R/updateD.R

Defines functions singleDFit updateD

#'
#' Update D function
#'
#' @noRd
updateD <- function(fds, type, lambda, control, BPPARAM, verbose,
                    nrDecoderBatches=5, weighted=FALSE, fraction=0.75,
                    multiRho=FALSE){
    D <- D(fds)
    b <- b(fds)
    H <- H(fds, noiseAlpha=currentNoiseAlpha(fds))
    k <- K(fds)
    n <- N(fds)
    rho <- rho(fds)

    weights <- matrix(1, nrow=nrow(k), ncol=ncol(k))
    if(isTRUE(weighted)){
        weights <- calcFraserWeights(fds, type)
        weights(fds, type, HDF5=FALSE) <- weights
        message(sum(c(weights) != 1))
    }

    # run fits
    fitls <- bplapply(seq_len(nrow(k)), singleDFit, D=D, b=b, k=k, n=n, H=H,
                        rho=rho, lambda=lambda, multiRho=multiRho, 
                        control=control, weights=weights, nSamples=ncol(fds), 
                        fraction=fraction, nrBatches=nrDecoderBatches, 
                        BPPARAM=BPPARAM)

    # extract infos
    parMat <- vapply(fitls, '[[', double(ncol(D) + 1), 'par')
    mcols(fds, type=type)[paste0('FitDMessage_', type)] <-
            vapply(fitls, '[[', 'text', 'message')
    mcols(fds, type=type)[,paste0('NumConvergedD_', type)] <-
            mcols(fds, type=type)[,paste0('NumConvergedD_', type)] + grepl(
                "CONVERGENCE: REL_REDUCTION_OF_F .. FACTR.EPSMCH",
            mcols(fds, type=type)[,paste0('FitDMessage_', type)])

    if(isTRUE(verbose)){
        print(table(mcols(fds, type=type)[,paste0('FitDMessage_', type)]))
    }

    # update b and D
    b(fds) <- parMat[1,]
    D(fds) <- t(parMat)[,-1]
    metadata(fds)[[paste0('Dfits_', type)]] <- fitls

    return(fds)
}

singleDFit <- function(i, D, b, k, n, H, rho, lambda, control, fraction,
                    nrBatches, weights, nSamples, multiRho, ...){
    pari <- c(b[i], D[i,])
    ki <- k[i,]
    ni <- n[i,]
    rhoi <- rho[i]
    wi <- weights[i,]

    if(multiRho){
        rhoi <- c(rhoi/2, rhoi, (1+rhoi)/2)
    }

    # use full set if only one batch is used
    if(nrBatches == 1){
        fraction <- 1
    }

    fitls <- lapply(seq_len(nrBatches), function(subset){
        subset <- sample(seq_len(nrow(H)), ceiling(nrow(H)*fraction))
        ksub <- ki[subset]
        nsub <- ni[subset]
        Hsub <- H[subset,]
        wsub <- wi[subset]
        
        fit <- lapply(rhoi, function(r){
            optim(pari, fn=truncWeightedNLL_db, gr=truncWeightedGrad_db,
                    H=Hsub, k=ksub, n=nsub, rho=r, lambda=lambda, w=wsub,
                    method="L-BFGS-B", control=control)
        })
        fit[[which.min(vapply(fit, "[[", "value", FUN.VALUE=numeric(1)))]]
    })

    # pars <- colMedians(do.call(rbind, fitls['par',]))
    pars <- rowMedians(vapply(fitls, "[[", "par", FUN.VALUE=pari))

    fit <- fitls[[1]]
    fit$par         <- pars
    fit$value       <- mean(vapply(fitls, "[[", 'value', FUN.VALUE=numeric(1)))
    fit$counts      <- round(rowMedians(vapply(fitls, "[[", 'counts', 
                                                FUN.VALUE=numeric(2))))
    fit$convergence <- sum(vapply(fitls, "[[", 'convergence', 
                                    FUN.VALUE=numeric(1)))

    return(fit)
}

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FRASER documentation built on Feb. 3, 2021, 2:01 a.m.