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baseballr

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baseballr is a package written for R focused on baseball analysis. It includes functions for scraping various data from websites, such as FanGraphs.com, Baseball-Reference.com, and baseballsavant.com. It also includes functions for calculating metrics, such as wOBA, FIP, and team-level consistency over custom time frames.

You can read more about some of the functions and how to use them at its official site as well as this Hardball Times article.

Installation

You can install the released version of baseballr from GitHub with:

# You can install using the pacman package using the following code:
if (!requireNamespace('pacman', quietly = TRUE)){
  install.packages('pacman')
}
pacman::p_load_current_gh("BillPetti/baseballr")
# Alternatively, using the devtools package:
if (!requireNamespace('devtools', quietly = TRUE)){
  install.packages('devtools')
}
devtools::install_github(repo = "BillPetti/baseballr")

For experimental functions in development, you can install the development branch:

# install.packages("devtools")
devtools::install_github("BillPetti/baseballr", ref = "development_branch")

Functionality

The package consists of two main sets of functions: data acquisition and metric calculation.

For example, if you want to see the standings for a specific MLB division on a given date, you can use the bref_standings_on_date() function. Just pass the year, month, day, and division you want:

library(baseballr)
library(dplyr)
bref_standings_on_date("2015-08-01", "NL East", from = FALSE)
## # A tibble: 5 x 8
##   Tm        W     L `W-L%` GB       RS    RA `pythW-L%`
##   <chr> <int> <int>  <dbl> <chr> <int> <int>      <dbl>
## 1 WSN      54    48  0.529 --      422   391      0.535
## 2 NYM      54    50  0.519 1.0     368   373      0.494
## 3 ATL      46    58  0.442 9.0     379   449      0.423
## 4 MIA      42    62  0.404 13.0    370   408      0.455
## 5 PHI      41    64  0.39  14.5    386   511      0.374

Right now the function works as far as back as 1994, which is when both leagues split into three divisions.

You can also pull data for all hitters over a specific date range. Here are the results for all hitters from August 1st through October 3rd during the 2015 season:

