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Chapter 6: Correlational Research

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The correlation coefficient was .56 (highly significant). Does this finding support the idea that playing violent video games increases aggression? – PowerPoint PPT presentation

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Title: Chapter 6: Correlational Research


1
Chapter 6 Correlational Research
  • Examine whether variables are related to one
    another (whether they vary together).
  • Correlation coefficient statistic indicating how
    well two variables are related to one another
    (how well they vary together) in a linear
    fashion.
  • Must obtain a score on each variable for each
    participant.
  • Pearson correlation coefficient (r) most common.
    Values range from -1.00 to 1.00
  • The direction of the relationship is indicated by
    the sign of the correlation coefficient.

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  • Positive correlation indicates a direct, linear,
    positive relationship (as one variable increases
    the other variable also increases).
  • Negative correlation indicates a direct, linear,
    negative relationship (as one variable increases
    the other variable decreases)
  • Magnitude of the correlation the numerical value
    (ignoring the sign) which expresses the strength
    of the relation
  • Correlation of .33, indicates that the variables
    are not a strongly related as variables with a
    correlation of .65
  • The stronger the correlation the more tightly the
    data cluster around the mean

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  • Two variables may be related in a curvilinear
    fashion.
  • The correlation will be 0 but the variables may
    still be related in a non-linear way.

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  • Coefficient of determination represents the
    proportion of the variance in one variable (x)
    that is accounted for by the other variable (y).
  • r2 (square the correlation coefficient).
  • If the correlation between two variables (x and
    y) is 0.3. Then 0.3 squared 0.09, or 9 is the
    variance in x is accounted for y
  • Proportion of variance in x that is systemic
    variance shared with y.

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  • Practice correlation calculation
  • In this study, 12 participants were given as
    much time as they needed to memorize a poem. When
    they thought they had memorized the poem, the
    participants recited it, and the number of errors
    they made were counted. Calculate the correlation
    between the amount of time participants worked on
    memorizing the poem and the number of errors they
    made.

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  • Practice correlation calculation
  • x and y represent the variables of interest.
  • ?xy means you multiply each participants x and y
    score and then sum all the products across
    participants
  • (?x)(?y) means that you sum all the participants
    x scores, sum all the y scores, and then multiply
    these two sums together.

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  • Statistical significance of r
  • exists when the correlation coefficient has a
    very low chance of being 0 in the population.
  • Statistically significant means the chance that
    our correlation is truly 0 in the population is
    very low (usually less than .05). Meaning there
    is a 5 probability that our result is not really
    significant but happened by chance.
  • Statistical significance can be influenced by
  • sample size the larger the sample size the more
    likely you are to conclude that a correlation is
    statistically significant.

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  • The magnitude of the correlation the larger the
    more confident you are in concluding that the
    correlation is statistically significant
  • P value the level of significance you set before
    you calculate the correlation.
  • Most common is .05
  • Some researchers are more conservative and use
    .01 meaning there is only a 1 probability the
    correlation could be found significant even if it
    really is not significant (or due to chance).
  • With a P value of .01 you must have a larger
    correlation than with a P value of .05 for it to
    be significant.

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  • Factors that distort correlation coefficients
  • 1) Restricted range the size of the correlation
    may be reduced by a restriction of the range in
    the variables being correlated.
  • A restricted range occurs when most participants
    have similar scores (less variability).
  • This can occur when you are correlating scores
    that are either either high or low on one
    variable.
  • E.g. If you correlate SAT scores of people who
    get into college with their college GPA, you may
    be dealing with a restricted range because
    usually those with higher SAT scores get in to
    college.
  • Must ensure you have a broad range of scores.

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  • 2) Outliers
  • Outliers that are far off the correlation line
    (high on x but lower on y) tend to deflate the
    value of r.
  • Outliers that are on the correlation line but to
    the extreme on both x and y tend to inflate the
    value of r.

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  • 3) Reliability of measures the less reliable
    the measures the lower the correlation
    coefficients.
  • Correlation and Casualty you can not infer that
    one variable causes the other in a correlation.
  • The variables may be related a correlation
    between obesity and depression (more obese people
    are more depressed) does NOT mean that obesity
    causes depression, or that depression causes
    people to become obese.
  • Experimental studies must be conducted to infer
    causality in which there must be
  • Covariation changes in the value of one variable
    are associated with changes in the value of
    another variable

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  • Directionality the presumed cause must precede
    the effect in time. Very difficult to do in
    correlational research.
  • Elimination of extraneous variables eliminate
    all other factors that may influence the
    relationship between the two variables.
  • Two variables may be correlated only because they
    are actually correlated with a third variable.
  • E.g. There is a correlation between eating ice
    cream and drowning. But these variable are only
    correlated because they are both correlated with
    a third variable called summer (heat). People eat
    more ice cream in the summer (when it is hotter)
    and people drown more in the summer (swim more
    when it is hotter).

