<?xml version="1.0" encoding="UTF-8"?>
<quiz>
 <!-- categoryid: 607 -->
 <question type="category"><category><text>Pre-Calc/Chapter 2:  Polynomial, Power, and Rational Functions/2.1 Linear//Quadratic Functions and Modeling/2.1.1 Linear Functions</text></category></question>
 
 <!-- resourceid-resourcedataid: 5884-5294 -->
 <question type="multichoice">
    <name>
      <text>Describe the strength and direction of the linear correlation.</text>
    </name>
    <questiontext format="html">
      <text><![CDATA[<b>Describe the strength and direction of the linear correlation.<br/><br/></b><br/><img align="middle" height="200" width="200" src="@@PLUGINFILE@@/ppg__2.1.1 Linear Functio0128141604__f1q9g1.jpg"/>]]></text>
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   </questiontext>
    <generalfeedback format="html">
      <text></text>
    </generalfeedback>
    <defaultgrade>1.0000000</defaultgrade>
    <penalty>0.3333333</penalty>
    <hidden>0</hidden>
    <single>true</single>
    <shuffleanswers>true</shuffleanswers>
    <answernumbering>abc</answernumbering>
    <correctfeedback format="html">
      <text></text>
    </correctfeedback>
    <partiallycorrectfeedback format="html">
      <text></text>
    </partiallycorrectfeedback>
    <incorrectfeedback format="html">
      <text></text>
    </incorrectfeedback>
    <answer fraction="0" format="html">
      <text>Little or no linear correlation</text>
      <feedback format="html">
        <text>Incorrect</text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text>Weak negative linear correlation</text>
      <feedback format="html">
        <text>Incorrect</text>
      </feedback>
    </answer>
    <answer fraction="0" format="html">
      <text>Strong negative linear correlation</text>
      <feedback format="html">
        <text>Incorrect</text>
      </feedback>
    </answer>
    <answer fraction="100" format="html">
      <text>Weak positive linear correlation</text>
      <feedback format="html">
        <text>Correct</text>
      </feedback>
    </answer>
  </question>
 </quiz>
