Presentation is loading. Please wait.

Presentation is loading. Please wait.

Semester 2: Lecture 3 Quantitative Data Analysis: Univariate Analysis II Prepared by: Dr. Lloyd Waller ©

Similar presentations


Presentation on theme: "Semester 2: Lecture 3 Quantitative Data Analysis: Univariate Analysis II Prepared by: Dr. Lloyd Waller ©"— Presentation transcript:

1 Semester 2: Lecture 3 Quantitative Data Analysis: Univariate Analysis II Prepared by: Dr. Lloyd Waller ©

2 Quantitative Data Analysis There are several reasons researchers use statistics in their research. –To describe –To identify relationships –To determine if there are differences –To identify other variables that may be impacting on the research

3 To Describe Descriptive statistics are used to provide an overview of the data Typically, the population being studied is described statistically. This helps the reader of the research to see if the research can be generalized to other groups.

4 Characteristics of the distribution Measures of central tendency –Mean –Median –Mode Measures of dispersion –Range –Standard Deviation

5 Choosing a Descriptive Statistics Show table taken from Research Methods in Politics (p. 127).

6 Measures of Central Tendency used to indicate the value that is reprehensive the one value or score that best represents the entire set of cases on a variable.

7 Measures of Dispersions. tells us whether the variation around the average value we have identified is limited whether the variation is so great that the most typical case is not really very representative of the population at all The use of each level of measurement is governed by certain rules associated with levels of measurements.

8 Measures for Nominal Variables A Measure of Central Tendency Value that Occurs Most Often Not Affected by Extreme Values There May Not be a Mode There May be Several Modes Used for Either Numerical or Categorical Data 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 Mode = 9 0 1 2 3 4 5 6 No Mode THE MODE

9 An Example: The Mode Table 1: Gender of respondents FrequencyPercentValid Percent Cumulative Percent Valid1=male 15069.4 2=femal e 6630.6 100.0 Total 216100.0 Of the sampled population (n=216), 69.4% were males compared to 30.6% females.

10 Measures for Ordinary Variables The Median 0 1 2 3 4 5 6 7 8 9 100 1 2 3 4 5 6 7 8 9 10 12 14 Median = 5 Important Measure of Central Tendency In an ordered array, the median is the “middle” number. If n is odd, the median is the middle number. If n is even, the median is the average of the 2 middle numbers. Not Affected by Extreme Values

11 Measures for Interval Variables The Mean (Arithmetic Average) It is the Arithmetic Average of data values: The Most Common Measure of Central Tendency Affected by Extreme Values (Outliers) 0 1 2 3 4 5 6 7 8 9 100 1 2 3 4 5 6 7 8 9 10 12 14 Mean = 5Mean = 6

12 NValid 216 Missing 0 Mean 20.33 Median 20.00 Mode 20 Std. Deviation 1.692 Skewness 2.868 Std. Error of Skewness.166 An Example: The Median Mean

13 Conclusion Descriptive Statistics are a resourceful tool in the political scientist’s toolkit, either as a preliminary part of subsequent, more sophisticated analysis of as stand alone research The particular criticism that is often made of statistics is that, as a form of information, it fails to capture the richness an complexity of the political world. Skeptics argue, with some justification, that the validity of quantitative measurements (that is, the extent to which such measurements manage to capture whatever it is that they are intended to measure) is questionable.

14 Shape Describes How Data Are Distributed Measures of Shape: Symmetric or skewed Right-Skewed Left-SkewedSymmetric Mean =Median =Mode Mean Median Mode Median Mean Mod e

15 Skewness refers to the degree and direction of asymmetry in a distribution. No Skew Positively (skewed to the right) Skewed Negatively (left) Skewed


Download ppt "Semester 2: Lecture 3 Quantitative Data Analysis: Univariate Analysis II Prepared by: Dr. Lloyd Waller ©"

Similar presentations


Ads by Google