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In: Statistics and Probability

Given the cumulative distribution of an exponential random variable find: The probability density function Show that...

Given the cumulative distribution of an exponential random variable find:

  1. The probability density function
  2. Show that it is a valid probability function
  3. The moment generating function
  4. The Expected mean
  5. The variance

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