data <- bref_daily_batter("2015-08-01", "2015-10-03") 
data %>%
  dplyr::glimpse()
## Rows: 764
## Columns: 30
## $ bbref_id <chr> "547989", "554429", "542436", "571431", "501303", "346793", "~
## $ season   <int> 2015, 2015, 2015, 2015, 2015, 2015, 2015, 2015, 2015, 2015, 2~
## $ Name     <chr> "Manny Machado", "Matt Duffy", "Jose Altuve", "Adam Eaton", "~
## $ Age      <dbl> 22, 24, 25, 26, 32, 21, 27, 28, 36, 28, 29, 29, 27, 29, 27, 2~
## $ Level    <chr> "Maj-AL", "Maj-NL", "Maj-AL", "Maj-AL", "Maj-AL", "Maj-AL", "~
## $ Team     <chr> "Baltimore", "San Francisco", "Houston", "Chicago", "Texas", ~
## $ G        <dbl> 59, 59, 57, 58, 58, 58, 59, 58, 59, 57, 55, 57, 57, 58, 56, 5~
## $ PA       <dbl> 266, 264, 262, 262, 260, 259, 259, 258, 257, 257, 255, 255, 2~
## $ AB       <dbl> 237, 248, 244, 230, 211, 224, 239, 235, 231, 233, 213, 218, 2~
## $ R        <dbl> 36, 33, 30, 37, 48, 35, 32, 29, 37, 27, 50, 37, 36, 25, 38, 4~
## $ H        <dbl> 66, 71, 81, 74, 71, 79, 54, 66, 75, 48, 65, 56, 61, 51, 78, 5~
## $ X1B      <dbl> 43, 54, 53, 56, 47, 51, 34, 37, 48, 30, 34, 32, 35, 33, 66, 2~
## $ X2B      <dbl> 10, 12, 19, 12, 14, 17, 6, 17, 16, 11, 13, 13, 15, 10, 7, 13,~
## $ X3B      <dbl> 0, 2, 3, 1, 1, 4, 1, 0, 2, 1, 2, 4, 0, 1, 3, 0, 4, 0, 1, 1, 0~
## $ HR       <dbl> 13, 3, 6, 5, 9, 7, 13, 12, 9, 6, 16, 7, 11, 7, 2, 20, 9, 8, 8~
## $ RBI      <dbl> 32, 30, 18, 31, 34, 32, 27, 40, 53, 21, 50, 19, 31, 39, 23, 4~
## $ BB       <dbl> 26, 15, 10, 23, 39, 18, 16, 17, 21, 21, 34, 33, 21, 39, 12, 3~
## $ IBB      <dbl> 1, 0, 1, 1, 1, 0, 0, 6, 1, 1, 0, 1, 1, 5, 0, 4, 3, 3, 7, 2, 2~
## $ uBB      <dbl> 25, 15, 9, 22, 38, 18, 16, 11, 20, 20, 34, 32, 20, 34, 12, 35~
## $ SO       <dbl> 42, 35, 28, 55, 51, 38, 68, 56, 29, 53, 46, 62, 41, 48, 27, 7~
## $ HBP      <dbl> 2, 0, 4, 5, 8, 1, 3, 5, 1, 1, 2, 3, 3, 1, 1, 6, 1, 3, 4, 1, 0~
## $ SH       <dbl> 0, 0, 1, 2, 1, 11, 0, 0, 0, 0, 1, 0, 0, 0, 2, 0, 0, 0, 0, 0, ~
## $ SF       <dbl> 1, 1, 3, 2, 1, 5, 1, 1, 4, 2, 5, 1, 2, 2, 3, 0, 3, 2, 3, 4, 3~
## $ GDP      <dbl> 5, 9, 6, 1, 1, 4, 2, 2, 9, 7, 5, 1, 4, 8, 1, 2, 3, 10, 5, 4, ~
## $ SB       <dbl> 6, 8, 11, 9, 2, 10, 0, 0, 0, 3, 3, 4, 5, 4, 24, 2, 1, 0, 6, 0~
## $ CS       <dbl> 4, 0, 4, 4, 0, 2, 0, 0, 0, 1, 0, 1, 3, 2, 7, 2, 3, 0, 2, 0, 0~
## $ BA       <dbl> 0.278, 0.286, 0.332, 0.322, 0.336, 0.353, 0.226, 0.281, 0.325~
## $ OBP      <dbl> 0.353, 0.326, 0.364, 0.392, 0.456, 0.395, 0.282, 0.341, 0.377~
## $ SLG      <dbl> 0.485, 0.387, 0.508, 0.448, 0.540, 0.558, 0.423, 0.506, 0.528~
## $ OPS      <dbl> 0.839, 0.713, 0.872, 0.840, 0.996, 0.953, 0.704, 0.847, 0.906~

In terms of metric calculation, the package allows the user to calculate the consistency of team scoring and run prevention for any year using team_consistency():

team_consistency(2015)
## # A tibble: 30 x 5
##    Team  Con_R Con_RA Con_R_Ptile Con_RA_Ptile
##    <chr> <dbl>  <dbl>       <dbl>        <dbl>
##  1 ARI    0.37   0.36          17           15
##  2 ATL    0.41   0.4           88           63
##  3 BAL    0.4    0.38          70           42
##  4 BOS    0.39   0.4           52           63
##  5 CHC    0.38   0.41          30           85
##  6 CHW    0.39   0.4           52           63
##  7 CIN    0.41   0.36          88           15
##  8 CLE    0.41   0.4           88           63
##  9 COL    0.35   0.34           7            3
## 10 DET    0.39   0.38          52           42
## # ... with 20 more rows

You can also calculate wOBA per plate appearance and wOBA on contact for any set of data over any date range, provided you have the data available.

