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<document xmlns="http://cnx.rice.edu/cnxml" xmlns:md="http://cnx.rice.edu/mdml/0.4" xmlns:bib="http://bibtexml.sf.net/" xmlns:m="http://www.w3.org/1998/Math/MathML" id="new">
  <name>Normal Distribution: Introduction</name>
  <metadata>
  <md:version>1.5</md:version>
  <md:created>2008/06/06 14:16:49 GMT-5</md:created>
  <md:revised>2008/07/21 03:06:32.245 GMT-5</md:revised>
  <md:authorlist>
      <md:author id="billowsky">
      <md:firstname>Barbara</md:firstname>
      
      <md:surname>Illowsky</md:surname>
      <md:email>illowskybarbara@deanza.edu</md:email>
    </md:author>
      <md:author id="sdean">
      <md:firstname>Susan</md:firstname>
      
      <md:surname>Dean</md:surname>
      <md:email>deansusan@deanza.edu</md:email>
    </md:author>
  </md:authorlist>

  <md:maintainerlist>
    <md:maintainer id="cnxorg">
      <md:firstname/>
      
      <md:surname>Connexions</md:surname>
      <md:email>cnx@cnx.org</md:email>
    </md:maintainer>
  </md:maintainerlist>
  
  <md:keywordlist>
    <md:keyword>elementary</md:keyword>
    <md:keyword>statistics</md:keyword>
  </md:keywordlist>

  <md:abstract/>
</metadata>
  <content>
<section id="element-788"><name>Student Learning Objectives</name>
<para id="element-864">
By the end of this chapter, the student should be able to:
</para>

<list id="list4253">
<item>Recognize the normal probability distribution and apply it
appropriately.</item>
<item>Recognize the standard normal probability distribution and apply
it appropriately.</item>
<item>Compare normal probabilities by converting to the standard
normal distribution.</item>

</list></section><section><name>Introduction</name>
    <para id="delete_me">The normal, a continuous distribution, is the most important of all the distributions. It is widely
used and even more widely abused. Its graph is bell-shaped. You see the bell curve in almost
all disciplines. Some of these include psychology, business, economics, the sciences, nursing,
and, of course, mathematics. Some of your instructors may use the normal distribution to help
determine your grade. Most IQ scores are normally distributed. Often real estate prices fit a
normal distribution. The normal distribution is extremely important but it cannot be applied to
everything in the real world.</para><para id="element-299">In this chapter, you will study the normal distribution, the standard normal, and many application
associated with them.</para></section><section id="element-227"><name>Optional Collaborative Classroom Activity</name>
<para id="element-450">
Your instructor will record the heights of both men and women in your class, separately.
Draw histograms of your data. Then draw a smooth curve through each histogram. Is each
curve somewhat bell-shaped? Do you think that if you had recorded 200 data values for men
and 200 for women that the curves would look bell-shaped? Calculate the mean for each data
set. Write the means on the x-axis of the appropriate graph below the peak. Shade the
approximate area that represents the probability that one randomly chosen male is taller than 72
inches. Shade the approximate area that represents the probability that one randomly chosen
female is shorter than 60 inches. If the total area under each curve is one, does either
probability appear to be more than 0.5?
</para><para id="element-915">The normal distribution has two parameters (two numerical descriptive measures), the
mean (<m:math><m:mi>μ</m:mi></m:math>) and the standard deviation (<m:math><m:mi>σ</m:mi></m:math>).</para><para id="element-48"><emphasis>NORMAL:<m:math><m:mi>X</m:mi></m:math>~<m:math><m:mi>N(μ, σ)</m:mi></m:math></emphasis></para><para id="element-825"><media type="image/png" src="normdist_intro1.png">
<param name="alt" value="Empty normal distribution curve."/>

<param name="print-width" value="3in"/>
</media></para><para id="element-979"><m:math><m:mi>X</m:mi></m:math> = a quantity to be measured.
The probability distribution function is a
rather complicated function. <emphasis>Do not
memorize it</emphasis>. It is not necessary.</para><para id="element-687"><m:math>
            <m:mi>f</m:mi>
            <m:mo>(</m:mo>
            <m:mi>x</m:mi>
            <m:mo>)</m:mo>
            <m:mo>=</m:mo>
 <m:mfrac>
   <m:mrow>
    <m:mn>1</m:mn>
   </m:mrow>
   <m:mrow>
    <m:mi>σ</m:mi>
    <m:mo>⋅</m:mo>
    <m:msqrt>
     <m:mn>2</m:mn>
     <m:mo>⋅</m:mo>
     <m:mi>π</m:mi>
    </m:msqrt>
   </m:mrow>
 </m:mfrac>

