Benjamini-Hochberg Procedure with the
Simulator
Suppose we wish to test \(n\)
hypotheses, \(H_1,\ldots, H_n\), and we
have a p-value \(\hat p_i\) for each
hypothesis \(H_i\). That is,
\[
\mathbb{P}_{H_i}(\hat p_i\le \alpha) = \alpha.
\]
Benjamini
and Hochberg (1995) design a procedure (for when these p-values are
independent) that controls what they call the false discovery
rate (FDR), which is the expected proportion of the rejected tests
that should not have been rejected:
\[
\mathbb{E}_{\{H_i:i\in S\}}\left[\frac{\sum_{i\in S}1\{H_i\text{
rejected}\}}{\max[1,\sum_{i=1}^n1\{H_i\text{ rejected}\}]}\right].
\]
Given a desired FDR \(q\), the BH
procedure finds a data-adaptive threshold level \(\hat p(q)\) and rejects all \(H_i\) for which \(\hat p_i\le \hat p(q)\). The threshold
level is given by comparing the sorted p-values \(\hat p_{(1)}\le \cdots \le \hat p_{(n)}\)
to a line of slope \(q/n\) and
identifying the largest p-value that is below this line. That is, \(\hat p(q)=\hat p_{(\hat i)}\) where \[
\hat i = \max\{i: \hat p_i \le q i / n\}.
\]
In this simulation, we verify that the BH procedure works, and we
investigate the effect that correlation has on the FDR control.
Main simulation
In the Models section below, we show the code for
make_correlated_pvalues
, a function that generates a model
object given parameters \(n\) (the
number of hypotheses), \(\pi_0\) (the
fraction of hypotheses that are null), and \(\rho\) (the correlation between any pair of
test statistics). In the simulation below, we fix \(n=20\) and vary \(\pi_0\) and \(\rho\).
name_of_simulation <- "fdr"
sim <- new_simulation(name = name_of_simulation,
label = "False Discovery Rate") %>%
generate_model(make_correlated_pvalues, seed = 123,
n = 20,
pi0 = list(0.8, 1),
rho = list(-0.01, 0, 0.1, 0.9),
vary_along = c("pi0", "rho")) %>%
simulate_from_model(nsim = 25, index = 1:4) %>%
run_method(bh_methods, parallel = list(socket_names = 2)) %>%
evaluate(list(fdp, nd))
The variable bh_methods
is defined in the Methods
section below and corresponds to the BH procedure for four different
values of \(q\).
We begin by looking at the results when \(\rho=0\) (i.e., independent tests).
sim %>%
subset_simulation(rho == 0) %>%
tabulate_eval(metric_name = "fdp", output_type = "html",
format_args = list(digits = 1, nsmall = 2))
A comparison of Mean false discovery proportion (averaged over 100
replicates).
|
BH (q = 0.05)
|
BH (q = 0.1)
|
BH (q = 0.2)
|
pi0 = 0.8, rho = 0
|
0.04 (0.01)
|
0.08 (0.02)
|
0.17 (0.02)
|
pi0 = 1, rho = 0
|
0.04 (0.02)
|
0.08 (0.03)
|
0.25 (0.04)
|
It appears that the BH procedure does control the FDR at each stated
\(q\) value. However, we also see that
when \(\pi_0\) is less than 1, it tends
to be more conservative. Indeed, Benjamini and Hochberg show that the
FDR of BH does not exceed \(\pi_0q\).
Adding to a simulation
We might like to increase the number of simulations.
Suppose we return to this simulation several days later and wish to
double the number of random draws used. In the above code, we had 100
draws, which were simulated in 4 chunks of 25 draws each. The simulator
allows us to add to a simulation without requiring us to re-run parts of
the simulation that have already been run.
If we had closed the R session without saving the image[^]: for the
sake of reproducibility, I like to always start with a fresh workspace,
so I can be sure that my functions aren’t calling a global variable that
I have forgotten about), we can open a new one in the directory that has
the files
directory in it. We start by loading
sim
, which is the Simulation object (containing all the
necessary pointers to saved files). Loading sim
is fast
because it only loads the file locations, not the files themselves.
sim <- load_simulation("fdr")
We do so by simply adding 4 more chunks, with index=5:8
.
Each distinct value of index
corresponds to a separate random
number generator stream. This is convenient because it means that we
do not have to rely on the state of the RNG after completing one chunk
to start the next one.
sim <- sim %>%
simulate_from_model(nsim = 25, index = 5:8) %>%
run_method(bh_methods, parallel = list(socket_names = 2)) %>%
evaluate(list(fdp, nd))
We can look again at the table.
sim %>%
subset_simulation(rho == 0) %>%
tabulate_eval(metric_name = "fdp", output_type = "html",
format_args = list(digits = 1, nsmall = 2))
A comparison of Mean false discovery proportion (averaged over 200
replicates).
|
BH (q = 0.05)
|
BH (q = 0.1)
|
BH (q = 0.2)
|
pi0 = 0.8, rho = 0
|
0.03 (0.009)
|
0.07 (0.010)
|
0.15 (0.014)
|
pi0 = 1, rho = 0
|
0.03 (0.013)
|
0.07 (0.018)
|
0.19 (0.028)
|
Some plots
The FDR is the average of the false discovery proportion (FDP). We
can look at these raw values (200 for each method-model pair).
sim %>%
subset_simulation(rho == 0) %>%
plot_eval(metric_name = "fdp")
![](data:image/png;base64,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)
When \(\pi_0=1\), we see that the
FDP is either 0 or 1. This is because if we make any number of
discoveries, then they will all be false (but if we do not make any
discoveries, we have FDP=0).
