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Chapter 4: Probability and Sampling Distributions
Section 4.1: Randomness
Definitions:
- parameter: a number that describes the population. Typically, the value of the parameter is not known because we cannot examine the
whole population.
- statistic: a number that can be computed from the sample data. We often use the statistic to estimate the parameter.
- population mean, μ: is a fixed parameter that is unknown when we use a sample for inference
- sample mean, x-bar: is the average of the observations in the sample
The idea of probability
Sampling variabilty: the exact value of a statistic varies in repeated random sampling. This is not a problem if
we have a random sample because chance behavior is unpredictable in the short run but has a regular pattern in the long run.
The idea of randomness is empirical. In other words, it is based on observation. Probability describes what happens
in a large number of trials.
- random: a phenomenon is random if individual outcomes are uncertain but there is a regular distribution of
outcomes in a large number of repetitions.
- probability: of any outcome of a random phenomenon is the proportion of times the outcome occurs in a very long
series of repetition.
Thinking about randomness
We can never observe a probability exactly. Mathematical probability is an idealization based on imagining what would
happen in an indefinitely long series of trials.
- independent trials: the outcome of one trial must not influence the outcome of any other.
- probability is empirical: we can estimate a real-world probability only by observing many trials. Short run trials only
give an estimate of a probability.
- computer simulations are useful!
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