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Making Statistical Inferences
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What is a “statistic”? A population may have one or more properties that we can quantify. In general this is unknown to us - we call this underlying property a parameter of the population. When we measure this parameter by using a Simple Random Sample (SRS) – we have measured a statistic
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Sampling Variability Repeated measurements of a statistic do not yield the same value – sampling variability SRS should eliminate bias Sampling variability is predictable
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Bias and Variability Low bias, high variability
High bias, low variability Low bias, low variability High bias, high variability
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Controlling Variability
Choose a sufficiently large n to give an acceptable amount of variability A large n will usually give a smaller amount of variability (assuming a truly SRS) – look at example 3.22
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Population Size Doesn’t Matter!
As long as the population is at least 100 times larger than the “n” of the sample – size of the population does not affect variability A sample of 100 out of a population of will have essentially the same amount of variability as a sample of 100 out of a population of 1 million. In other words – the two samples will yield equally precise estimates for a parameter.
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A “non-random” sample of questions…
Example 3.23 Problems: 3.62, 3.66, 3.70, 3.71 Link to applets…
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In conclusion… Make sure you understand the distinction between parameter and statistic Know what is meant by bias and variability Try 3.59, 3.69, 3.91
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