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Published byMaximilian Lucas Modified over 9 years ago
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Sampling Techniques
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Governments, companies, and news agencies often want to know the public’s opinion on pertinent questions. Elections offer an excellent example of sampling and bias.
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Suppose you want to know who is going to win the next election?
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Clearly it is not feasible to ask every person in the country directly. You can probably get an idea of the results by asking only a certain number of people… The question is, “how many?”
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A marketing research firm (Ipsos-Reid or Ekos or Decima) would be hired by a news agency (CBC) to poll the public… Record the final results of our last federal election by clicking below Examine the following Examine the following
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Check the following website to see how the polls were able to track and predict the results The dates of each collection are on the x axis results
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A private company must be efficient to stay in business.
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If a company asks too many people, they are wasting time and money If a company asks too few people, the results will not be valid. Determining the right number of respondents is a major challenge to these companies
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Canada’s population is about 32.5 million There are about 22.5 million registered voters Approximately 60% of the registered voters actually vote About 13.5 million people vote
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Canada’s population is about 32.5 million There are about 22.5 millions registered voters Approximately 60% of the population actually votes About 13.5 million people vote SES polls tracks 1200 voters 0.0089% of the population !!!!!!
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Population All individuals in the group being studied Sample A subset of the population
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To see some examples of samples taken from populations, check out the website below samples
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There are a number of different ways populations can be sampled.
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Simple Random Sample All selections must be independent of one another and equally likely Use a random number generator, dice, or a hat draw to ensure the data is randomly sampled.
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Systematic Random Sample Used when you are sampling a fixed percent of the population. A random starting point is chosen, and then you select every n th individual, where n is the sampling interval.
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For example You want to determine the height of 25% of the students in this class. (9 out of 36) 36 9 = 4 The sampling interval would be 4
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Randomly select the first person to measure (from 1 to 4), then measure every 4 th person after them.
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Stratified Random Sampling The population is divided into different groups called strata (ex. geographic areas, gender,age). A simple random sample of the members in each stratum is taken. The size of the sample is proportional to the stratum’s size. (a consistent percent)
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Other sampling techniques Make a note of the sampling techniques discussed on page 116 in the text.
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Sampling Summary Chart
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Simple Random SampleEvery member of the population has an equal and independent chance of being selected Systematic SampleSelect the members at regular intervals starting from a random spot Stratified SampleDivide the population into strata that have something in common (age, province…). Select a SRS from each strata
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Cluster SampleCertain groups can be sampled if they represent the entire population. All the employees at a single McDonalds. Multi-Stage SampleTwo or more SRSs. Cities, then subdivisions, then houses. Voluntary ResponseCollect data on a voluntary basis. ie: call in show or mail in survey
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Convenience SampleThe sample is selected because it is easily accessible. Not as random as other techniques.
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Page 117 1,2,4,8,9 Plus examples on pg 116
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