How do we build a confidence interval for the parameter of the exponential distribution? Announcing the arrival of Valued Associate #679: Cesar Manara Planned maintenance scheduled April 23, 2019 at 23:30 UTC (7:30pm US/Eastern)Confidence Interval of estimator for the exponential distributionHow to compute confidence interval from a confidence distributionparameter and prediction confidence intervalsConfidence interval for known non-normal estimation?Confidence interval for exponential distributionA confidence area for an Archimedean's copula familyIs the canonical parameter (and therefore the canonical link function) for a Gamma not unique?UMAU confidence interval for $theta$ in a shifted exponential distributionCalculate the constants and the MSE from two estimators related to a uniform distributionBinomial distributed random sample: find the least variance from the set of all unbiased estimators of $theta$Build an approximated confidence interval for $sigma$ based on its maximum likelihood estimator

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How do we build a confidence interval for the parameter of the exponential distribution?



Announcing the arrival of Valued Associate #679: Cesar Manara
Planned maintenance scheduled April 23, 2019 at 23:30 UTC (7:30pm US/Eastern)Confidence Interval of estimator for the exponential distributionHow to compute confidence interval from a confidence distributionparameter and prediction confidence intervalsConfidence interval for known non-normal estimation?Confidence interval for exponential distributionA confidence area for an Archimedean's copula familyIs the canonical parameter (and therefore the canonical link function) for a Gamma not unique?UMAU confidence interval for $theta$ in a shifted exponential distributionCalculate the constants and the MSE from two estimators related to a uniform distributionBinomial distributed random sample: find the least variance from the set of all unbiased estimators of $theta$Build an approximated confidence interval for $sigma$ based on its maximum likelihood estimator



.everyoneloves__top-leaderboard:empty,.everyoneloves__mid-leaderboard:empty,.everyoneloves__bot-mid-leaderboard:empty margin-bottom:0;








1












$begingroup$


EDIT



Let $X_1,X_2,ldots,X_n$ be a random sample whose distribution is given by $textExp(theta)$, where $theta$ is not known. Precisely, $f(x|theta) = (1/theta)exp(-x/theta)$ Describe a method to build a confidence interval with confidence coefficient $1 - alpha$ for $theta$.



MY ATTEMPT



Since the distribution in discussion is not normal and I do not know the size of the sample, I think we cannot apply the central limit theorem. One possible approach is to consider the maximum likelihood estimator of $theta$, whose distribution is approximately $mathcalN(theta,(nI_F(theta))^-1)$. Another possible approach consists in using the score function, whose distribution is approximately $mathcalN(0,nI_F(theta))$. However, in both cases, it is assumed the CLT is applicable.



The exercise also provides the following hint: find $c_1$ and $c_2$ such that
beginalign*
textbfPleft(c_1 < frac1thetasum_i=1^n X_i < c_2right) = 1 -alpha
endalign*



Can someone help me out? Thanks in advance!










share|cite|improve this question











$endgroup$







  • 1




    $begingroup$
    You should clarify which parameterization of the exponential distribution you're using. From the later parts of your post it looks like you're using the scale parameterization rather than the rate parameterization but you should be explicit, not leave it to people to guess.
    $endgroup$
    – Glen_b
    Apr 15 at 2:03










  • $begingroup$
    Thanks for the comment and sorry for the inconvenience. I edited the question.
    $endgroup$
    – user1337
    Apr 15 at 2:34






  • 1




    $begingroup$
    Okay, you've defined it as the rate parameterization, which is fine, but then the hint at the end is wrong.
    $endgroup$
    – Glen_b
    Apr 15 at 2:40











  • $begingroup$
    For rather large $n$ an approach using the CLT might provide a useful approximation. My answer gives an exact CI that works even for small $n.$
    $endgroup$
    – BruceET
    Apr 15 at 2:49










  • $begingroup$
    There are so many options here because there are different choices of pivots. A C.I. could also be found using $min X_i$ which also has an exp distribution, but this won't be as 'good' as the one based on $sum X_i$.
    $endgroup$
    – StubbornAtom
    Apr 15 at 6:18

















1












$begingroup$


EDIT



Let $X_1,X_2,ldots,X_n$ be a random sample whose distribution is given by $textExp(theta)$, where $theta$ is not known. Precisely, $f(x|theta) = (1/theta)exp(-x/theta)$ Describe a method to build a confidence interval with confidence coefficient $1 - alpha$ for $theta$.



MY ATTEMPT



Since the distribution in discussion is not normal and I do not know the size of the sample, I think we cannot apply the central limit theorem. One possible approach is to consider the maximum likelihood estimator of $theta$, whose distribution is approximately $mathcalN(theta,(nI_F(theta))^-1)$. Another possible approach consists in using the score function, whose distribution is approximately $mathcalN(0,nI_F(theta))$. However, in both cases, it is assumed the CLT is applicable.



