--- title: "Formats of Competition Results" author: "Evgeni Chasnovski" date: "`r Sys.Date()`" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{Formats of Competition Results} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r setup, include = FALSE} knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ``` `comperes` offers a pipe (`%>%`) friendly set of tools for storing and managing competition results (hereafter - results). This vignette discusses following topics: - Storage of results. - Conversion between different formats of results. - Notes on package application. 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.). We will need the following packages: ```{r library, warning = FALSE} library(comperes) library(tibble) ``` ## Storage ### Long format Results in long format are stored in object of class `longcr`. It is considered to be a `tibble` with one row per game-player pair. It should have at least columns with names "game", "player" and "score". For example: ```{r cr_long_raw} cr_long_raw <- tibble( game = c(1, 1, 1, 2, 2, 3, 3, 4), player = c(1, NA, NA, 1, 2, 2, 1, 2), score = 1:8 ) ``` To convert `cr_long_raw` into `longcr` object use `as_longcr()`: ```{r cr_long} cr_long <- as_longcr(cr_long_raw) cr_long ``` By default, `as_longcr()` repairs its input by applying set of heuristics to extract relevant data: ```{r as_longcr-repair} tibble( PlayerRS = "a", gameSS = "b", extra = -1, score_game = 10, player = 1 ) %>% as_longcr() ``` ### Wide format Results in wide format are stored in object of class `widecr`. It is considered to be a `tibble` with one row per game with fixed amount of players. Data should be organized in pairs of columns "player"-"score". Identifier of a pair should go after respective keyword and consist only from digits. For example: player1, score1, player2, score2. Order doesn't matter. Extra columns are allowed. Column game for game identifier is optional. Example of correct wide format: ```{r cr_wide_raw} cr_wide_raw <- tibble( player1 = c(1, 1, 2), score1 = -(1:3), player2 = c(2, 3, 3), score2 = -(4:6) ) ``` To convert `cr_wide_raw` into `widecr` object use `as_widecr()`: ```{r cr_wide} cr_wide <- cr_wide_raw %>% as_widecr() cr_wide ``` By default, `as_widecr()` also does repairing of its input: ```{r as_widecr-repair} tibble( score = 2, PlayerRS = "a", scoreRS = 1, player = "b", player1 = "c", extra = -1, game = "game" ) %>% as_widecr() ``` ## Conversion `as_longcr()` and `as_widecr()` do actual conversion applied to `widecr` and `longcr` objects respectively: ```{r conversion} as_longcr(cr_wide) # Determines number of players in game as # actual maximum number of players in games as_widecr(cr_long) ``` ## Notes - Functions in `comperes` expect data that can be a proper input to `as_longcr()`, i.e. `longcr` object, `widecr` object, or raw data aligned with long format. - The preferred way to do data analysis with `comperes` is to have three data frames: - One with description of __games__ (with column `game` for game identifiers). - One with description of __players__ (with column `player` for player identifiers). - One with __competition results__ in long format. This way one can operate with games between variable number of players with minimum storage overhead.