We now investigate the effect of \(\rho\), the correlation between the test
statistics. We now fix \(\pi_0=0.8\)
and look at how the plots vary with \(\rho\).
sim %>%
subset_simulation(pi0 == 0.8) %>%
plot_eval(metric_name = "fdp", varying = "rho")
![](data:image/png;base64,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)
Since \(\rho\) is numeric, it might
be more informative to look at the FDR as a function of \(\rho\).
sim %>%
subset_simulation(pi0 == 0.8) %>%
plot_eval_by(metric_name = "fdp", varying = "rho")
![](data:image/png;base64,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)
We see that the procedure becomes more conservative as the dependence
increases, but still does control FDR (which was shown for positive
dependence in Benjamini and
Yekutieli, 2001). Looking at \(\pi_0=1\), we would like to check whether
for negative \(\rho\) the procedure is
anti-conservative.
sim %>%
subset_simulation(pi0 == 1) %>%
plot_eval_by(metric_name = "fdp", varying = "rho")
![](data:image/png;base64,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)
Creating a simulation based on a preexisting one
To investigate this particular question in greater depth, we might
create a new simulation object based on the previous one. We’d like to
increase the number of random draws for this particular setting, but
don’t care about doing so for the others.
sim2 <- subset_simulation(sim, pi0 == 1 & rho == -0.01) %>%
rename("fdr-negdep") %>%
relabel("BH Procedure under negative dependence") %>%
simulate_from_model(nsim = 25, index = 9:20) %>%
run_method(bh_methods, parallel = list(socket_names = 2)) %>%
evaluate(list(fdp, nd))
We remake the table (on the basis of 500 random draws) to check for
anti-conservativeness.
tabulate_eval(sim2, metric_name = "fdp", output_type = "html",
format_args = list(digits = 1, nsmall = 2))
A comparison of Mean false discovery proportion (averaged over 500
replicates).
|
BH (q = 0.05)
|
BH (q = 0.1)
|
BH (q = 0.2)
|
pi0 = 1, rho = -0.01
|
0.04 (0.009)
|
0.08 (0.012)
|
0.21 (0.018)
|
Observe that at this point, sim
and sim2
are two separate simulation objects that refer to some common simulation
results. For example, their Model
and Draws
objects are the same.
m <- model(sim, pi0 == 1 & rho == -0.01)
m2 <- model(sim2)
all.equal(m, m2)
## [1] TRUE
d <- draws(sim, pi0 == 1 & rho == -0.01)
d2 <- draws(sim2, index = 1:8)
all.equal(d, d2)
## [1] TRUE
When model
and draws
(and likewise
output
and evals
) are called on a simulation
object, they load the appropriate files referenced by the
Simulation
object. The models m
and
m2
are identical (and likewise for d
and
d2
) because both Simulation
objects refer to
the same saved files. Thus, having multiple simulation objects does not
lead to copies of the (potentially large) results files being made.
Instead, only the references themselves are duplicated.
Components
Models
library(mvtnorm)
make_correlated_pvalues <- function(n, pi0, rho) {
# Gaussian copula model...
#
# n pvalues, the first n*pi0 of which are null, coming from a multivariate
# normal with all correlations rho.
sigma <- matrix(rho, n, n)
diag(sigma) <- 1
n0 <- round(n * pi0)
delta <- 2 # size of signal
mu <- rep(c(0, delta), c(n0, n - n0)) # n0 are null
new_model(name = "correlated-pvalues",
label = sprintf("pi0 = %s, rho = %s", pi0, rho),
params = list(n = n, rho = rho, sigma = sigma,
pi0 = pi0, mu = mu, delta = delta,
nonnull = which(mu != 0)),
simulate = function(n, mu, sigma, nsim) {
# this function must return a list of length nsim
x <- rmvnorm(nsim, mean = mu, sigma = sigma)
pvals <- 1 - pnorm(x)
return(split(pvals, row(pvals))) # make each row its own list element
})
}
Methods
make_bh <- function(q) {
# q is the desired level of control for the FDR
new_method(name = paste0("bh", q),
label = sprintf("BH (q = %s)", q),
settings = list(q = q),
method = function(model, draw, q) {
p <- sort(draw)
cutline <- seq(model$n) * q / model$n
threshold <- max(p[p <= cutline], 0)
list(rejected = which(draw <= threshold))
})
}
qvalues <- c(0.05, 0.1, 0.2)
bh_methods <- sapply(qvalues, make_bh)
Metrics
fdp <- new_metric(name = "fdp",
label = "false discovery proportion",
metric = function(model, out) {
fp <- setdiff(out$rejected, model$nonnull)
nd <- max(length(out$rejected), 1)
return(length(fp) / nd)
})
nd <- new_metric(name = "nd",
label = "number of discoveries",
metric = function(model, out) length(out$rejected))
Conclusion
To cite the simulator
, please use
To cite package ‘simulator’ in publications use:
Bien J (2016). “The simulator: An Engine to Streamline Simulations.”
arXiv:1607.00021. https://arxiv.org/abs/1607.00021.
A BibTeX entry for LaTeX users is
@Article{, title = {The {simulator}: An
Engine to Streamline Simulations}, author = {Jacob Bien}, year = {2016},
url = {https://arxiv.org/abs/1607.00021}, journal =
{arXiv:1607.00021}, }