This tutorial presents built-in functions in runner package which
goal is to maximize performance. Even if one can apply any R function
with runner::runner, built-in functions are multiple times
faster than R equivalent. Before you proceed further to this tutorial,
make sure you know what the “running functions
are”.
<mean,sum,min,max>_runRunner provides basic aggregation methods calculated within running
windows. Below example showing some functions behavior for different
arguments setup. min_run calculates current minimum for all
elements of the vector. Let’s take a look at 8’th element of the vector
which min_run is calculated on.
First setup uses default values, so algorithm is looking for minimum
value in all elements before actual (i=8). By default missing values are
removed before calculations by argument na_rm = TRUE, and
also window is not specified. The default is equivalent of
base::cummin with additional option to ignore
NA values. In second example within window k=5, the lowest
value is -3. In the last example minimum is not available due to
existence of NA. Graphical example is reproduced below in
the code.
library(runner)
x <- c(1, -5, 1, -3, NA, NA, NA, 1, -1, NA, -2, 3)
data.frame(
x,
default = min_run(x, na_rm = TRUE),
k_5 = min_run(x, k = 5, na_rm = TRUE),
narm_f = min_run(x, na_rm = FALSE))## x default k_5 narm_f
## 1 1 1 1 1
## 2 -5 -5 -5 -5
## 3 1 -5 -5 -5
## 4 -3 -5 -5 -5
## 5 NA -5 -5 NA
## 6 NA -5 -5 NA
## 7 NA -5 -3 NA
## 8 1 -5 -3 NA
## 9 -1 -5 -1 NA
## 10 NA -5 -1 NA
## 11 -2 -5 -2 NA
## 12 3 -5 -2 NA
In above example constant k = 5 has been used which
means that for each element, current minimum is calculated on last
5-elements. It may happen that one can have time series where elements
are not equally spaced in time, which effects in k = 5 not
constant. In example below 5-days sum is calculated. To achieve this,
one should put date variable to idx argument.
Illustration below shows two sums calculated in 5-days window span. In
both cases 5-days fit in 3-elements windows. Equivalent R code
below.
x <- c(-0.5910, 0.0266, -1.5166, -1.3627, 1.1785, -0.9342, 1.3236, 0.6249)
idx <- as.Date(c("1970-01-03", "1970-01-06", "1970-01-09", "1970-01-12",
"1970-01-13", "1970-01-16", "1970-01-17", "1970-01-19"))
sum_run(x, k = 5, idx = idx)## [1] -0.5910 -0.5644 -1.4900 -2.8793 -1.7008 -1.1184 1.5679 1.0143
Specifying lag argument shift of the window by number of
elements or time periods (if idx is specified).
x <- c(-0.5910, 0.0266, -1.5166, -1.3627, 1.1785, -0.9342, 1.3236, 0.6249)
idx <- as.Date(c("1970-01-03", "1970-01-06", "1970-01-09", "1970-01-12",
"1970-01-13", "1970-01-16", "1970-01-17", "1970-01-19"))
sum_run(x, k = 5, lag = 2, idx = idx)## [1] NA -0.5910 -0.5644 -1.4900 -1.5166 -0.1842 -0.1842 1.5679
To count consecutive elements in specified window one can use
streak_run. Following figure illustrates how streak is
calculated with three different options setup for 9th element of the
input vector x. First shows default configuration, with
full window and na_rm = TRUE. Second example count within
k = 4 window with count reset on NA. Last
example counting streak with continuation after NA.
Visualization also supported with corresponding R code.
x <- c("A", "B", "A", "A", "B", "B", "B", NA, "B", "B", "A", "B")
data.frame(
x,
s0 = streak_run(x),
s1 = streak_run(x, k = 4, na_rm = FALSE),
s2 = streak_run(x, k = 4))## x s0 s1 s2
## 1 A 1 1 1
## 2 B 1 1 1
## 3 A 1 1 1
## 4 A 2 2 2
## 5 B 1 1 1
## 6 B 2 2 2
## 7 B 3 3 3
## 8 <NA> 3 NA 3
## 9 B 4 NA 3
## 10 B 5 NA 3
## 11 A 1 1 1
## 12 B 1 1 1
Streak is often used in sports to count number of wins or loses of
the team/player. To count consecutive wins or loses in 5-days period,
one have to specify k = 5 and include dates into
idx argument. Specifying lag shifts window
bounds by number of elements or time periods (if idx is
specified).
