Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I write this code to get Dunnet anova post hoc test

import rpy2.robjects as ro
import rpy2.robjects.numpy2ri as npr
from rpy2.robjects.numpy2ri import numpy2ri as np2r
from rpy2.robjects.packages import importr
base = importr("base")
stats = importr('stats')
multcomp = importr('multcomp')

val = np2r(vFC)
exp = base.gl(4,6,24)
tiempo = base.factor(base.rep(base.c(0,2,5,10,15,30),4))

fmla = ro.Formula('val ~ tiempo + exp')
env = fmla.environment
env['val'] = val
env['tiempo'] = tiempo
env['exp'] = exp
anova = stats.aov(fmla)
print base.summary(anova)
Phoc = multcomp.glht(anova, linfct = ro.r('mcp(tiempo="Dunnet")'))
sPhoc = base.summary(Phoc)
print sPhoc

Works fine but form the output I get sourcecode after the analysis, how can I get rid from that code and get only the final table from Dunnet analysis.

            Df Sum Sq Mean Sq F value   Pr(>F)    
tiempo       5  91172   18234   8.788 0.000464 ***
exp          3  49402   16467   7.936 0.002108 ** 
Residuals   15  31125    2075                     
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 


     Simultaneous Tests for General Linear Hypotheses

Multiple Comparisons of Means: Dunnett Contrasts


Fit: function (formula, data = NULL, projections = FALSE, qr = TRUE, 
    contrasts = NULL, ...) 
{
    Terms <- if (missing(data)) 
        terms(formula, "Error")
    else terms(formula, "Error", data = data)
    indError <- attr(Terms, "specials")$Error
    if (length(indError) > 1L) 
        stop(sprintf(ngettext(length(indError), "there are %d Error terms: only 1 is allowed", 
            "there are %d Error terms: only 1 is allowed"), length(indError)), 
            domain = NA)
    lmcall <- Call <- match.call()
    lmcall[[1L]] <- as.name("lm")
    lmcall$singular.ok <- TRUE
    if (projections) 
        qr <- lmcall$qr <- TRUE
    lmcall$projections <- NULL
    if (is.null(indError)) {
        fit <- eval(lmcall, parent.frame())
        if (projections) 
            fit$projections <- proj(fit)
        class(fit) <- if (inherits(fit, "mlm")) 
            c("maov", "aov", oldClass(fit))
        else c("aov", oldClass(fit))
        fit$call <- Call
        return(fit)
    }
    else {
        if (pmatch("weights", names(match.call()), 0L)) 
            stop("weights are not supported in a multistratum aov() fit")
        opcons <- options("contrasts")
        options(contrasts = c("contr.helmert", "contr.poly"))
        on.exit(options(opcons))
        allTerms <- Terms
        errorterm <- attr(Terms, "variables")[[1 + indError]]
        eTerm <- deparse(errorterm[[2L]], width.cutoff = 500L, 
            backtick = TRUE)
        intercept <- attr(Terms, "intercept")
        ecall <- lmcall
        ecall$formula <- as.formula(paste(deparse(formula[[2L]], 
            width.cutoff = 500L, backtick = TRUE), "~", eTerm, 
            if (!intercept) 
                "- 1"), env = environment(formula))
        ecall$method <- "qr"
        ecall$qr <- TRUE
        ecall$contrasts <- NULL
        er.fit <- eval(ecall, parent.frame())
        options(opcons)
        nmstrata <- attr(terms(er.fit), "term.labels")
        nmstrata <- sub("^`(.*)`$", "\\1", nmstrata)
        nmstrata <- c("(Intercept)", nmstrata)
        qr.e <- er.fit$qr
        rank.e <- er.fit$rank
        if (rank.e < length(er.fit$coefficients)) 
            warning("Error() model is singular")
        qty <- er.fit$residuals
        maov <- is.matrix(qty)
        asgn.e <- er.fit$assign[qr.e$pivot[1L:rank.e]]
        maxasgn <- length(nmstrata) - 1L
        nobs <- NROW(qty)
        if (nobs > rank.e) {
            result <- vector("list", maxasgn + 2L)
            asgn.e[(rank.e + 1):nobs] <- maxasgn + 1L
            nmstrata <- c(nmstrata, "Within")
        }
        else result <- vector("list", maxasgn + 1L)
        names(result) <- nmstrata
        lmcall$formula <- form <- update(formula, paste(". ~ .-", 
            deparse(errorterm, width.cutoff = 500L, backtick = TRUE)))
        Terms <- terms(form)
        lmcall$method <- "model.frame"
        mf <- eval(lmcall, parent.frame())
        xvars <- as.character(attr(Terms, "variables"))[-1L]
        if ((yvar <- attr(Terms, "response")) > 0L) 
            xvars <- xvars[-yvar]
        if (length(xvars)) {
            xlev <- lapply(mf[xvars], levels)
            xlev <- xlev[!sapply(xlev, is.null)]
        }
        else xlev <- NULL
        resp <- model.response(mf)
        qtx <- model.matrix(Terms, mf, contrasts)
        cons <- attr(qtx, "contrasts")
        dnx <- colnames(qtx)
        asgn.t <- attr(qtx, "assign")
        if (length(wts <- model.weights(mf))) {
            wts <- sqrt(wts)
            resp <- resp * wts
            qtx <- qtx * wts
        }
        qty <- as.matrix(qr.qty(qr.e, resp))
        if ((nc <- ncol(qty)) > 1) {
            dny <- colnames(resp)
            if (is.null(dny)) 
                dny <- paste0("Y", 1L:nc)
            dimnames(qty) <- list(seq(nrow(qty)), dny)
        }
        else dimnames(qty) <- list(seq(nrow(qty)), NULL)
        qtx <- qr.qty(qr.e, qtx)
        dimnames(qtx) <- list(seq(nrow(qtx)), dnx)
        for (i in seq_along(nmstrata)) {
            select <- asgn.e == (i - 1)
            ni <- sum(select)
            if (!ni) 
                next
            xi <- qtx[select, , drop = FALSE]
            cols <- colSums(xi^2) > 1e-05
            if (any(cols)) {
                xi <- xi[, cols, drop = FALSE]
                attr(xi, "assign") <- asgn.t[cols]
                fiti <- lm.fit(xi, qty[select, , drop = FALSE])
                fiti$terms <- Terms
            }
            else {
                y <- qty[select, , drop = FALSE]
                fiti <- list(coefficients = numeric(), residuals = y, 
                  fitted.values = 0 * y, weights = wts, rank = 0L, 
                  df.residual = NROW(y))
            }
            if (projections) 
                fiti$projections <- proj(fiti)
            class(fiti) <- c(if (maov) "maov", "aov", oldClass(er.fit))
            result[[i]] <- fiti
        }
        result <- result[!sapply(result, is.null)]
        class(result) <- c("aovlist", "listof")
        if (qr) 
            attr(result, "error.qr") <- qr.e
        attr(result, "call") <- Call
        if (length(wts)) 
            attr(result, "weights") <- wts
        attr(result, "terms") <- allTerms
        attr(result, "contrasts") <- cons
        attr(result, "xlevels") <- xlev
        result
    }
}(formula = val ~ tiempo + exp)

