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1d
comment R, plot means and confidence intervals from imported dataset
Well, yes, that is a fairly standard way to plot means and error bars. Are you asking what shape your data need to be in? If that's the current shape of your dataset in R, you'll likely need to do a bit of reshaping. For plotting means and error bars with ggplot2, you could start by doing some reading here.
1d
comment Superimpose a normal distribution to a density using ggplot in R
See the comments on this question. The error is likely because you set a global y instead of setting y in geom_density.
1d
comment Boxplot and regression curves for multiple groups
@jsheperd Yes, you can do this in a variety of ways, the easiest being lapply(mods, predict, data.frame(age = 1:25)). See my edit for a more complicated alternative to help keep organized for graphing.
2d
comment Odd behavior with vector assignments to xts object: reverse from expected
Yes, it looks like xts object stays in order by time even if you give indexes out of order. Given that behavior, how about x[dateVec] <- d$data[order(dateVec)]?
Jul
9
comment How could to improve performance select rows in a data frame using dplyr?
In your toy example, I can get the same (but speedier) results for df2_opt if I don't group_by. Is the grouping an important part of your real scenario?
Jul
9
comment How could to improve performance select rows in a data frame using dplyr?
And if you didn't want to make new variables, you could do the pasting inside filter: filter(paste(A,B,D, sep = ".") %in% paste(df1_opt$A, df1_opt$B, df1_opt$D, sep = ".")).
Jul
8
comment “Unwound” a corr.test p matrix, want to remove the p-adjusted duplicates
I may not understand what you are trying to do, but if you want to remove the upper triangle and diagonal of a correlation matrix you could do some work within that matrix pre "unwinding" to make this easier. I've done somewhat similar things in the past by assigning all the unwanted values to NA or 0 or something within the matrix. So if you had a correlation matrix corrs, it would be: corrs[upper.tri(corrs, diag = TRUE)] = NA.
Jul
7
comment grouping multiple gradients using ggplot2
How about treating grp as a factor with a different color per level and then using z with size or alpha or something in geom_line and/or geom_point to show the gradient?
Jul
3
comment Repeat measure ANOVA - group, level, time, and handeling na values
Make sure you assign your dataset without the missing data to a name: dat = na.omit(dat). Is this your entire dataset or just an example? If you are treating this like a 3x2x4 factorial design, you do not have enough degrees of freedom for testing anything with only 22 values of the response...
Jul
2
comment Hot deck imputation in dplyr
@eddi I was thinking along these lines, but when I tried it in ifelse I realized that recycling came into play due to the length of the random sample vector differing from the value vector. To guarantee a unique random draw for each non-finite value I had to take a sample the size of the group.
Jun
26
comment Select row prior to first occurrence of an event by group
I haven't seen lead used before, very handy. To avoid adding a new column to the dataset you could do the math inside filter: filter(status - lead(status) == 1).
Jun
26
comment R - create missing observations in panel data
And if you need to make a dataset of all possible id/time/tc1 combinations to use with merge, you can use expand.grid with the appropriate info from your dataset: iddat = expand.grid(id = unique(dat$id), time = unique(dat$time), tc1 = unique(dat$tc1)).
Jun
26
comment Graphing distribution of independent variable for any given dataset
This situation looks like one where aes_string might come in handy (you'll also need print). I found an example of someone in a very similar situation here.
Jun
26
comment indexing through values of a nested list using mapply
Your example set-up is a list of vectors, in which case it seems straightforward to apply some function to every value in each vector using lapply - as in, lapply(treat, function(x) x/2) if you just wanted to divide everything by 2. Could you clarify your problem a bit more?
Jun
25
comment R: merging variable column from one data set into another
If you define the columns you want to merge on with by in merge, any other columns with shared names will be kept as unique columns with a suffix. By default these suffixes are .x and .y, but you can set these with the suffixes argument. (As @Jealie said above, the help page for merge is the place to start).
Jun
24
comment How to include lots of graphs in R Markdown without running into memory issues
Have you looked at the dev chunk option? Read about it here.
Jun
19
comment How to order error bars in ggplot2 on two conditions
Using your example dataset and code, I get a plot with Outcome on the x axis in the order that you set the levels and points/bars for each cat within each Outcome also in the order you set the levels (not alphabetical). Is that not what you want?
Jun
6
comment R programming: which(colnames(df) == “thecolumnname”) is not working inside a function?
+1 I always end up feeding column names to my functions with quotes around them. Nice to learn about deparse and substitute.
Jun
6
comment R: Creating long dataset when rows are variables and columns are years
I think you just need to cast this out after melting. Something like dcast(longdat, Country.Code + year ~ Indicator.Code, value.var = "value")
Apr
15
comment Predicted probabilities in R
Try just assinging cex2 to data.frame(fincbtax=rep(seq(from=10000,to=500000,length.out=50),2),renting=(rep‌​(0:1,each=50))), then (but my first comment about needing all the explanatory variables in cex2 still holds, though).