Is there an efficient algorithm to calculate the inclusion probabilities (the probability that an item will be included in a sample) in the Yates-Grundy draw-by-draw sampling?
Sampling description: We have $n$ items each with probabilities $p_1, \dots, p_n$ of being selected in the first draw. We then sample without replacement the items one by one with probabilities proportional to the original $p_i$.
I looked in the book Brewer, Muhammad: Sampling with Unequal Probabilities and this is described on p. 24, but the equation (2.2.1) seems to work for sample of size 2 only.