comperes
offers a pipe (%>%
) friendly set of tools for storing and managing competition results. Understanding of competition is quite general: it is a set of games (abstract event) in which players (abstract entity) gain some abstract scores (typically numeric). The most natural example is sport results, however not the only one. For example, product rating can be considered as a competition between products as “players”. Here a “game” is a customer that reviews a set of products by rating them with numerical “score” (stars, points, etc.).
This package leverages dplyr’s grammar of data manipulation. Only basic knowledge is enough to use comperes
.
comperes
provides the following functionality:
as_longcr()
, is_longcr()
.tibble
with one row per game with fixed amount of players. Functions: as_widecr()
, is_widecr()
.dplyr
’s grammar. Functions: summarise_item()
, summarise_game()
, summarise_player()
.join_item_summary()
, join_game_summary()
, join_player_summary()
.. %>% summarise_player(!!!summary_funs["mean_score"])
.dplyr
’s grammar:
tibble
with one row per pair of players. Function: h2h_long()
.h2h_mat()
.. %>% h2h_mat(!!!h2h_funs["num_wins"])
.You can install comperes
from CRAN with:
install.packages("comperes")
To install the most recent development version from GitHub use:
# install.packages("devtools")
devtools::install_github("echasnovski/comperes")
We will be using ncaa2005
, data from comperes
package. It is an example competition results (hereafter - results) of an isolated group of Atlantic Coast Conference teams provided in book “Who’s #1” by Langville and Meyer. It looks like this:
library(comperes)
ncaa2005
#> # A longcr object:
#> # A tibble: 20 x 3
#> game player score
#> <int> <chr> <int>
#> 1 1 Duke 7
#> 2 1 Miami 52
#> 3 2 Duke 21
#> 4 2 UNC 24
#> 5 3 Duke 7
#> 6 3 UVA 38
#> # … with 14 more rows
This is an object of class longcr
which describes results in long form (each row represents the score of particular player in particular game). Because in this competition a game always consists from two players, more natural way to look at ncaa2005
is in wide format:
as_widecr(ncaa2005)
#> # A widecr object:
#> # A tibble: 10 x 5
#> game player1 score1 player2 score2
#> <int> <chr> <int> <chr> <int>
#> 1 1 Duke 7 Miami 52
#> 2 2 Duke 21 UNC 24
#> 3 3 Duke 7 UVA 38
#> 4 4 Duke 0 VT 45
#> 5 5 Miami 34 UNC 16
#> 6 6 Miami 25 UVA 17
#> # … with 4 more rows
This converted ncaa2005
into an object of widecr
class which describes results in wide format (each row represents scores of all players in particular game). All comperes
functions expect either a data frame with results structured in long format or one of supported classes: longcr
, widecr
.
With compere
the following summaries are possible:
ncaa2005 %>%
summarise_player(min_score = min(score), mean_score = mean(score))
#> # A tibble: 5 x 3
#> player min_score mean_score
#> <chr> <int> <dbl>
#> 1 Duke 0 8.75
#> 2 Miami 25 34.5
#> 3 UNC 3 12.5
#> 4 UVA 5 18.5
#> 5 VT 7 33.5
# Using list of common summary functions
library(rlang)
ncaa2005 %>%
summarise_game(!!!summary_funs[c("sum_score", "num_players")])
#> # A tibble: 10 x 3
#> game sum_score num_players
#> <int> <int> <int>
#> 1 1 59 2
#> 2 2 45 2
#> 3 3 45 2
#> 4 4 45 2
#> 5 5 50 2
#> 6 6 42 2
#> # … with 4 more rows
Supplied list of common summary functions has 8 entries, which are quoted expressions to be used in dplyr
grammar:
summary_funs
#> $min_score
#> min(score)
#>
#> $max_score
#> max(score)
#>
#> $mean_score
#> mean(score)
#>
#> $median_score
#> median(score)
#>
#> $sd_score
#> sd(score)
#>
#> $sum_score
#> sum(score)
#>
#> $num_games
#> length(unique(game))
#>
#> $num_players
#> length(unique(player))
ncaa2005 %>% summarise_player(!!!summary_funs)
#> # A tibble: 5 x 9
#> player min_score max_score mean_score median_score sd_score sum_score num_games num_players
#> <chr> <int> <int> <dbl> <dbl> <dbl> <int> <int> <int>
#> 1 Duke 0 21 8.75 7 8.81 35 4 1
#> 2 Miami 25 52 34.5 30.5 12.3 138 4 1
#> 3 UNC 3 24 12.5 11.5 9.40 50 4 1
#> 4 UVA 5 38 18.5 15.5 14.0 74 4 1
#> 5 VT 7 52 33.5 37.5 19.9 134 4 1
To modify scores based on the rest of results one can use join_*_summary()
functions:
suppressPackageStartupMessages(library(dplyr))
ncaa2005_mod <- ncaa2005 %>%
join_player_summary(player_mean_score = mean(score)) %>%
join_game_summary(game_mean_score = mean(score)) %>%
mutate(score = player_mean_score - game_mean_score)
ncaa2005_mod
#> # A longcr object:
#> # A tibble: 20 x 5
#> game player score player_mean_score game_mean_score
#> <int> <chr> <dbl> <dbl> <dbl>
#> 1 1 Duke -20.8 8.75 29.5
#> 2 1 Miami 5 34.5 29.5
#> 3 2 Duke -13.8 8.75 22.5
#> 4 2 UNC -10 12.5 22.5
#> 5 3 Duke -13.8 8.75 22.5
#> 6 3 UVA -4 18.5 22.5
#> # … with 14 more rows
ncaa2005_mod %>% summarise_player(mean_score = mean(score))
#> # A tibble: 5 x 2
#> player mean_score
#> <chr> <dbl>
#> 1 Duke -15.5
#> 2 Miami 11.4
#> 3 UNC -5
#> 4 UVA -2.12
#> 5 VT 11.2
This code modifies score
to be average player score minus average game score. Negative values indicate poor game performance.
