6

Related to these:

  1. getting this error in Caret
  2. https://github.com/topepo/caret/issues/160

I'm getting this error:

Something is wrong; all the Accuracy metric values are missing:
    Accuracy       Kappa    
 Min.   : NA   Min.   : NA  
 1st Qu.: NA   1st Qu.: NA  
 Median : NA   Median : NA  
 Mean   :NaN   Mean   :NaN  
 3rd Qu.: NA   3rd Qu.: NA  
 Max.   : NA   Max.   : NA  
 NA's   :5     NA's   :5    
Error in train.default(x, y, weights = w, ...) : Stopping
In addition: Warning message:
In nominalTrainWorkflow(x = x, y = y, wts = weights, info = trainInfo,  :
  There were missing values in resampled performance measures.

The first link suggests that the levels of the response variable cannot be 0 and 1. This is not the case in my data:

R> str(test$y)
 Factor w/ 2 levels "No","Yes": 1 1 1 1 1 1 1 1 1 1 ...
R> levels(test$y)
[1] "No"  "Yes"

So, I'm not sure what's going on.

Ex. Data

test <- structure(list(y = structure(c(2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 
2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 1L, 1L, 1L, 1L, 
1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L
), .Label = c("No", "Yes"), class = "factor"), x1 = structure(c(6L, 
40L, 26L, 7L, 18L, 9L, 26L, 36L, 23L, 16L, 6L, 20L, 23L, 26L, 
41L, 20L, 31L, 7L, 2L, 2L, 18L, 2L, 12L, 9L, 40L, 40L, 14L, 8L, 
2L, 20L, 15L, 12L, 8L, 17L, 17L, 21L, 18L, 32L, 2L, 2L), .Label = c("Accommodation and Restaurant Services", 
"Admin/Support Services", "Agriculture", "Arts, Entertainment, and Rec.", 
"Construction: Heavy and Civil Engineering", "Construction: of Buildings", 
"Construction: Specialty Trade Contractors", "EDU Services", 
"Finance / Insurance", "Fishing, Hunting, Trapping", "Forestry & Logging", 
"Health Care and Social Assistance", "Information", "Management of Companies and Enterprises", 
"Manufacturing: Food/Bev/Textile", "Manufacturing: Metals/Machinery/Computers/Appliances", 
"Manufacturing: Wood/Paper/Chemical/Mineral", "Merchandise Trade", 
"Mining, Quarrying, and Oil and Gas Extraction", "Other Services (Blue Collar)", 
"Prof./Sci./Tech: Acct / Tax", "Prof./Sci./Tech: Advertising / Media", 
"Prof./Sci./Tech: Architecture / Eng.", "Prof./Sci./Tech: Computer Design", 
"Prof./Sci./Tech: Law", "Prof./Sci./Tech: Mgmt Consulting", "Prof./Sci./Tech: Other", 
"Prof./Sci./Tech: R&D", "Prof./Sci./Tech: Specialized Design", 
"Public Admin.", "Real Estate", "Retail Trade", "Support Agriculture", 
"Transportation", "Unknown", "Utilities", "Warehousing", "Waste Management & Remediation Services", 
"Wholesale Trade: Brokers", "Wholesale Trade: Durable Goods", 
"Wholesale Trade: NonDurable Goods"), class = "factor"), x2 = structure(c(36L, 
11L, 35L, 46L, 5L, 10L, 37L, 41L, 11L, 5L, 5L, 10L, 20L, 10L, 
5L, 5L, 45L, 20L, 11L, 10L, 18L, 35L, 5L, 6L, 41L, 5L, 44L, 36L, 
39L, 10L, 44L, 8L, 34L, 15L, 39L, 10L, 18L, 19L, 35L, 11L), .Label = c("AK", 
"AL", "AR", "AZ", "CA", "CO", "CT", "DC", "DE", "FL", "GA", "HI", 
"IA", "ID", "IL", "IN", "KS", "KY", "LA", "MA", "MD", "ME", "MI", 
"MN", "MO", "MS", "MT", "NC", "ND", "NE", "NH", "NJ", "NM", "NV", 
"NY", "OH", "OK", "OR", "PA", "RI", "SC", "SD", "TN", "TX", "UT", 
"VA", "VT", "WA", "WI", "WV", "WY"), class = "factor"), x3 = c(0.004714, 
0, 0.015551, 0.360246999999988, 5e-04, 0.035714, 0.357143, 0.00591043019290109, 
0.138889, 0.028846, 0.0075, 0.00051, 0.006329, 0.065789, 0.1125, 
0.003125, 0.003889, 0.000391, 0.011905, 0.004, 0, 0.00025, 0.005, 
