sample of 13 from a day’s production and burned them continuously until they failed. The number of hours they burned were 342 426 317 545 264 451 1049 631 512 266 492 562 298. Determine the median.
  • 14. Example: The following data are the amount of calories in a 30 – gram serving for a random sample of 10 types of fresh – baked chocolate chip cookies. _______________________________________________ Product Calories _______________________________________________ Hillary Rodham Clinton’s 153 Original Nestle Toll House 152 Mrs. Fields 146 Stop and Shop 138 Duncan Hines 130 David’s 146 David’s Chocolate Chunk 149 Great American Cookie Company 138 What is the median amount of calories?
  • 15. The Mode Definition: The mode is the value in a set of data that appears most frequently. It may be obtained from an ordered array. Remark: Unlike the arithmetic mean, the mode is not affected by the occurrence of any extreme values. However, the mode is used only for descriptive purposes because it is more variable from sample to sample than other measures of central tendency. Example: Consider the out – of – state tuition rates for the six – school sample from Pennsylvania. 4.9 6.3 7.7 8.9 7.7 10.3 11.7
  • 16. The Midrange Definition: The midrange is the average of the smallest and largest observations in a set of data. Statistical Treatment: Remark: The midrange is often used as a summary measure both by financial analysts and by weather reporters, since it can provide an adequate, quick, and simple measure to characterize the entire data set – be it a series of daily closing stock prices over a whole year or a series of recorded hourly temperature readings over a whole day.
  • 17. Note: In dealing with data such as daily closing stock prices or hourly temperature readings, an extreme value is not likely to occur. Nevertheless, in most applications, despite its simplicity, the midrange must be used cautiously. Remark: The midrange becomes distorted as a summary measure of central tendency if an outlier is present.
  • 18. Measures of Non-central Location Definition: The measures of non-central location or fractiles are values below which a specified fraction or percentage of a given observation in a data set must fall. Remark: The measures of non-central location are employed particularly when summarizing or describing the properties of large sets of numerical data Types of Fractiles Definition: The percentiles are the 99 score points which divide a distribution of scores into 100 equal parts. Notation: where
  • 19. Ungrouped Data: Formula: observation of the data set placed in array where i = 1, 2, 3, . . . , 99. Grouped Data: Definition: The deciles are the 9 score points which divide the array of observations into 10 equal parts. Ungrouped Data: score where i = 1, 2, 3, . . . , 9
  • 20. Grouped Data: Definition: The quartiles are the 3 score points which divide the array of observations into 4 equal parts. Ungrouped Data: observation of the data set placed in array where i = 1, 2, 3, . . . , 9
  • 22. Measures of Variation Definition: Variation is the amount of dispersion or “spread” in the data. Types of Measures of Variation I. The Range – the difference between the largest and smallest observations in a set of data. Range = X largest - X smallest
  • 23. Remark: The range measures the total spread in the set of data. Although the range is a simple measure of total variation in the data, its distinct weakness is that it does not make into account how the data are actually distributed between the smallest and largest values. The Inter - quartile Range Definition: The inter – quartile range (also called midspread) is the difference between the third and first quartiles in a set of data. Inter – quartile = Q 3 – Q 1
  • 24. The Variance and the Standard Deviation - the measures of variation that takes into account on how all the values in the data set are distributed. - the measures evaluate how the values fluctuate about the mean. Statistical Treatment: Population Standard Deviation: Population Variance:
  • 25. Sample Standard Deviation: Sample Variance: Computational Formula:
  • 26. Example: Consider again the out – of – state tuition rates for the six – school sample from Pennsylvania. 4.9 6.3 7.7 8.9 7.7 10.3 11.7 Determine the following: 1. Range 2. Inter – quartile Range 3. Standard Deviation 4. Variance
  • 27. The Coefficient of Variation Definition: The coefficient of variation is a relative measure of variation. It is expressed as a percentage rather than in terms of the units of the particular data. Statistical Treatment:
  • 28. Measures of Skewness Definition: The measures of skewness show the degree of symmetry or asymmetry of a distribution and also indicate the direction of skewness. Types of Skewness I. Positively Skewed – has a longer tail to the right. - more concentration of values below than above the mean. -
  • 29. II. Negatively Skewed – has a longer tail to the left. - more concentration of values above than below the mean. - Pearson’s Coefficient of Skewness - use to determine the direction of skewness. Remark: a) If SK > 0, then the distribution is skewed to the right. b) SK < 0, then the distribution of the data set is skewed to left. c) If SK = 0, then the distribution is symmetric.
  • 30. Example: Consider again the out – of – state tuition rates for the six – school sample from Pennsylvania. 4.9 6.3 7.7 8.9 7.7 10.3 11.7 Determine the direction of skewness of the preceding data. Measures of Kurtosis Definition: The measures of kurtosis show the relative flatness or peakedness of a distribution.
  • 31. Types of Kurtosis I. Platykurtic – a distribution which is relatively flat. II. Mesokurtic – a distribution which is between platykurtic and leptokurtic. III. Leptokurtic – a usually peaked distribution. Coefficient of Kurtosis – use to determine the relative flatness of peakedness of a distribution.
  • 32. Statistical Treatment: Remark: a) Ku = 3, then the distribution is mesokurtic b) Ku > 3, then the distribution is leptokurtic. c) Ku < 3, then the distribution is platykurtic Example: Consider again the out – of – state tuition rates for the six – school sample from Pennsylvania. 4.9 6.3 7.7 8.9 7.7 10.3 11.7 Determine the direction of skewness of the preceding data.