Usefulness Of Correlation Coefficient  

Usefulness Of Correlation Coefficient  

  1. The correlation methods discussed in this chapter should be used only withindependentdata; they should not be applied to repeated measures data where the data are not independent. For example, it would not be appropriate to use these measures of correlation to describe the relationship between Week 4 and Week 8 blood pressures in the same patients.
  2. Caution should be used in interpreting results of correlation analysis when large numbers of variables have been examined, resulting in a large number of correlation coefficients.
  3. The correlation of two variables that both have been recorded repeatedly over time can be misleading and spurious. Time trends should be removed from such data before attempting to measure correlation.
  4. To extend correlation results to a given population, the subjects under study must form a representative (i.e., random) sample from that population. The Pearson correlation coefficient can be very sensitive to outlying observations and all correlation coefficients are susceptible to sample selection biases.
  5. Care should be taken when attempting to correlate two variables where one is a part and one represents the total. For example, we would expect to find a positive correlation between height at age ten and adult height because the second quantity “contains” the first quantity.
  6. Correlation should not be used to study the relation between an initial measurement,X, and the change in that measurement over time,Y – XX will be correlated with Y – X due to the regression to the mean phenomenon.
  7. Small correlation values do not necessarily indicate that two variables are unassociated. For example, Pearson’srpwill underestimate the association between two variables that show a quadratic relationship. Scatterplots should always be examined.

 

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