    <m:mo>⋅</m:mo>

 <m:msup>
  <m:mi>e</m:mi>
  <m:mrow>
   <m:mo>-</m:mo>
    <m:mfrac>
     <m:mn>1</m:mn>
     <m:mn>2</m:mn>
    </m:mfrac>
    <m:mo>⋅</m:mo>
    <m:msup>
     <m:mrow>  
     <m:mo>(</m:mo>
     <m:mfrac> 
      <m:mrow> 
       <m:mi>x</m:mi>
       <m:mo>-</m:mo>
       <m:mi>μ</m:mi>
      </m:mrow>
      <m:mrow>
       <m:mi>σ</m:mi>
      </m:mrow>
     </m:mfrac>
     <m:mo>)</m:mo>
    </m:mrow>        
    <m:mn>2</m:mn>
   </m:msup>
  </m:mrow>
 </m:msup>
</m:math></para><para id="element-750">The cumulative distribution function is 
<emphasis>
<m:math>
<m:reln><m:lt/>
<m:mrow>
<m:mi>P</m:mi>
<m:mo>(</m:mo>
<m:mi>X</m:mi>
</m:mrow>
<m:mrow>
<m:mi>x</m:mi>
<m:mo>)</m:mo>
</m:mrow>
</m:reln>
</m:math>
</emphasis>
It is calculated either by a calculator or a computer or it is looked up in a table</para><para id="element-396">The curve is symmetrical about a vertical line drawn through the mean, μ. In theory, the
mean is the same as the median since the graph is symmetric about μ. As the notation
indicates, the normal distribution depends only on the mean and the standard deviation.
Since the area under the curve must equal one, a change in the standard deviation, σ, causes
a change in the shape of the curve; the curve becomes fatter or skinnier depending on σ. A
change in μ causes the graph to shift to the left or right. This means there are an infinite
number of normal probability distributions. One of special interest is called the standard
<term src="#normdist">normal distribution</term>.</para></section>   
  </content>
  <glossary>
<definition id="normdist">
    <term>Normal Distribution</term>
    <meaning>
   A continuous random variable (RV) with 
<m:math><m:semantics><m:mrow><m:mstyle fontsize="12pt"><m:mrow><m:mrow><m:mrow><m:mstyle fontstyle="italic"><m:mrow><m:mtext>pdf</m:mtext></m:mrow></m:mstyle><m:mo stretchy="false">=</m:mo><m:mfrac><m:mn>1</m:mn><m:mrow><m:mi>σ</m:mi><m:msqrt><m:mn>2π</m:mn></m:msqrt></m:mrow></m:mfrac></m:mrow><m:msup><m:mi>e</m:mi><m:mstyle fontsize="8pt"><m:mrow><m:mrow><m:mrow><m:mo stretchy="false">−</m:mo><m:mo stretchy="false">(</m:mo></m:mrow><m:mrow><m:mi>x</m:mi><m:mo stretchy="false">−</m:mo><m:mi>μ</m:mi></m:mrow><m:mrow><m:msup><m:mo stretchy="false">)</m:mo><m:mstyle fontsize="6pt"><m:mrow><m:mn>2</m:mn></m:mrow></m:mstyle></m:msup><m:mo stretchy="false">/</m:mo><m:msup><m:mn>2σ</m:mn><m:mstyle fontsize="6pt"><m:mrow><m:mn>2</m:mn></m:mrow></m:mstyle></m:msup></m:mrow></m:mrow></m:mrow></m:mstyle></m:msup></m:mrow></m:mrow></m:mstyle><m:mrow/></m:mrow><m:annotation encoding="StarMath 5.0"> size 12{ ital "pdf"= {  {1}  over  {σ sqrt {2π} } } e rSup { size 8{ -  \( x - μ \)  rSup { size 6{2} } /2σ rSup { size 6{2} } } } } {}</m:annotation></m:semantics></m:math>, where <m:math><m:mi>μ</m:mi></m:math>  is the mean of the distribution and <m:math><m:mi>σ</m:mi></m:math>  is its standard deviation. Notation: <m:math><m:mi>X</m:mi></m:math>  ~  <m:math> <m:mi>N</m:mi>
  <m:mfenced>
    <m:mi>μ</m:mi>
    <m:msup>
      <m:mi>σ</m:mi>
      <m:mn>2</m:mn>
    </m:msup>
  </m:mfenced></m:math>. If <m:math><m:mi>μ</m:mi><m:mo>=</m:mo><m:mn>0</m:mn></m:math> and <m:math><m:mi>σ</m:mi><m:mo>=</m:mo><m:mn>1</m:mn></m:math>, the RV is called <emphasis>standard normal distribution</emphasis>, or <emphasis>z-score</emphasis>.
    </meaning>
  </definition>
</glossary>
</document>
