Lindley's paradox
Lindley's paradox is a counterintuitive situation in statistics in which the Bayesian and frequentist approaches to a hypothesis testing problem give different results for certain choices of the prior distribution. The problem of the disagreement between the two approaches was discussed in Harold Jeffreys' 1939 textbook;[1] it became known as Lindley's paradox after Dennis Lindley called the disagreement a paradox in a 1957 paper.[2]
Although referred to as a paradox, the differing results from the Bayesian and frequentist approaches can be explained as using them to answer fundamentally different questions, rather than actual disagreement between the two methods.
Description of the paradox
Consider the result of some experiment, with two possible explanations, hypotheses
and
, and some prior distribution
representing uncertainty as to which hypothesis is more accurate before taking into account
.
Lindley's paradox occurs when
- The result
is "significant" by a frequentist test of
, indicating sufficient evidence to reject
, say, at the 5% level, and
- The posterior probability of
given
is high, indicating strong evidence that
is in better agreement with
than
.
These results can occur at the same time when is very specific,
more diffuse, and the prior distribution does not strongly favor one or the other, as seen below.
Numerical example
We can illustrate Lindley's paradox with a numerical example. Imagine a certain city where 49,581 boys and 48,870 girls have been born over a certain time period. The observed proportion of male births is thus 49,581/98,451 ≈ 0.5036. We assume the number of male births is a binomial variable with parameter
. We are interested in testing whether
is 0.5 or some other value. That is, our null hypothesis is
and the alternative is
.
Frequentist approach
The frequentist approach to testing is to compute a p-value, the probability of observing a fraction of boys at least as large as
assuming
is true. Because the number of births is very large, we can use a normal approximation for the fraction of male births
, with
and
, to compute
We would have been equally surprised if we had seen 49,581 female births, i.e. , so a frequentist would usually perform a two-sided test, for which the p-value would be
. In both cases, the p-value is lower than the significance level of 5%, so the frequentist approach rejects
as it disagrees with the observed data.
Bayesian approach
Assuming no reason to favor one hypothesis over the other, the Bayesian approach would be to assign prior probabilities and a uniform distribution to
under
, and then to compute the posterior probability of
using Bayes' theorem,
After observing boys out of
births, we can compute the posterior probability of each hypothesis using the probability mass function for a binomial variable,
where is the Beta function.
From these values, we find the posterior probability of , which strongly favors
over
.
The two approaches—the Bayesian and the frequentist—appear to be in conflict, and this is the "paradox".
The lack of an actual paradox
The apparent disagreement between the two approaches is caused by a combination of factors. First, the frequentist approach above tests without reference to
. The Bayesian approach evaluates
as an alternative to
, and finds the first to be in better agreement with the observations. This is because the latter hypothesis is much more diffuse, as
can be anywhere in
, which results in it having a very low posterior probability. To understand why, it is helpful to consider the two hypotheses as generators of the observations:
- Under
, we choose
, and ask how likely it is to see 49,581 boys in 98,451 births.
- Under
, we choose
randomly from anywhere within 0 to 1, and ask the same question.
Most of the possible values for under
are very poorly supported by the observations. In essence, the apparent disagreement between the methods is not a disagreement at all, but rather two different statements about how the hypotheses relate to the data:
- The frequentist finds that
is a poor explanation for the observation.
- The Bayesian finds that
is a far better explanation for the observation than
.
The ratio of the sex of newborns is improbably 50/50 male/female, according to the frequentist test. Yet 50/50 is a better approximation than most, but not all, other ratios. The hypothesis would have fit the observation much better than almost all other ratios, including
.
For example, this choice of hypotheses and prior probabilities implies the statement: "if > 0.49 and
< 0.51, then the prior probability of
being exactly 0.5 is 0.50/0.51
98%." Given such a strong preference for
, it is easy to see why the Bayesian approach favors
in the face of
, even though the observed value of
lies
away from 0.5. The deviation of over 2 sigma from
is considered significant in the frequentist approach, but its significance is overruled by the prior in the Bayesian approach.
Looking at it another way, we can see that the prior distribution is essentially flat with a delta function at . Clearly this is dubious. In fact if you were to picture real numbers as being continuous, then it would be more logical to assume that it would impossible for any given number to be exactly the parameter value, i.e., we should assume P(theta = 0.5) = 0.
A more realistic distribution for in the alternative hypothesis produces a less surprising result for the posterior of
. For example, if we replace
with
, i.e., the maximum likelihood estimate for
, the posterior probability of
would be only 0.07 compared to 0.93 for
(Of course, one cannot actually use the MLE as part of a prior distribution).
Reconciling the Bayesian and frequentist approaches
If one uses an uninformative prior and tests a hypothesis more similar to that in the frequentist approach, the paradox disappears.
For example, if we calculate the posterior distribution , using a uniform prior distribution on
(i.e.,
), we find
If we use this to check the probability that a newborn is more likely to be a boy than a girl, i.e., , we find
In other words, it is very likely that the proportion of male births is above 0.5.
Neither analysis gives an estimate of the effect size, directly, but both could be used to determine, for instance, if the fraction of boy births is likely to be above some particular threshold.
Recent discussion
The paradox continues to be a source of active discussion.[3][4][5]
See also
Notes
- ↑ Jeffreys, Harold (1939). Theory of Probability. Oxford University Press. MR 924.
- ↑ Lindley, D.V. (1957). "A Statistical Paradox". Biometrika 44 (1–2): 187–192. doi:10.1093/biomet/44.1-2.187. JSTOR 2333251.
- ↑ Spanos, Aris (2013). "Who should be afraid of the Jeffreys-Lindley paradox?". Philosophy of Science 80.1: 73–93. doi:10.1086/668875.
- ↑ Sprenger, Jan (2013). "Testing a Precise Null Hypothesis: The Case of Lindley's Paradox". Philosophy of Science 80: 733–744. doi:10.1086/673730.
- ↑ Robert, Christian P (2014). "On the Jeffreys-Lindley Paradox". Philosophy of Science 81.2: 216–232. doi:10.1086/675729.
References
- Shafer, Glenn (1982). "Lindley's paradox". Journal of the American Statistical Association 77 (378): 325–334. doi:10.2307/2287244. JSTOR 2287244. MR 664677.