Unconstrained GLMs with compositional predictor variables | R Documentation |
Unconstrained GLMs with compositional predictor variables.
ulc.glm(y, x, z = NULL, model = "logistic", xnew = NULL, znew = NULL)
y |
A numerical vector containing the response variable values. This is either a binary variable or a vector with counts. |
x |
A matrix with the predictor variables, the compositional data. No zero values are allowed. |
z |
A matrix, data.frame, factor or a vector with some other covariate(s). |
model |
For the ulc.glm(), this can be either "logistic" or "poisson". |
xnew |
A matrix containing the new compositional data whose response is to be predicted. If you have no new data, leave this NULL as is by default. |
znew |
A matrix, data.frame, factor or a vector with the values of some other covariate(s). If you have no new data, leave this NULL as is by default. |
The function performs the unconstrained log-contrast logistic or Poisson regression model. The logarithm of the
compositional predictor variables is used (hence no zero values are allowed). The response variable
is linked to the log-transformed data without the constraint that the sum of the regression coefficients
equals 0. If you want the regression without the zum-to-zero contraints see lc.glm
.
Extra predictors variables are allowed as well, for instance categorical or continuous.
A list including:
devi |
The residual deviance of the logistic or Poisson regression model. |
be |
The unconstrained regression coefficients. Their sum does not equal 0. |
est |
If the arguments "xnew" and znew were given these are the predicted or estimated values, otherwise it is NULL. |
Michail Tsagris.
R implementation and documentation: Michail Tsagris mtsagris@uoc.gr.
Aitchison J. (1986). The statistical analysis of compositional data. Chapman & Hall.
Lu J., Shi P., and Li H. (2019). Generalized linear models with linear constraints for microbiome compositional data. Biometrics, 75(1): 235–244.
lc.glm, lc.glm2, ulc.glm2, lcglm.aov
y <- rbinom(150, 1, 0.5)
x <- rdiri(150, runif(3, 1,3))
mod <- ulc.glm(y, x)
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