# Unconstrained Design matrix for factorial experiment in R

I want to create an unconstrained design matrix for factorial experiment in R and the following code gives me the desired matrix. But the code requires separate `model.matrix` command for each factor as well as for intercept term. I'm curious whether the same result can be obtained by a single liner. Thanks

``````y <- c(55, 56, 57, 53, 54, 55, 51, 52, 53, 61, 62, 63)
N <- gl(n = 2, k = 6, length = 2 * 6
, labels = c("Low", "High")
, ordered = FALSE)
P <- gl(n = 2, k = 3, length = 2 * 6
, labels = c("Low", "High")
, ordered = FALSE)
Data <- data.frame(y, N, P)

X <-
cbind(
model.matrix(object = y ~ 1,        data = Data)
, model.matrix(object = y ~ -1 + N,   data = Data)
, model.matrix(object = y ~ -1 + P,   data = Data)
, model.matrix(object = y ~ -1 + N:P, data = Data)
)

print(x = X)
``````
-

I think the key is to set all contrasts to FALSE. I guess technically this could be a one-liner...it would just be a really long line.

``````model.matrix(y ~ N +P + N:P, data=Data,
contrasts.arg = lapply(Data[,sapply(Data, is.factor)],
contrasts, contrasts=FALSE))

(Intercept) NLow NHigh PLow PHigh NLow:PLow NHigh:PLow NLow:PHigh NHigh:PHigh
1            1    1     0    1     0         1          0          0           0
2            1    1     0    1     0         1          0          0           0
3            1    1     0    1     0         1          0          0           0
4            1    1     0    0     1         0          0          1           0
5            1    1     0    0     1         0          0          1           0
6            1    1     0    0     1         0          0          1           0
7            1    0     1    1     0         0          1          0           0
8            1    0     1    1     0         0          1          0           0
9            1    0     1    1     0         0          1          0           0
10           1    0     1    0     1         0          0          0           1
11           1    0     1    0     1         0          0          0           1
12           1    0     1    0     1         0          0          0           1
attr(,"assign")
[1] 0 1 1 2 2 3 3 3 3
attr(,"contrasts")
attr(,"contrasts")\$N
Low High
Low    1    0
High   0    1

attr(,"contrasts")\$P
Low High
Low    1    0
High   0    1
``````
-
``````contrasts(N, nlevels(N)) <- diag(nlevels(N))