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60

[If you want some ready-to-use code, please scroll to my "Edit3" (after the cut). The rest is here for posterity.] To flesh out Dustman's idea: List<String> list = new ArrayList<String>(Arrays.asList(array)); list.removeAll(Arrays.asList("a")); array = list.toArray(array); Edit: I'm now using Arrays.asList instead of Collections.singleton: ...


39

Try this: library(RCurl) x <- getURL("https://raw.github.com/aronlindberg/latent_growth_classes/master/LGC_data.csv") y <- read.csv(text = x) You have two problems: You're not linking to the "raw" file, but Github's display verion (visit the URL for https:\raw.github.com....csv to see the difference between the raw version and the display ...


21

The function complete.cases will tell you where the rows are that you need: data <- matrix(c(1,2,3,4,5,6,NaN,5,9,NaN,23,9), ncol=2) data[complete.cases(data), ] [,1] [,2] [1,] 2 5 [2,] 3 9 [3,] 5 23 [4,] 6 9


15

From the documentation of url: Note that ‘https://’ connections are not supported (with some exceptions on Windows). So the problem is that R does not allow conncetions to https URL's. You can use download.file with curl: download.file("https://raw.github.com/aronlindberg/latent_growth_classes/master/LGC_data.csv", destfile = ...


15

library(dplyr) df %.% arrange(Date) %.% filter(!duplicated(Col1)) %.% group_by(Date) %.% summarise(Count=n()) %.% # n() <=> length(Date) mutate(Count = cumsum(Count)) # Source: local data frame [3 x 2] # # Date Count # 1 2014-01-01 3 # 2 2014-01-02 5 # 3 2014-01-03 6 library(data.table) dt <- data.table(df, ...


14

Make a List out of the array with Arrays.asList(), and call remove() on all the appropriate elements. Then call toArray() on the 'List' to make back into an array again. Not terribly performant, but if you encapsulate it properly, you can always do something quicker later on.


13

You should use the filter method rather than map unless you want to mutate the items in the array, in addition to filtering. eg. var filteredItems = items.filter(function(item) { return ...some condition...; }); [Edit: Of course you could always do sourceArray.filter(...).map(...) to both filter and mutate]


12

Here is another way of doing it.. df <- read.table(textConnection("1|a,b,c\n2|a,c\n3|b,d\n4|e,f"), header = F, sep = "|", stringsAsFactors = F) df ## V1 V2 ## 1 1 a,b,c ## 2 2 a,c ## 3 3 b,d ## 4 4 e,f s <- strsplit(df$V2, split = ",") data.frame(V1 = rep(df$V1, sapply(s, length)), V2 = unlist(s)) ## V1 V2 ## 1 1 a ## 2 1 b ## 3 ...


11

The reshape package is what you want. Documentation here: http://had.co.nz/reshape/. Not to toot my own horn, but I've also written up some notes on reshape's use here: http://www.ling.upenn.edu/~joseff/rstudy/summer2010_reshape.html For your purpose, this code should work library(reshape) data$value <- 1 cast(data, ID + Sex + Res ~ Contact, fun = ...


11

Here is a simplification and a fix on hobbs' solution: :%s/identifying text \zs\d\+\(.\d\+\)\=/\=(1.15+str2float(submatch(0)))/ Thanks to \zs, there is no need to recall the leading text. Thanks to str2float() a single addition is done on the whole number (in other words, 1.15 + 2.87 will give the expected result, 4.02, and not 3.102). Of course this ...


9

You can do a capturing regex and then use a vimscript expression as a replacement, something like :%s/\(identifying text \)\(\d\+\)\.\(\d\+\)/ \=submatch(1) . (submatch(2) + 1) . "." . (submatch(3) + 1500) (only without the linebreak).


9

reshape can guess many of its arguments. In this case its sufficient to specify this: reshape(d1, dir = "long", varying = 3:6, sep = "_") giving: subject x0 time x1 x2 id 1.2000 id1 male 2000 1 1 1 2.2000 id2 female 2000 2 2 2 1.2005 id1 male 2005 5 5 1 2.2005 id2 female 2005 6 6 2


9

Here's another option: Filter(Negate(is.null), x)


8

An alternative way would be to construct your own function so that you can avoid this rbindlist wrap (which I find is unnecessary) which gives you the freedom of constructing your function the way you want: tmp <- function(x) { mm <- colMeans(x) ss=sapply(x, sd) list(names=names(x), mean=mm, sd=ss) } data[, tmp(.SD), by=group] group ...


