387 lines
16 KiB
R
387 lines
16 KiB
R
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make.gmlm.family <- function(name) {
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# standardize family name
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name <- list(
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normal = "normal", gaussian = "normal",
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bernoulli = "bernoulli", ising = "bernoulli"
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)[[tolower(name), exact = FALSE]]
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############################################################################
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# #
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# TODO: better (and possibly specialized) initial parameters!?!?!?! #
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# #
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############################################################################
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switch(name,
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########################################################################
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### Tensor Normal ###
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########################################################################
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normal = {
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initialize <- function(X, Fy) {
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p <- head(dim(X), -1)
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r <- length(p)
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# Mode-Covariances
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XSigmas <- mcov(X, sample.axis = r + 1L)
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YSigmas <- mcov(Fy, sample.axis = r + 1L)
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# Extract main mode covariance directions
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# Note: (the directions are transposed!)
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XDirs <- Map(function(Sigma) {
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SVD <- La.svd(Sigma, nu = 0)
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sqrt(SVD$d) * SVD$vt
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}, XSigmas)
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YDirs <- Map(function(Sigma) {
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SVD <- La.svd(Sigma, nu = 0)
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sqrt(SVD$d) * SVD$vt
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}, YSigmas)
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alphas <- Map(function(xdir, ydir) {
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s <- min(ncol(xdir), nrow(ydir))
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crossprod(xdir[seq_len(s), , drop = FALSE],
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ydir[seq_len(s), , drop = FALSE])
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}, XDirs, YDirs)
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list(
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eta1 = rowMeans(X, dims = r),
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alphas = alphas,
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Omegas = Map(diag, p)
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)
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}
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# parameters of the tensor normal computed from the GLM parameters
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params <- function(Fy, eta1, alphas, Omegas) {
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Deltas <- Map(solve, Omegas)
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mu_y <- mlm(mlm(Fy, alphas) + c(eta1), Deltas)
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list(mu_y = mu_y, Deltas = Deltas)
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}
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# scaled negative log-likelihood
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log.likelihood <- function(X, Fy, eta1, alphas, Omegas) {
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n <- tail(dim(X), 1) # sample size
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# conditional mean
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mu_y <- mlm(mlm(Fy, alphas) + c(eta1), Map(solve, Omegas))
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# negative log-likelihood scaled by sample size
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# Note: the `suppressWarnings` is cause `log(mapply(det, Omegas)`
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# migth fail, but `NAGD` has failsaves againt cases of "illegal"
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# parameters.
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suppressWarnings(
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0.5 * prod(p) * log(2 * pi) +
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sum((X - mu_y) * mlm(X - mu_y, Omegas)) / (2 * n) -
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(0.5 * prod(p)) * sum(log(mapply(det, Omegas)) / p)
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)
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}
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# gradient of the scaled negative log-likelihood
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grad <- function(X, Fy, eta1, alphas, Omegas) {
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# retrieve dimensions
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n <- tail(dim(X), 1) # sample size
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p <- head(dim(X), -1) # predictor dimensions
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r <- length(p) # single predictor/response tensor order
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## "Inverse" Link: Tensor Normal Specific
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# known exponential family constants
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c1 <- 1
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c2 <- -0.5
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# Covariances from the GLM parameter Scatter matrices
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Deltas <- Map(solve, Omegas)
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# First moment via "inverse" link `g1(eta_y) = E[X | Y = y]`
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E1 <- mlm(mlm(Fy, alphas) + c(eta1), Deltas)
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# Second moment via "inverse" link `g2(eta_y) = E[vec(X) vec(X)' | Y = y]`
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dim(E1) <- c(prod(p), n)
