- This chapter connects (bridges) the previous knowledge and the understanding of statistical inference.
- Outcome of a statistical experiment:
- Numerical value: total value of a pair of dice tossed.
- Descriptive representation: blood types in blood test.
- We focus on
- sampling from distributions or populations
- study such important quantities as the sample mean and sample variance.
- We extend the concept of probability distribution to that of a sample statistic.
- For instance, the distribution of a sample mean , which is a random variable because the different samples may result in different values of sample mean .
- The use of high speed computer enhances the use of formal statistical inference with graphical techniques.
- Definition 8.1:
- The number of observations in the population is defined to be the size of the population.
- Finite size: 600 students are classified according to blood type: a population of size 600.
- Infinite size: measuring the atmospheric pressure; some finite populations are so large.
- Obtain representative samples to have a valid inference.
- Biased sampling procedure produces inference that consistently overestimate/underestimate some characteristics of the
population.
- Random sample: selected independently and at random.
- Definition 8.3:
- If we assume the population of battery lives to be normal, the possible values of any
, will be precisely the same as those in the original population, and hence has the same identical normal distribution as .
Cem Ozdogan
2010-05-10