chapter 5 correlation Flashcards
correlation and regression are both
procedures used for examining the relationship between two variables. X and Y
similarities and differences between correlation and regression
correlation= strength of relationship of 2 variables regression= predictability of relationship between 2 variables
characteristics of regression situations
important to know in order to to distinguish a correlation from a regression rather than confuse the two
- one dependent variable (Y) and one OR more independent variables (X)
- levels of the independent variable are clearly defined and selected in advance
- the value of the dependent variable for a given level of the independent variable is free to vary
-the researcher is primarily interested in predicting Y from a knowledge of X
(which makes since if you think about the fact that we have a pre-existing/selected knowledge of X already. and Y is free to vary because it is what we are interested in predicting)
characteristics of correlation situations (how correlation differs in comparison to regression)
- neither variable is considered independent (there is no obvious independent variable)
- both X and Y are free to vary because neither of their values are preselected
- the researcher is primarily interested in assessing the strength of the relationship between X and Y.
(and possibly in predicting either variable from a knowledge of the other)
similarities of correlation and regration
both are procedures for assessing the relationship between two variables
why is it important to distinguish between situations that use correlation procedures and regression procedures?
because the assumptions underlying the use of the two procedures differ.
4 ways correlation and regression differ
- nature of the variables (presence or absence of an independent variable)
- use of random assignment of participants to the experimental conditions
- researchers primary interest (prediction/strength between variabeles)
- to some extent… the kind of conclusions that can be drawn
a bivariate frequency distribution (scatterplot) is a…
representation of the joint frequency of two variables
pearson product-moment correlation coefficient
-a measure of the linear relationship between 2 quantitative variables
(this is the numerical index of correlation)
possibly range for the value of a correlation coefficient
can range from -1 to +1
kind of relationship when coefficient has a value of +1 (r = +1)
positive relationship
- data points fall in a straight line
- high scores in one variable mean high scores in the other variable
- low scores in one variable mean low scores in the other variable
kind of relationship when coefficient has a value of -1 (r= -1)
negative or inverse relationship
- data points fall in a straight line
- high scores in one variable mean low scores in the other variable
- this results in a line that slopes down instead of up
characteristics if there is no linear association between the variables (r = 0)
-data points fall in a circle
intermediate degrees of association
coefficients less than 0
-1 < r < 0
coefficients greater than 0
0 < r < 1
-data points tend to form an ellipse
two things a coefficient tells you
- strength of the relationship (extent to which r differs from 0)
- direction of the relationship (positive or negative)