Not true, Rich. > z <-factor(letters[1:3],lev=letters[3:1]) > sort(z) [1] c b a Levels: c b a
What you say is true only for the **default** sort order. (Although maybe the code author didn't realize this either) -- Bert On Mon, Dec 2, 2013 at 7:24 AM, Richard M. Heiberger <r...@temple.edu> wrote: > If days of the week is not an Ordered Factor, then it will be sorted > alphabetically. > Fr Mo Sa Su Th Tu We > > Rich > > On Mon, Dec 2, 2013 at 6:24 AM, Bill <william...@gmail.com> wrote: >> I am reading the code below. It acts on a csv file called dodgers.csv with >> the following variables. >> >> >>> print(str(dodgers)) # check the structure of the data frame >> 'data.frame': 81 obs. of 12 variables: >> $ month : Factor w/ 7 levels "APR","AUG","JUL",..: 1 1 1 1 1 1 1 1 1 >> 1 ... >> $ day : int 10 11 12 13 14 15 23 24 25 27 ... >> $ attend : int 56000 29729 28328 31601 46549 38359 26376 44014 26345 >> 44807 ... >> $ day_of_week: Factor w/ 7 levels "Friday","Monday",..: 6 7 5 1 3 4 2 6 7 >> 1 ... >> $ opponent : Factor w/ 17 levels "Angels","Astros",..: 13 13 13 11 11 11 >> 3 3 3 10 ... >> $ temp : int 67 58 57 54 57 65 60 63 64 66 ... >> $ skies : Factor w/ 2 levels "Clear ","Cloudy": 1 2 2 2 2 1 2 2 2 1 >> ... >> $ day_night : Factor w/ 2 levels "Day","Night": 1 2 2 2 2 1 2 2 2 2 ... >> $ cap : Factor w/ 2 levels "NO","YES": 1 1 1 1 1 1 1 1 1 1 ... >> $ shirt : Factor w/ 2 levels "NO","YES": 1 1 1 1 1 1 1 1 1 1 ... >> $ fireworks : Factor w/ 2 levels "NO","YES": 1 1 1 2 1 1 1 1 1 2 ... >> $ bobblehead : Factor w/ 2 levels "NO","YES": 1 1 1 1 1 1 1 1 1 1 ... >> NULL >>> >> >> I don't understand why the author of the code decided to make the factor >> days_of_week into an ordered factor. Anyone know why this should be done? >> Thank you. >> >> Here is the code: >> >> # Predictive Model for Los Angeles Dodgers Promotion and Attendance >> >> library(car) # special functions for linear regression >> library(lattice) # graphics package >> >> # read in data and create a data frame called dodgers >> dodgers <- read.csv("dodgers.csv") >> print(str(dodgers)) # check the structure of the data frame >> >> # define an ordered day-of-week variable >> # for plots and data summaries >> dodgers$ordered_day_of_week <- with(data=dodgers, >> ifelse ((day_of_week == "Monday"),1, >> ifelse ((day_of_week == "Tuesday"),2, >> ifelse ((day_of_week == "Wednesday"),3, >> ifelse ((day_of_week == "Thursday"),4, >> ifelse ((day_of_week == "Friday"),5, >> ifelse ((day_of_week == "Saturday"),6,7))))))) >> dodgers$ordered_day_of_week <- factor(dodgers$ordered_day_of_week, >> levels=1:7, >> labels=c("Mon", "Tue", "Wed", "Thur", "Fri", "Sat", "Sun")) >> >> # exploratory data analysis with standard graphics: attendance by day of >> week >> with(data=dodgers,plot(ordered_day_of_week, attend/1000, >> xlab = "Day of Week", ylab = "Attendance (thousands)", >> col = "violet", las = 1)) >> >> # when do the Dodgers use bobblehead promotions >> with(dodgers, table(bobblehead,ordered_day_of_week)) # bobbleheads on >> Tuesday >> >> # define an ordered month variable >> # for plots and data summaries >> dodgers$ordered_month <- with(data=dodgers, >> ifelse ((month == "APR"),4, >> ifelse ((month == "MAY"),5, >> ifelse ((month == "JUN"),6, >> ifelse ((month == "JUL"),7, >> ifelse ((month == "AUG"),8, >> ifelse ((month == "SEP"),9,10))))))) >> dodgers$ordered_month <- factor(dodgers$ordered_month, levels=4:10, >> labels = c("April", "May", "June", "July", "Aug", "Sept", "Oct")) >> >> # exploratory data analysis with standard R graphics: attendance by month >> with(data=dodgers,plot(ordered_month,attend/1000, xlab = "Month", >> ylab = "Attendance (thousands)", col = "light blue", las = 1)) >> >> # exploratory data analysis displaying many variables >> # looking at attendance and conditioning on day/night >> # the skies and whether or not fireworks are displayed >> library(lattice) # used for plotting >> # let us prepare a graphical summary of the dodgers data >> group.labels <- c("No Fireworks","Fireworks") >> group.symbols <- c(21,24) >> group.colors <- c("black","black") >> group.fill <- c("black","red") >> xyplot(attend/1000 ~ temp | skies + day_night, >> data = dodgers, groups = fireworks, pch = group.symbols, >> aspect = 1, cex = 1.5, col = group.colors, fill = group.fill, >> layout = c(2, 2), type = c("p","g"), >> strip=strip.custom(strip.levels=TRUE,strip.names=FALSE, style=1), >> xlab = "Temperature (Degrees Fahrenheit)", >> ylab = "Attendance (thousands)", >> key = list(space = "top", >> text = list(rev(group.labels),col = rev(group.colors)), >> points = list(pch = rev(group.symbols), col = rev(group.colors), >> fill = rev(group.fill)))) >> >> # attendance by opponent and day/night game >> group.labels <- c("Day","Night") >> group.symbols <- c(1,20) >> group.symbols.size <- c(2,2.75) >> bwplot(opponent ~ attend/1000, data = dodgers, groups = day_night, >> xlab = "Attendance (thousands)", >> panel = function(x, y, groups, subscripts, ...) >> {panel.grid(h = (length(levels(dodgers$opponent)) - 1), v = -1) >> panel.stripplot(x, y, groups = groups, subscripts = subscripts, >> cex = group.symbols.size, pch = group.symbols, col = "darkblue") >> }, >> key = list(space = "top", >> text = list(group.labels,col = "black"), >> points = list(pch = group.symbols, cex = group.symbols.size, >> col = "darkblue"))) >> >> # specify a simple model with bobblehead entered last >> my.model <- {attend ~ ordered_month + ordered_day_of_week + bobblehead} >> >> # employ a training-and-test regimen >> set.seed(1234) # set seed for repeatability of training-and-test split >> training_test <- c(rep(1,length=trunc((2/3)*nrow(dodgers))), >> rep(2,length=(nrow(dodgers) - trunc((2/3)*nrow(dodgers))))) >> dodgers$training_test <- sample(training_test) # random permutation >> dodgers$training_test <- factor(dodgers$training_test, >> levels=c(1,2), labels=c("TRAIN","TEST")) >> dodgers.train <- subset(dodgers, training_test == "TRAIN") >> print(str(dodgers.train)) # check training data frame >> dodgers.test <- subset(dodgers, training_test == "TEST") >> print(str(dodgers.test)) # check test data frame >> >> # fit the model to the training set >> train.model.fit <- lm(my.model, data = dodgers.train) >> # obtain predictions from the training set >> dodgers.train$predict_attend <- predict(train.model.fit) >> >> # evaluate the fitted model on the test set >> dodgers.test$predict_attend <- predict(train.model.fit, >> newdata = dodgers.test) >> >> # compute the proportion of response variance >> # accounted for when predicting out-of-sample >> cat("\n","Proportion of Test Set Variance Accounted for: ", >> round((with(dodgers.test,cor(attend,predict_attend)^2)), >> digits=3),"\n",sep="") >> >> # merge the training and test sets for plotting >> dodgers.plotting.frame <- rbind(dodgers.train,dodgers.test) >> >> # generate predictive modeling visual for management >> group.labels <- c("No Bobbleheads","Bobbleheads") >> group.symbols <- c(21,24) >> group.colors <- c("black","black") >> group.fill <- c("black","red") >> xyplot(predict_attend/1000 ~ attend/1000 | training_test, >> data = dodgers.plotting.frame, groups = bobblehead, cex = 2, >> pch = group.symbols, col = group.colors, fill = group.fill, >> layout = c(2, 1), xlim = c(20,65), ylim = c(20,65), >> aspect=1, type = c("p","g"), >> panel=function(x,y, ...) >> {panel.xyplot(x,y,...) >> panel.segments(25,25,60,60,col="black",cex=2) >> }, >> strip=function(...) strip.default(..., style=1), >> xlab = "Actual Attendance (thousands)", >> ylab = "Predicted Attendance (thousands)", >> key = list(space = "top", >> text = list(rev(group.labels),col = rev(group.colors)), >> points = list(pch = rev(group.symbols), >> col = rev(group.colors), >> fill = rev(group.fill)))) >> >> # use the full data set to obtain an estimate of the increase in >> # attendance due to bobbleheads, controlling for other factors >> my.model.fit <- lm(my.model, data = dodgers) # use all available data >> print(summary(my.model.fit)) >> # tests statistical significance of the bobblehead promotion >> # type I anova computes sums of squares for sequential tests >> print(anova(my.model.fit)) >> >> cat("\n","Estimated Effect of Bobblehead Promotion on Attendance: ", >> round(my.model.fit$coefficients[length(my.model.fit$coefficients)], >> digits = 0),"\n",sep="") >> >> # standard graphics provide diagnostic plots >> plot(my.model.fit) >> >> # additional model diagnostics drawn from the car package >> library(car) >> residualPlots(my.model.fit) >> marginalModelPlots(my.model.fit) >> print(outlierTest(my.model.fit)) >> >> [[alternative HTML version deleted]] >> >> ______________________________________________ >> R-help@r-project.org mailing list >> https://stat.ethz.ch/mailman/listinfo/r-help >> PLEASE do read the posting guide http://www.R-project.org/posting-guide.html >> and provide commented, minimal, self-contained, reproducible code. > > ______________________________________________ > R-help@r-project.org mailing list > https://stat.ethz.ch/mailman/listinfo/r-help > PLEASE do read the posting guide http://www.R-project.org/posting-guide.html > and provide commented, minimal, self-contained, reproducible code. -- Bert Gunter Genentech Nonclinical Biostatistics (650) 467-7374 ______________________________________________ R-help@r-project.org mailing list https://stat.ethz.ch/mailman/listinfo/r-help PLEASE do read the posting guide http://www.R-project.org/posting-guide.html and provide commented, minimal, self-contained, reproducible code.