1 / 40

SPECIAL CORRELATION

Explore the Spearman Rank Order Correlation and Biserial Correlation measures, their computation, and their interpretation in studying relationships between variables.

joannbrown
Télécharger la présentation

SPECIAL CORRELATION

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. SPECIAL CORRELATION

  2. Introduction… • The Pearson correlation specifically measures the degree of linear relationship between two variables. • It is most commonly used measure of relationship and is used with data from an interval or a ratio scale of measurement • However, other correlation measures have been developed for nonlinear relationship and for other types of data (scale of measurement)

  3. Other correlation measures • Spearman Rank Order Correlation • Biserial Correlation • Point Biserial Correlation • Tetrachoric • Phi Coefficient

  4. Spearman Rank Order Correlation

  5. Spearman (Rank Order) Correlation • Spearman Correlation is designed to measure the relationship between variables measured on an ordinal scale of measurement • Also can be used as a valuable alternative to the Pearson correlation, even the original raw scores are on an interval or ratio scale • The Spearman correlation measures consistency rather than form: ‘When two variables are consistently related, their rank will be linearly related.

  6. Spearman’s Rank-Difference Correlation Method • Especially, when samples are small • It can be applied as a quick substitute when the number of pairs, or N, is less than 30 • It should be applied when the data are already in terms of rank orders rather than interval measurement

  7. Squared Deviations Products Scores Deviations X Y X – MXY – MY (X-MX)2 (Y-MY)2(X-MX)(Y-MY) 10 3 -1 4 0 2 -1 1 -2 0 5 -3 -1 -2 1 4 1 1 4 0 25 9 1 4 1 7 4 6 3 5 11 3 5 4 7 SP +16 +16 r = = = = +0,8 √ √ 20 (SSX)(SSY) (10)(40)

  8. The Computation of Spearman (Rank Order) Correlation rρ = 1 - 6 Σ D2 n(n2 – 1)

  9. Scores Rank Different X 7 4 6 3 5 Y 11 3 5 4 7 X 1 4 2 5 3 Y 1 5 3 4 2 (RX – RY)2 0 1 1 1 1 RX – RY 0 -1 -1 1 1 rρ = 1 - 6 (4) 6 Σ D2 = 1 - = 0,8 5(25 – 1) n(n2 – 1)

  10. INTERPRETATION OF A RANK DIFFERENCE COEFFICIENT • The rho coefficient is closely to the Pearson r that would be computed from the original measurement. • The rρ values are systematically a bit lower than the corresponding Pearson-r values, but the maximum difference, which occurs when both coefficient are near .50

  11. LEARNING CHECK To measure the relationship between anxiety level and test performance, a psychologist obtains a sample of n = 6 college students from introductory statistics course. The students are asked to come to the laboratory 15 minutes before the final exam. In the lab, the psychologist records psychological measure of anxiety (heart rate, skin resistance, blood pressure, etc) for each student. In addition, the psychologist obtains the exam score for each student.

  12. Compute the Pearson and Spearman correlation for the following data. Test the correlation with α= .05

  13. The BISERIAL Coefficient of Correlation

  14. The BISERIAL Coefficient of Correlation • The biserial r is especially designed for the situation in which both of the variables correlated are continuously measurable, BUT one of the two is for some reason reduced to two categories • This reduction to two categories may be a consequence of the only way in which the data can be obtained, as, for example, when one variable is whether or not a student passes or fails a certain standard

  15. The COMPUTATION • The principle upon which the formula for biserial r is based is that with zero correlation • There would no difference means for the continuous variable, and the larger the difference between means, the larger the correlation

  16. THE BISERIAL CORRELATION Mp – Mq pq rb= X St y Where: Mp = mean of X values for the higher group in the dichotomized variable, the one having ability on which sample is divided into two subgroups Mq = mean of X values for the lower group p = proportion of cases in the higher group q = proportion of cases in the lower group y = ordinate of the unit normal-distribution curve at the point of division between segments containing p and q proportion of the cases St = standard deviation of the total sample in the continuously measured variable X

  17. THE BISERIAL CORRELATION Mp – Mq pq rb= X y St Mp – MT p rb= X OR St y

  18. y q area p area

  19. The Standard Error of rb If the obtained rb is greater than 1.96 times its standard error, we conclude that at .05 level the obtained correlation would not very probably have arisen by chance from a population in which the correlation is zero pq √ Srb= y √ N

  20. AN EVALUATION OF THE BISERIAL r • Before computing r, of course we need to dichotomize each Y distribution. • In adopting a division point, it is well to come as near the median as possible, why? • In all these special instances, however, we are not relieve of the responsibility of defending the assumption of the normal population distribution of Y • It may seem contradictory to suggest that when the obtained Y distribution is skewed, we resort the biserial r, but note that is the sample distribution that is skewed and the population distribution that must be assumed to be normal