The exercise also provides the following hint: find $c_1$ and $c_2$ such that
beginalign*
textbfPleft(c_1 < frac1thetasum_i=1^n X_i < c_2right) = 1 -alpha
endalign*



Can someone help me out? Thanks in advance!










share|cite|improve this question











$endgroup$







  • 1




    $begingroup$
    You should clarify which parameterization of the exponential distribution you're using. From the later parts of your post it looks like you're using the scale parameterization rather than the rate parameterization but you should be explicit, not leave it to people to guess.
    $endgroup$
    – Glen_b
    Apr 15 at 2:03










  • $begingroup$
    Thanks for the comment and sorry for the inconvenience. I edited the question.
    $endgroup$
    – user1337
    Apr 15 at 2:34






  • 1




    $begingroup$
    Okay, you've defined it as the rate parameterization, which is fine, but then the hint at the end is wrong.
    $endgroup$
    – Glen_b
    Apr 15 at 2:40











  • $begingroup$
    For rather large $n$ an approach using the CLT might provide a useful approximation. My answer gives an exact CI that works even for small $n.$
    $endgroup$
    – BruceET
    Apr 15 at 2:49










  • $begingroup$
    There are so many options here because there are different choices of pivots. A C.I. could also be found using $min X_i$ which also has an exp distribution, but this won't be as 'good' as the one based on $sum X_i$.
    $endgroup$
    – StubbornAtom
    Apr 15 at 6:18













1












1








1


0



$begingroup$


EDIT



Let $X_1,X_2,ldots,X_n$ be a random sample whose distribution is given by $textExp(theta)$, where $theta$ is not known. Precisely, $f(x|theta) = (1/theta)exp(-x/theta)$ Describe a method to build a confidence interval with confidence coefficient $1 - alpha$ for $theta$.



MY ATTEMPT



Since the distribution in discussion is not normal and I do not know the size of the sample, I think we cannot apply the central limit theorem. One possible approach is to consider the maximum likelihood estimator of $theta$, whose distribution is approximately $mathcalN(theta,(nI_F(theta))^-1)$. Another possible approach consists in using the score function, whose distribution is approximately $mathcalN(0,nI_F(theta))$. However, in both cases, it is assumed the CLT is applicable.



The exercise also provides the following hint: find $c_1$ and $c_2$ such that
beginalign*
textbfPleft(c_1 < frac1thetasum_i=1^n X_i < c_2right) = 1 -alpha
endalign*



Can someone help me out? Thanks in advance!










share|cite|improve this question











$endgroup$




EDIT



Let $X_1,X_2,ldots,X_n$ be a random sample whose distribution is given by $textExp(theta)$, where $theta$ is not known. Precisely, $f(x|theta) = (1/theta)exp(-x/theta)$ Describe a method to build a confidence interval with confidence coefficient $1 - alpha$ for $theta$.



MY ATTEMPT



Since the distribution in discussion is not normal and I do not know the size of the sample, I think we cannot apply the central limit theorem. One possible approach is to consider the maximum likelihood estimator of $theta$, whose distribution is approximately $mathcalN(theta,(nI_F(theta))^-1)$. Another possible approach consists in using the score function, whose distribution is approximately $mathcalN(0,nI_F(theta))$. However, in both cases, it is assumed the CLT is applicable.



The exercise also provides the following hint: find $c_1$ and $c_2$ such that
beginalign*
textbfPleft(c_1 < frac1thetasum_i=1^n X_i < c_2right) = 1 -alpha
endalign*



Can someone help me out? Thanks in advance!







self-study confidence-interval exponential-distribution






share|cite|improve this question















share|cite|improve this question













share|cite|improve this question




share|cite|improve this question








edited Apr 16 at 23:29







user1337

















asked Apr 14 at 23:22









user1337user1337

1985




1985







  • 1




    $begingroup$
    You should clarify which parameterization of the exponential distribution you're using. From the later parts of your post it looks like you're using the scale parameterization rather than the rate parameterization but you should be explicit, not leave it to people to guess.
    $endgroup$
    – Glen_b
    Apr 15 at 2:03










  • $begingroup$
    Thanks for the comment and sorry for the inconvenience. I edited the question.
    $endgroup$
    – user1337
    Apr 15 at 2:34






  • 1




    $begingroup$
    Okay, you've defined it as the rate parameterization, which is fine, but then the hint at the end is wrong.
    $endgroup$
    – Glen_b
    Apr 15 at 2:40











  • $begingroup$
    For rather large $n$ an approach using the CLT might provide a useful approximation. My answer gives an exact CI that works even for small $n.$
    $endgroup$
    – BruceET
    Apr 15 at 2:49










  • $begingroup$
    There are so many options here because there are different choices of pivots. A C.I. could also be found using $min X_i$ which also has an exp distribution, but this won't be as 'good' as the one based on $sum X_i$.
    $endgroup$
    – StubbornAtom
    Apr 15 at 6:18












