/*! This file is auto-generated */ .wp-block-button__link{color:#fff;background-color:#32373c;border-radius:9999px;box-shadow:none;text-decoration:none;padding:calc(.667em + 2px) calc(1.333em + 2px);font-size:1.125em}.wp-block-file__button{background:#32373c;color:#fff;text-decoration:none} Q 3E Suppose that \({X_1},...,{X_n}\)... [FREE SOLUTION] | 91Ó°ÊÓ

91Ó°ÊÓ

Suppose that \({X_1},...,{X_n}\) form a random sample from the normal distribution with known mean μ and unknown precision \(\tau \left( {\tau > 0} \right)\). Suppose also that the prior distribution of \(\tau \) is the gamma distribution with parameters\({\alpha _0}\,\,\,{\rm{and}}\,\,\,\,{\beta _0}\left( {{\alpha _0} > 0\,\,\,{\rm{and}}\,\,\,{\beta _0} > 0} \right)\) . Show that the posterior distribution of \(\tau \) given that \({X_i} = {x_i}\) (i = 1, . . . , n) is the gamma distribution with parameters \({\alpha _0} + \frac{n}{2}\,\,\,\,{\rm{and}}\,\,\,\,\,{\beta _0} + \frac{1}{2}\sum\limits_{i = 1}^N {{{\left( {{x_i} - \mu } \right)}^2}} \).

Short Answer

Expert verified

posterior distribution of \(\tau \) given that \({X_i} = {x_i}\) (i = 1, . . . , n) is the gamma distribution with parameters \({\alpha _0} + \frac{n}{2}\,\,\,\,{\rm{and}}\,\,\,\,\,{\beta _0} + \frac{1}{2}\sum\limits_{i = 1}^N {{{\left( {{x_i} - \mu } \right)}^2}} \).

Step by step solution

01

Given information 

Suppose that \({X_1},...,{X_n}\) form a random sample from the normal distribution with known mean μ and unknown precision \(\tau \left( {\tau > 0} \right)\). Suppose also that the prior distribution of τ is the gamma distribution with parameters\({\alpha _0}\,\,\,{\rm{and}}\,\,\,\,{\beta _0}\left( {{\alpha _0} > 0\,\,\,{\rm{and}}\,\,\,{\beta _0} > 0} \right)\).It is required to show that the posterior distribution of \(\tau \) given that \({X_i} = {x_i}\) (i = 1, . . . , n) is the gamma distribution with parameters \({\alpha _0} + \frac{n}{2}\,\,\,\,{\rm{and}}\,\,\,\,\,{\beta _0} + \frac{1}{2}\sum\limits_{i = 1}^N {{{\left( {{x_i} - \mu } \right)}^{2}}} \)

02

Proof of posterior distribution of \(\tau \)  given that \({X_i} = {x_i}\) (i = 1, . . . , n) is the gamma distribution with parameters \({\alpha _0} + \frac{n}{2}\,\,\,\,{\rm{and}}\,\,\,\,\,{\beta _0} + \frac{1}{2}\sum\limits_{i = 1}^N {{{\left( {{x_i} - \mu } \right)}^2}} \) 

Precision of a Normal Distribution. The precision Ï„ of a normal distribution is defined as the reciprocal of the variance; that is,\(\tau = \frac{1}{{{\sigma ^2}}}\)

The joint distribution pdf of i.i.d. random variables \({X_1},...,{X_n}\)from the normal distribution with mean \(\mu \) and precision \(\tau \) is given by

\(\exp \left( { - \frac{1}{2}\tau \sum\limits_{i = 1}^n {{{\left( {{x_i} - \mu } \right)}^2}} } \right), - \infty < x < \infty \)

The posterior distribution of \(\tau \) given \({X_1} = {x_1},....,{X_n} = {x_n}\) is proportional to

\(\xi \left( {\tau ;x} \right) = f\left( {x;\mu ,\tau } \right)\xi \left( \tau \right)\) It is to be noted that the prior distribution\(\xi \left( \tau \right)\) is expressed as

posterior distribution of \(\tau \) given that \({X_i} = {x_i}\) (i = 1, . . . , n) is the gamma distribution with parameters \({\alpha _0} + \frac{n}{2}\,\,\,\,{\rm{and}}\,\,\,\,\,{\beta _0} + \frac{1}{2}\sum\limits_{i = 1}^N {{{\left( {{x_i} - \mu } \right)}^2}} \)

Hence the proof.

Unlock Step-by-Step Solutions & Ace Your Exams!

  • Full Textbook Solutions

    Get detailed explanations and key concepts

  • Unlimited Al creation

    Al flashcards, explanations, exams and more...

  • Ads-free access

    To over 500 millions flashcards

  • Money-back guarantee

    We refund you if you fail your exam.

Over 30 million students worldwide already upgrade their learning with 91Ó°ÊÓ!

One App. One Place for Learning.

All the tools & learning materials you need for study success - in one app.

Get started for free

Most popular questions from this chapter

Suppose that we will sample 20 chunks of cheese in Example 8.2.3. Let\({\bf{T = }}\sum\limits_{{\bf{i = 1}}}^{{\bf{20}}} {{{\left( {{{\bf{X}}_{\bf{i}}}{\bf{ - \mu }}} \right)}^{\bf{2}}}{\bf{/20}}} \)wherexiis the concentration of lactic acid in theith chunk. Assume thatσ2=0.09. What numbercsatisfies Pr(T≤c)=0.9?

