Full_Name: Robert W. Baer, Ph.D. Version: 1.6.2 OS: Windows 2000 Submission from: (NULL) (198.209.172.106) Problem: prop.test() does not seem to produce appropriate confidence intervals for the case where the vector length of x and n is one. (I am not certain about higher vector lengths.) As an example, I include x=6 and n=42 which has a mean proportion of 0.115. When I calculate the 95% CI using the normal approximation by hand (and no continuity correction) I get (0.028, 0.202). The exact binomial CI from binom.test() is (0.044, 0.234). With correct=FALSE prop.test produces CI95 (0.05396969, 0.22971664) which is neither of these. With correct=TRUE it produces (0.04778925, 0.2412937) This seems reasonably like a normal approximation 95% CI (which I presume is what is used by prop.test()) of the true binomial but I did not actually check it by hand. BUG summary. The prop.test() calculation of 95% CI of sample proportions is improperly calculated when continuity correction is turned off. ----------------------------- Sample R code and output shown below:> x= 6;n=52 > prop.test(x,n,correct=TRUE)1-sample proportions test with continuity correction data: x out of n, null probability 0.5 X-squared = 29.25, df = 1, p-value = 6.362e-08 alternative hypothesis: true p is not equal to 0.5 95 percent confidence interval: 0.04778925 0.24129372 sample estimates: p 0.1153846> prop.test(x,n,correct=FALSE)1-sample proportions test without continuity correction data: x out of n, null probability 0.5 X-squared = 30.7692, df = 1, p-value = 2.906e-08 alternative hypothesis: true p is not equal to 0.5 95 percent confidence interval: 0.05396969 0.22971664 sample estimates: p 0.1153846> binom.test(x,n)Exact binomial test data: x and n number of successes = 6, number of trials = 52, p-value = 1.033e-08 alternative hypothesis: true probability of success is not equal to 0.5 95 percent confidence interval: 0.0435412 0.2344083 sample estimates: probability of success 0.1153846
On Fri, 18 Apr 2003 rbaer@kcom.edu wrote:> Full_Name: Robert W. Baer, Ph.D. > Version: 1.6.2 > OS: Windows 2000 > Submission from: (NULL) (198.209.172.106) > > > Problem: prop.test() does not seem to produce appropriate confidence intervals > for the case where the vector length of x and n is one. (I am not certain about > higher vector lengths.) > > As an example, I include x=6 and n=42 which has a mean proportion of 0.115. > When I calculate the 95% CI using the normal approximation by hand (and no > continuity correction) I get (0.028, 0.202). The exact binomial CI from > binom.test() is (0.044, 0.234). With correct=FALSE prop.test produces CI95 > (0.05396969, 0.22971664) which is neither of these. With correct=TRUE it > produces (0.04778925, 0.2412937) This seems reasonably like a normal > approximation 95% CI (which I presume is what is used by prop.test()) of the > true binomial but I did not actually check it by hand. > > BUG summary. The prop.test() calculation of 95% CI of sample proportions is > improperly calculated when continuity correction is turned off.No, it isn't a bug. It uses a Normal approximation, but not the one you were using. It is based on inverting the score test rather than the Wald test, and is substantially more accurate. Checking by simulation: n=42, p=0.1, 10,000 replicates, the coverage from prop.test without correction was 96.7%, with correction was 97.9% and from the Wald-based Normal approximation was 92.3%. -thomas
rbaer@kcom.edu writes:> As an example, I include x=6 and n=42 which has a mean proportion of 0.115....n=52...> When I calculate the 95% CI using the normal approximation by hand (and no > continuity correction) I get (0.028, 0.202). The exact binomial CI from > binom.test() is (0.044, 0.234). With correct=FALSE prop.test produces CI95 > (0.05396969, 0.22971664) which is neither of these. With correct=TRUE it > produces (0.04778925, 0.2412937) This seems reasonably like a normal > approximation 95% CI (which I presume is what is used by prop.test()) of the > true binomial but I did not actually check it by hand. > > BUG summary. The prop.test() calculation of 95% CI of sample proportions is > improperly calculated when continuity correction is turned off.Uhm... Basically, we know the correct answer from binom.test, and R's intervals are considerably closer to that than the textbook p+-2*se(p) formula. So R has a bug because it isn't inaccurate enough?? This might enlighten you: prop.test(6,52,p=.05396969,alt="g",correct=F) prop.test(6,52,p=.22971664,alt="l",correct=F) also, consider the case x=0. -- O__ ---- Peter Dalgaard Blegdamsvej 3 c/ /'_ --- Dept. of Biostatistics 2200 Cph. N (*) \(*) -- University of Copenhagen Denmark Ph: (+45) 35327918 ~~~~~~~~~~ - (p.dalgaard@biostat.ku.dk) FAX: (+45) 35327907
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