  • 1




    $begingroup$
    You should clarify which parameterization of the exponential distribution you're using. From the later parts of your post it looks like you're using the scale parameterization rather than the rate parameterization but you should be explicit, not leave it to people to guess.
    $endgroup$
    – Glen_b
    Apr 15 at 2:03










  • $begingroup$
    Thanks for the comment and sorry for the inconvenience. I edited the question.
    $endgroup$
    – user1337
    Apr 15 at 2:34






  • 1




    $begingroup$
    Okay, you've defined it as the rate parameterization, which is fine, but then the hint at the end is wrong.
    $endgroup$
    – Glen_b
    Apr 15 at 2:40











  • $begingroup$
    For rather large $n$ an approach using the CLT might provide a useful approximation. My answer gives an exact CI that works even for small $n.$
    $endgroup$
    – BruceET
    Apr 15 at 2:49










  • $begingroup$
    There are so many options here because there are different choices of pivots. A C.I. could also be found using $min X_i$ which also has an exp distribution, but this won't be as 'good' as the one based on $sum X_i$.
    $endgroup$
    – StubbornAtom
    Apr 15 at 6:18







1




1




$begingroup$
You should clarify which parameterization of the exponential distribution you're using. From the later parts of your post it looks like you're using the scale parameterization rather than the rate parameterization but you should be explicit, not leave it to people to guess.
$endgroup$
– Glen_b
Apr 15 at 2:03




$begingroup$
You should clarify which parameterization of the exponential distribution you're using. From the later parts of your post it looks like you're using the scale parameterization rather than the rate parameterization but you should be explicit, not leave it to people to guess.
$endgroup$
– Glen_b
Apr 15 at 2:03












$begingroup$
Thanks for the comment and sorry for the inconvenience. I edited the question.
$endgroup$
– user1337
Apr 15 at 2:34




$begingroup$
Thanks for the comment and sorry for the inconvenience. I edited the question.
$endgroup$
– user1337
Apr 15 at 2:34




1




1




$begingroup$
Okay, you've defined it as the rate parameterization, which is fine, but then the hint at the end is wrong.
$endgroup$
– Glen_b
Apr 15 at 2:40





$begingroup$
Okay, you've defined it as the rate parameterization, which is fine, but then the hint at the end is wrong.
$endgroup$
– Glen_b
Apr 15 at 2:40













$begingroup$
For rather large $n$ an approach using the CLT might provide a useful approximation. My answer gives an exact CI that works even for small $n.$
$endgroup$
– BruceET
Apr 15 at 2:49




$begingroup$
For rather large $n$ an approach using the CLT might provide a useful approximation. My answer gives an exact CI that works even for small $n.$
$endgroup$
– BruceET
Apr 15 at 2:49












$begingroup$
There are so many options here because there are different choices of pivots. A C.I. could also be found using $min X_i$ which also has an exp distribution, but this won't be as 'good' as the one based on $sum X_i$.
$endgroup$
– StubbornAtom
Apr 15 at 6:18




$begingroup$
There are so many options here because there are different choices of pivots. A C.I. could also be found using $min X_i$ which also has an exp distribution, but this won't be as 'good' as the one based on $sum X_i$.
$endgroup$
– StubbornAtom
Apr 15 at 6:18










2 Answers
2






active

oldest

votes


















2












$begingroup$

Taking $theta$ as the scale parameter, it can be shown that $n barX/theta sim textGa(n,1)$. To form a confidence interval we choose any critical points $c_1 < c_2$ from the $textGa(n,1)$ distribution such that these points contain probability $1-alpha$ of the distribution. Using the above pivotal quantity we then have:



$$mathbbP Bigg( c_1 leqslant fracn barXtheta leqslant c_2 Bigg) = 1-alpha
quad quad quad quad quad
int limits_c_1^c_2 textGa(r|n,1) dr = 1 - alpha.$$



Re-arranging the inequality in this probability statement and substituting the observed sample mean gives the confidence interval:



$$textCI_theta(1-alpha) = Bigg[ fracn barxc_2 , fracn barxc_1 Bigg].$$



This confidence interval is valid for any choice of $c_1<c_2$ so long as it obeys the required integral condition. For simplicity, many analysts use the symmetric critical points. However, it is possible to optimise the confidence interval by minimising its length, which we show below.




Optimising the confidence interval: The length of this confidence interval is proportional to $1/c_1-1/c_2$, and so we minimise the length of the interval by choosing the critical points to minimise this distance. This can be done using the nlm function in R. In the following code we give a function for the minimum-length confidence interval for this problem, which we apply to some simulated data.



