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On the tail integral formulae for real-valued random variables
Published online by Cambridge University Press: 12 October 2022
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The most important properties of any distribution are its moments. The first four moments, for example, can be used describe any data set fairly well. Moments can also be used for estimation.
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- © The Authors, 2022. Published by Cambridge University Press on behalf of The Mathematical Association
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