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.

This is my first post so I'm not sure if I've done this correctly. I'd like to add a second xyplot to plot1 so that it represents the same data as the bubble plot (Percent~Distance and grouped by Forest_type), but without the size of the bubble based on dat$Pixels. IE: a dot within the bubble. All dots should be black and very small. I tried as.layer with LatticeExtra, but couldn't get it to work with my limited panel and function experience. I obtained this original code from someone much more experienced and have only been able to modify it slightly. Thanks for any suggestions.

library(lattice)

mykey <- list(x = .7, y = .7, corner = c(0,1), text = list(lab = c("D", "C", "M")),
points = list(col = c(2,3,4), pch = 1) )

fontsize <- trellis.par.get("par.main.text")
fontsize$font <- 1
trellis.par.set("par.main.text", fontsize)
trellis.par.get()


plot1<-xyplot(Percent ~ Distance, key = mykey, cex = dat$Pixels / 15000000, 
       col = dat$Forest_type+1,
       xlab="Distance", ylab="Percent of pixels",
       data = dat, panel = function(...){
       panel.xyplot(...)
       }) 

print(plot1, position=c(0, .5, 1, 1))

Data to reproduce/use are below:

dat <- structure(list(Pixels = c(51442200L, 16201800L, 9679500L, 8954100L, 
4332600L, 4024800L, 2843100L, 2707200L, 2635200L, 1754100L, 1865700L, 
1467000L, 1575900L, 1253700L, 1061100L, 1205100L, 1045800L, 909000L, 
822600L, 732600L, 837900L, 676800L, 600300L, 538200L, 504900L, 
414000L, 316800L, 318600L, 260100L, 261900L, 214200L, 189900L, 
182700L, 178200L, 150300L, 135000L, 117000L, 103500L, 90000L, 
95400L, 68400L, 79200L, 69300L, 54900L, 72000L, 60300L, 55800L, 
41400L, 41400L, 37800L, 24300L, 25200L, 32400L, 36000L, 28800L, 
19800L, 18900L, 16200L, 16200L, 60586200L, 25074900L, 18993600L, 
21714300L, 13090500L, 13913100L, 10777500L, 11007900L, 11732400L, 
8385300L, 9188100L, 7379100L, 8556300L, 7248600L, 6276600L, 7616700L, 
6766200L, 6323400L, 5963400L, 5404500L, 6618600L, 5781600L, 5630400L, 
5091300L, 5515200L, 4810500L, 4392900L, 4674600L, 4113900L, 4517100L, 
3974400L, 3650400L, 3759300L, 3761100L, 3456000L, 3180600L, 2963700L, 
2999700L, 2619000L, 2723400L, 2321100L, 2286000L, 2167200L, 1925100L, 
1906200L, 1649700L, 1658700L, 1561500L, 1567800L, 1494900L, 1378800L, 
1384200L, 1219500L, 1257300L, 1220400L, 1098000L, 1133100L, 959400L, 
1044900L, 3713400L, 1295100L, 827100L, 892800L, 549000L, 561600L, 
440100L, 432900L, 461700L, 319500L, 344700L, 248400L, 277200L, 
221400L, 185400L, 227700L, 222300L, 206100L, 189900L, 177300L, 
209700L, 189900L, 170100L, 156600L, 170100L, 163800L, 153900L, 
169200L, 148500L, 185400L, 162000L, 165600L, 176400L, 149400L, 
128700L, 111600L, 99000L, 83700L, 60300L, 48600L, 32400L, 27000L, 
12600L, 6300L, 5400L, 8100L, 9000L, 11700L, 15300L, 16200L, 11700L, 
10800L, 6300L, 5400L, 6300L, 9900L, 14400L, 15300L, 15300L), 
    Forest_type = c(1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 
    1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 
    1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 
    1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 
    1L, 1L, 1L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 
    2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 
    2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 
    2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 
    2L, 2L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 
    3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 
    3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 
    3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 
    3L), Distance = c(30L, 60L, 90L, 120L, 150L, 180L, 210L, 
