Hi, I am trying to automate the creation of tables for some simply analyses. There are lots and lots of tables, thus the creation of a user-defined function to make and output them to excel. My problem is that some of the analyses have convergence issues, which I want captured and included in the output so the folks looking at them know how to view those estimates. I am successfully able to do this in a straightforward set of steps. However, once I place those steps inside a function it fails. Here's the code (sorry this is a long post): # create data wt <- rgamma(6065, 0.7057511981, 0.0005502062) grp <- sample(c(replicate(315, "Group1"), replicate(3672, "Group2"), replicate(1080, "Group3"), replicate(998, "Group4"))) dta <- data.frame(grp, wt) head(dta) str(dta) # declare design my.svy <- svydesign(ids=~1, weights=~wt, data=dta) # subset grp1 <- subset(my.svy, grp == "Group1") # set options and clear old warnings options(warn=0) assign("last.warning", NULL, envir = baseenv()) ## proportions and CIs p <- ((svyciprop(~grp, grp1, family=quasibinomial))[1]) # save warnings wrn1 <- warnings(p) ci_l <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[1]) ci_u <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[2]) ## sample counts n <- unwtd.count(~grp, grp1)[1] ## combine into table overall <- data.frame(n, p, ci_l, ci_u) colnames(overall) <- c("counts", "Group1", "LL", "UL") ## add any warnings ind <- length(wrn1) ind if (ind == 0) { msg <- "No warnings" } if (ind > 0) {msg <- names(warnings()) } overall[1,5] <- msg print(overall) Here's the output from the above:> # set options and clear old warnings > options(warn=0) > assign("last.warning", NULL, envir = baseenv()) > > ## proportions and CIs > p <- ((svyciprop(~grp, grp1, family=quasibinomial))[1])Warning message: glm.fit: algorithm did not converge> > # save warnings > wrn1 <- warnings(p) > > ci_l <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[1])Warning message: glm.fit: algorithm did not converge> ci_u <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[2])Warning message: glm.fit: algorithm did not converge> > ## sample counts > n <- unwtd.count(~grp, grp1)[1] > > ## combine into table > overall <- data.frame(n, p, ci_l, ci_u) > colnames(overall) <- c("counts", "Group1", "LL", "UL") > > ## add any warnings > ind <- length(wrn1) > ind[1] 1> > if (ind == 0) { msg <- "No warnings" } > if (ind > 0) {msg <- names(warnings()) } > overall[1,5] <- msg > > print(overall)counts Group1 LL UL V5 counts 315 2.364636e-12 2.002372e-12 2.792441e-12 glm.fit: algorithm did not converge Here's the function: est <- function(var) { ## set up formula formula <- paste ("~", var) ## set options and clear old warning options(warn=0) assign("last.warning", NULL, envir = baseenv()) ## proportions and CIs p <- ((svyciprop(as.formula(formula), grp1, family=quasibinomial))[1]) ## save warnings wrn1 <- warnings(p) ci_l <- (confint(svyciprop(as.formula(formula) , grp1, family=quasibinomial), 'ci')[1]) ci_u <- (confint(svyciprop(as.formula(formula) , grp1, family=quasibinomial), 'ci')[2]) ## sample counts n <- unwtd.count(as.formula(formula), grp1)[1] ## combine into table overall <- data.frame(n, p, ci_l, ci_u) colnames(overall) <- c("counts", "Group1", "LL", "UL") ## add any warnings ind <- length(warnings(p)) print(ind) if (ind == 0) { msg <- "No warnings" } if (ind > 0) {msg <- names(warnings()) } overall[1,5] <- msg print(overall) } Here's the output from running the function:> est("grp")[1] 0 counts Group1 LL UL V5 counts 315 2.364636e-12 2.002372e-12 2.792441e-12 No warnings Warning messages: 1: glm.fit: algorithm did not converge 2: glm.fit: algorithm did not converge 3: glm.fit: algorithm did not converge So, the warnings are showing up in the output at the end of the function but they're not being captured like they are when run outside of the function. Note the 0 output from print(ind) and V7 has "No