#Set the objective function for minimisation
OBJECTIVE <- function(c1, n, alpha)
pp <- pgamma(c1, n, 1, lower.tail = TRUE);
c2 <- qgamma(1 - alpha + pp, n, 1, lower.tail = TRUE);
1/c1 - 1/c2;

#Find the minimum-length confidence interval
CONF_INT <- function(n, alpha, xbar)
START_c1 <- qgamma(alpha/2, n, 1, lower.tail = TRUE);
MINIMISE <- nlm(f = OBJECTIVE, p = START_c1, n = n, alpha = alpha);
c1 <- MINIMISE$estimate;
pp <- pgamma(c1, n, 1, lower.tail = TRUE);
c2 <- qgamma(1 - alpha + pp, n, 1, lower.tail = TRUE);
c(n*xbar/c2, n*xbar/c1);

#Generate simulation data
set.seed(921730198);
n <- 300;
scale <- 25.4;
DATA <- rexp(n, rate = 1/scale);

#Application of confidence interval to simulated data
n <- length(DATA);
xbar <- mean(DATA);
alpha <- 0.05;

CONF_INT(n, alpha, xbar);

[1] 23.32040 29.24858





share|cite|improve this answer











$endgroup$




















    1












    $begingroup$

    You don't say how the exponential distribution is
    parameterized. Two parameterizations are in common use--mean and rate.



    Let $E(X_i) = mu.$ Then one
    can show that $$frac 1 mu sum_i=1^n X_i sim
    mathsfGamma(textshape = n, textrate=scale = 1).$$



    In R statistical software the exponential distribution is parameterized according rate $lambda = 1/mu.$ Let $n = 10$ and $lambda = 1/5,$ so that $mu = 5.$ The following program simulates $m = 10^6$ samples of size $n = 10$ from $mathsfExp(textrate = lambda = 1/5),$ finds $$Q = frac 1 mu sum_i=1^n X_i =
    lambda sum_i=1^n X_i$$
    for each sample, and plots the histogram of the one million $Q$'s, The figure
    illustrates that $Q sim mathsfGamma(10, 1).$
    (Use MGFs for a formal proof.)



    set.seed(414) # for reproducibility
    q = replicate(10^5, sum(rexp(10, 1/5))/5)
    lbl = "Simulated Dist'n of Q with Density of GAMMA(10, 1)"
    hist(q, prob=T, br=30, col="skyblue2", main=lbl)
    curve(dgamma(x,10,1), col="red", add=T)


    enter image description here



    Thus, for $n = 10$ the constants $c_1 = 4.975$ and
    $c_2 = 17.084$ for
    a 95% confidence interval are quantiles 0.025 and 0.975, respectively, of $Q sim mathsfGamma(10, 1).$



    qgamma(c(.025, .975), 10, 1)
    [1] 4.795389 17.084803


    In particular, for the exponential sample shown below (second row),
    a 95% confidence interval is $(2.224, 7.922).$ Notice the reversal of the quantiles in 'pivoting' $Q,$ which
    has $mu$ in the denominator.



    set.seed(1234); x = sort(round(rexp(10, 1/5), 2)); x
    [1] 0.03 0.45 1.01 1.23 1.94 3.80 4.12 4.19 8.71 12.51
    t = sum(x); t
    [1] 37.99
    t/qgamma(c(.975, .025), 10, 1)
    [1] 2.223614 7.922194


    Note: Because the chi-squared distribution is a member of the gamma family, it is possible to find endpoints for such a confidence interval in terms of a chi-squared distribution.



    See Wikipedia on exponential distributions under 'confidence intervals'. (That discussion uses rate parameter $lambda$ for the exponential distribution, instead of $mu.)$






    share|cite|improve this answer











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      2 Answers
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      2 Answers
      2






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      active

      oldest

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      active

      oldest

      votes









      2












      $begingroup$

      Taking $theta$ as the scale parameter, it can be shown that $n barX/theta sim textGa(n,1)$. To form a confidence interval we choose any critical points $c_1 < c_2$ from the $textGa(n,1)$ distribution such that these points contain probability $1-alpha$ of the distribution. Using the above pivotal quantity we then have:



      $$mathbbP Bigg( c_1 leqslant fracn barXtheta leqslant c_2 Bigg) = 1-alpha
      quad quad quad quad quad
      int limits_c_1^c_2 textGa(r|n,1) dr = 1 - alpha.$$



      Re-arranging the inequality in this probability statement and substituting the observed sample mean gives the confidence interval:



      $$textCI_theta(1-alpha) = Bigg[ fracn barxc_2 , fracn barxc_1 Bigg].$$



      This confidence interval is valid for any choice of $c_1<c_2$ so long as it obeys the required integral condition. For simplicity, many analysts use the symmetric critical points. However, it is possible to optimise the confidence interval by minimising its length, which we show below.




      Optimising the confidence interval: The length of this confidence interval is proportional to $1/c_1-1/c_2$, and so we minimise the length of the interval by choosing the critical points to minimise this distance. This can be done using the nlm function in R. In the following code we give a function for the minimum-length confidence interval for this problem, which we apply to some simulated data.



