Difference between revisions of "AP Statistics Curriculum 2007 Limits Norm2Poisson"

From SOCR
Jump to: navigation, search
(Normal Approximation to Poisson Distribution)
m (Text replacement - "{{translate|pageName=http://wiki.stat.ucla.edu/socr/" to ""{{translate|pageName=http://wiki.socr.umich.edu/")
 
(7 intermediate revisions by 3 users not shown)
Line 10: Line 10:
 
===Examples===
 
===Examples===
 
Suppose cars arrive at a parking lot at a rate of 50 per hour.  Let’s assume that the process is a Poisson random variable with <math> \lambda=50 </math>.  Compute the probability that in the next hour the number of cars that arrive at this parking lot will be between 54 and 62.  We can compute this as follows:
 
Suppose cars arrive at a parking lot at a rate of 50 per hour.  Let’s assume that the process is a Poisson random variable with <math> \lambda=50 </math>.  Compute the probability that in the next hour the number of cars that arrive at this parking lot will be between 54 and 62.  We can compute this as follows:
<math> P(54 \le X \le 62) = \sum_{x=54}^{62} \frac{50^x e^{-50}}{x!}=0.2617. </math>  The figure below from SOCR shows this probability.
+
<math> P(54 \le X \le 62) = \sum_{x=54}^{62} \frac{50^x e^{-50}}{x!}=0.2617. </math>  The figure below from the [http://socr.ucla.edu/htmls/SOCR_Distributions.html SOCR Poisson Distribution] shows this probability.
 
<center>[[Image: SOCR_Activities_ExploreDistributions_Christou_figure11.jpg|600px]]</center>
 
<center>[[Image: SOCR_Activities_ExploreDistributions_Christou_figure11.jpg|600px]]</center>
  
* '''Note''': We observe that this distribution is bell-shaped.  We can use the normal distribution to approximate this probability.  Using <math> N(\mu=50, \sigma=\sqrt{50}=7.071) </math>, together with the continuity correction for better approximation we obtain <math> P(54 \le X \le 62)=0.2718 </math>, which is close to the exact that was found earlier.  The figure below shows this probability.
+
* '''Note''': We observe that this distribution is bell-shaped.  We can use the normal distribution to approximate this probability.  Using <math> N(\mu=50, \sigma=\sqrt{50}=7.071) </math>, together with the continuity correction for better approximation we obtain $P(53.5<X<62.5| N(μ=50,σ=7.071))= 0.271759 $, which is close to the exact that was found earlier.  The figure below shows this probability using the [http://socr.ucla.edu/htmls/SOCR_Distributions.html SOCR Normal Distribution Applet].
 
<center>[[Image: SOCR_Activities_ExploreDistributions_Christou_figure12.jpg|600px]]</center>
 
<center>[[Image: SOCR_Activities_ExploreDistributions_Christou_figure12.jpg|600px]]</center>
  
 
<hr>
 
<hr>
===References===
+
 
 +
===Applications: Positron Emission Tomography===
 +
The [http://en.wikipedia.org/wiki/Positron_emission_tomography physics of positron emission tomography (PET)] provides evidence that the Poisson distribution model may be used to study the process of radioactive decay using positron emission. As tracer isotopes decay, they give off positively charged electrons which collide with negatively charged electrons the result of which (by the law of preservation of energy) is one or a pair of photons emitted at the [http://en.wikipedia.org/wiki/Electron-positron_annihilation annihilation point] in space and detected by photo-multiplying tubes surrounding the imaged object (e.g., a human body part like the brain). The (large) number of arrivals at each detector is a Poisson process, which can be approximated by Normal distribution, as described above. This figure shows the schematics of the PET imaging technique.
 +
<center>[[Image: SOCR_Activities_ExploreDistributions_Figure12.png|600px]]</center>
 +
 
 +
=== See also===
 +
[[AP_Statistics_Curriculum_2007_Distrib_Poisson| Poisson Distribution Section of the EBook]].
 +
 