warnings". I know a lot of things "behave" differently inside functions. Case in point, the use of "as.formula(var)" rather than just "~grp" being passed to the function. I've failed to find a solution after much searching of various R related forums. I even posted this to stackoverflow but with no response. So, if anyone can help, I'd be appreciative. (sidenote: I used rgamma to create my sampling weights because that's what most resembles the distribution of my weights and it's close enough to reproduce the convergence issue. If I used rnorm or even rlnorm or rweibull I couldn't reproduce it. Just FYI.) Best, Jen [[alternative HTML version deleted]]
You can capture warnings by using withCallingHandlers. Here is an example, its help file has more information. dataList <- list( A = data.frame(y=c(TRUE,TRUE,TRUE,FALSE,FALSE), x=1:5), B = data.frame(y=c(TRUE,TRUE,FALSE,TRUE,FALSE), x=1:5), C = data.frame(y=c(FALSE,FALSE,TRUE,TRUE,TRUE), x=1:5)) withWarnings <- function(expr) { .warnings <- NULL # warning handler will append to this using '<<-' value <- withCallingHandlers(expr, warning=function(e) { .warnings <<- c(.warnings, conditionMessage(e)) invokeRestart("muffleWarning") }) structure(value, warnings=.warnings) } z <- lapply(dataList, function(data) withWarnings(coef(glm(data=data, y ~ x, family=binomial)))) z The last line produces> z$A (Intercept) x 160.80782 -45.97184 attr(,"warnings") [1] "glm.fit: fitted probabilities numerically 0 or 1 occurred" $B (Intercept) x 3.893967 -1.090426 $C (Intercept) x -115.02321 45.97184 attr(,"warnings") [1] "glm.fit: fitted probabilities numerically 0 or 1 occurred" and lapply(z, attr, "warnings") will give you the warnings themselves. Bill Dunlap TIBCO Software wdunlap tibco.com On Tue, Mar 6, 2018 at 2:26 PM, Jen <plessthanpointohfive at gmail.com> wrote:> Hi, I am trying to automate the creation of tables for some simply > analyses. There are lots and lots of tables, thus the creation of a > user-defined function to make and output them to excel. > > My problem is that some of the analyses have convergence issues, which I > want captured and included in the output so the folks looking at them know > how to view those estimates. > > I am successfully able to do this in a straightforward set of steps. > However, once I place those steps inside a function it fails. > > Here's the code (sorry this is a long post): > > # create data > wt <- rgamma(6065, 0.7057511981, 0.0005502062) > grp <- sample(c(replicate(315, "Group1"), replicate(3672, "Group2"), > replicate(1080, "Group3"), replicate(998, "Group4"))) > dta <- data.frame(grp, wt) > head(dta) > str(dta) > > # declare design > my.svy <- svydesign(ids=~1, weights=~wt, data=dta) > > # subset > grp1 <- subset(my.svy, grp == "Group1") > > # set options and clear old warnings > options(warn=0) > assign("last.warning", NULL, envir = baseenv()) > > ## proportions and CIs > p <- ((svyciprop(~grp, grp1, family=quasibinomial))[1]) > > # save warnings > wrn1 <- warnings(p) > > ci_l <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[1]) > ci_u <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[2]) > > ## sample counts > n <- unwtd.count(~grp, grp1)[1] > > ## combine into table > overall <- data.frame(n, p, ci_l, ci_u) > colnames(overall) <- c("counts", "Group1", "LL", "UL") > > ## add any warnings > ind <- length(wrn1) > ind > > if (ind == 0) { msg <- "No warnings" } > if (ind > 0) {msg <- names(warnings()) } > overall[1,5] <- msg > > print(overall) > > Here's the output from the above: > > > # set options and clear old warnings > > options(warn=0) > > assign("last.warning", NULL, envir = baseenv()) > > > > ## proportions and CIs > > p <- ((svyciprop(~grp, grp1, family=quasibinomial))[1]) > Warning message: > glm.fit: algorithm did not converge > > > > # save warnings > > wrn1 <- warnings(p) > > > > ci_l <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[1]) > Warning