      #Set the objective function for minimisation
      OBJECTIVE <- function(c1, n, alpha)
      pp <- pgamma(c1, n, 1, lower.tail = TRUE);
      c2 <- qgamma(1 - alpha + pp, n, 1, lower.tail = TRUE);
      1/c1 - 1/c2;

      #Find the minimum-length confidence interval
      CONF_INT <- function(n, alpha, xbar)
      START_c1 <- qgamma(alpha/2, n, 1, lower.tail = TRUE);
      MINIMISE <- nlm(f = OBJECTIVE, p = START_c1, n = n, alpha = alpha);
      c1 <- MINIMISE$estimate;
      pp <- pgamma(c1, n, 1, lower.tail = TRUE);
      c2 <- qgamma(1 - alpha + pp, n, 1, lower.tail = TRUE);
      c(n*xbar/c2, n*xbar/c1);

      #Generate simulation data
      set.seed(921730198);
      n <- 300;
      scale <- 25.4;
      DATA <- rexp(n, rate = 1/scale);

      #Application of confidence interval to simulated data
      n <- length(DATA);
      xbar <- mean(DATA);
      alpha <- 0.05;

      CONF_INT(n, alpha, xbar);

      [1] 23.32040 29.24858





      share|cite|improve this answer











      $endgroup$

















        2












        $begingroup$

        Taking $theta$ as the scale parameter, it can be shown that $n barX/theta sim textGa(n,1)$. To form a confidence interval we choose any critical points $c_1 < c_2$ from the $textGa(n,1)$ distribution such that these points contain probability $1-alpha$ of the distribution. Using the above pivotal quantity we then have:



        $$mathbbP Bigg( c_1 leqslant fracn barXtheta leqslant c_2 Bigg) = 1-alpha
        quad quad quad quad quad
        int limits_c_1^c_2 textGa(r|n,1) dr = 1 - alpha.$$



        Re-arranging the inequality in this probability statement and substituting the observed sample mean gives the confidence interval:



        $$textCI_theta(1-alpha) = Bigg[ fracn barxc_2 , fracn barxc_1 Bigg].$$



        This confidence interval is valid for any choice of $c_1<c_2$ so long as it obeys the required integral condition. For simplicity, many analysts use the symmetric critical points. However, it is possible to optimise the confidence interval by minimising its length, which we show below.




        Optimising the confidence interval: The length of this confidence interval is proportional to $1/c_1-1/c_2$, and so we minimise the length of the interval by choosing the critical points to minimise this distance. This can be done using the nlm function in R. In the following code we give a function for the minimum-length confidence interval for this problem, which we apply to some simulated data.



        #Set the objective function for minimisation
        OBJECTIVE <- function(c1, n, alpha)
        pp <- pgamma(c1, n, 1, lower.tail = TRUE);
        c2 <- qgamma(1 - alpha + pp, n, 1, lower.tail = TRUE);
        1/c1 - 1/c2;

        #Find the minimum-length confidence interval
        CONF_INT <- function(n, alpha, xbar)
        START_c1 <- qgamma(alpha/2, n, 1, lower.tail = TRUE);
        MINIMISE <- nlm(f = OBJECTIVE, p = START_c1, n = n, alpha = alpha);
        c1 <- MINIMISE$estimate;
        pp <- pgamma(c1, n, 1, lower.tail = TRUE);
        c2 <- qgamma(1 - alpha + pp, n, 1, lower.tail = TRUE);
        c(n*xbar/c2, n*xbar/c1);

        #Generate simulation data
        set.seed(921730198);
        n <- 300;
        scale <- 25.4;
        DATA <- rexp(n, rate = 1/scale);

        #Application of confidence interval to simulated data
        n <- length(DATA);
        xbar <- mean(DATA);
        alpha <- 0.05;

        CONF_INT(n, alpha, xbar);

        [1] 23.32040 29.24858





        share|cite|improve this answer











        $endgroup$















          2












          2








          2





          $begingroup$

          Taking $theta$ as the scale parameter, it can be shown that $n barX/theta sim textGa(n,1)$. To form a confidence interval we choose any critical points $c_1 < c_2$ from the $textGa(n,1)$ distribution such that these points contain probability $1-alpha$ of the distribution. Using the above pivotal quantity we then have:



          $$mathbbP Bigg( c_1 leqslant fracn barXtheta leqslant c_2 Bigg) = 1-alpha
          quad quad quad quad quad
          int limits_c_1^c_2 textGa(r|n,1) dr = 1 - alpha.$$



          Re-arranging the inequality in this probability statement and substituting the observed sample mean gives the confidence interval:



          $$textCI_theta(1-alpha) = Bigg[ fracn barxc_2 , fracn barxc_1 Bigg].$$



          This confidence interval is valid for any choice of $c_1<c_2$ so long as it obeys the required integral condition. For simplicity, many analysts use the symmetric critical points. However, it is possible to optimise the confidence interval by minimising its length, which we show below.




