s                    package:mgcv                    R Documentation

_D_e_f_i_n_i_n_g _s_m_o_o_t_h_s _i_n _G_A_M _f_o_r_m_u_l_a_e

_D_e_s_c_r_i_p_t_i_o_n:

     Function used in definition of smooth terms within 'gam' model
     formulae. The function does not evaluate a (spline) smooth - it
     exists purely to help set up a model using spline based smooths.

_U_s_a_g_e:

     s(..., k=-1,fx=FALSE,bs="tp",m=0,by=NA)

_A_r_g_u_m_e_n_t_s:

     ...: a list of variables that are the covariates that this smooth
          is a function of.

       k: the dimension of the basis used to represent the smooth term.
          The default depends on the number of variables that the
          smooth is a function of. 'k' should not be less than the
          dimension of the null space of the penalty for the term (see
          'null.space.dimension'), but will be reset if it is.

      fx: indicates whether the term is a fixed d.f. regression spline
          ('TRUE') or a penalized regression spline ('FALSE').

      bs: this can be '"cr"' for a cubic regression spline or '"tp"'
          for a thin plate regression spline. Only thin plate
          regression splines can be used for multidimensional smooths,
          so this argument only has an effect for univariate smooths.
          Note that the '"cr"' basis is faster than the '"tp"' basis,
          particularly on large data sets.

       m: The order of the penalty for this t.p.r.s. term (e.g. 2 for
          normal cubic spline penalty with 2nd derivatives). O signals
          autoinitialization, which sets the order to the lowest value
          satisfying 2m>d+1, where d is the number of covariates: this
          choise ensures visual smoothness. In addition, m must satisfy
          the technical restriction 2m>d, otherwise it will be
          autoinitialized.

      by: specifies a covariate by which the whole smooth term is to be
          multiplied. This is particularly useful for creating models
          in which a smooth interacts with a factor: in this case the
          'by' variable would usually be the dummy variable coding one
          level of the factor. See the examples below.

_D_e_t_a_i_l_s:

     The function does not evaluate the variable arguments. It will
     correctly interpret calls like 's(x,14|f)' (results in pure
     regression spline smooth of one variable with a 14 knot cubic
     regression spline basis), 's(x,z,20)' (a penalized regression
     spline of 2 covariates using a 20 dimensional t.p.r.s. basis),
     etc. but this feature is purely for back compatibility reasons,
     and may not be maintained indefinitely.

_V_a_l_u_e:

     A list with the following items: 

    term: An array of text strings giving the names of the covariates
          that  the term is a function of.

  bs.dim: The dimension of the basis used to represent the smooth.

 bs.type: The type of basis. 0 is cubic regression spline. 1 is thin
          plate regression spline. 0 can only be used for 1-d smooths.

   fixed: TRUE if the term is to be treated as a pure regression spline
          (with fixed degrees of freedom); FALSE if it is to be treated
          as a penalized regression spline

     dim: The dimension of the smoother - i.e. the number of covariates
          that it is a function of.

 p.order: The order of the t.p.r.s. penalty, or 0 for auto-selection of
          the penalty order.

      by: is the name of any 'by' variable as text ("NA" for none).

full.call: Text for pasting into a string to be converted to a gam
          formula, which has the values of function options given
          explicitly - this is useful for constructing a fully expanded
          gam formula which can be used without needing access to any
          variables that may have been used to define k, fx, bs or m in
          the original call. i.e. this is text which when parsed and
          evaluated generates a call to 's()' with all the options
          spelled out explicitly.

_A_u_t_h_o_r(_s):

     Simon N. Wood simon@stats.gla.ac.uk

_S_e_e _A_l_s_o:

     'gam'

_E_x_a_m_p_l_e_s:

     # example utilising `by' variables
     library(mgcv)
     set.seed(0)
     n<-200;sig2<-4
     x1 <- runif(n, 0, 1);x2 <- runif(n, 0, 1);x3 <- runif(n, 0, 1)
     fac<-c(rep(1,n/2),rep(2,n/2)) # create factor
     fac.1<-rep(0,n)+(fac==1);fac.2<-1-fac.1 # and dummy variables
     fac<-as.factor(fac)
     f1 <-  exp(2 * x1) - 3.75887
     f2 <-  0.2 * x1^11 * (10 * (1 - x1))^6 + 10 * (10 * x1)^3 * (1 - x1)^10 - 1.396
     f<-f1*fac.1+f2*fac.2+x2
     e <- rnorm(n, 0, sqrt(abs(sig2)))
     y <- f + e
     # NOTE: smooths will be centered, so need to include fac in model....
     b<-gam(y~fac+s(x1,by=fac.1)+s(x1,by=fac.2)+x2) 
     plot(b,pages=1)