message: > glm.fit: algorithm did not converge > > ci_u <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[2]) > Warning message: > glm.fit: algorithm did not converge > > > > ## sample counts > > n <- unwtd.count(~grp, grp1)[1] > > > > ## combine into table > > overall <- data.frame(n, p, ci_l, ci_u) > > colnames(overall) <- c("counts", "Group1", "LL", "UL") > > > > ## add any warnings > > ind <- length(wrn1) > > ind > [1] 1 > > > > if (ind == 0) { msg <- "No warnings" } > > if (ind > 0) {msg <- names(warnings()) } > > overall[1,5] <- msg > > > > print(overall) > counts Group1 LL UL > V5 > counts 315 2.364636e-12 2.002372e-12 2.792441e-12 glm.fit: algorithm did > not converge > > Here's the function: > > est <- function(var) { > > ## set up formula > formula <- paste ("~", var) > > ## set options and clear old warning > options(warn=0) > assign("last.warning", NULL, envir = baseenv()) > > ## proportions and CIs > p <- ((svyciprop(as.formula(formula), grp1, family=quasibinomial))[1]) > > ## save warnings > wrn1 <- warnings(p) > > ci_l <- (confint(svyciprop(as.formula(formula) , grp1, > family=quasibinomial), 'ci')[1]) > ci_u <- (confint(svyciprop(as.formula(formula) , grp1, > family=quasibinomial), 'ci')[2]) > > ## sample counts > n <- unwtd.count(as.formula(formula), grp1)[1] > > ## combine into table > overall <- data.frame(n, p, ci_l, ci_u) > colnames(overall) <- c("counts", "Group1", "LL", "UL") > > > ## add any warnings > ind <- length(warnings(p)) > print(ind) > > if (ind == 0) { msg <- "No warnings" } > if (ind > 0) {msg <- names(warnings()) } > overall[1,5] <- msg > > print(overall) > > } > > Here's the output from running the function: > > > est("grp") > [1] 0 > counts Group1 LL UL V5 > counts 315 2.364636e-12 2.002372e-12 2.792441e-12 No warnings > Warning messages: > 1: glm.fit: algorithm did not converge > 2: glm.fit: algorithm did not converge > 3: glm.fit: algorithm did not converge > > So, the warnings are showing up in the output at the end of the function > but they're not being captured like they are when run outside of the > function. Note the 0 output from print(ind) and V7 has "No warnings". > I know a lot of things "behave" differently inside functions. Case in > point, the use of "as.formula(var)" rather than just "~grp" being passed to > the function. > > I've failed to find a solution after much searching of various R related > forums. I even posted this to stackoverflow but with no response. So, if > anyone can help, I'd be appreciative. > > (sidenote: I used rgamma to create my sampling weights because that's what > most resembles the distribution of my weights and it's close enough to > reproduce the convergence issue. If I used rnorm or even rlnorm or rweibull > I couldn't reproduce it. Just FYI.) > > Best, > > Jen > > [[alternative HTML version deleted]] > > ______________________________________________ > R-help at r-project.org mailing list -- To UNSUBSCRIBE and more, see > https://stat.ethz.ch/mailman/listinfo/r-help > PLEASE do read the posting guide http://www.R-project.org/ > posting-guide.html > and provide commented, minimal, self-contained, reproducible code. >[[alternative HTML version deleted]]
1. I did not attempt to sort through your voluminous code. But I suspect you are trying to reinvent wheels. 2. I don't understand this: "I've failed to find a solution after much searching of various R related forums." A web search on "error handling in R" **immediately** brought up ?tryCatch, which I think is what you want. If not, you should probably explain why it isn't, so that someone with more patience than I can muster will sort through your code to help. Cheers, Bert Bert Gunter "The trouble with having an open mind is that people keep coming along and sticking things into it." -- Opus (aka Berkeley Breathed in his "Bloom County" comic strip ) On Tue, Mar 6, 2018 at 2:26 PM, Jen <plessthanpointohfive