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E2 <- Reduce(`%x%`, rev(Deltas)) + rowMeans(colKronecker(E1, E1))
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## end "Inverse" Link
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dim(X) <- c(prod(p), n)
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# Residuals
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R <- X - E1
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dim(R) <- c(p, n)
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# mean deviation between the sample covariance to GLM estimated covariance
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# `n^-1 sum_i (vec(X_i) vec(X_i)' - g2(eta_yi))`
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S <- rowMeans(colKronecker(X, X)) - E2 # <- Optimized for Tensor Normal
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dim(S) <- c(p, p) # reshape to tensor or order `2 r`
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# Gradients of the negative log-likelihood scaled by sample size
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list(
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"Dl(eta1)" = -c1 * rowMeans(R, dims = r),
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"Dl(alphas)" = Map(function(j) {
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(-c1 / n) * mcrossprod(R, mlm(Fy, alphas[-j], (1:r)[-j]), j)
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}, 1:r),
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"Dl(Omegas)" = Map(function(j) {
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deriv <- -c2 * mtvk(mat(S, c(j, j + r)), rev(Omegas[-j]))
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# addapt to symmetric constraint for the derivative
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dim(deriv) <- c(p[j], p[j])
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deriv + t(deriv * (1 - diag(p[j])))
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}, 1:r)
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)
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}
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# mean conditional Fisher Information
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fisher.info <- function(Fy, eta1, alphas, Omegas) {
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# retrieve dimensions
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n <- tail(dim(Fy), 1) # sample size
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p <- dim(eta1) # predictor dimensions
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q <- head(dim(Fy), -1) # response dimensions
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r <- length(p) # single predictor/response tensor order
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# Hij = Cov(ti(X) %x% tj(X) | Y = y), i, j = 1, 2
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H11 <- Reduce(`%x%`, rev(Map(solve, Omegas))) # covariance
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# 3rd central moment is zero
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H12 <- H21 <- 0
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# 4th moment by "Isserlis' theorem" a.k.a. "Wick's theorem"
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H22 <- kronecker(H11, H11)
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dim(H22) <- rep(prod(p), 4)
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H22 <- H22 + aperm(H22, c(1, 3, 2, 4)) + aperm(H22, c(1, 3, 2, 4))
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dim(H11) <- c(p, p)
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dim(H22) <- c(p, p, p, p)
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## Fisher Information: Tensor Normal Specific
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# known exponential family constants
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c1 <- 1
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c2 <- -0.5
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# list of (Fy x_{k in [r]\j} alpha_j)
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Gys <- Map(function(j) {
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mlm(Fy, alphas[-j], (1:r)[-j])
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}, 1:r)
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# setup indices of lower triangular matrix elements used for
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# all tuples (j, l) with 1 <= j <= l <= r.
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ltri <- lower.tri(diag(r), TRUE)
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J <- .col(c(r, r))[ltri]
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L <- .row(c(r, r))[ltri]
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# inverse perfect outer shuffle of `2 r` elements
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iShuf <- rep(1:r, each = 2) + c(0, r)
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# Getter for the i'th observation from Gys[[j]]
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# TODO: this is ugly, find a better (but still dynamic) version
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GyGet <- function(i, j) {
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obs <- eval(str2lang(paste(
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"Gys[[j]][",
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paste(rep(",", r), collapse = ""),
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"i, drop = FALSE]"
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, collapse = "")))
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dim(obs) <- head(dim(obs), -1)
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obs
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}
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I11 <- c1^2 * mat(H11, 1:r)
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I12 <- Map(function(j) {
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i11 <- ttt(Gys[[j]], H11, (1:r)[-j])
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# take mean with respect to observations (second mode)
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i11 <- colMeans(mat(i11, 2))
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dim(i11) <- c(q[j], p[j], p)
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t(mat(i11, 2:1))
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}, 1:r)
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I13 <- Map(matrix, 0, prod(p), p^2)
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I22 <- Map(function(j, l) {
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i22 <- 0
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for (i in 1:n) {
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i22 <- i22 + ttt(
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ttt(GyGet(i, j), H11, (1:r)[-j]),
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GyGet(i, l), (1:r)[-l] + 2, (1:r)[-l])