Question:Suppose that X has the geometric distribution with parameter p. (See Sec. 5.5.) Find the Fisher information I (p) in X.

For the conditions of Exercise 5, use the central limit theorem in Sec. 6.3 to find approximately the size of a random sample that must be taken so that \(P\left( {{\bf{|}}{{{\bf{\bar X}}}_{\bf{n}}} - {\bf{p|}}} \right) \ge 0.95\) whenp=0.2.

We will draw a sample of size n = 11 from the normal distribution with the mean \({\bf{\mu }}\,\,{\bf{and}}\,\,{\bf{\tau }}\). We will use a natural conjugate prior for the parameters \({\bf{\mu }}\,\,{\bf{and}}\,\,{\bf{\tau }}\) from the normal-gamma family with hyperparameters \({{\bf{\alpha }}_{\bf{0}}}{\bf{ = 2,}}{{\bf{\beta }}_{\bf{0}}}{\bf{ = 1,}}{{\bf{\mu }}_{\bf{0}}}{\bf{ = 3}}{\bf{.5}}\,\,{\bf{and}}\,\,{{\bf{\lambda }}_{\bf{0}}}{\bf{ = 2}}\)

The sample yields an average of \(\overline {{{\bf{x}}_{\bf{n}}}} {\bf{ = 7}}{\bf{.2}}\,\,{\bf{and}}\,\,{{\bf{s}}_{\bf{n}}}^{\bf{2}}{\bf{ = 20}}{\bf{.3}}\)

a. Find the posterior hyperparameters.

b. Find an interval that contains 95% of the posterior distribution of \({\bf{\mu }}\).

Determine whether or not each of the five following matrices is orthogonal:

  1. \(\left( {\begin{align}{\bf{0}}&{\bf{1}}&{\bf{0}}\\{\bf{0}}&{\bf{0}}&{\bf{1}}\\{\bf{1}}&{\bf{0}}&{\bf{0}}\end{align}} \right)\)
  2. \(\left( {\begin{align}{{\bf{0}}{\bf{.8}}}&{\bf{0}}&{{\bf{0}}{\bf{.6}}}\\{{\bf{ - 0}}{\bf{.6}}}&{\bf{0}}&{{\bf{0}}{\bf{.8}}}\\{\bf{0}}&{{\bf{ - 1}}}&{\bf{0}}\end{align}} \right)\)
  3. \(\left( {\begin{align}{{\bf{0}}{\bf{.8}}}&{\bf{0}}&{{\bf{0}}{\bf{.6}}}\\{{\bf{ - 0}}{\bf{.6}}}&{\bf{0}}&{{\bf{0}}{\bf{.8}}}\\{\bf{0}}&{{\bf{0}}{\bf{.5}}}&{\bf{0}}\end{align}} \right)\)
  4. \(\left( {\begin{align}{}{{\bf{ - }}\frac{{\bf{1}}}{{\sqrt {\bf{3}} }}}&{\frac{{\bf{1}}}{{\sqrt {\bf{3}} }}}&{\frac{{\bf{1}}}{{\sqrt {\bf{3}} }}}\\{\frac{{\bf{1}}}{{\sqrt {\bf{3}} }}}&{{\bf{ - }}\frac{{\bf{1}}}{{\sqrt {\bf{3}} }}}&{\frac{{\bf{1}}}{{\sqrt {\bf{3}} }}}\\{\frac{{\bf{1}}}{{\sqrt {\bf{3}} }}}&{\frac{{\bf{1}}}{{\sqrt {\bf{3}} }}}&{{\bf{ - }}\frac{{\bf{1}}}{{\sqrt {\bf{3}} }}}\end{align}} \right)\)
  5. \(\left( {\begin{align}{}{\frac{{\bf{1}}}{{\bf{2}}}}&{\frac{{\bf{1}}}{{\bf{2}}}}&{\frac{{\bf{1}}}{{\bf{2}}}}&{\frac{{\bf{1}}}{{\bf{2}}}}\\{{\bf{ - }}\frac{{\bf{1}}}{{\bf{2}}}}&{{\bf{ - }}\frac{{\bf{1}}}{{\bf{2}}}}&{\frac{{\bf{1}}}{{\bf{2}}}}&{\frac{{\bf{1}}}{{\bf{2}}}}\\{{\bf{ - }}\frac{{\bf{1}}}{{\bf{2}}}}&{\frac{{\bf{1}}}{{\bf{2}}}}&{{\bf{ - }}\frac{{\bf{1}}}{{\bf{2}}}}&{\frac{{\bf{1}}}{{\bf{2}}}}\\{{\bf{ - }}\frac{{\bf{1}}}{{\bf{2}}}}&{\frac{{\bf{1}}}{{\bf{2}}}}&{\frac{{\bf{1}}}{{\bf{2}}}}&{{\bf{ - }}\frac{{\bf{1}}}{{\bf{2}}}}\end{align}} \right)\)
See all solutions

Recommended explanations on Math Textbooks

View all explanations

What do you think about this solution?

We value your feedback to improve our textbook solutions.

Study anywhere. Anytime. Across all devices.