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0

This is working now. There was a problem on the Bioconductor site earlier. Try it again.


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Thanks to @Vince, he gave me an interesting idea. ggplot2 is based on layers so I decided to try something similar in lattice with as.layer(). First I spitted my data in three groups, one per level fm1<-filter(fmeans, group=="Ave-int") fm2<-filter(fmeans, group=="Mini-int") fm3<-filter(fmeans, group=="High-int") line1<-fm2[43,] ...


2

The package installr is only available for Windows. You are using a linux OS. See OS_type: windows at https://cran.r-project.org/web/packages/installr/index.html To update the R version on your redhat system, see the installation instructions at https://cran.r-project.org/


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Just use as.character: > d = DNAString(paste0(sample(c("A","C","T","G"),600,TRUE),collapse="")) > d 600-letter "DNAString" instance seq: CACATTTCTGAAGGTGTTGAGCGGCATCATATAAAC...CATAAACATAATTGCTTGTTTAGTCTACCAAACGCT > as.character(d) [1] ...


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You can use toString or as.character. See the documentation on coercion of XStrings: Description The DNAString, RNAString and AAString classes are similar containers but with the more biology-oriented purpose of storing a DNA sequence (DNAString), an RNA sequence (RNAString), or a sequence of amino acids (AAString). All those containers ...


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As the name says, vcountPattern only counts pattern matches. It does not provide you with the location. Use vmatchPattern for that. Unfortunately this function doesn’t support with.indels = TRUE (yet?) — which is both annoying and a bit hard to understand.1 However, you can use matchPattern instead. Since matchPattern only operates on a single sequence ...


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Build the ExpressionSet (without filtering) exampleSet <- ExpressionSet(assayData=exprs, phenoData=phenoData) and then subset, using the exprs() function to work with the underling matrix of expression values: exampleSet[, colSums(is.na(exprs(exampleSet))) < 0.8] Ask questions about Bioconductor packages on the Bioconductor support site.


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I recommend to filter your data before applying other functions, this way you will have less data to manage. I would also recommend you to write your own functions to reduce same code for different data sets. You could do: data_with_entrez <- data[data$EntrezID > 0, ] or create your own function: filter_clean <- function(data, keeps){ ...


1

You could just drop the NAs from the dataframe before you go to plot or impute the values if you're willing to modify the data's structure. You might have to remove the NA's column by column. Like this: First, make a pretty dataframe: df<- data.frame(userid=seq(1,100,1), numVarA=rnorm(100, mean=0, sd=1), numVarB=rnorm(100, mean=2, sd=1), ...


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You don't have a recent version of R on your computer. Several packages require a more recent version. I suggest that you follow the instructions at https://cran.r-project.org/ on how to install the latest version of R (which is currently v3.2.1) and try again.


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If you look at the reference manual of the package, please notice on page 80 a list of methods available for this class. For groupval there is no 'setter' method, only 'getter', meaning you can't set values to the class using groupval (in contrast, method groups supports assignment). If you want to do something non-standard with the class, you will have to ...


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I was trying to debug my problem, and seem to have inadvertently found a solution. Since the problem seemed to be in the predict function so I stored the svmBag$pred function as a variable predfunct so I could see where it was not working predfunct<-function (object, x) { if (is.character(lev(object))) { out <- predict(object, as.matrix(x), type ...


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The error message is pointing toward the R package preprocessCore. Try installing it again. If doing everything from iPython: from rpy2.robjects import r r_src = """ source("http://www.bioconductor.org/biocLite.R") biocLite("preprocessCore") """ r(r_src) When done, and if the installation finishes succcesfully, it should work: from rpy2.robjects.packages ...


3

To simply remove the non-ASCII characters, you could use base R's iconv(), setting sub = "". Something like this should work: x <- c("Ekstr\xf8m", "J\xf6reskog", "bi\xdfchen Z\xfcrcher") # e.g. from ?iconv Encoding(x) <- "latin1" # (just to make sure) x # [1] "Ekstrøm" "Jöreskog" "bißchen Zürcher" iconv(x, "latin1", "ASCII", sub="") # ...


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I confess I have not tried to reproduce all of your steps. However, all you're attempting to do is go from an "SVM", which works, to a "bagging ensemble of SVMs". I'm not sure if you know entirely what that means, but here it is in a nutshell: Instead of just making 1 model using all of the (training) data, you are: making several models where each ...



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