at gmail.com> wrote:> Hi, I am trying to automate the creation of tables for some simply > analyses. There are lots and lots of tables, thus the creation of a > user-defined function to make and output them to excel. > > My problem is that some of the analyses have convergence issues, which I > want captured and included in the output so the folks looking at them know > how to view those estimates. > > I am successfully able to do this in a straightforward set of steps. > However, once I place those steps inside a function it fails. > > Here's the code (sorry this is a long post): > > # create data > wt <- rgamma(6065, 0.7057511981, 0.0005502062) > grp <- sample(c(replicate(315, "Group1"), replicate(3672, "Group2"), > replicate(1080, "Group3"), replicate(998, "Group4"))) > dta <- data.frame(grp, wt) > head(dta) > str(dta) > > # declare design > my.svy <- svydesign(ids=~1, weights=~wt, data=dta) > > # subset > grp1 <- subset(my.svy, grp == "Group1") > > # set options and clear old warnings > options(warn=0) > assign("last.warning", NULL, envir = baseenv()) > > ## proportions and CIs > p <- ((svyciprop(~grp, grp1, family=quasibinomial))[1]) > > # save warnings > wrn1 <- warnings(p) > > ci_l <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[1]) > ci_u <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[2]) > > ## sample counts > n <- unwtd.count(~grp, grp1)[1] > > ## combine into table > overall <- data.frame(n, p, ci_l, ci_u) > colnames(overall) <- c("counts", "Group1", "LL", "UL") > > ## add any warnings > ind <- length(wrn1) > ind > > if (ind == 0) { msg <- "No warnings" } > if (ind > 0) {msg <- names(warnings()) } > overall[1,5] <- msg > > print(overall) > > Here's the output from the above: > > > # set options and clear old warnings > > options(warn=0) > > assign("last.warning", NULL, envir = baseenv()) > > > > ## proportions and CIs > > p <- ((svyciprop(~grp, grp1, family=quasibinomial))[1]) > Warning message: > glm.fit: algorithm did not converge > > > > # save warnings > > wrn1 <- warnings(p) > > > > ci_l <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[1]) > Warning message: > glm.fit: algorithm did not converge > > ci_u <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[2]) > Warning message: > glm.fit: algorithm did not converge > > > > ## sample counts > > n <- unwtd.count(~grp, grp1)[1] > > > > ## combine into table > > overall <- data.frame(n, p, ci_l, ci_u) > > colnames(overall) <- c("counts", "Group1", "LL", "UL") > > > > ## add any warnings > > ind <- length(wrn1) > > ind > [1] 1 > > > > if (ind == 0) { msg <- "No warnings" } > > if (ind > 0) {msg <- names(warnings()) } > > overall[1,5] <- msg > > > > print(overall) > counts Group1 LL UL > V5 > counts 315 2.364636e-12 2.002372e-12 2.792441e-12 glm.fit: algorithm did > not converge > > Here's the function: > > est <- function(var) { > > ## set up formula > formula <- paste ("~", var) > > ## set options and clear old warning > options(warn=0) > assign("last.warning", NULL, envir = baseenv()) > > ## proportions and CIs > p <- ((svyciprop(as.formula(formula), grp1, family=quasibinomial))[1]) > > ## save warnings > wrn1 <- warnings(p) > > ci_l <- (confint(svyciprop(as.formula(formula) , grp1, > family=quasibinomial), 'ci')[1]) > ci_u <- (confint(svyciprop(as.formula(formula) , grp1, > family=quasibinomial), 'ci')[2]) > > ## sample counts > n <- unwtd.count(as.formula(formula), grp1)[1] > > ## combine into table > overall <- data.frame(n, p, ci_l, ci_u) > colnames(overall) <- c("counts", "Group1", "LL", "UL") > > > ## add any warnings > ind <- length(warnings(p)) > print(ind) > > if (ind == 0) { msg <- "No warnings" } > if (ind > 0) {msg <- names(warnings()) } > overall[1,5] <- msg > > print(overall) > > } > > Here's the output from running the function: > > > est("grp") > [1] 0 > counts Group1 LL UL V5 > counts 315 2.364636e-12 2.002372e-12 2.792441e-12 No warnings > Warning messages: > 1: glm.fit: algorithm did not converge > 2: glm.fit: algorithm did not converge > 3: glm.fit: algorithm did not converge > > So, the warnings are showing up in the output at the end of the function > but they're not being captured like they are when run outside of the > function. Note the 0 output from print(ind) and V7 has "No warnings". > I know a lot of things "behave" differently inside functions. Case in > point, the use of "as.formula(var)" rather than just "~grp" being passed to > the function. > > I've failed to find a solution after much searching of various R related > forums. I even posted this to stackoverflow but with no response. So, if > anyone can help, I'd be appreciative. > > (sidenote: I used rgamma to create my sampling weights because that's what > most resembles the distribution of my weights and it's close enough to > reproduce the convergence issue. If I used rnorm or even rlnorm or rweibull > I couldn't reproduce it. Just FYI.) > > Best, > > Jen > > [[alternative HTML version deleted]] > > ______________________________________________ > R-help at r-project.org mailing list -- To UNSUBSCRIBE and more, see > https://stat.ethz.ch/mailman/listinfo/r-help > PLEASE do read the posting guide http://www.R-project.org/ > posting-guide.html > and provide commented, minimal, self-contained, reproducible code. >[[alternative HTML version deleted]]
Hi William, Thanks, I'll give that a shot. I tried using withCallingHandlers without success but II admit I'm not familiar with it and may have used it wrong. I'll report back. Jen On Tue, Mar 6, 2018, 5:42 PM William Dunlap <wdunlap at tibco.com> wrote:> You can capture warnings by using withCallingHandlers. Here is an > example, > its help file has more information. > > dataList <- list( > A = data.frame(y=c(TRUE,TRUE,TRUE,FALSE,FALSE), x=1:5), > B = data.frame(y=c(TRUE,TRUE,FALSE,TRUE,FALSE), x=1:5), > C = data.frame(y=c(FALSE,FALSE,TRUE,TRUE,TRUE), x=1:5)) > > withWarnings <- function(expr) { > .warnings <- NULL # warning handler will append to this using '<<-' > value <- withCallingHandlers(expr, > warning=function(e) { > .warnings <<- c(.warnings, > conditionMessage(e)) > invokeRestart("muffleWarning") > }) > structure(value, warnings=.warnings) > } > z <- lapply(dataList, function(data) withWarnings(coef(glm(data=data, y ~ > x, family=binomial)))) > z > > The last line produces > > > z > $A > (Intercept) x > 160.80782 -45.97184 > attr(,"warnings") > [1] "glm.fit: fitted probabilities numerically 0 or 1 occurred" > > $B > (Intercept) x > 3.893967 -1.090426 > > $C > (Intercept) x > -115.02321 45.97184 > attr(,"warnings") > [1] "glm.fit: fitted probabilities numerically 0 or 1 occurred" > > and lapply(z, attr, "warnings") will give you the warnings themselves. > > > > Bill Dunlap > TIBCO Software > wdunlap tibco.com > > On Tue, Mar 6, 2018 at 2:26 PM, Jen <plessthanpointohfive at gmail.com> > wrote: > >> Hi, I am trying to automate the creation of tables for some simply >> analyses. There are lots and lots of tables, thus the creation of a >> user-defined function to make and output them to excel. >> >> My problem is that some of the analyses have convergence issues, which I >> want captured and included in the output so the folks looking at them know >> how to view those estimates. >> >> I am successfully able to do this in a straightforward set of steps. >> However, once I place those steps inside a function it fails. >> >> Here's the code (sorry this is a long post): >> >> # create data >> wt <- rgamma(6065, 0.7057511981, 0.0005502062) >> grp <- sample(c(replicate(315, "Group1"), replicate(3672, "Group2"), >> replicate(1080, "Group3"), replicate(998, "Group4"))) >> dta <- data.frame(grp, wt) >> head(dta) >> str(dta) >> >> # declare design >> my.svy <- svydesign(ids=~1, weights=~wt, data=dta) >> >> # subset >> grp1 <- subset(my.svy, grp == "Group1") >> >> # set