A window function is a variation on an aggregation
function. Where an aggregation function, like sum()
and
mean()
, takes n inputs and return a single value, a window
function returns n values. The output of a window function depends on
all its input values, so window functions don’t include functions that
work element-wise, like +
or round()
. Window
functions include variations on aggregate functions, like
cumsum()
and cummean()
, functions for ranking
and ordering, like rank()
, and functions for taking
offsets, like lead()
and lag()
.
In this vignette, we’ll use a small sample of the Lahman batting dataset, including the players that have won an award.
library(Lahman)
batting <- Lahman::Batting %>%
as_tibble() %>%
select(playerID, yearID, teamID, G, AB:H) %>%
arrange(playerID, yearID, teamID) %>%
semi_join(Lahman::AwardsPlayers, by = "playerID")
players <- batting %>% group_by(playerID)
Window functions are used in conjunction with mutate()
and filter()
to solve a wide range of problems. Here’s a
selection:
# For each player, find the two years with most hits
filter(players, min_rank(desc(H)) <= 2 & H > 0)
# Within each player, rank each year by the number of games played
mutate(players, G_rank = min_rank(G))
# For each player, find every year that was better than the previous year
filter(players, G > lag(G))
# For each player, compute avg change in games played per year
mutate(players, G_change = (G - lag(G)) / (yearID - lag(yearID)))
# For each player, find all years where they played more games than they did on average
filter(players, G > mean(G))
# For each, player compute a z score based on number of games played
mutate(players, G_z = (G - mean(G)) / sd(G))
Before reading this vignette, you should be familiar with
mutate()
and filter()
.
There are five main families of window functions. Two families are unrelated to aggregation functions:
Ranking and ordering functions: row_number()
,
min_rank()
, dense_rank()
,
cume_dist()
, percent_rank()
, and
ntile()
. These functions all take a vector to order by, and
return various types of ranks.
Offsets lead()
and lag()
allow you to
access the previous and next values in a vector, making it easy to
compute differences and trends.
The other three families are variations on familiar aggregate functions:
Cumulative aggregates: cumsum()
,
cummin()
, cummax()
(from base R), and
cumall()
, cumany()
, and cummean()
(from dplyr).
Rolling aggregates operate in a fixed width window. You won’t find them in base R or in dplyr, but there are many implementations in other packages, such as RcppRoll.
Recycled aggregates, where an aggregate is repeated to match the length of the input. These are not needed in R because vector recycling automatically recycles aggregates where needed. They are important in SQL, because the presence of an aggregation function usually tells the database to return only one row per group.
Each family is described in more detail below, focussing on the general goals and how to use them with dplyr. For more details, refer to the individual function documentation.
The ranking functions are variations on a theme, differing in how they handle ties:
x <- c(1, 1, 2, 2, 2)
row_number(x)
#> [1] 1 2 3 4 5
min_rank(x)
#> [1] 1 1 3 3 3
dense_rank(x)
#> [1] 1 1 2 2 2
If you’re familiar with R, you may recognise that
row_number()
and min_rank()
can be computed
with the base rank()
function and various values of the
ties.method
argument. These functions are provided to save
a little typing, and to make it easier to convert between R and SQL.
Two other ranking functions return numbers between 0 and 1.
percent_rank()
gives the percentage of the rank;
cume_dist()
gives the proportion of values less than or
equal to the current value.
These are useful if you want to select (for example) the top 10% of records within each group. For example:
filter(players, cume_dist(desc(G)) < 0.1)
#> # A tibble: 1,090 × 7
#> # Groups: playerID [995]
#> playerID yearID teamID G AB R H
#> <chr> <int> <fct> <int> <int> <int> <int>
#> 1 aaronha01 1963 ML1 161 631 121 201
#> 2 aaronha01 1968 ATL 160 606 84 174
#> 3 abbotji01 1991 CAL 34 0 0 0
#> 4 abernte02 1965 CHN 84 18 1 3
#> # ℹ 1,086 more rows
Finally, ntile()
divides the data up into n
evenly sized buckets. It’s a coarse ranking, and it can be used in with
mutate()
to divide the data into buckets for further
summary. For example, we could use ntile()
to divide the
players within a team into four ranked groups, and calculate the average
number of games within each group.
by_team_player <- group_by(batting, teamID, playerID)
by_team <- summarise(by_team_player, G = sum(G))
#> `summarise()` has grouped output by 'teamID'. You can override using the
#> `.groups` argument.
by_team_quartile <- group_by(by_team, quartile = ntile(G, 4))
summarise(by_team_quartile, mean(G))
#> # A tibble: 4 × 2
#> quartile `mean(G)`
#> <int> <dbl>
#> 1 1 22.7
#> 2 2 91.8
#> 3 3 253.
