Trying to create a table for quantiles of the sum of two dependent random variables using built-in copula distributions (Clayton, Frank, Gumbel) with Beta marginals. Tried NProbability
and FindRoot
with various methods -- not fast enough.
An example of the copula-marginal combinations I need to explore is the following:
nProbClayton[t_?NumericQ, c_?NumericQ] :=
NProbability[ x + y <= t, {x, y} \[Distributed]
CopulaDistribution[{"Clayton", c}, {BetaDistribution[8, 2],
BetaDistribution[8, 2]}]]
For a single evaluation of the numeric probability using
nProbClayton[1.9, 1/10] // Timing // Quiet
I get
{4.914, 0.939718}
on a Vista 64bit Core2 Duo T9600 2.80GHz machine (MMA 8.0.4)
To get a quantile of the sum, using
FindRoot[nProbClayton[q, 1/10] == 1/100, {q, 1, 0, 2}// Timing // Quiet
with various methods
( `Method -> Automatic`, `Method -> "Brent"`, `Method -> "Secant"` )
takes about a minute to find a single quantile: Timings are
{48.781, {q -> 0.918646}}
{50.045, {q -> 0.918646}}
{65.396, {q -> 0.918646}}
For other copula-marginal combinations timings are marginally better.
Need: any tricks/methods to improve timings.
The CDF of a Clayton-Pareto copula with parameter c
can be calculated according to
cdf[c_] := Module[{c1 = CDF[BetaDistribution[8, 2]]},
(c1[#1]^(-1/c) + c1[#2]^(-1/c) - 1)^(-c) &]
Then, cdf[c][t1,t2]
is the probability that x<=t1
and y<=t2
. This means that you can calculate the probability that x+y<=t
according to
prob[t_?NumericQ, c_?NumericQ] :=
NIntegrate[Derivative[1, 0][cdf[c]][x, t - x], {x, 0, t}]
The timings I get on my machine are
prob[1.9, .1] // Timing
(* ==> {0.087518, 0.939825} *)
Note that I get a different value for the probability from the one in the original post. However, running nProbClayton[1.9,0.1]
produces a warning about slow convergence which could mean that the result in the original post is off. Also, if I change x+y<=t
to x+y>t
in the original definition of nProbClayton
and calculate 1-nProbClayton[1.9,0.1]
I get 0.939825
(without warnings) which is the same result as above.
For the quantile of the sum I get
FindRoot[prob[q, .1] == .01, {q, 1, 0, 2}] // Timing
(* ==> {1.19123, {q -> 0.912486}} *)
Again, I get a different result from the one in the original post but similar to before, changing x+y<=t
to x+y>t
and calculating FindRoot[nProbClayton[q, 1/10] == 1-1/100, {q, 1, 0, 2}]
returns the same value for q
as above.
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