          Optimising the confidence interval: The length of this confidence interval is proportional to $1/c_1-1/c_2$, and so we minimise the length of the interval by choosing the critical points to minimise this distance. This can be done using the nlm function in R. In the following code we give a function for the minimum-length confidence interval for this problem, which we apply to some simulated data.



          #Set the objective function for minimisation
          OBJECTIVE <- function(c1, n, alpha)
          pp <- pgamma(c1, n, 1, lower.tail = TRUE);
          c2 <- qgamma(1 - alpha + pp, n, 1, lower.tail = TRUE);
          1/c1 - 1/c2;

          #Find the minimum-length confidence interval
          CONF_INT <- function(n, alpha, xbar)
          START_c1 <- qgamma(alpha/2, n, 1, lower.tail = TRUE);
          MINIMISE <- nlm(f = OBJECTIVE, p = START_c1, n = n, alpha = alpha);
          c1 <- MINIMISE$estimate;
          pp <- pgamma(c1, n, 1, lower.tail = TRUE);
          c2 <- qgamma(1 - alpha + pp, n, 1, lower.tail = TRUE);
          c(n*xbar/c2, n*xbar/c1);

          #Generate simulation data
          set.seed(921730198);
          n <- 300;
          scale <- 25.4;
          DATA <- rexp(n, rate = 1/scale);

          #Application of confidence interval to simulated data
          n <- length(DATA);
          xbar <- mean(DATA);
          alpha <- 0.05;

          CONF_INT(n, alpha, xbar);

          [1] 23.32040 29.24858





          share|cite|improve this answer











          $endgroup$



          Taking $theta$ as the scale parameter, it can be shown that $n barX/theta sim textGa(n,1)$. To form a confidence interval we choose any critical points $c_1 < c_2$ from the $textGa(n,1)$ distribution such that these points contain probability $1-alpha$ of the distribution. Using the above pivotal quantity we then have:



          $$mathbbP Bigg( c_1 leqslant fracn barXtheta leqslant c_2 Bigg) = 1-alpha
          quad quad quad quad quad
          int limits_c_1^c_2 textGa(r|n,1) dr = 1 - alpha.$$



          Re-arranging the inequality in this probability statement and substituting the observed sample mean gives the confidence interval:



          $$textCI_theta(1-alpha) = Bigg[ fracn barxc_2 , fracn barxc_1 Bigg].$$



          This confidence interval is valid for any choice of $c_1<c_2$ so long as it obeys the required integral condition. For simplicity, many analysts use the symmetric critical points. However, it is possible to optimise the confidence interval by minimising its length, which we show below.




          Optimising the confidence interval: The length of this confidence interval is proportional to $1/c_1-1/c_2$, and so we minimise the length of the interval by choosing the critical points to minimise this distance. This can be done using the nlm function in R. In the following code we give a function for the minimum-length confidence interval for this problem, which we apply to some simulated data.



          #Set the objective function for minimisation
          OBJECTIVE <- function(c1, n, alpha)
          pp <- pgamma(c1, n, 1, lower.tail = TRUE);
          c2 <- qgamma(1 - alpha + pp, n, 1, lower.tail = TRUE);
          1/c1 - 1/c2;

          #Find the minimum-length confidence interval
          CONF_INT <- function(n, alpha, xbar)
          START_c1 <- qgamma(alpha/2, n, 1, lower.tail = TRUE);
          MINIMISE <- nlm(f = OBJECTIVE, p = START_c1, n = n, alpha = alpha);
          c1 <- MINIMISE$estimate;
          pp <- pgamma(c1, n, 1, lower.tail = TRUE);
          c2 <- qgamma(1 - alpha + pp, n, 1, lower.tail = TRUE);
          c(n*xbar/c2, n*xbar/c1);

          #Generate simulation data
          set.seed(921730198);
          n <- 300;
          scale <- 25.4;
          DATA <- rexp(n, rate = 1/scale);

          #Application of confidence interval to simulated data
          n <- length(DATA);
          xbar <- mean(DATA);
          alpha <- 0.05;

          CONF_INT(n, alpha, xbar);

          [1] 23.32040 29.24858






          share|cite|improve this answer














          share|cite|improve this answer



          share|cite|improve this answer








          edited Apr 15 at 10:10

























          answered Apr 15 at 4:44









          BenBen

          28.9k233129




          28.9k233129























              1












              $begingroup$

              You don't say how the exponential distribution is
              parameterized. Two parameterizations are in common use--mean and rate.



