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Elementary Statistical Concepts
Stats 244.3 Elementary Statistical Concepts
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T Th 1:00pm - 2:20pm Thorv 271 Lab: Th 2:30 - 3:20 Thor 271
Instructor: W.H.Laverty Office: 235 McLean Hall Phone: Lectures: T Th 1:00pm - 2:20pm Thorv 271 Lab: Th 2:30 - 3:20 Thor 271 Evaluation: Assignments, Labs, Term tests - 40% Each Friday – Term Test Final Examination - 60%
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Marks will be distributed in this manner
6 Term Tests – in the lab every two weeks the lowest mark out of 6 tests will be dropped Term tests will be worth 30% 4 computer assignments Worth 10% Final Exam Worth 60%
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Dates for term tests Stats 244
Thursday, Jan :30-3:20 (in Lab) Thursday, Feb :30-3:20 (in Lab) Thursday, Feb :30-3:20 (in Lab) Thursday, Mar :30-3:20 (in Lab) Thursday, Mar :30-3:20 (in Lab) Thursday, Apr :30-3:20 (in Lab)
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Due Dates computer assignments
Tuesday, Jan 27 Tuesday, Feb 10 Thursday, Mar 10 Tuesday, Mar 24
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Comments All tests will be Open Book
You are allowed to take in: Textbooks Notes Calculator (no computers are allowed) Practice assignments with solutions will be posted before each test. These are not compulsory.
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Text: No prescribed text
Texts (Available in Library) 1. Statistics Informed Decision using Data - Sullivan 2. Introductory Statistics - Mann 3. Modern Elementary Statistics - Freund 4. Elementary Statistics: A Brief version - Bluman 5. Elementary Statistics - Hoel 6. Statistics The Exploration and Analysis of Data - Devore and Peck 7. Statistics ‐A first course – Freund 8. Statistics ‐A first course - Saunders, Smit, Adatia & Larson 9. Basic Statistical Concepts - Bartz 10. An Introduction To Statistical Methods and Data Analysis - Ott 11. Introductory Statistics - Wonnacott & Wonnacott
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The lectures will be given in Power Point
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To download lectures Go to the stats 244 web site Then Through PAWS or
by going to the website of the department of Mathematics and Statistics -> people -> faculty -> W.H. Laverty -> Stats 244-> Lectures. Then select the lecture Right click and choose Save as
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To print lectures Open the lecture using MS Powerpoint
Select the menu item File -> Print
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The following dialogue box appear
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In the Print what box, select handouts
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Set Slides per page to 6 or 3.
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6 slides per page will result in the least amount of paper being printed
1 2 3 4 5 6
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3 slides per page leaves room for notes.
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Course Outline
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Introduction Populations, samples Variables Data Collection Chapter 1
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Exploratory Statistics
Organizing and displaying Data Numerical measures of Central Tendency and Variability Describing Bivariate Data
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Probability Theory Concepts of Probability Random variables and their distributions Binomial distribution, Normal distribution Chapter 4 Chapter 5 Chapter 6
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Inferential Statistics
Estimation, Hypotheses testing Comparing Samples Analyzing count data Regression and Correlation Non-parametric Statistics
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Introduction
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The circular process of research:
Questions arise about a phenomenon A decision is made to collect data A decision is made as how to collect the data The data is collected The data is summarized and analyzed Conclusions are drawn from the analysis
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What is Statistics? It is the major mathematical tool of scientific inference (research) – with an interest in drawing conclusion from data. Data that is to some extent corrupted by some component of random variation (random noise)
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Random variation or (random noise) can be defined to be the variation in the data that is not accounted for by factors considered in the analysis.
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Suppose we are collecting data on Blood Pressure Height Weight Age
Example Suppose we are collecting data on Blood Pressure Height Weight Age
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Suppose we are interested in how
Blood Pressure is influenced by the following factors Height Weight Age
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Blood Pressure will not be perfectly predictable from :
Height Weight Age There will departures (random variation) from a perfect prediction because of other factors the could affect Blood pressure (diet, exercise, hereditary factors)
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Another Example In this example we are interested in the use of:
antidepressants, mood stabilizing medication, anxiety medication, stimulants and sleeping pills. The data were collected for n = cases
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In addition we are interested in how the use these medications is affected by:
Age 20-29, 30-39,40-49, 50-59, 60-69, 70+ Gender Male, female Education < Secondary, Secondary Grad., some Post-Sec., Post-Sec. Grad.
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Income Low, Low Mid, Up Mid, High Role parent, partner , worker
parent, worker partner, worker worker only parent only partner only no roles
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Some questions of interest
How are the dependent variables (antidepressant use, mood stabilizing medication use, anxiety medication use, stimulants use, sleeping pill use) interrelated? How are the dependent variables (drug use) related to the independent variables (age, gender, income, education and role)?
