186 lines
7.8 KiB
Markdown
186 lines
7.8 KiB
Markdown
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---
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lang: en
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title: Estimating frequencies from small samples
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# katex
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---
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# The problem to be solved
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Because protocols need to be changed, improved, and fixed from time to
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time, it is essential to have a protocol negotiation step at the start of every networked interaction, and protocol requirements at the start of every store
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and forward communication.
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But we also want anyone, anywhere, to be able to introduce new
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protocols, without having to coordinate with everyone else, as attempts to
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coordinate the introduction of new protocols have ground to a halt, as
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more and more people are involved in coordination and making decisions.
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The IETF is paralyzed and moribund.
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So we need a large enough address space that anyone can give his
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protocol an identifier without fear of stepping on someone else’s identifier.
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But this involves inefficiently long protocol identifiers, which can become
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painful if we have lots of protocol negotiation, where one system asks
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another system what protocols it supports. We might have lots of
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protocols in lots of variants each with long names.
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So our system forms a guess as to the likelihood of a protocol, and then
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sends or requests enough bits to reliably identify that protocol. But this
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means it must estimate probabilities from limited data. If one’s data is
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limited, priors matter, and thus a Bayesian approach is required.
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# Bayesian Prior
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The Bayesian prior is the probability of a probability, or, if this recursion
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is philosophically troubling, the probability of a frequency. We have an
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urn containing a very large number of samples, from which we have taken
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few or no samples. What proportion of samples in the urn will be
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discovered to have property X?
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Let our prior estimate of probability that the proportion of samples in
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the urn that are X is ρ be $Ρ_{prior}(ρ)$
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This is the probability of a probability. The probability is the sum over all the prior probabilities of probabilities.
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Then our estimate of the chance $P_X$ that the first sample will be X is
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$$P_X = \int_0^1 Ρ_{prior}(ρ) dρ$$
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Then if we take one sample out of the urn, and it is indeed X, then we
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update all our our priors by:
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$$P_{new}(ρ) = \frac{ρ × Ρ_{prior}(ρ)}{P_X}$$
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# Beta Distribution
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The Beta distribution is
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$$P_{αβ}(ρ) = \frac{ρ^{α-1} × (1-ρ)^{β-1}}{B(α,β)}$$
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where
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$$B(α,β) = \frac{Γ(α) × Γ(β)}{Γ(α + β)}$$
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$Γ(α) = (α − 1)!$ for positive integer α\
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$Γ(1) = 1 =0!$\
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$B(1,1) = 1$\
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$B(1,2) = ½$\
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$Γ(α+1) = α Γ(α)$ for all α
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Let us call this probability distribution, the prior of our prior
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It is convenient to take our prior to be a Beta distribution, for if our prior
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the proportion of samples that are X is the Beta distribution $α,β$, and we
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take three samples, one of which is X, and two of which are not X, then
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our new distribution is the Beta distribution $α+1,β+2$
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If our distribution is the Beta distribution α,β, then the probability
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that the next sample will be X is $\frac{α}{α+β}$
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If $α$ and $β$ are large, then the Beta distribution approximates a delta
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function
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If $α$ and $β$ equal $1$, then the Beta distribution assumes all probabilities
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equally likely.
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That, of course, is a pretty good prior, which leads us to the conclusion
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that if we have seen $n$ samples that are green, and $m$ samples that are not
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green, then the probability of the next sample being green is $\frac{n+1}{(n+m+2}$
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Realistically, until we have seen diverse results there is a finite probability
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that all samples are X, or all not X, but no beta function describes this
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case.
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If our prior for the question “what proportion of men are mortal?” was a
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beta distribution, we would not be convinced that all men are mortal until
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we had first checked all men – thus a beta distribution is not always a
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plausible prior, though it rapidly converges to a plausible prior as more
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data comes in.
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So perhaps a fairly good prior is half of one, and half of the other. The
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principle of maximum entropy tell us to choose our prior to be $α=1$,
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$β=1$, but in practice, we usually have some reason to believe all
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samples are alike, so need a prior that weights this possibility.