8

My approach would be to use the embed function. The first thing to do is to create a rolling sequence of indices into a vector. Take a data-frame: df <- data.frame(x = 0:4, y = 5:9) nr <- nrow(df) w <- 3 # window size i <- 1:nr # indices of the rows iw <- embed(i,w)[, w:1] # matrix of rolling-window indices of length w ...


8

plyr package will help you: library(plyr) ddply(df, .(V1), summarize, V2 = max(V2), V3 = mean(V3), V4 = toupper(V4)[1]) As R does not have mode function (probably), I put other function. But it is easy to implement a mode function.


8

That's not what map does. You really want Array.filter. Or if you really want to remove the elements from the original list, you're going to need to do it imperatively with a for loop.


8

Here's a quick function to do the job: library(stringr) replace_all <- function(df, pattern, replacement) { char <- vapply(df, function(x) is.factor(x) || is.character(x), logical(1)) df[char] <- lapply(df[char], str_replace_all, pattern, replacement) df } replace_all(iris, "setosa", "barbosa") Basically, it identifies all the variables ...


7

Try this instead: library(data.table) dt = data.table(mydata) dt[, `:=`(NATIONALITY = sub('(.*)_(.*)', '\\1', VARIABLE), YEAR = sub('(.*)_(.*)', '\\2', VARIABLE))]


6

It seems like I need to look into updating my concat.split functions! The version of the function that you tried to use makes use of read.table, which does tend to struggle with large datasets. I had used read.table because it has a convenient text argument that lets you specify a column in a data.frame as the input. This is really convenient when working ...


6

You could read the entire input line from scanner, then split the line by , then you have a String[], parse each number into int[] with index one to one matching...(assuming valid input and no NumberFormatExceptions) like String line = scanner.nextLine(); String[] numberStrs = line.split(","); int[] numbers = new int[numberStrs.length]; for(int i = 0;i < ...


6

Why don't you simply take the mean on the subset only? ymean_subset = mean(y(:,1:2:end),1);


6

You can just use diff and regular extraction/subsetting: a[diff(c(a[1], a)) < 0] <- NA a # [1] 4 NA 7 NA 8 9 NA NA 12 13 (Here, I'm assuming < 0 is what you're looking for since it matches with your output, even though it doesn't fully match with your description, which simply mentions "less than the previous one".)


6

-outer(1:4, 1:4, '-') ## [,1] [,2] [,3] [,4] ## [1,] 0 1 2 3 ## [2,] -1 0 1 2 ## [3,] -2 -1 0 1 ## [4,] -3 -2 -1 0


6

Another option using I sum(with(dat,A*I(Ind==1)+B*(Ind==2)))


6

Someone will be along soon with a plyr solution i'm sure, but here is a base solution using the reshape function. test <- read.table(textConnection("top100_repository_name month monthly_increase monthly_begin_at monthly_end_with Bukkit 2012-03 9 431 440 Bukkit 2012-04 19 ...


6

Could this be useful for you? sweep(X, 2, colMeans(X)) # this substracts the colMean to each col scale(X, center=TRUE, scale=FALSE) # the same sweep(X, 2, colMeans(X), FUN='/') # this makes division If you want to speed up your code based on the for loop you can use cmpfun from compiler package. Example X <- matrix(sample(1:10, 500000, replace=TRUE), ...


6

You can use the standard apply function: df=data.frame(x=c("l","m",NA,NA,"p"),y=c(NA,"b","c",NA,NA),z=c("u",NA,"w","x","y")) df2 = as.data.frame(t(apply(df,1, function(x) { return(c(x[!is.na(x)],x[is.na(x)]) )} ))) colnames(df2) = colnames(df) > df x y z 1 l <NA> u 2 m b <NA> 3 <NA> c w 4 <NA> ...


6

Or you could use: ds %>% group_by(id) %>% filter(attend=all(!is.na(attend))) #Source: local data frame [10 x 3] #Groups: id # id year attend #1 1 2007 1 #2 1 2008 1 #3 1 2009 1 #4 1 2010 1 #5 1 2011 1 #6 9 2007 2 #7 9 2008 3 #8 9 2009 3 #9 9 2010 5 #10 9 2011 5


6

Try library(dplyr) df %>% group_by(ident1) %>% slice(1:20) Or using data.table library(data.table) setDT(df)[, head(.SD,20), by=ident1] If you need a sample setDT(df)[df[, .I[sample(.N,20, replace=FALSE)], by=ident1]$V1] If some of the groups have less than 20 rows to sample setDT(df)[,if(.N < 20) .SD else .SD[sample(.N,20, ...



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