              Let $E(X_i) = mu.$ Then one
              can show that $$frac 1 mu sum_i=1^n X_i sim
              mathsfGamma(textshape = n, textrate=scale = 1).$$



              In R statistical software the exponential distribution is parameterized according rate $lambda = 1/mu.$ Let $n = 10$ and $lambda = 1/5,$ so that $mu = 5.$ The following program simulates $m = 10^6$ samples of size $n = 10$ from $mathsfExp(textrate = lambda = 1/5),$ finds $$Q = frac 1 mu sum_i=1^n X_i =
              lambda sum_i=1^n X_i$$
              for each sample, and plots the histogram of the one million $Q$'s, The figure
              illustrates that $Q sim mathsfGamma(10, 1).$
              (Use MGFs for a formal proof.)



              set.seed(414) # for reproducibility
              q = replicate(10^5, sum(rexp(10, 1/5))/5)
              lbl = "Simulated Dist'n of Q with Density of GAMMA(10, 1)"
              hist(q, prob=T, br=30, col="skyblue2", main=lbl)
              curve(dgamma(x,10,1), col="red", add=T)


              enter image description here



              Thus, for $n = 10$ the constants $c_1 = 4.975$ and
              $c_2 = 17.084$ for
              a 95% confidence interval are quantiles 0.025 and 0.975, respectively, of $Q sim mathsfGamma(10, 1).$



              qgamma(c(.025, .975), 10, 1)
              [1] 4.795389 17.084803


              In particular, for the exponential sample shown below (second row),
              a 95% confidence interval is $(2.224, 7.922).$ Notice the reversal of the quantiles in 'pivoting' $Q,$ which
              has $mu$ in the denominator.



              set.seed(1234); x = sort(round(rexp(10, 1/5), 2)); x
              [1] 0.03 0.45 1.01 1.23 1.94 3.80 4.12 4.19 8.71 12.51
              t = sum(x); t
              [1] 37.99
              t/qgamma(c(.975, .025), 10, 1)
              [1] 2.223614 7.922194


              Note: Because the chi-squared distribution is a member of the gamma family, it is possible to find endpoints for such a confidence interval in terms of a chi-squared distribution.



              See Wikipedia on exponential distributions under 'confidence intervals'. (That discussion uses rate parameter $lambda$ for the exponential distribution, instead of $mu.)$






              share|cite|improve this answer











              $endgroup$

















                1












                $begingroup$

                You don't say how the exponential distribution is
                parameterized. Two parameterizations are in common use--mean and rate.



                Let $E(X_i) = mu.$ Then one
                can show that $$frac 1 mu sum_i=1^n X_i sim
                mathsfGamma(textshape = n, textrate=scale = 1).$$



                In R statistical software the exponential distribution is parameterized according rate $lambda = 1/mu.$ Let $n = 10$ and $lambda = 1/5,$ so that $mu = 5.$ The following program simulates $m = 10^6$ samples of size $n = 10$ from $mathsfExp(textrate = lambda = 1/5),$ finds $$Q = frac 1 mu sum_i=1^n X_i =
                lambda sum_i=1^n X_i$$
                for each sample, and plots the histogram of the one million $Q$'s, The figure
                illustrates that $Q sim mathsfGamma(10, 1).$
                (Use MGFs for a formal proof.)



                set.seed(414) # for reproducibility
                q = replicate(10^5, sum(rexp(10, 1/5))/5)
                lbl = "Simulated Dist'n of Q with Density of GAMMA(10, 1)"
                hist(q, prob=T, br=30, col="skyblue2", main=lbl)
                curve(dgamma(x,10,1), col="red", add=T)


                enter image description here



                Thus, for $n = 10$ the constants $c_1 = 4.975$ and
                $c_2 = 17.084$ for
                a 95% confidence interval are quantiles 0.025 and 0.975, respectively, of $Q sim mathsfGamma(10, 1).$



                qgamma(c(.025, .975), 10, 1)
                [1] 4.795389 17.084803


                In particular, for the exponential sample shown below (second row),
                a 95% confidence interval is $(2.224, 7.922).$ Notice the reversal of the quantiles in 'pivoting' $Q,$ which
                has $mu$ in the denominator.



                set.seed(1234); x = sort(round(rexp(10, 1/5), 2)); x
                [1] 0.03 0.45 1.01 1.23 1.94 3.80 4.12 4.19 8.71 12.51
                t = sum(x); t
                [1] 37.99
                t/qgamma(c(.975, .025), 10, 1)
                [1] 2.223614 7.922194


                Note: Because the chi-squared distribution is a member of the gamma family, it is possible to find endpoints for such a confidence interval in terms of a chi-squared distribution.



                See Wikipedia on exponential distributions under 'confidence intervals'. (That discussion uses rate parameter $lambda$ for the exponential distribution, instead of $mu.)$






                share|cite|improve this answer











                $endgroup$















                  1












                  1








                  1





                  $begingroup$

                  You don't say how the exponential distribution is
                  parameterized. Two parameterizations are in common use--mean and rate.