options and clear old warnings >> options(warn=0) >> assign("last.warning", NULL, envir = baseenv()) >> >> ## proportions and CIs >> p <- ((svyciprop(~grp, grp1, family=quasibinomial))[1]) >> >> # save warnings >> wrn1 <- warnings(p) >> >> ci_l <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[1]) >> ci_u <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[2]) >> >> ## sample counts >> n <- unwtd.count(~grp, grp1)[1] >> >> ## combine into table >> overall <- data.frame(n, p, ci_l, ci_u) >> colnames(overall) <- c("counts", "Group1", "LL", "UL") >> >> ## add any warnings >> ind <- length(wrn1) >> ind >> >> if (ind == 0) { msg <- "No warnings" } >> if (ind > 0) {msg <- names(warnings()) } >> overall[1,5] <- msg >> >> print(overall) >> >> Here's the output from the above: >> >> > # set options and clear old warnings >> > options(warn=0) >> > assign("last.warning", NULL, envir = baseenv()) >> > >> > ## proportions and CIs >> > p <- ((svyciprop(~grp, grp1, family=quasibinomial))[1]) >> Warning message: >> glm.fit: algorithm did not converge >> > >> > # save warnings >> > wrn1 <- warnings(p) >> > >> > ci_l <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[1]) >> Warning message: >> glm.fit: algorithm did not converge >> > ci_u <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[2]) >> Warning message: >> glm.fit: algorithm did not converge >> > >> > ## sample counts >> > n <- unwtd.count(~grp, grp1)[1] >> > >> > ## combine into table >> > overall <- data.frame(n, p, ci_l, ci_u) >> > colnames(overall) <- c("counts", "Group1", "LL", "UL") >> > >> > ## add any warnings >> > ind <- length(wrn1) >> > ind >> [1] 1 >> > >> > if (ind == 0) { msg <- "No warnings" } >> > if (ind > 0) {msg <- names(warnings()) } >> > overall[1,5] <- msg >> > >> > print(overall) >> counts Group1 LL UL >> V5 >> counts 315 2.364636e-12 2.002372e-12 2.792441e-12 glm.fit: algorithm >> did >> not converge >> >> Here's the function: >> >> est <- function(var) { >> >> ## set up formula >> formula <- paste ("~", var) >> >> ## set options and clear old warning >> options(warn=0) >> assign("last.warning", NULL, envir = baseenv()) >> >> ## proportions and CIs >> p <- ((svyciprop(as.formula(formula), grp1, family=quasibinomial))[1]) >> >> ## save warnings >> wrn1 <- warnings(p) >> >> ci_l <- (confint(svyciprop(as.formula(formula) , grp1, >> family=quasibinomial), 'ci')[1]) >> ci_u <- (confint(svyciprop(as.formula(formula) , grp1, >> family=quasibinomial), 'ci')[2]) >> >> ## sample counts >> n <- unwtd.count(as.formula(formula), grp1)[1] >> >> ## combine into table >> overall <- data.frame(n, p, ci_l, ci_u) >> colnames(overall) <- c("counts", "Group1", "LL", "UL") >> >> >> ## add any warnings >> ind <- length(warnings(p)) >> print(ind) >> >> if (ind == 0) { msg <- "No warnings" } >> if (ind > 0) {msg <- names(warnings()) } >> overall[1,5] <- msg >> >> print(overall) >> >> } >> >> Here's the output from running the function: >> >> > est("grp") >> [1] 0 >> counts Group1 LL UL V5 >> counts 315 2.364636e-12 2.002372e-12 2.792441e-12 No warnings >> Warning messages: >> 1: glm.fit: algorithm did not converge >> 2: glm.fit: algorithm did not converge >> 3: glm.fit: algorithm did not converge >> >> So, the warnings are showing up in the output at the end of the function >> but they're not being captured like they are when run outside of the >> function. Note the 0 output from print(ind) and V7 has "No warnings". >> I know a lot of things "behave" differently inside functions. Case in >> point, the use of "as.formula(var)" rather than just "~grp" being passed >> to >> the function. >> >> I've failed to find a solution after much searching of various R related >> forums. I even posted this to stackoverflow but with no response. So, if >> anyone can help, I'd be appreciative. >> >> (sidenote: I used rgamma to create my sampling weights because that's what >> most resembles the distribution of my