Computation of Head-to-Head performance is done with h2h_long()
(output is a tibble; allows multiple Head-to-Head values per pair of players) or h2h_mat()
(output is a matrix; only one value per pair of players).
Head-to-Head functions should be supplied in dplyr
grammar but for players’ matchups: direct confrontation between ordered pairs of players (including playing with themselves) stored in wide format:
ncaa2005 %>% get_matchups()
#> # A widecr object:
#> # A tibble: 40 x 5
#> game player1 score1 player2 score2
#> <int> <chr> <int> <chr> <int>
#> 1 1 Duke 7 Duke 7
#> 2 1 Duke 7 Miami 52
#> 3 1 Miami 52 Duke 7
#> 4 1 Miami 52 Miami 52
#> 5 2 Duke 21 Duke 21
#> 6 2 Duke 21 UNC 24
#> # … with 34 more rows
Typical Head-to-Head computation is done like this:
ncaa2005 %>%
h2h_long(
mean_score_diff = mean(score1 - score2),
num_wins = sum(score1 > score2)
)
#> # A long format of Head-to-Head values:
#> # A tibble: 25 x 4
#> player1 player2 mean_score_diff num_wins
#> <chr> <chr> <dbl> <int>
#> 1 Duke Duke 0 0
#> 2 Duke Miami -45 0
#> 3 Duke UNC -3 0
#> 4 Duke UVA -31 0
#> 5 Duke VT -45 0
#> 6 Miami Duke 45 1
#> # … with 19 more rows
ncaa2005 %>% h2h_mat(mean(score1 - score2))
#> # A matrix format of Head-to-Head values:
#> Duke Miami UNC UVA VT
#> Duke 0 -45 -3 -31 -45
#> Miami 45 0 18 8 20
#> UNC 3 -18 0 2 -27
#> UVA 31 -8 -2 0 -38
#> VT 45 -20 27 38 0
Supplied list of common Head-to-Head functions has 9 entries, which are also quoted expressions:
h2h_funs
#> $mean_score_diff
#> mean(score1 - score2)
#>
#> $mean_score_diff_pos
#> max(mean(score1 - score2), 0)
#>
#> $mean_score
#> mean(score1)
#>
#> $sum_score_diff
#> sum(score1 - score2)
#>
#> $sum_score_diff_pos
#> max(sum(score1 - score2), 0)
#>
#> $sum_score
#> sum(score1)
#>
#> $num_wins
#> num_wins(score1, score2, half_for_draw = FALSE)
#>
#> $num_wins2
#> num_wins(score1, score2, half_for_draw = TRUE)
#>
#> $num
#> dplyr::n()
ncaa2005 %>% h2h_long(!!!h2h_funs)
#> # A long format of Head-to-Head values:
#> # A tibble: 25 x 11
#> player1 player2 mean_score_diff mean_score_diff… mean_score sum_score_diff sum_score_diff_… sum_score
#> <chr> <chr> <dbl> <dbl> <dbl> <int> <dbl> <int>
#> 1 Duke Duke 0 0 8.75 0 0 35
#> 2 Duke Miami -45 0 7 -45 0 7
#> 3 Duke UNC -3 0 21 -3 0 21
#> 4 Duke UVA -31 0 7 -31 0 7
#> 5 Duke VT -45 0 0 -45 0 0
#> 6 Miami Duke 45 45 52 45 45 52
#> # … with 19 more rows, and 3 more variables: num_wins <dbl>, num_wins2 <dbl>, num <int>
To compute Head-to-Head for only subset of players or include values for players that are not in the results, use factor player
column: