Ask Question
11 August, 13:26

Suppose customer arrivals at a post office are modeled by a Poisson process N with intensity λ > 0. Let T1 be the time of the first arrival. Let t > 0. Suppose we learn that by time t there has been precisely one arrival, in other words, Nt = 1. What is the distribution of T1 under this new information? In other words, find the conditional probability P (T1 ≤ s|Nt = 1) for all s ≥ 0.

+1
Answers (1)
  1. 11 August, 13:28
    0
    Step-by-step explanation:

    We need to find the conditional probability P (T1 < s|N (t) = 1) for all s ≥ 0

    P (time of the first person's arrival < s till time t exactly 1 person has arrived)

    = P (time of the first person's arrival < s, till time t exactly 1 person has arrived) / P (exactly 1 person has arrived till time t)

    { As till time t, we know that exactly 1 person has arrived, thus relevant values of s : 0 < s < t }

    P (time of the first person arrival < s, till time t exactly 1 person has arrived) / P (exactly 1 person has arrived till time t)

    = P (exactly 1 person has arrived till time s) / P (exactly 1 person has arrived till time t)

    P (exactly x person has arrived till time t) ~ Poisson (kt) where k = lambda

    Therefore,

    P (exactly 1 person has arrived till time s) / P (exactly 1 person has arrived till time t)

    = [ kse-ks/1! ] / [ kte-kt/1! ]

    = (s/t) e-k (s-t)
Know the Answer?
Not Sure About the Answer?
Find an answer to your question 👍 “Suppose customer arrivals at a post office are modeled by a Poisson process N with intensity λ > 0. Let T1 be the time of the first ...” in 📗 Mathematics if the answers seem to be not correct or there’s no answer. Try a smart search to find answers to similar questions.
Search for Other Answers