(C++) Sum Distances Between Consecutive Samples in Two Time Series
Sum of auto-distances of two time series. This function switches between auto_sum_full_cpp()
and auto_sum_path_cpp()
depending on the value of the argument ignore_blocks
.
auto_sum_cpp(x, y, path, distance = "euclidean", ignore_blocks = FALSE)
x
: (required, numeric matrix) of same number of columns as 'y'.y
: (required, numeric matrix) of same number of columns as 'x'.path
: (required, data frame) output of cost_path_orthogonal_cpp()
.distance
: (optional, character string) distance name from the "names" column of the dataset distances
(see distances$name
). Default: "euclidean"ignore_blocks
: (optional, logical). If TRUE, blocks of consecutive path coordinates are trimmed to avoid inflating the psi distance. Default: FALSE.numeric
#simulate two time series x <- zoo_simulate(seed = 1) y <- zoo_simulate(seed = 2) #distance matrix dist_matrix <- distance_matrix_cpp( x = x, y = y, distance = "euclidean" ) #least cost matrix cost_matrix <- cost_matrix_orthogonal_cpp( dist_matrix = dist_matrix ) #least cost path cost_path <- cost_path_orthogonal_cpp( dist_matrix = dist_matrix, cost_matrix = cost_matrix ) nrow(cost_path) #remove blocks from least-cost path cost_path_trimmed <- cost_path_trim_cpp( path = cost_path ) nrow(cost_path_trimmed) #auto sum auto_sum_cpp( x = x, y = y, path = cost_path_trimmed, distance = "euclidean", ignore_blocks = FALSE )
Other Rcpp_auto_sum: auto_distance_cpp()
, auto_sum_full_cpp()
, auto_sum_path_cpp()
, subset_matrix_by_rows_cpp()
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