Simply pass the proper data frame to woba_plus:

data %>%
  dplyr::filter(PA > 200) %>%
  woba_plus %>%
  dplyr::arrange(desc(wOBA)) %>%
  dplyr::select(Name, Team, season, PA, wOBA, wOBA_CON) %>%
  dplyr::glimpse()
## Rows: 117
## Columns: 6
## $ Name     <chr> "Edwin Encarnacion", "Bryce Harper", "David Ortiz", "Joey Vot~
## $ Team     <chr> "Toronto", "Washington", "Boston", "Cincinnati", "Baltimore",~
## $ season   <chr> "2015", "2015", "2015", "2015", "2015", "2015", "2015", "2015~
## $ PA       <dbl> 216, 248, 213, 251, 253, 260, 245, 255, 223, 241, 223, 259, 2~
## $ wOBA     <dbl> 0.490, 0.450, 0.449, 0.445, 0.434, 0.430, 0.430, 0.422, 0.410~
## $ wOBA_CON <dbl> 0.555, 0.529, 0.541, 0.543, 0.617, 0.495, 0.481, 0.494, 0.459~

You can also generate these wOBA-based stats, as well as FIP, for pitchers using the fip_plus() function:

bref_daily_pitcher("2015-04-05", "2015-04-30") %>% 
  fip_plus() %>% 
  dplyr::select(season, Name, IP, ERA, SO, uBB, HBP, HR, FIP, wOBA_against, wOBA_CON_against) %>%
  dplyr::arrange(dplyr::desc(IP)) %>% 
  head(10)
##    season            Name   IP  ERA SO uBB HBP HR  FIP wOBA_against
## 1    2015    Johnny Cueto 37.0 1.95 38   4   2  3 2.62        0.210
## 2    2015  Dallas Keuchel 37.0 0.73 22  11   0  0 2.84        0.169
## 3    2015      Sonny Gray 36.1 1.98 25   6   1  1 2.69        0.218
## 4    2015      Mike Leake 35.2 3.03 25   7   0  5 4.16        0.240
## 5    2015 Felix Hernandez 34.2 1.82 36   6   3  1 2.20        0.225
## 6    2015    Corey Kluber 34.0 4.24 36   5   2  2 2.40        0.295
## 7    2015   Jake Odorizzi 33.2 2.41 26   8   1  0 2.38        0.213
## 8    2015 Josh Collmenter 32.2 2.76 16   3   0  1 2.82        0.290
## 9    2015   Bartolo Colon 32.2 3.31 25   1   0  4 3.29        0.280
## 10   2015    Zack Greinke 32.2 1.93 27   7   1  2 3.01        0.240
##    wOBA_CON_against
## 1             0.276
## 2             0.151
## 3             0.239
## 4             0.281
## 5             0.272
## 6             0.391
## 7             0.228
## 8             0.330
## 9             0.357
## 10            0.274

Issues

Please leave any suggestions or bugs in the Issues section.

Pull Requests

Pull request are welcome, but I cannot guarantee that they will be accepted or accepted quickly. Please make all pull requests to the development branch for review.

Breaking Changes

Full News on Releases

Follow the SportsDataverse on Twitter and star this repo

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Our Authors

Our Contributors (they’re awesome)

Citations

To cite the baseballr R package in publications, use:

BibTex Citation

@misc{petti_gilani_2021,
  author = {Bill Petti and Saiem Gilani},
  title = {baseballr: The SportsDataverse's R Package for Baseball Data.},
  url = {https://billpetti.github.io/baseballr/},
  year = {2021}
}

baseballr's People

Contributors

afeierman avatar apapanico avatar bdilday avatar beanumber avatar begavett avatar billpetti avatar christianh00k avatar darh78 avatar jonathan-inwt avatar keberwein avatar lawwu avatar mmcgowan13 avatar robert-frey avatar saiemgilani avatar sboysel avatar shanepiesik avatar travisrpetersen avatar

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