0.076923, 0.149254, 0.0220719438793245, 0.360246999999988, 0.057692, 
0, 0.015625, 0.000714, 0, 0.001087, 0.006135, 0.003846, 0.066667, 
0.009091, 0, 0.360246999999988, 0.012821), x4 = c(3.69626899674553, 
0, 4.34824643385123, 4.22834902062364, 2.94001815500766, 3.27207378750001, 
4.61543448110941, 4.56919828334781, 4.32498170308737, 3.73719264270474, 
3.87511916546257, 1.70757017609794, 3.76499759928488, 3.7635028654676, 
4.15094055396548, 3.43949059038968, 3.70423633730879, 3.18864729599972, 
2.85186960072977, 2.37291200297011, 0, 2.69983772586725, 3.23829706787539, 
3.17695898058691, 4.32314893008404, 0, 4.64518638929519, 3.17405980772503, 
0, 2.5092025223311, 2.47856649559384, 0, 2.06818586174616, 4.08439751914115, 
3.50906804501716, 3.02160271602824, 2.71349054309394, 0, 4.6020708485543, 
2.79657433321043), x5 = c(472, 502, 506, 510, 497, 493, 515, 
542, 557, 465, 480, 369.618950156498, 518, 571, 512, 520, 464, 
578, 500, 526, 489.830047438596, 345, 664.964755505884, 546, 
505, 572, 540, 567, 473, 575, 558, 509.58218597766, 579, 616, 
561, 581, 291, 415.846613389669, 476, 442), x6 = c(374, 482, 
491, 540, 534, 493, 514, 570, 577, 485, 488, 627, 542, 529, 445, 
531, 456, 535, 381, 586, 474.392596434054, 484, 487.854513298151, 
518, 524, 582, 530, 571, 582.582737417662, 572, 592, 477, 585, 
594, 574, 609, 389, 581.722630168064, 550, 458), x7 = c(5.8e-05, 
0, 0.015551, 0.01, 0, 0, 0.0683816249999983, -0.00050051658067362, 
0.068194, 0.056615, 0, 0, 0.001097, 0, 0.0683816249999983, 0, 
0.002361, 0.000781, 0.021667, 0, 0, 0, 0, 0.001154, 0.001, -0.000657947357427473, 
0, 0, 0, 0, 0, 0, 0, 0.001479, 0.001269, 0.005333, 0.000455, 
0, 0, 0), x8 = c(14, 13, 53, 24, 8, 13, 13, 20, 17, 35, 19, 11, 
42, 15, 33, 1, 20, 6, 24, 3, 14, 3, 3, 17, 42, 8, 4, 0, 5, 4, 
10, 5, 8, 41, 31, 6, 2, 18, 7, 7), x9 = c(18, 2, 49, 19, 14, 
8, 7, 6, 7, 21, 19, 1, 34, 2, 24, 3, 30, 5, 3, 12, 9, 4, 2, 9, 
59, 15, 7, 0, 20, 1, 6, 13, 1, 64, 34, 18, 12, 0, 0, 6), x10 = c(48, 
68.8884165199473, 63, 54, 78, 80, 77.3502747403963, 74, 79, 71, 
76.7682937433346, 65.0624751538981, 63, 80, 41, 81.4257054732527, 
67, 78, 80, 73, 52.5390991618267, 60.8813703575155, 66, 72, 64, 
61.266324949851, 43.2207804060158, 80, 61.708917114202, 80, 75, 
73.3412226739437, 80, 78, 57, 78, 23, 30.321279640657, 69.1391208799255, 
60.9766796474371), x11 = c(4.62, 0.81, 1.98, 1.51, 1.51, 1.2, 
0.74, 1.2, 4.04, 2.06, 1.43, 1.51, 4.16, 0.81, 0.81, 1.82, 2.1, 
0.89, 0.73, 0.97, 20.49, 1.51, 1.51, 4.09, 1.33, 0.89, 1.59, 
1.43, 4.54, 1.51, 1.2, 1.04, 1.59, 2.57, 4.4, 1.28, 0.89, 17.94, 
1.29, 1.59), x12 = c(-3, -44.4574826440087, 1, 5, 2, 2, 39.0861520260711, 
14, 0, -6, 40.5638314058397, 22.0124501206663, 3, 12, 27, 7.55072978911628, 
5, -1, -12, 0, 14.5217398963732, -2.06782290930381, -13, 4, 1, 
39.251983622172, 0, 0, 33.2355632837177, 0, 6, 20.3416928763606, 
40.7136165846826, -2, 7, 0, 9, 0.622995283657772, -6.64967287401836, 
-3.6632790085156)), .Names = c("y", "x1", "x2", "x3", "x4", "x5", 
"x6", "x7", "x8", "x9", "x10", "x11", "x12"), row.names = c(59110L, 
266133L, 110275L, 271642L, 54361L, 54818L, 59197L, 94902L, 80531L, 
291L, 51460L, 228662L, 174960L, 27500L, 105584L, 132839L, 233895L, 
194802L, 123435L, 165332L, 318615L, 133731L, 256878L, 99780L, 
31551L, 106032L, 280841L, 130066L, 136252L, 29868L, 282962L, 
55762L, 312670L, 152593L, 50020L, 220877L, 13104L, 20888L, 319386L, 
229603L), class = "data.frame")

