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SSF1063: Statistics for Social Sciences

SSF1063: Statistics for Social Sciences. LU11: Linear Correlation 31 st March 2008. Correlation. To examine the relationship between two (bivariate) continuous variables Some commonly used jargons: Linear and Non-linear Relationship Correlation Scatterplot diagram

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SSF1063: Statistics for Social Sciences

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  1. SSF1063: Statistics for Social Sciences LU11: Linear Correlation 31st March 2008

  2. Correlation • To examine the relationship between two (bivariate) continuous variables • Some commonly used jargons: • Linear and Non-linear Relationship • Correlation • Scatterplot diagram • Correlation Coefficient • Pearson (Product-Moment r)

  3. Correlation • A descriptive statistics • Describe the degree and direction of linear correlation between two quantitative variables • Class size and students’ test performance • Hours of work and income

  4. The General Idea About Correlation • Two variables may correlate to each other in 3 possible ways: • Positive Relationship: • Both variables vary in the same direction - as one goes up, the other goes up. • Eg. salary and years of education are positively correlated because the people who make the highest salaries tend to be the ones who have gone to school the longest

  5. The General Idea About Correlation Negative Relationship: • Two variables vary in the opposite direction - as one goes up, the other goes down. • For example, the longer the hour of working mother works outside the home, less time is available to spend with children.

  6. The General Idea About Correlation • Zero Relationship: • Two variables vary with freely without any kind of rules or relationship. • For example, the relationship between personality fluctuations and the movement of distant stars has a zero correlation. Bona fide studies have found that there is absolutely no correlation between the position of stars at the time you are born and the true nature of your personality

  7. Degree of Correlation: How Strongly Are Variables Correlated? The degree of correlation between two variables can be established using two methods: • Scatterplot – a graph with plotted values for two variables being compared • Correlation Coefficient

  8. Pearson correlation only measures relationships in variables that are linearly related. • The correlation coefficient shows the slope of straight line passing through the data cloud. It ranges between –1  r  +1. • r shows the magnitude and direction of a relationship

  9. Watch up • A correlation coefficient of zero does not mean that there isn’t any relationship between two variables. It is possible that the two variables are strongly related in nonlinear way.

  10. Scatterplot

  11. Steps to get scarterplot diagram: • Graph  Scatter  Simple Define  Select the appropriate variables to the test variable cell  OK

  12. Correlation Coefficient

  13. CORRELATION • Correlation characterizes the existence of a relationship between variables • Correlation coefficient is a quantitative indicator of the degree of relationship between variables • There are several measures of correlations depending to the nature of variables being investigated. The most commonly used measure of correlation is called Pearson product moment correlation (denoted by r) • Each measure of correlation uses different kind of rules and modeling

  14. Computing The Correlation Coefficients

  15. Pearson Product Moment (r) The Pearson correlation r can be computed using the formula:

  16. Compute the correlation between the men’s Heights (in inches) and Weights (in pounds) for the following data: Eg 1.

  17. Note that the paired data are in the form of interval-interval. Thus, the most suitable correlation measure would be Pearson product moment.

  18. Computation of r:

  19. Correlation from SPSS – Analyse Correlate Bivariate

  20. The correlation value, 0.767, indicate that there exist positive linear relationship between the body length and body weight in the samples of lizards.

  21. Pearson Eg.1 Pearson Eg.2 Pearson Eg.3 Spearman Eg.1

  22. When is a correlation ‘strong enough’?(Guilford’s rough guide only) < 0.2 slight; almost negligible relationship 0.2 – 0.4 low correlation; definite but small relationship 0.4 – 0.7 moderate correlation; substantial relationship 0.7 – 0.9 high correlation; marked relationship > 0.9 very high correlation; very dependable relationship

  23. Words of Caution • Examine your data distribution (i.e. using scatterplot) before you do anything with the correlation and make sure you know the do’s and don’ts with correlation coefficients! • Correlation coefficient is just an index of relationship which tells nothing about the ‘cause and effect’ of the relationship! The correlation coefficient tells you nothing about the reasons of the relationship, if any. • Limit yourself to linear relationship if you don’t have adequate statistical background!

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