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Understandable Statistics Seventh Edition By Brase and Brase Prepared by: Lynn Smith Gloucester County College. Chapter One Getting Started. Statistics is. The study of how to: collect organize analyze interpret numerical information from data. Individuals and Variables.
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Understandable StatisticsSeventh EditionBy Brase and BrasePrepared by: Lynn SmithGloucester County College Chapter One Getting Started
Statistics is The study of how to: • collect • organize • analyze • interpret numerical information from data
Individuals and Variables • Individual: a person or object included in a study • Variable: a characteristic of the individual to be measured or observed
Quantitative and Qualitative Data • Quantitative variable has a value or numerical measurement • example: number of siblings • Qualitative variable places an individual in a category or group • example: brand of computer
Population Variable is taken from every individual of interest Example: incomes of all residents of a county
Sample Variable is taken from only some of the indiviuals Example: incomes of selected residents
Levels of Measurement • Nominal • Ordinal • Interval • Ratio
Nominal Measurement Data is put into categories only. Example: eye color
Ordinal Measurement Data can be ordered. Differences cannot be calculated or interpreted. Example: class rank
Interval Measurement Data can be ordered. Differences between data values can be compared. Example: temperature
Ratio Measurement Data can be ordered. Differences and ratios between data values can be compared. Example: time
Branches of Statistics • Descriptive: methods of organizing, picturing, and summarizing information • Inferential: methods of using information from a sample to draw conclusions regarding the population
Methods of Producing Data • Sampling: drawing subsets from the population • Experimentation: impose a change and measure the result • Simulation: numerical facsimile of real-world phenomena • Census: using measurements from entire population • Survey: asking questions
Simple Random Sample of n measurements: • every sample of size n has equal chance of being selected • every item in the population has equal chance of being included
Not random sampling: asking for volunteers to respond to a survey choosing the first five customers in a store
Random sampling: • drawing names “from a hat” • using a random number table to select sample • using a random number generator
Simulation • Provides arithmetic imitation of “real” phenomenon • Random number table may be used
Sampling with replacement The same number may be selected for a sample more than one time.
Other sampling techniques • Stratified Sampling • Systematic Sampling • Cluster Sampling • Convenience Sampling
Stratified Sampling Population is divided into groups (“strata”) Random samples are drawn from each group
Systematic Sampling Population is arranged in sequential order. Select a random starting point. Select every “kth” item.
Cluster Sampling Population is divided into sections Some sections are randomly selected Every item in selected sections is included in sample
Convenience Sampling Use whatever data is readily available. Risk severe bias.
Which sampling technique is described? College students are waiting in line for registration. Every eighth person in line is surveyed. Systematic sampling
Which sampling technique is described? College students are waiting in line for registration. Students are asked to volunteer to respond to a survey. Convenience sampling
Which sampling technique is described? In a large high school, students from every homeroom are randomly selected to participate in a survey Stratified sampling
Which sampling technique is described? An accountant uses a random number generator to select ten accounts for audit. Simple random sampling
Which sampling technique is described? To determine students’ opinions of a new registration method, a college randomly selects five majors. All students in the selected majors are surveyed. Cluster sampling
Experimental Design Statistical studies are used to obtain reliable information.
Planning a Statistical Study • Identify individuals or object of interest • Specify variables and protocols for observations • Decide whether to use a census or a sample and determine viable sampling method • Collect data • Make decisions • List concerns and recommendations
Census Measurements or observations from entire populations are used.
Sample Measurements or observations from a representative part of the population are used.
Simulation A numerical facsimile of real-world phenomena
Experiments and Observation • Observational Study: no change is made in the responses or variable being studied • Experiment: a treatment is imposed in order to observe a possible change in the response or variable being measured
Randomized two-treatment experiment • Subjects are randomly assigned to one of two groups • One group receives treatment under study • Control group receives placebo • Results are compared • Randomization prevents bias • Replication on many subjects assures changes not caused by random chance
Surveys Data is gathered by asking people questions.
Problems with data collection • Some individuals do not respond. • People with strong opinions may be over-represented in voluntary response samples. • There may be a hidden bias in the data collection process. • There may be hidden effects of other variables. • There is no guarantee that results can be generalized.