| optismixture-package | Optimal Mixture Weights in Multiple Importance Sampling |
| alpha2N | Internal function. convert mixture proportions to mixture sample size with a fixed total sample size |
| batch.estimation | Two stage estimation, a pilot estimate of mixing alpha and a following importance sampling, with or without control variates |
| compatible.test | Test the compatibility of user defined functions _fname, rpname, rqname, dpname, dqname_ with _mixture.param_ |
| do.mixture.sample | Internal function. sample from the mixture distribution q_{alpha} |
| do.plain.mc | Do plain monte carlo with target density |
| get.index.b | Internal function. Get the row index in the stacked sample matrices for the b^{th} batch |
| get.initial.alpha | Internal function. Calculate the initial alpha vector for the optimization of _alpha_ with a lower bound constraint |
| get.var | Internal function. With stratified samples, calculate the variance of the estimate from importance sampling without control variates |
| mixture.is.estimation | For a given mixture weight alpha, use importance sample with or withour control variates for estimation |
| optismixture | Optimal Mixture Weights in Multiple Importance Sampling |
| penoptpersp | penalized optimization of the constrained linearized perspective function |
| penoptpersp.alpha.only | penalized optimization of the constrained linearized perspective function |