Meaning and derivation of probability

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Homework Help Overview

The discussion revolves around the fundamental meaning and derivation of probability, exploring definitions such as experimental and theoretical probabilities. Participants are examining the relationship between these definitions and the convergence of relative frequency in probability theory.

Discussion Character

  • Conceptual clarification, Assumption checking, Mixed

Approaches and Questions Raised

  • Participants are questioning the definitions of experimental and theoretical probabilities, particularly the conditions under which the theoretical probability can be seen as the limit of relative frequency. There are inquiries about the existence of algebraic proofs for this relationship and the implications of non-convergence of relative frequency.

Discussion Status

The discussion is active, with participants offering various perspectives on the definitions and interpretations of probability. Some have pointed out the need for initial assumptions in statistical physics and the philosophical implications of different interpretations of probability. There is no explicit consensus, but several productive lines of inquiry are being explored.

Contextual Notes

Participants are navigating the complexities of probability theory and its philosophical interpretations, highlighting the lack of consensus in the field. Some mention the Kolmogorov axioms as a foundational aspect of mathematical probability, while others express concerns about the assumptions underlying different interpretations.

SudanBlack
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Hi,
I have recently been thinking about the fundamental meaning of the term probability, so I decide to discuss the topic with my tutor. He told me that the true definition of the probability of x occurring, P(x), is:

P(x) = Lim(Relative frequency of x in experiments) as n tends to infinity, where n = the sample size.

However, I have read many mathemetics textbooks which talk about "experimental probabilities" and "theoretical probabilities" - they refer to the definition I have previously mentioned as "experimental probabilities". "Theoretical probabilities" are apparently defined as follows:

P(x) = (Number of ways event can occur)/(Total number of events which can occur)

I wish to know if there is any thorough algebriac way to proove that the fraction calculated through the "theoretical probability" method is infact the number which the relative frequency will converge to as the sample size gets ever larger?

Also, I was curious as to what we would call the probability of any event for which the limit of the relative frequency does not converge?

Finally, is it possible to calculate the value which the limit of relative frequency will take, or can this only be obtained through repeat experiment?

Many thanks - eagerly awaiting replies. :smile:
Simon.
 
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However, I have read many mathemetics textbooks which talk about "experimental probabilities" and "theoretical probabilities" - they refer to the definition I have previously mentioned as "experimental probabilities". "Theoretical probabilities" are apparently defined as follows:

P(x) = (Number of ways event can occur)/(Total number of events which can occur)
That's not accurate -- this is only the probability if we assume a uniform distribution on the events.


There are two big issues here:

(1) Probability theory
(2) Statistical physics

Probability theory is a mathematical subject in its own right, and it takes a little bit of machinery to start doing things rigorously.

On the other hand, the use of statistics in physics requires some initial assumptions about things... and I expect that this issue is the heart of your question, so I'm going to move it over to the physics section to encourage them to take a crack at it.
 
P(x) = (Number of ways event x can occur)/(Total number of EQUALLY LIKELY events which can occur)
I wish to know if there is any thorough algebriac way to proove that the fraction calculated through the "theoretical probability" method is infact the number which the relative frequency will converge to as the sample size gets ever larger?
My guess is there isn't because any algebraic proof necessarily belongs to the theory domain.
Also, I was curious as to what we would call the probability of any event for which the limit of the relative frequency does not converge?
Degenerate?
Finally, is it possible to calculate the value which the limit of relative frequency will take, or can this only be obtained through repeat experiment?
You can calculate it under certain (theoretical) assumptions, then perform repeated experiments to test whether these assumptions were justified.
 
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The probability theory is very nice logically consistent theory. The
hallmark of the theory is the notion of (statistical) independence.
It is very essential that for each problem in the framework of the
probability theory the initial (probability) measure is specified.

But in the physical statement of probabilistic problems we face some
fundamental difficulties (See, please, http://groups.google.com.ua/group/s...f4135cd854d0?hl=ru&ie=UTF-8&q=kosovtsov&pli=1).
 
Yeah, as people have said, it's worth disentangling two separate things:

1. The mathematical 'theory of probability'
2. The interpretation of said theory

The first (usually) refers to the consistent mathematical theory described by the Kolmogorov axioms. Other mathematical setups have been suggested (often in response to the philosophical issues - see below), but the Kolmogorov theory is the orthodox one.

The second is an extremely vexed philosophical question (see http://plato.stanford.edu/entries/probability-interpret/). Your tutor's claim that probability is the limiting frequency of an infinite sequence of measurements is one theory, but others abound, and there isn't really any widespread philosophical consensus. The idea of probability as the ratio of occurring events to possible events is the classical interpretation - it has the advantage of explaining the similarity of probability theory to other branches of measure theory (the theory of proportions, ratios etc); but as EnumaElish says, it requires that those events be equally probable, and you might wonder whether an account of equiprobability can be given that does not invoke probability (which would make the whole thing a circular explanation). For what it's worth, I'm inclined towards a kind of semi-classical interpretation of probability as ratios of 'volumes' in configuration space - the equiprobability of points in configuration space could perhaps be justified by noting the symmetries of such a space.
 
I agree with lotm. This is, philosophically speaking, a controversial subject area. However, the orthodox mathematical theory -- and, indeed, the one I know best -- is that described by the Kolmogorov axioms.
 

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