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}
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(c1^2 / n) * mat(i22, 2:1)
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}, J, L)
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I23 <- Map(matrix, 0, (p * q)[J], (p^2)[L])
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# shuffled H22
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sH22 <- c2^2 * aperm(H22, c(iShuf, iShuf + 2 * r))
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dim(sH22) <- c(p^2, p^2)
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I33 <- Map(function(j, l) {
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# second derivative (without constraints)
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deriv <- mlm(mlm(sH22, Map(c, Omegas[-j]), (1:r)[-j],
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transposed = TRUE),
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Map(c, Omegas[-l]), (1:r)[-l] + r,
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transposed = TRUE)
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dim(deriv) <- c(p[j], p[j], p[l], p[l])
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# enforce symmetry of `Omega_j`
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of.diag <- (slice.index(deriv, 1:2) != slice.index(deriv, 2:1))
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deriv <- deriv + of.diag * aperm(deriv, c(2, 1, 3, 4))
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# as well as the symmetry of `Omega_l`
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of.diag <- (slice.index(deriv, 3:4) != slice.index(deriv, 4:3))
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deriv <- deriv + of.diag * aperm(deriv, c(1, 2, 4, 3))
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# matricize and return
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dim(deriv) <- c(p[j]^2, p[l]^2)
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deriv
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}, J, L)
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names(I12) <- sprintf("I(eta1, alpha_%d)", 1:r)
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names(I13) <- sprintf("I(eta1, Omega_%d)", 1:r)
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names(I22) <- sprintf("I(alpha_%d, alpha_%d)", J, L)
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names(I23) <- sprintf("I(alpha_%d, Omega_%d)", J, L)
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names(I33) <- sprintf("I(Omega_%d, Omega_%d)", J, L)
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list(I11 = I11, I12 = I12, I13 = I13, I22 = I22, I23 = I23, I33 = I33)
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}
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# Hessian of the scaled negative log-likelihood
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hessian <- function(X, Fy, eta1, alphas, Omegas) {
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stop("Not Implemented")
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}
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},
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########################################################################
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### Multi-Variate Bernoulli ###
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########################################################################
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bernoulli = {
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require(mvbernoulli)
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initialize <- function(X, Fy) {
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p <- head(dim(X), -1)
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r <- length(p)
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# Mode-Covariances
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XSigmas <- mcov(X, sample.axis = r + 1L)
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YSigmas <- mcov(Fy, sample.axis = r + 1L)
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# Extract main mode covariance directions
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# Note: (the directions are transposed!)
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XDirs <- Map(function(Sigma) {
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SVD <- La.svd(Sigma, nu = 0)
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sqrt(SVD$d) * SVD$vt
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}, XSigmas)
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YDirs <- Map(function(Sigma) {
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SVD <- La.svd(Sigma, nu = 0)
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sqrt(SVD$d) * SVD$vt
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}, YSigmas)
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alphas <- Map(function(xdir, ydir) {
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s <- min(ncol(xdir), nrow(ydir))
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crossprod(xdir[seq_len(s), , drop = FALSE],
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ydir[seq_len(s), , drop = FALSE])
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}, XDirs, YDirs)
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list(
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eta1 = array(0, dim = p),
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alphas = alphas,
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Omegas = Map(diag, p)
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)
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}
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params <- function(Fy, eta1, alphas, Omegas, c1 = 1, c2 = 1) {
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# number of observations
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n <- tail(dim(Fy), 1)
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# natural exponential family parameters
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eta_y1 <- c1 * (mlm(Fy, alphas) + c(eta1))
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eta_y2 <- c2 * Reduce(`%x%`, rev(Omegas))
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# # next the conditional Ising model parameters `theta_y`
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# theta_y <- rep(eta_y2[lower.tri(eta_y2, diag = TRUE)], n)
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# dim(theta_y) <- c(nrow(eta_y2) * (nrow(eta_y2) + 1) / 2, n)
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# ltri <- which(lower.tri(eta_y2, diag = TRUE))
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# diagonal <- which(diag(TRUE, nrow(eta_y2))[ltri])
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# theta_y[diagonal, ] <- theta_y[diagonal, ] + c(eta_y1)
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# theta_y[-diagonal, ] <- 2 * theta_y[-diagonal, ]