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# Weight of evidence
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The weight of evidence is the inverse of entropy of $P(ρ)$
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$$\int_0^1 Ρ_{prior}\small(ρ\small) × \ln\big({Ρ_{prior} \small(ρ\small)}\big) dρ$$
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the lower the entropy, the more we know about the distribution P(ρ),
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hence the principle of maximum entropy – that our distribution should
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faithfully represent the weight of our evidence, no stronger and no
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weaker.
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The principle of maximum entropy leaves us with the question of what
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counts as evidence. To apply, we need to take into account *all*
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evidence, and everything in the universe has some relevance.
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Thus to answer the question “what proportion of men are mortal” the
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principle of maximum entropy, naiely applied, leads to the conclusion
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that we cannot be sure that all men are mortal until we have first checked
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all men. If, however, we include amongst our priors the fact that
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all men are kin, then that all men are X, or no men are X has to have a
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considerably higher prior weighting than the proposition that fifty
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percent of men are X.
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The Beta distribution is mathematically convenient, but
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unrealistic. That the universe exists, and we can observe it,
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already gives us more information than the uniform distribution, thus the
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principle of maximum entropy is not easy to apply.
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Further, in networks, we usually care about the current state of the
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network, which is apt to change, thus we frequently need to apply a decay
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factor, so that what was once known with extremly high probability, is now
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only known with reasonably high probability. There is always some
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unknown, but finite, substantial, and growing, probability of a large
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change in the state of the network, rendering past evidence
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irrelevant.
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Thus any adequately flexible representation of the state of the network
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has to be complex, a fairly large body of data, more akin to a spam filter
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than a boolean.
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# A more realistic prior
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Suppose our prior, before we take any samples from the urn, is that the probability that the proportion of samples in the urn that are X is ρ is
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$$\frac{1}{3}P_{11} (ρ) + \frac{1}{3}δ(ρ) + \frac{1}{3}δ(1-ρ)$$
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We are allowing for a substantial likelihood of all X, or all not X.
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If we draw out $m + n$ samples, and find that $m$ of them are X, and $n$ of
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them are not X, then the $δ$ terms drop out, and our prior is, as usual the
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Beta distribution
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$$P_{m+1,n+1}(ρ) = \frac{ρ^m × (1-ρ)^n }{B(m+1,n+1)}$$
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if neither m nor n is zero.
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But suppose we draw out n samples, and all of them are X, or none of
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them are X.
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Without loss of generality, we may suppose all of them are X.
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Then what is our prior after n samples, all of them X?
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After one sample, n=1, our new estimate is
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$$\frac{2}{3} × \bigg(\frac{ρ}{B(1,1)} + δ(1−ρ)\bigg)$$
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$$=\frac{1}{3}\frac{ρ}{B(2,1)} + \frac{2}{3}δ(1−ρ)$$
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We see the beta distributed part of the probability distribution keeps
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getting smaller, and the delta distributed part of the probability keeps
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getting higher.
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And our estimate that the second sample will also be X is
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$$\frac{8}{9}$$
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After two samples, n=2, our new estimate is
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Probability $\frac{1}{4}$
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Probability distribution $\frac{1}{4}ρ^2+\frac{3}{4}δ(1−ρ)$
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And our estimate that the third sample will also be X is $\frac{15}{16}$
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By induction, after n samples, all of them members of category X, our new
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estimate for one more sample is
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$$1-(n+2)^{-2}=\frac{(n+3)×(n+1)}{(n+2)^2}$$
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Our estimate that the run will continue forever is
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$$\frac{(n+1)}{n+2}$$
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Which corresponds to our intuition on the question “all men are mortal” If we find no immortals in one hundred men, we think it highly improbable that we will encounter any immortals in a billion men.
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In contrast, if we assume the beta distribution, this implies that the likelihood of the run continuing forever is zero.
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