                  Let $E(X_i) = mu.$ Then one
                  can show that $$frac 1 mu sum_i=1^n X_i sim
                  mathsfGamma(textshape = n, textrate=scale = 1).$$



                  In R statistical software the exponential distribution is parameterized according rate $lambda = 1/mu.$ Let $n = 10$ and $lambda = 1/5,$ so that $mu = 5.$ The following program simulates $m = 10^6$ samples of size $n = 10$ from $mathsfExp(textrate = lambda = 1/5),$ finds $$Q = frac 1 mu sum_i=1^n X_i =
                  lambda sum_i=1^n X_i$$
                  for each sample, and plots the histogram of the one million $Q$'s, The figure
                  illustrates that $Q sim mathsfGamma(10, 1).$
                  (Use MGFs for a formal proof.)



                  set.seed(414) # for reproducibility
                  q = replicate(10^5, sum(rexp(10, 1/5))/5)
                  lbl = "Simulated Dist'n of Q with Density of GAMMA(10, 1)"
                  hist(q, prob=T, br=30, col="skyblue2", main=lbl)
                  curve(dgamma(x,10,1), col="red", add=T)


                  enter image description here



                  Thus, for $n = 10$ the constants $c_1 = 4.975$ and
                  $c_2 = 17.084$ for
                  a 95% confidence interval are quantiles 0.025 and 0.975, respectively, of $Q sim mathsfGamma(10, 1).$



                  qgamma(c(.025, .975), 10, 1)
                  [1] 4.795389 17.084803


                  In particular, for the exponential sample shown below (second row),
                  a 95% confidence interval is $(2.224, 7.922).$ Notice the reversal of the quantiles in 'pivoting' $Q,$ which
                  has $mu$ in the denominator.



                  set.seed(1234); x = sort(round(rexp(10, 1/5), 2)); x
                  [1] 0.03 0.45 1.01 1.23 1.94 3.80 4.12 4.19 8.71 12.51
                  t = sum(x); t
                  [1] 37.99
                  t/qgamma(c(.975, .025), 10, 1)
                  [1] 2.223614 7.922194


                  Note: Because the chi-squared distribution is a member of the gamma family, it is possible to find endpoints for such a confidence interval in terms of a chi-squared distribution.



                  See Wikipedia on exponential distributions under 'confidence intervals'. (That discussion uses rate parameter $lambda$ for the exponential distribution, instead of $mu.)$






                  share|cite|improve this answer











                  $endgroup$



                  You don't say how the exponential distribution is
                  parameterized. Two parameterizations are in common use--mean and rate.



                  Let $E(X_i) = mu.$ Then one
                  can show that $$frac 1 mu sum_i=1^n X_i sim
                  mathsfGamma(textshape = n, textrate=scale = 1).$$



                  In R statistical software the exponential distribution is parameterized according rate $lambda = 1/mu.$ Let $n = 10$ and $lambda = 1/5,$ so that $mu = 5.$ The following program simulates $m = 10^6$ samples of size $n = 10$ from $mathsfExp(textrate = lambda = 1/5),$ finds $$Q = frac 1 mu sum_i=1^n X_i =
                  lambda sum_i=1^n X_i$$
                  for each sample, and plots the histogram of the one million $Q$'s, The figure
                  illustrates that $Q sim mathsfGamma(10, 1).$
                  (Use MGFs for a formal proof.)



                  set.seed(414) # for reproducibility
                  q = replicate(10^5, sum(rexp(10, 1/5))/5)
                  lbl = "Simulated Dist'n of Q with Density of GAMMA(10, 1)"
                  hist(q, prob=T, br=30, col="skyblue2", main=lbl)
                  curve(dgamma(x,10,1), col="red", add=T)


                  enter image description here



                  Thus, for $n = 10$ the constants $c_1 = 4.975$ and
                  $c_2 = 17.084$ for
                  a 95% confidence interval are quantiles 0.025 and 0.975, respectively, of $Q sim mathsfGamma(10, 1).$



                  qgamma(c(.025, .975), 10, 1)
                  [1] 4.795389 17.084803


                  In particular, for the exponential sample shown below (second row),
                  a 95% confidence interval is $(2.224, 7.922).$ Notice the reversal of the quantiles in 'pivoting' $Q,$ which
                  has $mu$ in the denominator.



                  set.seed(1234); x = sort(round(rexp(10, 1/5), 2)); x
                  [1] 0.03 0.45 1.01 1.23 1.94 3.80 4.12 4.19 8.71 12.51
                  t = sum(x); t
                  [1] 37.99
                  t/qgamma(c(.975, .025), 10, 1)
                  [1] 2.223614 7.922194


                  Note: Because the chi-squared distribution is a member of the gamma family, it is possible to find endpoints for such a confidence interval in terms of a chi-squared distribution.



                  See Wikipedia on exponential distributions under 'confidence intervals'. (That discussion uses rate parameter $lambda$ for the exponential distribution, instead of $mu.)$







                  share|cite|improve this answer














                  share|cite|improve this answer



                  share|cite|improve this answer








                  edited Apr 15 at 2:28

























                  answered Apr 15 at 1:53









                  BruceETBruceET

                  6,9611721




                  6,9611721



























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