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# conditional Ising model parameters
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theta_y <- matrix(rep(vech(eta_y2), n), ncol = n)
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ltri <- which(lower.tri(eta_y2, diag = TRUE))
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diagonal <- which(diag(TRUE, nrow(eta_y2))[ltri])
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theta_y[diagonal, ] <- eta_y1
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theta_y
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}
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# Scaled ngative log-likelihood
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log.likelihood <- function(X, Fy, eta1, alphas, Omegas, c1 = 1, c2 = 1) {
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# number of observations
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n <- tail(dim(X), 1L)
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# conditional Ising model parameters
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theta_y <- params(Fy, eta1, alphas, Omegas, c1, c2)
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# convert to binary data set
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storage.mode(X) <- "integer"
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X.mvb <- as.mvbinary(mat(X, length(dim(X))))
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# log-likelihood of the data set
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-mean(sapply(seq_len(n), function(i) {
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ising_log_likelihood(theta_y[, i], X.mvb[i])
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}))
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}
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# Gradient of the scaled negative log-likelihood
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grad <- function(X, Fy, eta1, alphas, Omegas, c1 = 1, c2 = 1) {
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# retrieve dimensions
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n <- tail(dim(X), 1) # sample size
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p <- head(dim(X), -1) # predictor dimensions
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r <- length(p) # single predictor/response tensor order
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## "Inverse" Link: Ising Model Specific
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# conditional Ising model parameters: `p (p + 1) / 2` by `n`
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theta_y <- params(Fy, eta1, alphas, Omegas, c1, c2)
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# conditional expectations
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# ising_marginal_probs(theta_y) = E[vech(vec(X) vec(X)') | Y = y]
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E2 <- apply(theta_y, 2L, ising_marginal_probs)
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# convert E[vech(vec(X) vec(X)') | Y = y] to E[vec(X) vec(X)' | Y = y]
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E2 <- E2[vech.pinv.index(prod(p)), ]
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# extract diagonal elements which are equal to E[vec(X) | Y = y]
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E1 <- E2[seq.int(from = 1L, to = prod(p)^2, by = prod(p) + 1L), ]
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## end "Inverse" Link
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dim(X) <- c(prod(p), n)
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# Residuals
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R <- X - E1
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dim(R) <- c(p, n)
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# mean deviation between the sample covariance to GLM estimated covariance
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# `n^-1 sum_i (vec(X_i) vec(X_i)' - g2(eta_yi))`
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S <- rowMeans(colKronecker(X, X) - E2)
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dim(S) <- c(p, p) # reshape to tensor or order `2 r`
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# Gradients of the negative log-likelihood scaled by sample size
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list(
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"Dl(eta1)" = -c1 * rowMeans(R, dims = r),
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"Dl(alphas)" = Map(function(j) {
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(-c1 / n) * mcrossprod(R, mlm(Fy, alphas[-j], (1:r)[-j]), j)
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}, 1:r),
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"Dl(Omegas)" = Map(function(j) {
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deriv <- -c2 * mtvk(mat(S, c(j, j + r)), rev(Omegas[-j]))
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# addapt to symmetric constraint for the derivative
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dim(deriv) <- c(p[j], p[j])
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deriv + t(deriv * (1 - diag(p[j])))
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}, 1:r)
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)
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}
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# Hessian of the scaled negative log-likelihood
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hessian <- function(X, Fy, alphas, Omegas, c1 = 1, c2 = 1) {
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stop("Not Implemented")
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}
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# Conditional Fisher Information
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fisher.info <- function(Fy, alphas, Omegas) {
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stop("Not Implemented")
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}
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}
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)
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list(
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family = name,
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initialize = initialize,
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params = params,
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# linkinv = linkinv,
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log.likelihood = log.likelihood,
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grad = grad,
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hessian = hessian,
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fisher.info = fisher.info
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)
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}
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