I'm looking for a complete probability reference text, covering the majority of standard probability and stochastic process topics that can be covered without the use of measure theory.
I've already had a basic course in probability and in stochastic processes, so I'm looking for more of a desk reference type of book.
The three that have been recommended to me are
- Probability, Statistics, and Random Processes by Papoulis
- Probability for Statistics and Machine Learning by DasGupta
- Probability By Feller
I'm not too interested in Feller, since it seems that vol 2 has a fair bit of measure theory and vol 1 is only discrete. Any other recommendations?
Both these books cover fundamental concepts in basic probability, all without measure theory. Ross covers Markov chains, Poisson processes, queuing theory, Brownian motion, while I think Pitman only mentions Poisson processes. Pitman has some nice prose when explaining Poisson processes/Poisson scatter and other concepts. As noted by V.V's answer, Ross's other book (A First Course in Probability) spends more time on the basics of probability without stochastic processes, so it may be similar to Pitman's book in that regard.
For Markov chains specifically, the first chapter of Norris's "Markov Chains" is a good reference.