weights and it's close enough to >> reproduce the convergence issue. If I used rnorm or even rlnorm or >> rweibull >> I couldn't reproduce it. Just FYI.) >> >> Best, >> >> Jen >> >> [[alternative HTML version deleted]] >> >> ______________________________________________ >> R-help at r-project.org mailing list -- To UNSUBSCRIBE and more, see >> https://stat.ethz.ch/mailman/listinfo/r-help >> PLEASE do read the posting guide >> http://www.R-project.org/posting-guide.html >> and provide commented, minimal, self-contained, reproducible code. >> > >[[alternative HTML version deleted]]
tryCatch() is good for catching errors but not so good for warnings, as it does not let you resume evaluating the expression that emitted the warning. withCallingHandlers(), with its companion invokeRestart(), lets you collect the warnings while letting the evaluation run to completion. Bill Dunlap TIBCO Software wdunlap tibco.com On Tue, Mar 6, 2018 at 2:45 PM, Bert Gunter <bgunter.4567 at gmail.com> wrote:> 1. I did not attempt to sort through your voluminous code. But I suspect > you are trying to reinvent wheels. > > 2. I don't understand this: > > "I've failed to find a solution after much searching of various R related > forums." > > A web search on "error handling in R" **immediately** brought up ?tryCatch, > which I think is what you want. > If not, you should probably explain why it isn't, so that someone with more > patience than I can muster will sort through your code to help. > > Cheers, > Bert > > > > > > Bert Gunter > > "The trouble with having an open mind is that people keep coming along and > sticking things into it." > -- Opus (aka Berkeley Breathed in his "Bloom County" comic strip ) > > On Tue, Mar 6, 2018 at 2:26 PM, Jen <plessthanpointohfive at gmail.com> > wrote: > > > Hi, I am trying to automate the creation of tables for some simply > > analyses. There are lots and lots of tables, thus the creation of a > > user-defined function to make and output them to excel. > > > > My problem is that some of the analyses have convergence issues, which I > > want captured and included in the output so the folks looking at them > know > > how to view those estimates. > > > > I am successfully able to do this in a straightforward set of steps. > > However, once I place those steps inside a function it fails. > > > > Here's the code (sorry this is a long post): > > > > # create data > > wt <- rgamma(6065, 0.7057511981, 0.0005502062) > > grp <- sample(c(replicate(315, "Group1"), replicate(3672, "Group2"), > > replicate(1080, "Group3"), replicate(998, "Group4"))) > > dta <- data.frame(grp, wt) > > head(dta) > > str(dta) > > > > # declare design > > my.svy <- svydesign(ids=~1, weights=~wt, data=dta) > > > > # subset > > grp1 <- subset(my.svy, grp == "Group1") > > > > # set options and clear old warnings > > options(warn=0) > > assign("last.warning", NULL, envir = baseenv()) > > > > ## proportions and CIs > > p <- ((svyciprop(~grp, grp1, family=quasibinomial))[1]) > > > > # save warnings > > wrn1 <- warnings(p) > > > > ci_l <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[1]) > > ci_u <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[2]) > > > > ## sample counts > > n <- unwtd.count(~grp, grp1)[1] > > > > ## combine into table > > overall <- data.frame(n, p, ci_l, ci_u) > > colnames(overall) <- c("counts", "Group1", "LL", "UL") > > > > ## add any warnings > > ind <- length(wrn1) > > ind > > > > if (ind == 0) { msg <- "No warnings" } > > if (ind > 0) {msg <- names(warnings()) } > > overall[1,5] <- msg > > > > print(overall) > > > > Here's the output from the above: > > > > > # set options and clear old warnings > > > options(warn=0) > > > assign("last.warning", NULL, envir = baseenv()) > > > > > > ## proportions and CIs > > > p <- ((svyciprop(~grp, grp1, family=quasibinomial))[1]) > > Warning message: > > glm.fit: algorithm did not converge > > > > > > # save