Code (updated):

Based on comments both here and on github/caret, I have updated the code. The non-parallel forest now works, but the parallel forests do not.

test$x7 <- NULL # remove low variance "dummy" variable 
                # based on comments on github (link above).

library(caret)
library(randomForest)
library(party) # conditional RF
library(kernlab)
library(parallel)
library(doParallel)

t_control <- trainControl(method= "repeatedcv", number= 10,
                          repeats= 1)
mtry_def <- floor(sqrt(ncol(test)))
t_grid <- expand.grid(mtry= c(mtry_def/2, mtry_def, 2 * mtry_def))


set.seed(14387)
## works without parallel (after removing options per @topepo):
rf1 <- train(y ~ ., data= test,
             method= "cforest", trControl= t_control,
             tuneGrid= t_grid) # remove verbose, importance, proximity

## doesn't work with parallel:
cl <- makeCluster(detectCores() - 1)
registerDoParallel(cl)
rf1 <- train(y ~ ., data= test,
             method= "cforest", trControl= t_control,
             tuneGrid= t_grid, allowParallel= TRUE) # same errors as prior to edit
rf2 <- train(y ~ ., data= test,
             method= "parRF", trControl= t_control, verbose= FALSE,
             tuneGrid= t_grid, allowParallel= TRUE, proximity= FALSE,
             importance= TRUE) # same errors as prior to edit

# moving from method= "parRF" --> method= "rf" does work:
rf3 <- train(y ~ ., data= test,
             method= "rf", trControl= t_control, verbose= FALSE,
             tuneGrid= t_grid, allowParallel= TRUE, proximity= FALSE,
             importance= TRUE)

stopCluster(cl) 

# defaults (ie-- outside caret) work
rf3a <- randomForest(y ~ ., data= test, mtry= 3, importance=TRUE)
rf3b <- cforest(y ~ ., data= test, controls= cforest_control(mtry= 3))

Sessioninfo:

