1 Errata for Papoulis/Pillai's Probability, Random Variables and ...
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1 Errata for Papoulis/Pillai's Probability, Random Variables and ...
Errata for Papoulis/Pillai's Probability, Random Variables and Stochastic
Processes, 4e. Page. Line. Instead of. Read. 165. Prob. 5−17. Y = X2. Y = √. X.
1 Errata for Papoulis/Pillai’s Probability, Random Variables and Stochastic Processes, 4e Page