  21. THE BISERIAL r IS LESS RELIABLE THAN THE PEARSON r • Whenever there is a real choices between computing a Pearson r or a biserial r, however, one should favor the former, unless the sample is very large and computation time is an important consideration • The standard error for a biserial r is considerably larger than that for a Pearson r derived from the same sample

  22. The POINT BISERIAL Coefficient of Correlation

  23. The POINT BISERIAL Coefficient of Correlation • When one of the two variables in a correlation problem is genuine dichotomy, the appropriate type of coefficient to use is point biserial r • Examples of genuine dichotomies are male vs female, being a farmer vs not being a farmer • Bimodal or other peculiar distributions, although not representating entirely discrete categories, are sufficiently discontinuous to call for the point biserial rather than biserial r

  24. The COMPUTATION • A product-moment r could be computed with Pearson’s basic formula • If rpbi were computed from data that actually justified the use of rb, the coefficient computed would be markly smaller than rb obtained from the same data • rb is √pq/y times as large as rpbi

  25. THE POINT BISERIAL CORRELATION Mp – Mq rpbi= pq St Where: Mp= mean of X values for the higher group in the dichotomized variable, the one having ability on which sample is divided into two subgroups Mq= mean of X values for the lower group p = proportion of cases in the higher group q = proportion of cases in the higher group St = standard deviation of the total sample in the continuously measured variable X

  26. ALTERNATIVE METHODS OF COMPUTATIONFOR THE POINT BISERIAL CORRELATION Mp – MT p Mp – Mq NpNq rpbi= rpbi= q St St Mp – MT Np rpbi= Nq St

  27. POINT-BISERIAL vs BISERIAL • When the dichotomous variable is normally distributed without reasonable doubt, it is recommended that rb be computed and interpreted • If there is little doubt that the distribution is a genuine dichotomy, rpbi should be computed and interpreted • When in doubt, the rpbi is probably the safer choice

  28. Mathematical relation of rpbi to rb pq √ rb= rpbi y y rpbi= rb pq √

  29. The TETRACHORIC Correlation

  30. TETRACHORIC CORRELATION • A tetrachoric r is computed from data in which both X and Y have been reduced artificially to two categories • Under the appropriate condition it gives a coefficient that is numerically equivalent to a Pearson r and may be regard as an approximation to it

  31. Where: a = frequency of cases in the higher group in both variables b = frequency of cases in (the higher group in variables X and the lower group in variable Y) c = frequency of cases in (the lower group in variables X and the higher group in variable Y) d = frequency of cases in the lower group in both variables y = ordinate of the unit normal-distribution curve at the point of division between segments containing p and q proportion of the cases y’ = ordinate of the unit normal-distribution curve at the point of division between segments containing p’ and q’ proportion of the cases √ bc rcos-pi = cos π √ ad + √ bc

  32. y’ q’ p’ b a p y Variable Y c d q Variable X

  33. ALTERNATIVE METHODS OF COMPUTATION FOR THE TETRACHORIC CORRELATION √ bc rcos-pi = cos π √ ad + √ bc 1800√ bc 1800 rcos-pi = cos = cos √ √ 1+ √ ad/bc ad + bc

  34. EXAMPLE for THE TETRACHORIC CORRELATION ad - bc rcos-pi= yy’N2

  35. The Standard Error of rt If the obtained rt is greater than 1.96 times its standard error, we conclude that at .05 level the obtained correlation would not very probably have arisen by chance from a population in which the correlation is zero √ pp’qq’ Srt= yy’ √ N

  36. TETRACHORIC CORRELATION • The tetrachoric r requires that both X and Y represent continuous, normally distributed, and linearly related variables • The tetrachoric r is less reliable than the Pearson r. • It is more reliable when: • N is large, as is true of all statistic • rt is large, as is true of other r’s • the division in the two categories are near the medians

  37. The Phi Coefficient rΦ

  38. THE Phi COEFFICIENT rФrelated to the chi square from 2 x 2 table • When two distributions correlated are genuinely dichotomous– when the two classes are separated by real gap between them, and previously discussed correlational method do not apply– we may resort to the phi coefficient • This coefficient was designed for so-called point distributions, which implies that the two classes have two point values and merely represent some qualitative attribute

  39. αδ - βγ THE PHI COEFFICIENT rФ rФ= √ pqp’q’ Compute the Phi Coefficient rΦfor the following data.

  40. PR Tentukanteknikkorelasi yang tepatuntukmengetahuigambaharanhubunganantaravariabeldibawahini. Kemudianhitungkoefisienkorelasinya • IPK denganTinggiBadan • JenisKelamindengan IPK • JenisKelamindenganJumlah HP>1

More Related