a. 95% confidence level; n=450; p=0.30 b. 90% confidence level; n=280; p= 0.05 C. a = 0.09; n= 425; p=0.90 05160 0.5557 00 0.5000 0.5040 0.5080 05120 0.5199 0.5239 0.5279 0.5319 0.5359 0.1 0.5398 0.5438 0.5478 0.5517 0.5596 0.5636 0.5675 0.5714 0.5753 0.2 0.5793 0.5832 0.5871 0.9910 0.9948 0.5987 0.6026 06064 0.6103 0.6141 03 06179 06217 0.6255 0.6293 0.6331 0.6368 0.6406 06443 0.6480 0.6517 E Click the icon to view the standard normal table of the cumulative distribution function. 04 06554 06991 0.6628 0.6664 0.6700 0.676 0.6772 0.6808 0.6844 0.6879 0.7088 07422 0.5 06915 06950 0.6985 0.7019 0.7054 0.7123 07157 0.7190 0.7224 a. The confidence interval isO
Correlation
Correlation defines a relationship between two independent variables. It tells the degree to which variables move in relation to each other. When two sets of data are related to each other, there is a correlation between them.
Linear Correlation
A correlation is used to determine the relationships between numerical and categorical variables. In other words, it is an indicator of how things are connected to one another. The correlation analysis is the study of how variables are related.
Regression Analysis
Regression analysis is a statistical method in which it estimates the relationship between a dependent variable and one or more independent variable. In simple terms dependent variable is called as outcome variable and independent variable is called as predictors. Regression analysis is one of the methods to find the trends in data. The independent variable used in Regression analysis is named Predictor variable. It offers data of an associated dependent variable regarding a particular outcome.
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