#> 4 4 961.
All ranking functions rank from lowest to highest so that small input
values get small ranks. Use desc()
to rank from highest to
lowest.
lead()
and lag()
produce offset versions of
a input vector that is either ahead of or behind the original
vector.
You can use them to:
Compute differences or percent changes.
Using lag()
is more convenient than diff()
because for n
inputs diff()
returns
n - 1
outputs.
Find out when a value changes.
lead()
and lag()
have an optional argument
order_by
. If set, instead of using the row order to
determine which value comes before another, they will use another
variable. This is important if you have not already sorted the data, or
you want to sort one way and lag another.
Here’s a simple example of what happens if you don’t specify
order_by
when you need it:
df <- data.frame(year = 2000:2005, value = (0:5) ^ 2)
scrambled <- df[sample(nrow(df)), ]
wrong <- mutate(scrambled, prev_value = lag(value))
arrange(wrong, year)
#> year value prev_value
#> 1 2000 0 4
#> 2 2001 1 0
#> 3 2002 4 9
#> 4 2003 9 16
#> 5 2004 16 NA
#> 6 2005 25 1
right <- mutate(scrambled, prev_value = lag(value, order_by = year))
arrange(right, year)
#> year value prev_value
#> 1 2000 0 NA
#> 2 2001 1 0
#> 3 2002 4 1
#> 4 2003 9 4
#> 5 2004 16 9
#> 6 2005 25 16
Base R provides cumulative sum (cumsum()
), cumulative
min (cummin()
), and cumulative max (cummax()
).
(It also provides cumprod()
but that is rarely useful).
Other common accumulating functions are cumany()
and
cumall()
, cumulative versions of ||
and
&&
, and cummean()
, a cumulative mean.
These are not included in base R, but efficient versions are provided by
dplyr
.
cumany()
and cumall()
are useful for
selecting all rows up to, or all rows after, a condition is true for the
first (or last) time. For example, we can use cumany()
to
find all records for a player after they played a year with 150
games:
Like lead and lag, you may want to control the order in which the
accumulation occurs. None of the built in functions have an
order_by
argument so dplyr
provides a helper:
order_by()
. You give it the variable you want to order by,
and then the call to the window function:
This function uses a bit of non-standard evaluation, so I wouldn’t
recommend using it inside another function; use the simpler but less
concise with_order()
instead.
R’s vector recycling makes it easy to select values that are higher or lower than a summary. I call this a recycled aggregate because the value of the aggregate is recycled to be the same length as the original vector. Recycled aggregates are useful if you want to find all records greater than the mean or less than the median:
While most SQL databases don’t have an equivalent of
median()
or quantile()
, when filtering you can
achieve the same effect with ntile()
. For example,
x > median(x)
is equivalent to
ntile(x, 2) == 2
; x > quantile(x, 75)
is
equivalent to ntile(x, 100) > 75
or
ntile(x, 4) > 3
.
You can also use this idea to select the records with the highest
(x == max(x)
) or lowest value (x == min(x)
)
for a field, but the ranking functions give you more control over ties,
and allow you to select any number of records.
Recycled aggregates are also useful in conjunction with
mutate()
. For example, with the batting data, we could
compute the “career year”, the number of years a player has played since
they entered the league:
mutate(players, career_year = yearID - min(yearID) + 1)
#> # A tibble: 20,874 × 8
#> # Groups: playerID [1,436]
#> playerID yearID teamID G AB R H career_year
#> <chr> <int> <fct> <int> <int> <int> <int> <dbl>
#> 1 aaronha01 1954 ML1 122 468 58 131 1
#> 2 aaronha01 1955 ML1 153 602 105 189 2
#> 3 aaronha01 1956 ML1 153 609 106 200 3
#> 4 aaronha01 1957 ML1 151 615 118 198 4
#> # ℹ 20,870 more rows
Or, as in the introductory example, we could compute a z-score:
mutate(players, G_z = (G - mean(G)) / sd(G))
#> # A tibble: 20,874 × 8
#> # Groups: playerID [1,436]
#> playerID yearID teamID G AB R H G_z
#> <chr> <int> <fct> <int> <int> <int> <int> <dbl>
#> 1 aaronha01 1954 ML1 122 468 58 131 -1.16
#> 2 aaronha01 1955 ML1 153 602 105 189 0.519
#> 3 aaronha01 1956 ML1 153 609 106 200 0.519
#> 4 aaronha01 1957 ML1 151 615 118 198 0.411
#> # ℹ 20,870 more rows