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#' Summarise (for Time Series Data)
#'
#' @description
#' `summarise_by_time()` is a time-based variant of the popular `dplyr::summarise()` function
#' that uses `.date_var` to specify a date or date-time column and `.by` to group the
#' calculation by groups like "5 seconds", "week", or "3 months".
#'
#' `summarise_by_time()` and `summarize_by_time()` are synonyms.
#'
#' @section Useful summary functions:
#'
#' * Sum: [sum()]
#' * Center: [mean()], [median()]
#' * Spread: [sd()], [var()]
#' * Range: [min()], [max()]
#' * Count: `dplyr::n()`, `dplyr::n_distinct()`
#' * Position: `dplyr::first()`, `dplyr::last()`, `dplyr::nth()`
#' * Correlation: [cor()], [cov()]
#'
#'
#' @param .data A `tbl` object or `data.frame`
#' @param .date_var A column containing date or date-time values to summarize.
#' If missing, attempts to auto-detect date column.
#' @param ... Name-value pairs of summary functions.
#' The name will be the name of the variable in the result.
#'
#' The value can be:
#'
#' * A vector of length 1, e.g. `min(x)`, `n()`, or `sum(is.na(y))`.
#' * A vector of length `n`, e.g. `quantile()`.
#' * A data frame, to add multiple columns from a single expression.
#' @param .by A time unit to summarise by.
#' Time units are collapsed using `lubridate::floor_date()` or `lubridate::ceiling_date()`.
#'
#' The value can be:
#' - `second`
#' - `minute`
#' - `hour`
#' - `day`
#' - `week`
#' - `month`
#' - `bimonth`
#' - `quarter`
#' - `season`
#' - `halfyear`
#' - `year`
#'
#' Arbitrary unique English abbreviations as in the `lubridate::period()` constructor are allowed.
#'
#' @param .type One of "floor", "ceiling", or "round. Defaults to "floor". See `lubridate::round_date`.
#' @param .week_start when unit is weeks, specify the reference day.
#' 7 represents Sunday and 1 represents Monday.
#'
#'
#' @return
#' A `tibble` or `data.frame`
#'
#' @seealso
#'
#' Time-Based dplyr functions:
#'
#' - [summarise_by_time()] - Easily summarise using a date column.
#' - [mutate_by_time()] - Simplifies applying mutations by time windows.
#' - [filter_by_time()] - Quickly filter using date ranges.
#' - [filter_period()] - Apply filtering expressions inside periods (windows)
#' - [between_time()] - Range detection for date or date-time sequences.
#' - [pad_by_time()] - Insert time series rows with regularly spaced timestamps
#' - [condense_period()] - Convert to a different periodicity
#' - [slidify()] - Turn any function into a sliding (rolling) function
#'
#' @examples
#' # Libraries
#' library(dplyr)
#'
#' # First value in each month
#' m4_daily %>%
#' group_by(id) %>%
#' summarise_by_time(
#' .date_var = date,
#' .by = "month", # Setup for monthly aggregation
#' # Summarization
#' value = first(value)
#' )
#'
#' # Last value in each month (day is first day of next month with ceiling option)
#' m4_daily %>%
#' group_by(id) %>%
#' summarise_by_time(
#' .by = "month",
#' value = last(value),
#' .type = "ceiling"
#' ) %>%
#' # Shift to the last day of the month
#' mutate(date = date %-time% "1 day")
#'
#' # Total each year (.by is set to "year" now)
#' m4_daily %>%
#' group_by(id) %>%
#' summarise_by_time(
#' .by = "year",
#' value = sum(value)
#' )
#'
#'
#' @export
summarise_by_time <- function(.data, .date_var, .by = "day", ...,
.type = c("floor", "ceiling", "round"),
.week_start = NULL) {
if (rlang::quo_is_missing(rlang::enquo(.date_var))) {
message(".date_var is missing. Using: ", tk_get_timeseries_variables(.data)[1])
}
UseMethod("summarise_by_time")
}
#' @rdname summarise_by_time
#' @export
summarize_by_time <- summarise_by_time
#' @export
summarise_by_time.default <- function(.data, .date_var, .by = "day", ...,
.type = c("floor", "ceiling", "round"),
.week_start = NULL) {
stop("Object is not of class `data.frame`.", call. = FALSE)
}
#' @export
summarise_by_time.data.frame <- function(.data, .date_var, .by = "day", ...,
.type = c("floor", "ceiling", "round"),
.week_start = NULL) {
data_groups_expr <- rlang::syms(dplyr::group_vars(.data))
date_var_expr <- rlang::enquo(.date_var)
# Check date_var
if (rlang::quo_is_missing(date_var_expr)) {
date_var_text <- tk_get_timeseries_variables(.data)[1]
date_var_expr <- rlang::sym(date_var_text)
}
# Check index exists
date_var_text <- rlang::quo_name(date_var_expr)
if (!date_var_text %in% names(.data)) {
rlang::abort(stringr::str_glue("Attempting to use .date_var = {date_var_text}. Column does not exist in .data. Please specify a date or date-time column."))
}
# Choose .type lubridate function
fun_type <- tolower(.type[[1]])
if (fun_type == "floor") {
.f <- lubridate::floor_date
} else if (fun_type == "ceiling") {
.f <- lubridate::ceiling_date
} else {
.f <- lubridate::round_date
}
# Check .week_start
if (is.null(.week_start)) {
.week_start <- getOption("lubridate.week.start", 7)
}
# Time-based summarization logic
ret_tbl <- .data %>%
dplyr::mutate(!! date_var_expr := .f(!! date_var_expr, unit = .by, week_start = .week_start)) %>%
dplyr::group_by_at(.vars = dplyr::vars(!!! data_groups_expr, !! date_var_expr)) %>%
dplyr::arrange(!! date_var_expr, .by_group = TRUE) %>%
dplyr::summarize(...)
return(ret_tbl)
}
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