When can the Empirical Rule be used to identify unusual results in a binomial experiment? Why can the Empirical Rule be used to identify results in a binomial experiment? Choose the correct answer below. O A. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from u-20 to u+ 20. The Empirical Rule can be used to identify results in binomial experiments when np(1-p)s 10. O B. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from u-20 to u +20. The Empirical Rule can always be used to identify results in binomial experiments. O C. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from u-2np to u+ 2np. The Empirical Rule can be used to identify results in binomial experiments when np(1- p)2 10. O D. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from u-20 to u + 20. The Empirical Rule can be used to identify results in binomial experiments when np(1 -p) 2 10.

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ple
When can the Empirical Rule be used to identify unusual results in a binomial experiment? Why can the Empirical Rule be used to identify results in a binomial experiment?
Choose the correct answer below.
es
O A. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from u-20 to u + 20. The Empirical Rule can be used to identify
results in binomial experiments when np(1-p)s 10.
O B. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from p-20 to u + 20. The Empirical Rule can always be used to
identify results in binomial experiments.
O C. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from u-2np to u+ 2np. The Empirical Rule can be used to identify
results in binomial experiments when np(1 - p) 2 10.
bus
O D. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from u- 20 to u + 20. The Empirical Rule can be used to identify
results in binomial experiments when np(1 - p) 2 10.
ules
Transcribed Image Text:ple When can the Empirical Rule be used to identify unusual results in a binomial experiment? Why can the Empirical Rule be used to identify results in a binomial experiment? Choose the correct answer below. es O A. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from u-20 to u + 20. The Empirical Rule can be used to identify results in binomial experiments when np(1-p)s 10. O B. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from p-20 to u + 20. The Empirical Rule can always be used to identify results in binomial experiments. O C. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from u-2np to u+ 2np. The Empirical Rule can be used to identify results in binomial experiments when np(1 - p) 2 10. bus O D. When the binomial distribution is approximately bell shaped, about 95% of the outcomes will be in the interval from u- 20 to u + 20. The Empirical Rule can be used to identify results in binomial experiments when np(1 - p) 2 10. ules
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