# Read in data
baseball = read.csv("baseball.csv")
str(baseball)
## 'data.frame':    1232 obs. of  15 variables:
##  $ Team        : chr  "ARI" "ATL" "BAL" "BOS" ...
##  $ League      : chr  "NL" "NL" "AL" "AL" ...
##  $ Year        : int  2012 2012 2012 2012 2012 2012 2012 2012 2012 2012 ...
##  $ RS          : int  734 700 712 734 613 748 669 667 758 726 ...
##  $ RA          : int  688 600 705 806 759 676 588 845 890 670 ...
##  $ W           : int  81 94 93 69 61 85 97 68 64 88 ...
##  $ OBP         : num  0.328 0.32 0.311 0.315 0.302 0.318 0.315 0.324 0.33 0.335 ...
##  $ SLG         : num  0.418 0.389 0.417 0.415 0.378 0.422 0.411 0.381 0.436 0.422 ...
##  $ BA          : num  0.259 0.247 0.247 0.26 0.24 0.255 0.251 0.251 0.274 0.268 ...
##  $ Playoffs    : int  0 1 1 0 0 0 1 0 0 1 ...
##  $ RankSeason  : int  NA 4 5 NA NA NA 2 NA NA 6 ...
##  $ RankPlayoffs: int  NA 5 4 NA NA NA 4 NA NA 2 ...
##  $ G           : int  162 162 162 162 162 162 162 162 162 162 ...
##  $ OOBP        : num  0.317 0.306 0.315 0.331 0.335 0.319 0.305 0.336 0.357 0.314 ...
##  $ OSLG        : num  0.415 0.378 0.403 0.428 0.424 0.405 0.39 0.43 0.47 0.402 ...
# Subset to only include moneyball years
moneyball = subset(baseball, Year < 2002)
str(moneyball)
## 'data.frame':    902 obs. of  15 variables:
##  $ Team        : chr  "ANA" "ARI" "ATL" "BAL" ...
##  $ League      : chr  "AL" "NL" "NL" "AL" ...
##  $ Year        : int  2001 2001 2001 2001 2001 2001 2001 2001 2001 2001 ...
##  $ RS          : int  691 818 729 687 772 777 798 735 897 923 ...
##  $ RA          : int  730 677 643 829 745 701 795 850 821 906 ...
##  $ W           : int  75 92 88 63 82 88 83 66 91 73 ...
##  $ OBP         : num  0.327 0.341 0.324 0.319 0.334 0.336 0.334 0.324 0.35 0.354 ...
##  $ SLG         : num  0.405 0.442 0.412 0.38 0.439 0.43 0.451 0.419 0.458 0.483 ...
##  $ BA          : num  0.261 0.267 0.26 0.248 0.266 0.261 0.268 0.262 0.278 0.292 ...
##  $ Playoffs    : int  0 1 1 0 0 0 0 0 1 0 ...
##  $ RankSeason  : int  NA 5 7 NA NA NA NA NA 6 NA ...
##  $ RankPlayoffs: int  NA 1 3 NA NA NA NA NA 4 NA ...
##  $ G           : int  162 162 162 162 161 162 162 162 162 162 ...
##  $ OOBP        : num  0.331 0.311 0.314 0.337 0.329 0.321 0.334 0.341 0.341 0.35 ...
##  $ OSLG        : num  0.412 0.404 0.384 0.439 0.393 0.398 0.427 0.455 0.417 0.48 ...
# Compute Run Difference
moneyball$RD = moneyball$RS - moneyball$RA
str(moneyball)
## 'data.frame':    902 obs. of  16 variables:
##  $ Team        : chr  "ANA" "ARI" "ATL" "BAL" ...
##  $ League      : chr  "AL" "NL" "NL" "AL" ...
##  $ Year        : int  2001 2001 2001 2001 2001 2001 2001 2001 2001 2001 ...
##  $ RS          : int  691 818 729 687 772 777 798 735 897 923 ...
##  $ RA          : int  730 677 643 829 745 701 795 850 821 906 ...
##  $ W           : int  75 92 88 63 82 88 83 66 91 73 ...
##  $ OBP         : num  0.327 0.341 0.324 0.319 0.334 0.336 0.334 0.324 0.35 0.354 ...
##  $ SLG         : num  0.405 0.442 0.412 0.38 0.439 0.43 0.451 0.419 0.458 0.483 ...
##  $ BA          : num  0.261 0.267 0.26 0.248 0.266 0.261 0.268 0.262 0.278 0.292 ...
##  $ Playoffs    : int  0 1 1 0 0 0 0 0 1 0 ...
##  $ RankSeason  : int  NA 5 7 NA NA NA NA NA 6 NA ...
##  $ RankPlayoffs: int  NA 1 3 NA NA NA NA NA 4 NA ...
##  $ G           : int  162 162 162 162 161 162 162 162 162 162 ...
##  $ OOBP        : num  0.331 0.311 0.314 0.337 0.329 0.321 0.334 0.341 0.341 0.35 ...
##  $ OSLG        : num  0.412 0.404 0.384 0.439 0.393 0.398 0.427 0.455 0.417 0.48 ...
##  $ RD          : int  -39 141 86 -142 27 76 3 -115 76 17 ...
# Scatterplot to check for linear relationship
plot(moneyball$RD, moneyball$W)

