The Correlational Research Strategy Chapter 12 Correlational Research




















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The Correlational Research Strategy Chapter 12

Correlational Research The goal of correlational research is to describe the relationship between variables and to measure the strength of the relationship.

3 characteristics • A correlation describes three characteristics of a relationship. • The direction (positive / negative)of the relationship. • The form (linear/ nonlinear) of the relationship. • The consistency or strength (magnitude) of the relationship.

Direction • In a positive relationship, there is a tendency for two variables to change in the same direction. • In a negative relationship, there is a tendency for two variables to change in opposite directions.

Scatter Plot

Examples of positive and negative relationships

2 forms of correlation • Linear correlation Data points in the scatter plot tend to cluster around a straight line. The size of increase in Y is consistently predictable (not accurately). (height and age)- Pearson • Monotonic (nonlinear) correlation The relationship is consistent and predictable, but not linear. (practice & Performance) Spearman

2 forms of correlation

2 forms of correlation

Evaluating Relationships for Nonnumerical Scores • If one of the scores is numerical, like IQ, and the other is non- numerical, and If the nonnumerical variable consists of exactly two categories, the resulting correlation is called a point-biserial correlation.

phi- coefficient. • If the two non- numerical variables both consist of exactly two categories, each can be numerically coded as 0 and 1. For example, male 0 and female 1; failure 0 and success 1.

Phi

chi- square • If both variables are non- numerical, the relationship is typically evaluated by organizing the data in a matrix. • the matrix shows the frequency or number of individuals in that cell and the data are evaluated using a chi- square hypothesis test

Chi- Square Drama Action Comedy Latino 4 12 10 Asian 8 10 12 White 19 18 14

APPLICATIONS OF THE CORRELATIONAL STRATEGY 1. Prediction (SAT & GPA) 2. Reliability and Validity (Test & Retest) 3. Evaluating Theories (IQ and Math)

coefficient of determination • The squared value of a correlation is called the coefficient of determination and measures the percentage of variability in one variable that is determined, or predicted, by its relationship with the other variable.

Sample size • With a sample of two individuals, you will always obtain a perfect correlation of 1. 00 • As the sample size increases, it becomes increasingly more likely that the sample correlation accurately represents the real relationship that exists in the population. • You should be warned, however, that a statistically significant correlation does not necessarily mean that the correlation is large or strong.

Advantages • can identify variables and describe relationships between variables that might suggest further investigation using the experimental strategy to determine cause- and- effect relationships. • allow researchers an opportunity to investigate variables that would be impossible or unethical to manipulate. • Correlational studies tend to have high external validity.

Weaknesses - Internal Validity • Correlational studies tend to have low internal validity. • A correlational study does not determine which variable is the cause and which is the effect. • The third- variable problem.

RELATIONSHIPS WITH MORE THAN TWO VARIABLES • For studying multivariate relationships we use a statistical procedure known as multiple regression.