# updated sessionInfo() -- AM running on a different computer
R version 3.2.2 (2015-08-14)
Platform: x86_64-w64-mingw32/x64 (64-bit)
Running under: Windows 7 x64 (build 7601) Service Pack 1

locale:
[1] LC_COLLATE=English_United States.1252  LC_CTYPE=English_United States.1252    LC_MONETARY=English_United States.1252
[4] LC_NUMERIC=C                           LC_TIME=English_United States.1252    

attached base packages:
 [1] stats4    grid      parallel  stats     graphics  grDevices utils     datasets  methods   base     

other attached packages:
 [1] kernlab_0.9-22      party_1.0-23        strucchange_1.5-1   sandwich_2.3-4      zoo_1.7-12          modeltools_0.2-21  
 [7] mvtnorm_1.0-3       randomForest_4.6-10 caret_6.0-52        ggplot2_1.0.1       lattice_0.20-33     doParallel_1.0.8   
[13] iterators_1.0.7     foreach_1.4.2      

loaded via a namespace (and not attached):
 [1] Rcpp_0.12.1         compiler_3.2.2      nloptr_1.0.4        plyr_1.8.3          class_7.3-13        tools_3.2.2        
 [7] digest_0.6.8        lme4_1.1-9          nlme_3.1-122        gtable_0.1.2        mgcv_1.8-7          Matrix_1.2-2       
[13] brglm_0.5-9         SparseM_1.7         coin_1.1-0          proto_0.3-10        e1071_1.6-7         BradleyTerry2_1.0-6
[19] stringr_1.0.0       gtools_3.5.0        MatrixModels_0.4-1  nnet_7.3-11         survival_2.38-3     multcomp_1.4-1     
[25] TH.data_1.0-6       minqa_1.2.4         reshape2_1.4.1      car_2.1-0           magrittr_1.5        scales_0.3.0       
[31] codetools_0.2-14    MASS_7.3-43         splines_3.2.2       pbkrtest_0.4-2      colorspace_1.2-6    quantreg_5.19      
[37] stringi_0.5-5       munsell_0.4.2


#### original sessionInfo()
R> sessionInfo()
R version 3.2.2 (2015-08-14)
Platform: x86_64-w64-mingw32/x64 (64-bit)
Running under: Windows 7 x64 (build 7601) Service Pack 1

locale:
[1] LC_COLLATE=English_United States.1252  LC_CTYPE=English_United States.1252    LC_MONETARY=English_United States.1252
[4] LC_NUMERIC=C                           LC_TIME=English_United States.1252    

attached base packages:
 [1] parallel  stats4    grid      stats     graphics  grDevices utils     datasets  methods   base     

other attached packages:
 [1] doParallel_1.0.8    iterators_1.0.7     foreach_1.4.2       kernlab_0.9-22      party_1.0-23        strucchange_1.5-1  
 [7] sandwich_2.3-3      zoo_1.7-12          modeltools_0.2-21   mvtnorm_1.0-3       randomForest_4.6-10 caret_6.0-52       
[13] ggplot2_1.0.1       lattice_0.20-33    

loaded via a namespace (and not attached):
 [1] Rcpp_0.12.1         compiler_3.2.2      nloptr_1.0.4        plyr_1.8.3          class_7.3-13        tools_3.2.2        
 [7] digest_0.6.8        lme4_1.1-9          gtable_0.1.2        nlme_3.1-121        mgcv_1.8-7          Matrix_1.2-2       
[13] SparseM_1.7         brglm_0.5-9         coin_1.1-0          proto_0.3-10        e1071_1.6-7         BradleyTerry2_1.0-6
[19] stringr_1.0.0       MatrixModels_0.4-1  gtools_3.5.0        nnet_7.3-10         survival_2.38-3     multcomp_1.4-1     
[25] TH.data_1.0-6       minqa_1.2.4         car_2.1-0           reshape2_1.4.1      magrittr_1.5        scales_0.3.0       
[31] codetools_0.2-14    splines_3.2.2       MASS_7.3-43         pbkrtest_0.4-2      colorspace_1.2-6    quantreg_5.19      
[37] stringi_0.5-5       munsell_0.4.2      

Any help would be greatly appreciated, thanks!!

