aggregate               package:stats               R Documentation

_C_o_m_p_u_t_e _S_u_m_m_a_r_y _S_t_a_t_i_s_t_i_c_s _o_f _D_a_t_a _S_u_b_s_e_t_s

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

     Splits the data into subsets, computes summary statistics for
     each, and returns the result in a convenient form.

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

     aggregate(x, ...)

     ## Default S3 method:
     aggregate(x, ...)

     ## S3 method for class 'data.frame':
     aggregate(x, by, FUN, ...)

     ## S3 method for class 'ts':
     aggregate(x, nfrequency = 1, FUN = sum, ndeltat = 1,
               ts.eps = getOption("ts.eps"), ...)

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

       x: an R object.

      by: a list of grouping elements, each as long as the variables in
          'x'.

     FUN: a scalar function to compute the summary statistics which can
          be applied to all data subsets.

nfrequency: new number of observations per unit of time; must be a
          divisor of the frequency of 'x'.

 ndeltat: new fraction of the sampling period between successive
          observations; must be a divisor of the sampling interval of
          'x'.

  ts.eps: tolerance used to decide if 'nfrequency' is a sub-multiple of
          the original frequency.

     ...: further arguments passed to or used by methods.

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

     'aggregate' is a generic function with methods for data frames and
     time series.

     The default method 'aggregate.default' uses the time series method
     if 'x' is a time series, and otherwise coerces 'x' to a data frame
     and calls the data frame method.

     'aggregate.data.frame' is the data frame method.  If 'x' is not a
     data frame, it is coerced to one, which must have a non-zero
     number of rows.  Then, each of the variables (columns) in 'x' is
     split into subsets of cases (rows) of identical combinations of
     the components of 'by', and 'FUN' is applied to each such subset
     with further arguments in '...' passed to it. (I.e., 'tapply(VAR,
     by, FUN, ..., simplify = FALSE)' is done for each variable 'VAR'
     in 'x', conveniently wrapped into one call to 'lapply()'.) Empty
     subsets are removed, and the result is reformatted into a data
     frame containing the variables in 'by' and 'x'.  The ones arising
     from 'by' contain the unique combinations of grouping values used
     for determining the subsets, and the ones arising from 'x' the
     corresponding summary statistics for the subset of the respective
     variables in 'x'.  Rows with missing values in any of the 'by'
     variables will be omitted from the result.

     'aggregate.ts' is the time series method.  If 'x' is not a time
     series, it is coerced to one.  Then, the variables in 'x' are
     split into appropriate blocks of length 'frequency(x) /
     nfrequency', and 'FUN' is applied to each such block, with further
     (named) arguments in '...' passed to it.  The result returned is a
     time series with frequency 'nfrequency' holding the aggregated
     values.  Note that this make most sense for a quarterly or yearly
     result when the original series covers a whole number of quarters
     or years: in particular aggregating a monthly series to quarters
     starting in February does not give a conventional quarterly
     series.

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

     For the time series method, a time series of class '"ts"' or class
     'c("mts", "ts")'.

     For the data frame method, a data frame with columns corresponding
     to the grouping variables in 'by' followed by aggregated columns
     from 'x'.  If the 'by' has names, the non-empty times are used to
     label the columns in the results, with unnamed grouping variables
     being named 'Group.i' for 'by[[i]]'.

     *Note:* prior to R 2.6.0 the grouping variables were reported as
     factors with levels in alphabetical order in the current locale. 
     Now the variable in the result is found by subsetting the original
     variable.

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

     Kurt Hornik

_R_e_f_e_r_e_n_c_e_s:

     Becker, R. A., Chambers, J. M. and Wilks, A. R. (1988) _The New S
     Language_. Wadsworth & Brooks/Cole.

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

     'apply', 'lapply', 'tapply'.

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

     ## Compute the averages for the variables in 'state.x77', grouped
     ## according to the region (Northeast, South, North Central, West) that
     ## each state belongs to.
     aggregate(state.x77, list(Region = state.region), mean)

     ## Compute the averages according to region and the occurrence of more
     ## than 130 days of frost.
     aggregate(state.x77,
               list(Region = state.region,
                    Cold = state.x77[,"Frost"] > 130),
               mean)
     ## (Note that no state in 'South' is THAT cold.)

     ## example with character variables and NAs
     testDF <- data.frame(v1 = c(1,3,5,7,8,3,5,NA,4,5,7,9),
                          v2 = c(11,33,55,77,88,33,55,NA,44,55,77,99) )
     by1 <- c("red","blue",1,2,NA,"big",1,2,"red",1,NA,12)
     by2 <- c("wet","dry",99,95,NA,"damp",95,99,"red",99,NA,NA)
     aggregate(x = testDF, by = list(by1, by2), FUN = "mean")

     # and if you want to treat NAs as a group
     fby1 <- factor(by1, exclude = "")
     fby2 <- factor(by2, exclude = "")
     aggregate(x = testDF, by = list(fby1, fby2), FUN = "mean")

     ## Compute the average annual approval ratings for American presidents.
     aggregate(presidents, nfrequency = 1, FUN = mean)
     ## Give the summer less weight.
     aggregate(presidents, nfrequency = 1,
               FUN = weighted.mean, w = c(1, 1, 0.5, 1))