Linear Hypotheses:
            Estimate Std. Error t value Pr(>|t|)    
2 - 0 == 0     78.10      32.21   2.425  0.10346    
5 - 0 == 0    152.39      32.21   4.731  0.00113 ** 
10 - 0 == 0   140.06      32.21   4.348  0.00246 ** 
15 - 0 == 0   158.90      32.21   4.933  < 0.001 ***
30 - 0 == 0   180.73      32.21   5.611  < 0.001 ***
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 
(Adjusted p values reported -- single-step method)
share|improve this question

1 Answer 1

up vote 2 down vote accepted

The source code dissapears if I use strings as R code from high level interface

using this code for the third block

ro.r.assign('val', val)
ro.r.assign('exp', exp)
ro.r.assign('tiempo', tiempo)
ro.r('anova <- aov(val ~ tiempo + exp)')
ro.r('s.anova <- summary(anova)')
ro.r('spHoc <- summary(glht(anova, linfct=mcp(tiempo="Dunnet")))')
print ro.r('s.anova')
print ro.r('spHoc')
ro.r('capture.output(s.anova, file = "anova.txt", append = TRUE)')
ro.r('capture.output(spHoc, file = "anova.txt", append = TRUE)')

Returns the results without the source code

            Df Sum Sq Mean Sq F value   Pr(>F)    
tiempo       5  91172   18234   8.788 0.000464 ***
exp          3  49402   16467   7.936 0.002108 ** 
Residuals   15  31125    2075                     
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 


     Simultaneous Tests for General Linear Hypotheses

Multiple Comparisons of Means: Dunnett Contrasts


Fit: aov(formula = val ~ tiempo + exp)

Linear Hypotheses:
            Estimate Std. Error t value Pr(>|t|)    
2 - 0 == 0     78.10      32.21   2.425  0.10306    
5 - 0 == 0    152.39      32.21   4.731  0.00110 ** 
10 - 0 == 0   140.06      32.21   4.348  0.00246 ** 
15 - 0 == 0   158.90      32.21   4.933  < 0.001 ***
30 - 0 == 0   180.73      32.21   5.611  < 0.001 ***
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1 
(Adjusted p values reported -- single-step method)

I still don't know why rpy2 behaves like this when I use low level interface, but now It works

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.