  • Interestingly, if you change "cforest" or "parRF" to "rf" it works in parallel. Btw your error is slightly different then issue 160. Your error is related to missing values in the resampled performance measures. Also I tested the "cforest" without running it in parallel and then it works. It looks like the parallel option causes some conflict with the building of the resampled performance measures. – phiver Oct 13 '15 at 7:19
  • @phiver Thanks! Yes, I realize that my error is different than #160. It's just the same error message. – Alex W Oct 13 '15 at 15:26
  • I have updated the post to include comments here and by @topepo below.... still getting errors – Alex W Oct 13 '15 at 15:38
  • Also, this (not in parallel) is working / currently running and taking forever on my full dataset: cforest_out <- rforest_out <- list() for (i in 1:nrow(t_grid)) { cforest_out[[i]] <- cforest(convert_to_paid ~ ., data= train_dat[,-3], controls= cforest_control(mtry= t_grid[i,1])) rforest_out[[i]] <- randomForest(convert_to_paid ~ ., data= train_dat[,-3], mtry= t_grid[i,1], importance= TRUE, proximity= FALSE) } – Alex W Oct 13 '15 at 15:41
7

When I run the first cforest model, I can see that "In addition: There were 31 warnings (use warnings() to see them)". These say that

unused arguments (verbose = FALSE, proximity = FALSE, importance = TRUE)

These are arguments to the randomForest function and not cforest. Removing them removes the errors.

Update for the update:

This looks like confusion over the ... and where allowParallel can be invoked. When running the code for rf1, I get these warnings:

unused argument (allowParallel = TRUE)

Looking at ?train and ?cforest, neither has that argument; it is in trainControl.

Here is the confusing part: running rf3 with allowParallel as an argument to train does not generate an error. This is because cforest does not have the ellipses and randomForest does:

> names(formals(cforest))
[1] "formula"  "data"     "subset"   "weights"  "controls" "xtrafo"  
[7] "ytrafo"   "scores"   
> names(formals(randomForest:::randomForest.default))
 [1] "x"           "y"           "xtest"       "ytest"      
 [5] "ntree"       "mtry"        "replace"     "classwt"    
 [9] "cutoff"      "strata"      "sampsize"    "nodesize"   
[13] "maxnodes"    "importance"  "localImp"    "nPerm"      
[17] "proximity"   "oob.prox"    "norm.votes"  "do.trace"   
[21] "keep.forest" "corr.bias"   "keep.inbag"  "..."       

So, for rf1 there is no "bottomless pit" to send the inappropriate argument (allowParallel) but for rf3 there is a sequence of ... arguments and none of the functions ever have a terminal test to see if allowParallel is an inappropriate argument.

tl;dr

Pass allowParallel to trainControl and not train.

Max

| improve this answer | |
  • 1
    I cannot reproduce this. I still get the same errors. I have updated my post. – Alex W Oct 13 '15 at 15:28
  • Thanks! This works... method= "parRF" is still problematic, but I still get parallel runs with method="rf"... now I am wondering if I should stop my runs w/o caret and parallel to make use of all 8 cores that I have.. hmm – Alex W Oct 13 '15 at 18:22
  • In what way is it problematic? Also, consider that using parRF has the potential to square the number of processes that you create (train does things in parallel and in each worker, parRF does more in parallel). I think that using the sequential random forest in parallel (instead of using parRF) is more efficient since there is a lot less I/O and worker startups but I don't have a lot of data on that so far. That was the idea behind the allowParallel so that you can enable/disable it at different levels in the call stack. – topepo Oct 13 '15 at 19:38
  • as in the call to rf2 <- ... (above) still gives me an error but the call to rf3 <- ... doesn't. – Alex W Oct 13 '15 at 20:59
  • ... I'm still learning the caret syntax. Your logic on I/O overhead makes sense, though I'm not sure what you mean by the implied advantage to enabling/disabling allowParallel at different levels of the call stack. IE-- I'm having a hard time imagining when I'd want to not run an embarrassingly parallel problem (ie bootstrapping) in parallel. But perhaps there are use-cases. – Alex W Oct 13 '15 at 21:00
1

This issue can be cause from multiple scenario, one the common is use allowParallel parameter at wrong place. allowParallel parameter should be inside the trainControl function which itself a parameter of train function. Check out the trainControl function docs: https://www.rdocumentation.org/packages/caret/versions/6.0-78/topics/trainControl

| improve this answer | |
  • This was the issue for me, I accidentally put preProcess in trainControl instead of train. Thanks! – Daniel Freeman May 27 at 20:46

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