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Again the relationships will not be perfect
Because of the effects of other factors (variables) that have not been considered in the experiment If the data is recollected, the patterns observed at the second collection will not be exactly the same as that observed at the first collection
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The data appears in the following Excel file
Drug data
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In Statistics Questions Data Answers
About some scientific, sociological, medical or economic phenomena Data The purpose of the data is to find answers to the questions Answers Because of the random variation in the data (the noise). Conclusions based on the data will be subject to error.
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The circular process of research:
In what part of this process does statistics play a role? Questions arise about a phenomenon Conclusion are drawn from the analysis A decision is made to collect data Statistics Statistics Experimental Design A decision is made as how to collect the data The data is summarized and analyzed The data is collected
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Statistical Theory is interested in
The design of the data collection procedures. (Experimental designs, Survey designs). The experiment can be totally lost if it is not designed correctly. The techniques for analyzing the data.
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In any statistical analysis it is important to assess the magnitude of the error made by the conclusions of the analysis.
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Consider the following statement:
You can prove anything with Statistics.
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One is unable to “prove” anything with Statistics.
In fact: One is unable to “prove” anything with Statistics.
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At the end of any statistical analysis there always is a possibility of an error in any of the decisions that it makes.
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The success of a research project does not depend on the its conclusions
The success of a research project depends on the accuracy of its conclusions
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If one is testing the effectiveness of a drug
There is two possible conclusions: 1. The drug is effective: 2. The drug is not effective:
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The success of a this project does not depend on the its conclusions
The success depends on the accuracy of its conclusions
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For this reason: It is extremely important in any study to assess the accuracy of its conclusions
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End – Lecture 1
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important to Statistics
Some definitions important to Statistics
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A population: this is the complete collection of subjects (objects) that are of interest in the study. There may be (and frequently are) more than one in which case a major objective is that of comparison.
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A case (elementary sampling unit):
This is an individual unit (subject) of the population.
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A variable: a measurement or type of measurement that is made on each individual case in the population.
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Types of variables Some variables may be measured on a numerical scale while others are measured on a categorical scale. The nature of the variables has a great influence on which analysis will be used. .
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For Variables measured on a numerical scale the measurements will be numbers.
Ex: Age, Weight, Systolic Blood Pressure For Variables measured on a categorical scale the measurements will be categories. Ex: Sex, Religion, Heart Disease
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Note Sometimes variables can be measured on both a numerical scale and a categorical scale. In fact, variables measured on a numerical scale can always be converted to measurements on a categorical scale.
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Example The following variables were evaluated for a study of individuals receiving head injuries in Saskatchewan. Cause of the injury (categorical) Motor vehicle accident Fall Violence other
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Time of year (date) (numerical or categorical)
summer fall winter spring Sex on injured individual (categorical) male female
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Age (numerical or categorical)
< 10 10-19 50 – 65 65+ Mortality (categorical) Died from injury alive
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Types of variables In addition some variables are labeled as dependent variables and some variables are labeled as independent variables.
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This usually depends on the objectives of the analysis.
Dependent variables are output or response variables while the independent variables are the input variables or factors.
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Usually one is interested in determining equations that describe how the dependent variables are affected by the independent variables
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Suppose we are collecting data on Blood Pressure Height Weight Age
Example Suppose we are collecting data on Blood Pressure Height Weight Age
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Suppose we are interested in how
Blood Pressure is influenced by the following factors Height Weight Age
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Then Blood Pressure is the dependent variable and Height Weight Age Are the independent variables
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Example – Head Injury study
Suppose we are interested in how Mortality is influenced by the following factors Cause of head injury Time of year Sex Age
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Then Mortality is the dependent variable and Cause of head injury Time of year Sex Age Are the independent variables
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dependent Response variable independent predictor variable
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Is a subset of the population
A sample: Is a subset of the population
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In statistics: One draws conclusions about the population based on data collected from a sample
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Reasons: Cost It is less costly to collect data from a sample then the entire population Accuracy
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Accuracy Data from a sample sometimes leads to more accurate conclusions then data from the entire population Costs saved from using a sample can be directed to obtaining more accurate observations on each case in the population
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Types of Samples different types of samples are determined by how the sample is selected.
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Convenience Samples In a convenience sample the subjects that are most convenient to the researcher are selected as objects in the sample. This is not a very good procedure for inferential Statistical Analysis but is useful for exploratory preliminary work.
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Quota samples In quota samples subjects are chosen conveniently until quotas are met for different subgroups of the population. This also is useful for exploratory preliminary work.
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Random Samples Random samples of a given size are selected in such that all possible samples of that size have the same probability of being selected.
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Convenience Samples and Quota samples are useful for preliminary studies. It is however difficult to assess the accuracy of estimates based on this type of sampling scheme. Sometimes however one has to be satisfied with a convenience sample and assume that it is equivalent to a random sampling procedure
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Population Case × Sample Variables X Y Z
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Some other definitions
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A population statistic (parameter):
Any quantity computed from the values of variables for the entire population.
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A sample statistic: Any quantity computed from the values of variables for the cases in the sample.
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Since only cases from the sample are observed
only sample statistics are computed These are used to make inferences about population statistics It is important to be able to assess the accuracy of these inferences
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Organizing Data the next topic
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