 +
===[[EBook_Problems_Limits_Norm2Poisson|Problems]]===
  
 
<hr>
 
<hr>
 
* SOCR Home page: http://www.socr.ucla.edu
 
* SOCR Home page: http://www.socr.ucla.edu
  
{{translate|pageName=http://wiki.stat.ucla.edu/socr/index.php?title=AP_Statistics_Curriculum_2007_Limits_Norm2Poisson}}
+
"{{translate|pageName=http://wiki.socr.umich.edu/index.php?title=AP_Statistics_Curriculum_2007_Limits_Norm2Poisson}}

Latest revision as of 13:01, 3 March 2020

General Advance-Placement (AP) Statistics Curriculum - Normal Approximation to Poisson Distribution

Normal Approximation to Poisson Distribution

The Poisson(\( \lambda \)) Distribution can be approximated with Normal when \( \lambda \) is large.

For sufficiently large values of λ, (say λ>1,000), the Normal(\(\mu=\lambda, \sigma^2=\lambda\)) Distribution is an excellent approximation to the Poisson(λ) Distribution. If λ is greater than about 10, then the Normal Distribution is a good approximation if an appropriate continuity correction is performed.

If \(x_o\) is a non-negative integer, \(X\sim Poisson(\lambda)\) and \(U\sim Normal(\mu=\lambda, \sigma^2=\lambda\)), then \(P_X(X<x_o) = P_U(U<x_o+0.5)\).

Examples

Suppose cars arrive at a parking lot at a rate of 50 per hour. Let’s assume that the process is a Poisson random variable with \( \lambda=50 \). Compute the probability that in the next hour the number of cars that arrive at this parking lot will be between 54 and 62. We can compute this as follows\[ P(54 \le X \le 62) = \sum_{x=54}^{62} \frac{50^x e^{-50}}{x!}=0.2617. \] The figure below from the SOCR Poisson Distribution shows this probability.

SOCR Activities ExploreDistributions Christou figure11.jpg
  • Note: We observe that this distribution is bell-shaped. We can use the normal distribution to approximate this probability. Using \( N(\mu=50, \sigma=\sqrt{50}=7.071) \), together with the continuity correction for better approximation we obtain $P(53.5<X<62.5| N(μ=50,σ=7.071))= 0.271759 $, which is close to the exact that was found earlier. The figure below shows this probability using the SOCR Normal Distribution Applet.
SOCR Activities ExploreDistributions Christou figure12.jpg

Applications: Positron Emission Tomography

The physics of positron emission tomography (PET) provides evidence that the Poisson distribution model may be used to study the process of radioactive decay using positron emission. As tracer isotopes decay, they give off positively charged electrons which collide with negatively charged electrons the result of which (by the law of preservation of energy) is one or a pair of photons emitted at the annihilation point in space and detected by photo-multiplying tubes surrounding the imaged object (e.g., a human body part like the brain). The (large) number of arrivals at each detector is a Poisson process, which can be approximated by Normal distribution, as described above. This figure shows the schematics of the PET imaging technique.

SOCR Activities ExploreDistributions Figure12.png

See also

Poisson Distribution Section of the EBook.

Problems


"-----


Translate this page:

(default)
Uk flag.gif

Deutsch
De flag.gif

Español
Es flag.gif

Français
Fr flag.gif

Italiano
It flag.gif

Português
Pt flag.gif

日本語
Jp flag.gif

България
Bg flag.gif

الامارات العربية المتحدة
Ae flag.gif

Suomi
Fi flag.gif

इस भाषा में
In flag.gif

Norge
No flag.png

한국어
Kr flag.gif

中文
Cn flag.gif

繁体中文
Cn flag.gif

Русский
Ru flag.gif

Nederlands
Nl flag.gif

Ελληνικά
Gr flag.gif

Hrvatska
Hr flag.gif

Česká republika
Cz flag.gif

Danmark
Dk flag.gif

Polska
Pl flag.png

România
Ro flag.png

Sverige
Se flag.gif