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  • Partial Correlation The correlation between two
    variables after the influence of the third
    variable is statistically removed.
  • E.g. Correlation between viewing violent TV and
    childhood aggression (children who watch more
    violent TV are more aggressive in their play)
  • But, parent discipline style may also be related
    to childhood aggression. More harsh and mean
    parents may have more aggressive children.
  • So with a partial correlation we can determine
    the correlation between violent TV viewing (x)
    and childhood aggression (y) once we
    statistically remove the influence of parents
    discipline style (z).

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Aggression (y)
Parental Discipline (z)
Violent TV (x)
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  • If the correlation between x and y is still
    significant after removing z
  • we can conclude that x and y are correlated even
    after we account for parent discipline style (z)
  • and the relationship between x and y is unlikely
    due to parent discipline style (z).

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Aggression (y)
Parental Discipline (z)
Violent TV (x)
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  • If the correlation between x and y is no longer
    significant after you remove z
  • then we conclude that the previous observed
    correlation between x and y was likely due to
    another variable parent discipline style (z).
  • Sometimes after removing another variable (z) the
    correlation between x and y is smaller but still
    significant, which means that z did have an
    influence, but x and y are still related.

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Aggression (y)
Parental Discipline (z)
Violent TV (x)
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  • Other indices of correlation
  • Spearman rank-order correlation correlation
    between two variables when one or both of the
    variables is on an ordinal scale (the numbers
    reflect rank ordering).
  • E.g. Correlation between teachers ranking of the
    best to worst students (ordinal scale) and the
    students IQ scores (interval scale).

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  • Point biserial correlation used when one
    variable is dichotomous
  • Gender is dichotomous (male or female). To
    correlate gender with spatial memory you would
    assign all males a 1 and all females a 2.
  • If you get a significant positive correlation
    that would mean that females tend to score higher
    on spatial memory than males. A significant
    negative correlation would mean that males score
    higher.
  • Phi coefficient used when both variables being
    correlated are dichotomous (e.g., gender,
    handedness, yes/no answer)

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  • Group Task Single People Attract Crime
  • Statistics show that people who are not married
    are three to four times more likely to be victims
    of violent crime as people who are currently
    married. The number of violent crimes per 1,000
    people age 12 years or older are shown in the
    following list. Clearly, marital status
    correlates with victimization.
  • Marital Status Violent Crimes per 1,000
    people
  • Married 13
  • Widowed 8
  • Divorced or separated 42
  • Never married 51

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  • 1. Speculate regarding possible explanations of
    this relationship. Suggest at least three reasons
    that marital status and victimization may be
    linked.
  • 2. Consider how you would conduct a
    correlational study to test each of your
    explanations. You will probably want to design
    studies that allow you to partial out variables
    that may mediate the relationship between marital
    status and victimization.

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  • Class Discussion
  • 1. Imagine you predicted a moderate correlation
    between peoples scores on a measure of anxiety
    and the degree to which they report having
    insomnia. You administered measures of anxiety
    and insomnia to a sample of 30 participants, and
    obtained a correlation of .28. Because this
    correlation is not statistically significant (the
    critical value is .30), you must treat it as if
    it were zero. Yet you still think that anxiety
    and insomnia are correlated. If you were going to
    conduct the study again, what could you do to
    provide a more powerful test of your hypothesis?

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  • 2. Imagine you obtained a point biserial
    correlation of .35 between gender and
    punctuality, showing that men arrived later to
    class than women. You think that this correlation
    might be due to the fact that more women wear
    watches, so you calculate the partial correlation
    between gender and punctuality while removing the
    influence of watch-wearing. The resulting
    correlation was .35
  • Interpret the partial correlation.
  • What if the correlation was .10 and no longer
    significant?
  • What if the correlation was .25 and still
    significant?

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  • 3. Following the rash of school shootings that
    occurred in the late 1990s, some individuals
    suggested that violent video games were making
    children and adolescents more aggressive. Imagine
    that you obtained a sample of 150 15-years-old
    males and correlated their level of
    aggressiveness with the amount of time per week
    that they played violent video games. The
    correlation coefficient was .56 (highly
    significant). Does this finding support the idea
    that playing violent video games increases
    aggression?
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