warnings > > > wrn1 <- warnings(p) > > > > > > ci_l <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[1]) > > Warning message: > > glm.fit: algorithm did not converge > > > ci_u <- (confint(svyciprop(~grp, grp1, family=quasibinomial), 'ci')[2]) > > Warning message: > > glm.fit: algorithm did not converge > > > > > > ## sample counts > > > n <- unwtd.count(~grp, grp1)[1] > > > > > > ## combine into table > > > overall <- data.frame(n, p, ci_l, ci_u) > > > colnames(overall) <- c("counts", "Group1", "LL", "UL") > > > > > > ## add any warnings > > > ind <- length(wrn1) > > > ind > > [1] 1 > > > > > > if (ind == 0) { msg <- "No warnings" } > > > if (ind > 0) {msg <- names(warnings()) } > > > overall[1,5] <- msg > > > > > > print(overall) > > counts Group1 LL UL > > V5 > > counts 315 2.364636e-12 2.002372e-12 2.792441e-12 glm.fit: algorithm > did > > not converge > > > > Here's the function: > > > > est <- function(var) { > > > > ## set up formula > > formula <- paste ("~", var) > > > > ## set options and clear old warning > > options(warn=0) > > assign("last.warning", NULL, envir = baseenv()) > > > > ## proportions and CIs > > p <- ((svyciprop(as.formula(formula), grp1, family=quasibinomial))[1]) > > > > ## save warnings > > wrn1 <- warnings(p) > > > > ci_l <- (confint(svyciprop(as.formula(formula) , grp1, > > family=quasibinomial), 'ci')[1]) > > ci_u <- (confint(svyciprop(as.formula(formula) , grp1, > > family=quasibinomial), 'ci')[2]) > > > > ## sample counts > > n <- unwtd.count(as.formula(formula), grp1)[1] > > > > ## combine into table > > overall <- data.frame(n, p, ci_l, ci_u) > > colnames(overall) <- c("counts", "Group1", "LL", "UL") > > > > > > ## add any warnings > > ind <- length(warnings(p)) > > print(ind) > > > > if (ind == 0) { msg <- "No warnings" } > > if (ind > 0) {msg <- names(warnings()) } > > overall[1,5] <- msg > > > > print(overall) > > > > } > > > > Here's the output from running the function: > > > > > est("grp") > > [1] 0 > > counts Group1 LL UL V5 > > counts 315 2.364636e-12 2.002372e-12 2.792441e-12 No warnings > > Warning messages: > > 1: glm.fit: algorithm did not converge > > 2: glm.fit: algorithm did not converge > > 3: glm.fit: algorithm did not converge > > > > So, the warnings are showing up in the output at the end of the function > > but they're not being captured like they are when run outside of the > > function. Note the 0 output from print(ind) and V7 has "No warnings". > > I know a lot of things "behave" differently inside functions. Case in > > point, the use of "as.formula(var)" rather than just "~grp" being passed > to > > the function. > > > > I've failed to find a solution after much searching of various R related > > forums. I even posted this to stackoverflow but with no response. So, if > > anyone can help, I'd be appreciative. > > > > (sidenote: I used rgamma to create my sampling weights because that's > what > > most resembles the distribution of my weights and it's close enough to > > reproduce the convergence issue. If I used rnorm or even rlnorm or > rweibull > > I couldn't reproduce it. Just FYI.) > > > > Best, > > > > Jen > > > > [[alternative HTML version deleted]] > > > > ______________________________________________ > > R-help at r-project.org mailing list -- To UNSUBSCRIBE and more, see > > https://stat.ethz.ch/mailman/listinfo/r-help > > PLEASE do read the posting guide http://www.R-project.org/ > > posting-guide.html > > and provide commented, minimal, self-contained, reproducible code. > > > > [[alternative HTML version deleted]] > > ______________________________________________ > R-help at r-project.org mailing list -- To UNSUBSCRIBE and more, see > https://stat.ethz.ch/mailman/listinfo/r-help > PLEASE do read the posting guide http://www.R-project.org/ > posting-guide.html > and provide commented, minimal, self-contained, reproducible code. >[[alternative HTML version deleted]]