    240L, 270L, 300L, 330L, 360L, 390L, 420L, 450L, 480L, 510L, 
    540L, 570L, 600L, 630L, 660L, 690L, 720L, 750L, 780L, 810L, 
    840L, 870L, 900L, 930L, 960L, 990L, 1020L, 1050L, 1080L, 
    1110L, 1140L, 1170L, 1200L, 1230L, 1260L, 1290L, 1320L, 1350L, 
    1380L, 1410L, 1440L, 1470L, 1500L, 1530L, 1560L, 1590L, 1620L, 
    1650L, 1680L, 1710L, 1740L, 1770L, 30L, 60L, 90L, 120L, 150L, 
    180L, 210L, 240L, 270L, 300L, 330L, 360L, 390L, 420L, 450L, 
    480L, 510L, 540L, 570L, 600L, 630L, 660L, 690L, 720L, 750L, 
    780L, 810L, 840L, 870L, 900L, 930L, 960L, 990L, 1020L, 1050L, 
    1080L, 1110L, 1140L, 1170L, 1200L, 1230L, 1260L, 1290L, 1320L, 
    1350L, 1380L, 1410L, 1440L, 1470L, 1500L, 1530L, 1560L, 1590L, 
    1620L, 1650L, 1680L, 1710L, 1740L, 1770L, 30L, 60L, 90L, 
    120L, 150L, 180L, 210L, 240L, 270L, 300L, 330L, 360L, 390L, 
    420L, 450L, 480L, 510L, 540L, 570L, 600L, 630L, 660L, 690L, 
    720L, 750L, 780L, 810L, 840L, 870L, 900L, 930L, 960L, 990L, 
    1020L, 1050L, 1080L, 1110L, 1140L, 1170L, 1200L, 1230L, 1260L, 
    1290L, 1320L, 1350L, 1380L, 1410L, 1440L, 1470L, 1500L, 1530L, 
    1560L, 1590L, 1620L, 1650L, 1680L, 1710L, 1740L, 1770L), 
    Percent = c(44.44565403, 38.05758742, 32.81164195, 28.37059427, 
    24.10736642, 21.75626368, 20.22018818, 19.13486005, 17.77022516, 
    16.77136219, 16.36794315, 16.1306284, 15.13920111, 14.37119571, 
    14.10455796, 13.31675783, 13.01669094, 12.22020569, 11.79202684, 
    11.60205245, 10.92979573, 10.18004603, 9.378515186, 9.301602115, 
    8.156440826, 7.683313847, 6.51369356, 6.171548117, 5.751243781, 
    5.275562001, 4.923458833, 4.740507751, 4.436188811, 4.358353511, 
    4.024096386, 3.93907563, 3.679592414, 3.24767015, 3.249918752, 
    3.327055869, 2.824228911, 3.31075997, 3.081232493, 2.763932941, 
    3.629764065, 3.509690938, 3.237597911, 2.564102564, 2.548476454, 
    2.440441604, 1.717557252, 1.774397972, 2.575107296, 2.772002772, 
    2.29390681, 1.755786113, 1.62037037, 1.634877384, 1.505016722, 
    52.34599773, 58.90025792, 64.38464824, 68.80061595, 72.83789874, 
    75.20797859, 76.64981118, 77.80534351, 79.11634399, 80.17382325, 
    80.60797473, 81.13805047, 82.1978212, 83.09089033, 83.43103242, 
    84.16708105, 84.21642209, 85.00907441, 85.48574377, 85.59007982, 
    86.33482038, 86.96358468, 87.9640045, 87.99191165, 89.09566735, 
    89.27676633, 90.32198372, 90.55090656, 90.96517413, 90.98984772, 
    91.35291684, 91.12558976, 91.28059441, 91.98767334, 92.53012048, 
    92.80462185, 93.20690631, 94.12595312, 94.57263568, 94.97802888, 
    95.83797845, 95.56057186, 96.35854342, 96.91889443, 96.09800363, 
    96.01885804, 96.24020888, 96.71125975, 96.50969529, 96.51365485, 
    97.45547074, 97.46514575, 96.9241774, 96.81219681, 97.20430108, 
    97.36632083, 97.14506173, 96.82107175, 97.0735786, 3.208348237, 
    3.042154666, 2.803709805, 2.82878978, 3.054734839, 3.035757723, 
    3.13000064, 3.059796438, 3.113430843, 3.05481456, 3.024082116, 
    2.731321128, 2.662977693, 2.537913959, 2.464409618, 2.516161114, 
    2.766886972, 2.770719903, 2.72222939, 2.807867731, 2.735383893, 
    2.856369297, 2.657480315, 2.706486234, 2.747891829, 3.039919826, 
    3.164322724, 3.277545328, 3.28358209, 3.734590283, 3.723624328, 
    4.133902494, 4.283216783, 3.653973145, 3.445783133, 3.256302521, 
    3.113501274, 2.62637673, 2.177445564, 1.694915254, 1.337792642, 
    1.128668172, 0.56022409, 0.317172633, 0.272232305, 0.471451021, 
    0.522193211, 0.724637681, 0.941828255, 1.045903544, 0.82697201, 
    0.760456274, 0.500715308, 0.415800416, 0.501792115, 0.877893057, 
    1.234567901, 1.544050863, 1.421404682), div2erroftot = c(4.966434556, 
    1.564186201, 0.934497422, 0.864464421, 0.418286433, 0.388570197, 
