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Monty Hall Drives a Wedge between Judy Benjamin
Monty Hall Drives a Wedge between Judy Benjamin

Exercise 4.16 Show that the class F of subsets A of R such that A or
Exercise 4.16 Show that the class F of subsets A of R such that A or

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Subjective Probability (The Real Thing)

... And there are others—as, for example, Arthur Merin in far-off Konsanz and, close to home, Ingrid Daubesches, Our Lady of the Wavelets (alas! a closed book to me) but who does help me as a Sister in Bayes and fellow slave of LaTeX according to my capabilities. And, in distant Bologna, my longtime frie ...
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65. Gnedenko, Khinchin. Elementary probability

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... In particular, suppose µ is the probability measure for the differentiable process and suppose that we generate a sequence of random times tj, j=1,...,∞, from a Poisson process that makes the probability of an event generating a new tj .01 per unit time. (That is, at any date t, the p.d.f. of the ti ...
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Inductive probability

Inductive probability attempts to give the probability of future events based on past events. It is the basis for inductive reasoning, and gives the mathematical basis for learning and the perception of patterns. It is a source of knowledge about the world.There are three sources of knowledge: inference, communication, and deduction. Communication relays information found using other methods. Deduction establishes new facts based on existing facts. Only inference establishes new facts from data.The basis of inference is Bayes' theorem. But this theorem is sometimes hard to apply and understand. The simpler method to understand inference is in terms of quantities of information.Information describing the world is written in a language. For example a simple mathematical language of propositions may be chosen. Sentences may be written down in this language as strings of characters. But in the computer it is possible to encode these sentences as strings of bits (1s and 0s). Then the language may be encoded so that the most commonly used sentences are the shortest. This internal language implicitly represents probabilities of statements.Occam's razor says the ""simplest theory, consistent with the data is most likely to be correct"". The ""simplest theory"" is interpreted as the representation of the theory written in this internal language. The theory with the shortest encoding in this internal language is most likely to be correct.
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