Answer:
Step-by-step explanation:
Introduction : Z scores are used to compute probabilities. for example if X is a norally ditributed variable and we want to know that robability of x being less than or greater tha a certain real no, say a, then we compute the z score for. and probability of ' x being less than a' is equal to probability of 'a standard normal variable being less than the z score of a '.
a) The above statement that : "probability of ' x being less than a' is equal to probability of 'a standard normal variable being less than the z score of a '. " is true because the z transformation on X gives us a standard normal variable. had X not been normal the z transformation would not follow standard normal exactly.
b) then , the probabilities will lead to wrong conclusion. because the probability based on z score is calculated from the standard normal PDF. but id the real PDF is not standard normal then calculating probabilities from z score using standard normal PDF will give erroneous answers.
c) z score for non normal data : z scores for non normal data can standardize a variable. it's like : if there is a data where the observations are all big numbers, the we calculate the z score for them. then calculate median, mode, GM etc. then we do the reverse transformation and get the actual median , mode etc.
Explanation: