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visits | member for | 1 year, 11 months |
seen | Oct 9 '13 at 1:59 | |
stats | profile views | 2 |
Apr 28 |
comment |
In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced
I also tried scaling with "BFGS" and it result in some eigenvalues being negative too. |
Apr 28 |
comment |
In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced
using other algorithms, e.g. CG, does give me a solution but I still get some negative eigen values. |
Apr 27 |
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In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced
The problem actually was mine, I was taking the wrong initial values. Now taking the right ones, rho12= 0.109,rho13=-0.292 and rho3= -0.419, I got a different error: "Error in optim(par = start, fn = tobit.ll, method = "BFGS", x = Xi, y1 = Y1, : non-finite finite-difference value [86]". |
Apr 27 |
comment |
In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced
Sorry to be asking so maaany questions but how could I overcome this problem? fyi, I didn't choose random number but more as cor(yi,yj). I tried other numbers that should be close based in a similar application with a similar sample and I got the same results. |
Apr 27 |
comment |
In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced
Using your recommendation now give me the error: "Error in optim(par = theta0, fn = tobit.ll, method = "BFGS", x = Xi, y1 = Y1, : initial value in 'vmmin' is not finite". |
Apr 27 |
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In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced
Thank you so much! I really appreciate the help! :) |
Apr 27 |
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In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced
would that "if" be substituted in place of the if in the individuals correlations? |
Apr 27 |
accepted | In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced |
Apr 27 |
comment |
In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced
I tried constraining the rho's in the "if" on the function but gave me singularity problems. I will try your comment and see what happen. Thanks! |
Apr 27 |
comment |
In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced
Also, if I just need to constraint the correlations, wouldn't change the if to constraint them make the trick? |
Apr 27 |
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In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced
if I add this part to my loglikelihood function the rho's wouldn't be parameters but constances, right? I don't seem to understand how to introduce this part in my function. |
Apr 27 |
asked | In log(eigen(sigma, symmetric = TRUE, only.values = TRUE)$values) : NaNs produced |
Apr 22 |
awarded | Commentator |
Apr 21 |
awarded | Editor |
Apr 17 |
awarded | Scholar |
Apr 17 |
comment |
Integration of a vector return one value
thank you so much! |
Apr 17 |
accepted | Integration of a vector return one value |
Apr 17 |
comment |
Integration of a vector return one value
Vincent, I need to intengrate once, twice and three time. The Three times I am aware of using pmvnorm, but for the other cases I had failed to get a solution. |
Apr 17 |
comment |
Integration of a vector return one value
I think it would be more like, sum(log(integrate(Vectorize(function(x) {f1(x=c(1,1,1), y=c(1,1,1), z=c(1,1,1))}), lower = - Inf, upper = -1)$value)) |
Apr 17 |
comment |
Integration of a vector return one value
After taking the logs of each integration, yeah. |