CONFIDENCE IS (the) KEY ;)
Across
- 1. When checking for independence the sampling size should be no more than this percent of the population
- 5. The probability that the confidence interval captures the population parameter is either one or
- 7. To calculate a confidence interval the sampling distribution must be
- 10. You must check these before calculating a confidence interval
- 11. Which sided hypothesis states that the parameter is different from the null hypothesis value
- 13. You can memorize this kind of score for a confidence interval
- 15. What kind of sample should be used to calculate a confidence interval
- 17. This hypothesis can incorporate an inequality
- 19. This is another name for a claim
- 20. When the P value is less than this percent it is considered statistically significant
Down
- 2. You keep this hypothesis only until proven otherwise
- 3. A confidence interval captures the actual value of this
- 4. Always interpret the results of a problem in
- 6. We specify a particular t distribution by giving its degrees of
- 8. A significance test does not shed as much light as a
- 9. Means that the stated confidence level is still pretty accurate
- 12. Confidence intervals are statements about
- 14. This sized P-value gives the strongest evidence against the null hypothesis
- 16. As the margin of error of a confidence interval gets smaller this increases
- 18. This statistic tells how far away the sample result is from the null parameter value