Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm taking my first course in multiple linear regression, so I'm still a beginner in R. We've recently learned a bit about taking slices of bivariate scatterplot data, both horizontally and vertically. What I'd like to know is how to go beyond a basic scatterplot, and take advantage of conditionally grouping data by slices to examine patterns.

As an example, I'm working with high-octane data from a bank where we're regressing employee's current salary csalary onto their beginning salary bsalary. Here's what my dataframe looks like.

  
    > str(data)
    'data.frame':   474 obs. of  10 variables:
     $ id     : num  628 630 632 633 635 637 641 649 650 652 ...
     $ bsalary: num  8400 24000 10200 8700 17400 ...
     $ gender : Factor w/ 2 levels "Male","Female": 1 1 1 1 1 1 1 1 1 1 ...
     $ time   : num  81 73 83 93 83 80 79 67 96 77 ...
     $ age    : num  28.5 40.3 31.1 31.2 41.9 ...
     $ csalary: num  16080 41400 21960 19200 28350 ...
     $ educlvl: num  16 16 15 16 19 18 15 15 15 12 ...
     $ work   : num  0.25 12.5 4.08 1.83 13 ...
     $ jobcat : Factor w/ 7 levels "Clerical","Office Trainee",..: 4 5 5 4 5 4 1 1 1 3 ...
     $ ethnic : Factor w/ 2 levels "White","Non-White": 1 1 1 1 1 1 1 1 1 1 ...
  

To explore the relationship of bsalary and csalary I created a scatterplot using some of the functionality of lattice library. I arbitrarily drew vertical lines at $5000 intervals along bsalary.

  
    library (lattice)
    # Constructing vertical "slices" of our csalary ~ bsalary data
    # First we define a vector with our slice points, in this case 
    # $5,000 bsalary increments
    bslices = seq (from = 5000, to = 30000, by = 5000)
    length (bslices)
    xyplot (csalary ~ bsalary,
        main  = "Current Bank Employee Salary as Predicted by Beginning Salary",
        xlab  = "Beginning Salary ($USD)",
        ylab  = "Current Salary ($USD)",
        panel = function(...){
            panel.abline(v = bslices, col="red", lwd=2);
            panel.xyplot(...);
        }
    )
  

The above code gets me this.

Rplot002.pdf (1 page)

Which is fantastic. But I feel like there ought to be a simple way to generate, from my data, graphs that group slice data into boxplots:

01LinReg.pdf (page 3 of 25)

Or stacked-dot scatterplots, again grouped by slice, like this:

01LinReg.pdf (page 3 of 25)

Ultimately, my question is how to turn raw scatterplot data into conditionally-grouped data. I feel like there are some simple, underlying features of lattice (or even the simpler plot commands that don't require it) that would allow me to start slicing my data to explore for patterns.

Thanks in advance for your help!

share|improve this question
    
I'm not sure what grouping buys you. Your scatter plot contains more information and is more intuitive. –  Tristan Feb 22 '10 at 6:46
    
Grouping is not always a good option, and I'm not sure that it is in this particular case, but there are situations where it is desirable. For example: If there is a good clinical reason to separate the groups. If over-ploting is obscuring the general trends. If you are interested in observing how the spread of csalary changes across bsalary (perhaps to assess heteroskedasticity). –  Ian Fellows Feb 22 '10 at 7:43
    
@Tristan - your point is well-taken. Grouping can certainly destroy information that's otherwise present in the scatterplot. @Ian - thanks for those examples! I'm generally of the opinion that destroying information for no good reason is exactly that--unwarranted at best, unhelpful at worst. –  briandk Feb 23 '10 at 18:47

4 Answers 4

up vote 2 down vote accepted

you can use the cut() function to slice your data into ordinal categories. Then ggplot2's qplot function can then very easily create your desired plots.

library(ggplot2)

#fake data
csalary <- rnorm(100,,100)
bsalary <- csalary +rnorm(100,,10)

#Regular Scatter Plot
qplot(bsalary,csalary)

#Stacked dot plot
qplot(cut(bsalary,10),csalary)

#box-plot
qplot(cut(bsalary,10),csalary,geom="boxplot")
share|improve this answer
    
@Ian - Thanks! I just tried your code, and at a glance it looks like it's producing the exact output I'd hoped. I do have two questions though. 1. The "cut" function doesn't seem to require loading ggplot2, right? 2. I'm new to lattice, and I'd never even tried ggplot2 before. What motivates people to choose those packages to graph data over R's basic plot commands? I imagine there's a slew of ggplot2 and lattice options that could overwhelm a novice like myself :-( –  briandk Feb 23 '10 at 18:57
    
@Ian - also, next time I'll try and provide some data so you don't have to make it up :-) –  briandk Feb 23 '10 at 19:09
    
For a discussion on ggplot2 versus lattice... schulte-mecklenbeck.com/?p=65 –  William Doane Feb 24 '10 at 10:54

Do you really want to do that? Turning a continuous variable into an ordinal one throws away information since different values of the X variable end up in the same bin. I think your boxplot graphic conveys much less information than your scatterplot.

If you are dissatisfied with the scatterplot because of points overlapping, one way to preserve information would be to add a smooth curve that captures the trend. Look at the documentation for lowess for an example.

In your graph the three observations with salaries higher than $20,000 are pushing the remaining observations into a corner. Dropping those and replotting would give a better graph.

Another approach for skewed data like yours is to plot the logarithms of the variables instead of the variables themselves.

share|improve this answer
    
@Jmoy - You're absolutely right (see above). For this particular regression assignment, we were actually comparing LOESS smoothing to joined-line-segments of slice means. So, I wanted to know for myself how one might do that (conditionally group data by slice), even though for a lot of cases it gives a much less desirable result than LOESS. My question was less about best practices in data analysis, and more about understanding conceptually and programmatically one might ask R to group data. –  briandk Feb 23 '10 at 18:50

Rather than slice the data by the value of the conditioning variable (turning a continuous variable into a discrete variable), it is more efficient to condition using a kernel function. There is package that does this: hdrcde. Check out the examples in the help files.

share|improve this answer
    
@Rob - thanks! I'll definitely have to check this out. I'm not familiar with kernel functions yet, but I hope to be by the end of my Multiple Regression course. –  briandk Feb 23 '10 at 19:01

This page explains it for you http://www.statmethods.net/advgraphs/trellis.html

You basically want to alter the equation for the graphs. They should be more like

csalary ~ bsalary|gender

should break the graphs apart based on different values of gender. There is a bunch of control language for continuous conditional variables.

share|improve this answer
    
@TheSteve0 - Thanks! I'm a fan of Quick-R for reference to things I can already do in SPSS, and it's been a huge help. I think my biggest challenge will be understanding and really becoming conversant in both conceptual modeling language in statistics, and R's particular modeling language for formulae. –  briandk Feb 23 '10 at 19:08

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.