x <- c("W", "W", "L", "L", "L", "W", "L", "L")
idx <- as.Date(c("2019-01-03", "2019-01-06", "2019-01-09", "2019-01-12",
"2019-01-13", "2019-01-16", "2019-01-17", "2019-01-19"))
data.frame(
idx,
x,
streak_5d = streak_run(x, k = 5, idx = idx),
streak_5d_lag = streak_run(x, k = 5, lag = 1, idx = idx))## idx x streak_5d streak_5d_lag
## 1 2019-01-03 W 1 NA
## 2 2019-01-06 W 2 1
## 3 2019-01-09 L 1 1
## 4 2019-01-12 L 2 1
## 5 2019-01-13 L 3 2
## 6 2019-01-16 W 1 2
## 7 2019-01-17 L 1 1
## 8 2019-01-19 L 2 1
Idea of lag_run is the same as well known
stats::lag, with distinction that lag_run can
depend on time or any other indexes passed to idx argument.
This means that lag_run can shift by lag
elements of the vector or by lag time periods (if
idx is specified).
x <- c(-0.5910, 0.0266, -1.5166, -1.3627, 1.1785, -0.9342, 1.3236, 0.6249)
idx <- as.Date(c("1970-01-03", "1970-01-06", "1970-01-09", "1970-01-12",
"1970-01-13", "1970-01-16", "1970-01-17", "1970-01-19"))
lag_run(x, lag = 3, idx = idx)## [1] NA -0.5910 0.0266 -1.5166 NA 1.1785 NA -0.9342
Function used to replace NA with previous non-NA
element. To understand how fill_run works, take a look on
illustration. Row ‘x’ represents input, and another rows represent
output with NA replaced by fill_run with
different options setup (run_for_first = TRUE and
only_within = TRUE respectively). By default,
fill_run replaces all NA if they were preceded
by any value. If NA appeared in the beginning of the vector
then it would not be replaced. But if user specify
run_for_first = TRUE initial empty values values will be
replaced by next non-empty value. Option only_within = TRUE
means that NA values would be replaced if they were
surrounded by pair of identical values. No windows provided in this
functionality.
x <- c(NA, NA, "b", "b", "a", NA, NA, "a", "b", NA, "a", "b")
data.frame(x,
f1 = fill_run(x),
f2 = fill_run(x,run_for_first = TRUE),
f3 = fill_run(x, only_within = TRUE))## x f1 f2 f3
## 1 <NA> <NA> b <NA>
## 2 <NA> <NA> b <NA>
## 3 b b b b
## 4 b b b b
## 5 a a a a
## 6 <NA> a a a
## 7 <NA> a a a
## 8 a a a a
## 9 b b b b
## 10 <NA> b b <NA>
## 11 a a a a
## 12 b b b b
To obtain index number of element matching some condition in window,
one can use which_run, which returns index of
TRUE element appeared before n-th element of a vector. If
na_rm = TRUE is specified, missing is treated as
FALSE, and is ignored while searching for
TRUE. While user set na_rm = FALSE like in
second example, function returns NA, because in following
window TRUE appears after missing and it’s impossible to be
certain which is first (missing is an element of unknown value - could
be TRUE or FALSE).
x <- c(T, T, T, F, NA, T, F, NA, T, F, T, F)
data.frame(
x,
s0 = which_run(x, which = "first"),
s1 = which_run(x, na_rm = FALSE, k = 5, which = "first"),
s2 = which_run(x, k = 5, which = "last"))## x s0 s1 s2
## 1 TRUE 1 1 1
## 2 TRUE 1 1 2
## 3 TRUE 1 1 3
## 4 FALSE 1 1 3
## 5 NA 1 1 3
## 6 TRUE 1 2 6
## 7 FALSE 1 3 6
## 8 NA 1 NA 6
## 9 TRUE 1 NA 9
## 10 FALSE 1 6 9
## 11 TRUE 1 NA 11
## 12 FALSE 1 NA 11
which argument (‘first’ or ‘last’) used with
which_run determines which index of matching element should
be returned from window. In below illustration in k = 4
elements window there are two TRUE values, and depending on
which argument output is equal 2 or
4.