    0.27448418, 0.261363854, 0.254412687, 0.169347789, 0.180122097, 
    0.141630014, 0.152143653, 0.121037184, 0.102442814, 0.116345146, 
    0.100965691, 0.087758475, 0.079417075, 0.070728117, 0.080894198, 
    0.065340963, 0.057955349, 0.051959968, 0.048745054, 0.039969206, 
    0.030585132, 0.030758911, 0.025111088, 0.025284867, 0.02067972, 
    0.018333701, 0.017638585, 0.017204137, 0.01451056, 0.013033437, 
    0.011295645, 0.009992302, 0.008688958, 0.009210295, 0.006603608, 
    0.007646283, 0.006690498, 0.005300264, 0.006951166, 0.005821602, 
    0.005387154, 0.003996921, 0.003996921, 0.003649362, 0.002346019, 
    0.002432908, 0.003128025, 0.003475583, 0.002780467, 0.001911571, 
    0.001824681, 0.001564012, 0.001564012, 5.849232678, 2.42083056, 
    1.833717675, 2.096384872, 1.263808926, 1.343226002, 1.040502708, 
    1.062746441, 1.132692552, 0.809550207, 0.887055712, 0.712407658, 
    0.826059227, 0.699808669, 0.605967924, 0.735346507, 0.653235855, 
    0.610486182, 0.57573035, 0.521771922, 0.638985964, 0.558178655, 
    0.543581206, 0.491534348, 0.53245934, 0.4644248, 0.424108035, 
    0.451304473, 0.397172266, 0.436098797, 0.383704381, 0.352424132, 
    0.362937771, 0.363111551, 0.333655983, 0.307067772, 0.286127384, 
    0.289602967, 0.252848675, 0.262927866, 0.224088224, 0.220699531, 
    0.209230106, 0.185856809, 0.184032128, 0.159268598, 0.160137494, 
    0.15075342, 0.151361647, 0.144323591, 0.133114835, 0.133636172, 
    0.11773538, 0.121384742, 0.117822269, 0.106005286, 0.10939398, 
    0.092624291, 0.100878801, 0.358506403, 0.125034104, 0.079851523, 
    0.086194462, 0.053002643, 0.054219097, 0.042489004, 0.041793887, 
    0.044574354, 0.030845801, 0.033278709, 0.023981524, 0.02676199, 
    0.021374836, 0.017899253, 0.021983063, 0.021461726, 0.019897714, 
    0.018333701, 0.017117247, 0.020245272, 0.018333701, 0.01642213, 
    0.015118787, 0.01642213, 0.015813903, 0.014858118, 0.016335241, 
    0.014336781, 0.017899253, 0.015640124, 0.015987683, 0.017030357, 
    0.01442367, 0.01242521, 0.010774308, 0.009557854, 0.008080731, 
    0.005821602, 0.004692037, 0.003128025, 0.002606687, 0.001216454, 
    0.000608227, 0.000521337, 0.000782006, 0.000868896, 0.001129565, 
    0.001477123, 0.001564012, 0.001129565, 0.001042675, 0.000608227, 
    0.000521337, 0.000608227, 0.000955785, 0.001390233, 0.001477123, 
    0.001477123)), .Names = c("Pixels", "Forest_type", "Distance", 
"Percent", "div2erroftot"), class = "data.frame", row.names = c(NA, 
-177L))
share|improve this question

1 Answer 1

up vote 1 down vote accepted

If I understand you correctly, this is simple enough that it can be handled with a slightly modified panel function.

The panel function below first runs panel.xyplot(x,y,...) to get the plot you already have, and then adds small black points to it using the function lpoints(), which is just lattice's grid-based version of the base graphics function points().

Try this:

plot1<-xyplot(Percent ~ Distance, key = mykey, cex = dat$Pixels / 15000000, 
       col = dat$Forest_type+1,
       xlab="Distance", ylab="Percent of pixels",
       data = dat, 
       panel = function(x,y,...){
           panel.xyplot(x,y,...)
           lpoints(x, y, col="black", pch=16, cex=0.01)
      }) 

print(plot1, position=c(0, .5, 1, 1))

enter image description here

share|improve this answer
    
Tadaa. Perfect thank you. –  freya May 14 '13 at 21:09
    
@freya -- Good. Great first question, by the way -- clear description of what you wanted, and a perfectly reproducible example to boot! –  Josh O'Brien May 14 '13 at 21:10
    
-Thank you. That was super fast. I think I'm hooked. –  freya May 14 '13 at 21:21

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.