This algebra-based probability and statistics course covers descriptive statistics, binomial and normal distributions, confidence intervals, and hypothesis testing using z, t, chi square, and f distributions. Correlation and regression are also introduced.
	
		
			MATH 153Statistical Reasoning*
		
	Please note: This is not a course syllabus. A course syllabus is unique to a particular section of a course by instructor. This curriculum guide provides general information about a course.
		I. General Information
	
		
			Department
		
Mathematics & Engineering
	 
		II. Course Specification
	
		
			Course Type
		
			General Education
		
	 
		
			General Education Competency
		
			Mathematical Way of Knowing
		
	 
		
			Credit Hours Narrative
		
			3 Credits
		
	 
		
			Semester Contact Hours Lecture
		
			45
		
	 
		
			Prerequisite Narrative
		
			CSI Self Placement Completion
		
	 
		III. Catalog Course Description
	
		This algebra-based probability and statistics course covers descriptive statistics, binomial and normal distributions, confidence intervals, and hypothesis testing using z, t, chi square, and f distributions. Correlation and regression are also introduced.
	 
		IV. Student Learning Outcomes
	
		Upon completion of this course, a student will be able to: 
			- Learn, understand, and demonstrate applying the statistical concepts to skill-based problems.  
- Learn, understand, calculate, interpret, and graph descriptive statistical values. 
- Calculate, analyze, and interpret results of confidence intervals and hypothesis testing in inferential statistics.  
- Apply the appropriate statistical tools to describe, analyze, and infer from real world data. 
 
		V. Topical Outline (Course Content)
	
		1. The student will be able to learn, understand, and demonstrate applying the statistical concepts to skill-based problems from the course content listed in section V. 
2. The student will be able to learn, understand, calculate, interpret, and graph descriptive statistical values.
3. The student will be able to calculate, analyze, and interpret results of confidence intervals and hypothesis testing in inferential statistics. 
4. The student will be able to apply the appropriate statistical tools to describe, analyze, and infer from real world data.
	 
		VI. Delivery Methodologies
	
		
			Required Assignments
		
			Definitions of the branches of statistics
Variables and types of data
Data collection and sampling techniques
Types of statistical studies
Measures of central tendency and variation
Measures of position and exploratory data analysis
Discrete probability distributions and their measures of central tendency and variation, including the binomial distribution
The normal and standard normal distribution, including applications in determining probabilities of occurrence
The Central Limit Theorem
Confidence intervals for means, proportions, variances, and standard 
deviations, using the z-, t-, and ?2 - distributions
Hypothesis testing, including the traditional method and the p-value method, for means, proportions, variances, and standard deviations, using the z-, t-, ?2 -, and  F-distributions
Scatter plots, correlation coefficient (calculation and significance), regression and coefficient of determination
Hypothesis testing for Goodness of Fit using the ?2 -distribution
		
	 
		
			Specific Course Activity Assignment or Assessment Requirements
		
			Definitions of the branches of statistics
Variables and types of data
Data collection and sampling techniques
Types of statistical studies
Measures of central tendency and variation
Measures of position and exploratory data analysis
Discrete probability distributions and their measures of central tendency and variation, including the binomial distribution
The normal and standard normal distribution, including applications in determining probabilities of occurrence
The Central Limit Theorem
Confidence intervals for means, proportions, variances, and standard 
deviations, using the z-, t-, and ?2 - distributions
Hypothesis testing, including the traditional method and the p-value method, for means, proportions, variances, and standard deviations, using the z-, t-, ?2 -, and  F-distributions
Scatter plots, correlation coefficient (calculation and significance), regression and coefficient of determination
Hypothesis testing for Goodness of Fit using the ?2 -distribution