# Regression model to predict wins
runs_difference = 763-614
wins=80.881+0.105766*runs_difference
wins
## [1] 96.64013

** In-class activity#8

RunsReg = lm(RS ~ OBP + SLG + BA, data=moneyball)
summary(RunsReg)
## 
## Call:
## lm(formula = RS ~ OBP + SLG + BA, data = moneyball)
## 
## Residuals:
##     Min      1Q  Median      3Q     Max 
## -70.941 -17.247  -0.621  16.754  90.998 
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  -788.46      19.70 -40.029  < 2e-16 ***
## OBP          2917.42     110.47  26.410  < 2e-16 ***
## SLG          1637.93      45.99  35.612  < 2e-16 ***
## BA           -368.97     130.58  -2.826  0.00482 ** 
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## Residual standard error: 24.69 on 898 degrees of freedom
## Multiple R-squared:  0.9302, Adjusted R-squared:   0.93 
## F-statistic:  3989 on 3 and 898 DF,  p-value: < 2.2e-16

If a baseball team’s OBP is 0.361 and SLG is 0.409, how many runs do we expect the team to score? Using the linear regression model constructed during the lecture (the one that uses OBP and SLG as independent variables), find the number of runs we expect the team to score:

runs_scored =-804.63+2737.77*(0.361)+1584.91*(0.409)
runs_scored
## [1] 831.9332

If a baseball team’s opponents OBP (OOBP) is 0.267 and opponents SLG (OSLG) is 0.392, how many runs do we expect the team to allow? Using the linear regression model discussed during the lecture (the one on the last slide of the previous video), find the number of runs we expect the team to allow. r}

Runs_allowed=-837.38+2913.60*(0.267)+1514.29*(0.392)
Runs_allowed
## [1] 534.1529

we spect the team to allow between 534 and 534

# Regression model to predict runs allowed
RunsAllowedReg = lm(RA ~ OOBP + OSLG, data=moneyball)
summary(RunsAllowedReg)
## 
## Call:
## lm(formula = RA ~ OOBP + OSLG, data = moneyball)
## 
## Residuals:
##     Min      1Q  Median      3Q     Max 
## -82.397 -15.178  -0.129  17.679  60.955 
## 
## Coefficients:
##             Estimate Std. Error t value Pr(>|t|)    
## (Intercept)  -837.38      60.26 -13.897  < 2e-16 ***
## OOBP         2913.60     291.97   9.979 4.46e-16 ***
## OSLG         1514.29     175.43   8.632 2.55e-13 ***
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
## 
## Residual standard error: 25.67 on 87 degrees of freedom
##   (812 observations deleted due to missingness)
## Multiple R-squared:  0.9073, Adjusted R-squared:  0.9052 
## F-statistic: 425.8 on 2 and 87 DF,  p-value: < 2.2e-16