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Published byLynn Evans Modified over 8 years ago
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Non-experimental Correlational research u Determine whether 2 or more variables are associated, u If so, to establish direction and strength of relationships u Observe variables as they are, –can’t manipulate them
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Causal - (Experimental) u one variable directly or indirectly influences another. Correlational - (Non-experimental) u Changes in one variable accompany changes in another. u A relationship exists. Don’t know if either variable actually influences the other.
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Correlational research u If correlation -- relationship exists, u Predict from value of one variable, the probable value of the other variable. –Variable used to predict is predictor variable –Variable being predicted is criterion variable
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Example: Test Score Ten students took a Chemistry class and a Biology class together Compared final exam scores in two classes J I H G F E D C B A 9894 9390 89 8388 8580 8378 8276 6972 6870 6562 BiologyChemistry
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Students who get higher score in the Chemistry class also get higher score in the Biology class
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Positive Correlation u When scores of two variables move in same direction, these variables are positively (or directly) correlated u Positive correlation between between chemistry final score and biology score u When two variables are positively correlated, scatter plot shows a trend line that runs from lower-left to upper-right
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Example: Test Score The same students also took an Art class Compared final exam scores in Chemistry and Art J I H G F E D C B A 7194 7390 7489 7588 7780 7778 76 7472 8070 9062 ArtChemistry
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Example: Scatter Plot Students who got higher score in Chemistry class got lower score in Art Class
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Negative Correlation u When scores of two variables move together in the same direction, we say that these variables are negatively (or inversely) correlated u There is a negative correlation between between the chemistry final score and the art final score u When two variables are negatively correlated, the scatter plot shows a trend line that runs from upper-left to lower-right
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Example: Test Score The same ten students also took an English class together Compare the English final score with the Chemistry final score J I H G F E D C B A 7694 8990 6089 7588 9080 78 7576 9072 6070 8562 EnglishChemistry
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Score in Chemistry and Score in English are not related Test score
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No Correlation u When the change in one variable does not affect the change in another variable, these variables have no correlation u No correlation between chemistry final score and English score u When two variables have no correlation, the scatter plot shows the dots scattered throughout the grids
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Correlation (SSS) Sign Size Significance
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SIGN u (0: No systematic relationship) Positive: As one variable gets bigger, so does the 2nd Negative: As one variable gets bigger, the 2 nd gets smaller
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Correlation Co-efficient +10 NegativePositive Stronger Weaker Perfect None
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Correlation Co-efficient u indicates how strongly and in which direction two variables are correlated with each other u A correlation co-efficient varies –1 to +1 u Indicated as r u r = +1: Perfect positive correlation If one variable increases by x%, other variable also increases by x% u r = - 1: Perfect negative correlation u r = 0: No correlation
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Cannot say one variable causes the other in correlational research u The relationship between variables might be caused by an unobserved third variable -- “third variable problem” u Direction problem –Which came first? Which influences the other? (It may not have any influence on the other) –E.g., child’s level of aggression or amount of time watching violent TV?
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Correlational research u When changes in one variable accompany changes in another, they covary -- a relationship exists. u Does not mean they influence the other. u Correlation does NOT imply causation (Non-experimental)
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Correlational research u Men’s drive for thinness scores were positively correlated with weight gain. u / Greater concern about being thin was associated with more weight gain. (Heatherton et al, 1997) Can’t say concern for thinness causes men to gain wt. –POSSIBILITIES: »Concern about being thin causes weight gain »Weight gain causes concern about being thin »“X” (3rd variable) causes weight gain and concern about being thin.
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