Psyc 317 Test 4
measure reliability -factors that distort correlation coefficients
less reliable a measure, the lower its correlations with other measures - a correlation between two scales can never been high than either scale's cronbach's alpha
correlational research
used to describe the relationship between two or more naturally occurring variables
statistical significance of r affected by 3 thing
1. sample size- more participants= more sig 2. correlation magnitude- larger r= more sig 3. move alpha from .05 to .01 or .001
correlation and causation
a correlation between 2 variables DOESNT imply causation - even a PERFECT correlation of 1.00 don't mean causality
correlational coefficient
a statistic indicating the degree to which two variables are related in a linear fashion - pearson correlational c. ( r ) is used to measure ranges from -1.00 - +1.00
covary
change ( the variables can change together
magnitude of correlation
expresses the STRENGTH of the relationship is unrelated to (-/+ signage) .10= small .30- medium .5- large
on-line outliers-factors that distort correlation coefficients
fall in the same pattern as the data and artificially deflatw
off line outliers -factors that distort correlation coefficients
fall outside the pattern of the data and artificially deflate
scatterplot
graph of participants scores on two variables straight line= perfect correlation
p value
index of how likely the true correlation in the population is different from .00 rule: if less then 5% probability the size of the sample correlation is due to chance ( p<.05) results are considered " statistically diff" and reflect the larger pop
direction of relationship
is determined by the sign of - or +
restricted range - factors that distort correlation coefficients
participants score are confined to a narrow range of the possible scores on a measure - artificially lower correlations below what they would be if the full range of scores was present - more serious distortion if curvilinear relationship
nondirectional hypothesis
predicts that two variables will be correlated but doesnt specify whether it will be positive or negative
directional hypothesis
predicts the direction of correlation - positive or negative, more powerful and can reach stat sig. with FEWER participants
coefficient of determination
r is NOT on a ratio scale r^2 : proportion of variance in one variable accounted for by the other variable (systematic) r^2 is on a ratio scale and is easily interpretable
curvilinear relationship
r=.00 indicates NO linear relationsip or curvilinear relationship
outleir -factors that distort correlation coefficients
score so deviant from the data that one can question whether it belongs in the data set typically more than 3 SD away from mean