A.3 Measure-theoretic framework

This appendix introduces without proofs the main notions and results in measure and integration theory, which allow to treat the subject of Markov chains in a mathematically rigorous way.

A.3.1 Probability spaces

A probability space b01-math-0427 is given by

  1. a set b01-math-0428 encoding all possible random outcomes,
  2. a b01-math-0429-field b01-math-0430, which is a set constituted of certain subsets of b01-math-0431, and satisfies
    • the set b01-math-0432 is in b01-math-0433,
    • if b01-math-0434 is in b01-math-0435, then its complement b01-math-0436 is in ,
    • if for in is in , then is in ,
  3. a probability ...

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