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Statistical attribute: No. of family members (quantitative discrete)
Elaborated by: Ing. Martina Majorová, Dept. of Statistics and Operations Research, FEM SUA in Nitra
Charts used from the presentation of prof. Zlata Sojková, CSc., Dept. of Statistics and Operations Research,
FEM SUA in Nitra
How to interpret descriptive statistics?
A) Measures of location
• percentile:
30th
percentile=3, i.e. 30% of all students said that they had 3 family members or below
75th
percentile=4, i.e. 75% of all students said that they had 4 family members or below
95th
percentile=5, i.e. 95% of all students said that they had 5 family members or below
• quartile:
Q1=3 (25th
percentile), i.e. 25% of all students said that they had 3 family members or
below
Q2=4 (50th
percentile; median), i.e. 50% of all students said that they had 4 family
members or below
Q3=4 (75th
percentile), i.e. 75% of all students said that they had 4 family members or
below
Q4=5 (100th
percentile; maximum value), i.e. all students said that they had 5 family
members or below
B) Measures of central tendency (centre)
• mean (arithmetic weighted):
x =3.49, i.e. the average number of family members is 3 (4)
• mode:
xˆ =4, i.e. most of students said that they had 4 family members
• median:
x~ =4, i.e. half (50%) of students have 4 family members or below and half (50%) of
students have 4 family members or above
C) Measures of variability (spread)
• IQR (interquartile range):
IQR=1, it refers to spread of the middle 50% of data
• range:
R=4, i.e. the difference between the minimum and maximum number of family members
is 4
• variance (sample):
2
s =1.38, it can’t be interpreted because it’s expressed in units squared (in the same units
as the statistical attribute is measured)
• standard deviation (sample):
s =1.17, i.e. 68% of students said that they had 3(4) ± 1 family member(s) (mean ± one
standard deviation according to the rule of one sigma = empirical rule)
Statistical attribute: No. of family members (quantitative discrete)
Elaborated by: Ing. Martina Majorová, Dept. of Statistics and Operations Research, FEM SUA in Nitra
Charts used from the presentation of prof. Zlata Sojková, CSc., Dept. of Statistics and Operations Research,
FEM SUA in Nitra
• coefficient of variation:
CV=0.3369=33.7%, i.e. the value of (sample) standard deviation is 33.7% of the value of
(sample) mean, it refers to variability within the data set especially when we’d like to
compare several data sets with different measurement units
D) Measures of skewness (refer to the shape of distribution)
• coefficient of skewness:
1γ =-0.38, i.e. data are negatively skewed (not a symmetrical distribution), tail of the
distribution is to the left and mode is located to the right of mean
E) Measures of kurtosis (refer to the shape of distribution)
• coefficient of kurtosis:
2γ =-0.83, i.e. the shape of the distribution is flat (platykurtic)

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Interpretation descriptive-statistics

  • 1. Statistical attribute: No. of family members (quantitative discrete) Elaborated by: Ing. Martina Majorová, Dept. of Statistics and Operations Research, FEM SUA in Nitra Charts used from the presentation of prof. Zlata Sojková, CSc., Dept. of Statistics and Operations Research, FEM SUA in Nitra How to interpret descriptive statistics? A) Measures of location • percentile: 30th percentile=3, i.e. 30% of all students said that they had 3 family members or below 75th percentile=4, i.e. 75% of all students said that they had 4 family members or below 95th percentile=5, i.e. 95% of all students said that they had 5 family members or below • quartile: Q1=3 (25th percentile), i.e. 25% of all students said that they had 3 family members or below Q2=4 (50th percentile; median), i.e. 50% of all students said that they had 4 family members or below Q3=4 (75th percentile), i.e. 75% of all students said that they had 4 family members or below Q4=5 (100th percentile; maximum value), i.e. all students said that they had 5 family members or below B) Measures of central tendency (centre) • mean (arithmetic weighted): x =3.49, i.e. the average number of family members is 3 (4) • mode: xˆ =4, i.e. most of students said that they had 4 family members • median: x~ =4, i.e. half (50%) of students have 4 family members or below and half (50%) of students have 4 family members or above C) Measures of variability (spread) • IQR (interquartile range): IQR=1, it refers to spread of the middle 50% of data • range: R=4, i.e. the difference between the minimum and maximum number of family members is 4 • variance (sample): 2 s =1.38, it can’t be interpreted because it’s expressed in units squared (in the same units as the statistical attribute is measured) • standard deviation (sample): s =1.17, i.e. 68% of students said that they had 3(4) ± 1 family member(s) (mean ± one standard deviation according to the rule of one sigma = empirical rule)
  • 2. Statistical attribute: No. of family members (quantitative discrete) Elaborated by: Ing. Martina Majorová, Dept. of Statistics and Operations Research, FEM SUA in Nitra Charts used from the presentation of prof. Zlata Sojková, CSc., Dept. of Statistics and Operations Research, FEM SUA in Nitra • coefficient of variation: CV=0.3369=33.7%, i.e. the value of (sample) standard deviation is 33.7% of the value of (sample) mean, it refers to variability within the data set especially when we’d like to compare several data sets with different measurement units D) Measures of skewness (refer to the shape of distribution) • coefficient of skewness: 1γ =-0.38, i.e. data are negatively skewed (not a symmetrical distribution), tail of the distribution is to the left and mode is located to the right of mean E) Measures of kurtosis (refer to the shape of distribution) • coefficient of kurtosis: 2γ =-0.83, i.e. the shape of the distribution is flat (platykurtic)