1.1 WS Solutions Categorical: state, gender, marital status.

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1.1 WS Solutions Categorical: state, gender, marital status. Quantitative: number of family members, age in years, total income in dollars, travel time to work in minutes.

Super Powers 13/85 20/115 5/44 36/54

Conclude: Based on the sample data, females were much more likely to choose telepathy than males, while males were much more likely to choose super strength or freeze time than females. Females were slightly more likely to choose flying and equally likely to choose invisibility, than males. As evidenced by the graph, there is a clear link between gender and super power preference in the sample.