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Macarri Wilkerson
 Robert Moses
2006 Comic Book Orders
             250000




             200000




             150000


Est. Sales
             100000




              50000




                  0
                      0     5            10          15    20   25

                                       Comic Book Number

      Scatter Plot: Used to show trends in data.
MOST POPULAR ITUNES DOWNLOADED FREQUENCY
            25,000




            20,000




            15,000
Frequency




            10,000




             5,000




                0
                 Hung Up, Madonna Chris Brown Black Eyed Peas Stickwitu, The Pussycat Dolls Dance, Dance, Fall Out Boy Kanye West Down, Fall Out Boy Santana
                             Run It!, My Humps,   Photograpgh, Nickelback          Laffy Taffy, D4L        Gold Digger, We're Going There It Go!, Juelz
                                                                                                                   Sugar,

                                                                            Name of Song



                    Bar Graph: To show the amounts of number times a value occurs.
History of the X Games # of People in Attendance
              300000



              250000



              200000
# of people




              150000



              100000



               50000



                   0
                       Providence &   Newport, RI   San Diego, CA   San Diego, CA   San Francisco, CA   Philadelphia, PA
                        Newport, RI

                       X Games One    X Games Two   X Games Three   X Games Four     X Games Five       X Games Seven

                          1995           1996           1997            1998              1999               2001


                                                    Years

             Line graph: Plot changes over time
Weeks at Number 1
                                                Hung Up Don't Forget
                                                  4%     About Us
                                                            5%     Wake Up
                                      Invisible                      3%
                              Feeling    5%
                               This
                                5%

                Leave (Get Out)
                      8%                                      Holla Back Girl
                                                                    9%
             The Way
               6%                                                       Untitled
                                                                          4%
            Hold On
              6%
                                                                            Roses
                                                                             8%
              So Yesterday
                   7%
                                                                  My Band
                                                                    8%
                             Toxic
                              8%                   Naughty Girl
                                       Everytime       7%
                                          7%




   Pie Chart: to show the percent a particular item
    represents
   We used a scatter plot for the first graph
    because it was the easiest way to show this
    large number of data.
   We used a bar graph to show how much that
    song was downloaded.
   We used a scatter plot to show the number of
    people in attendance during the X Games over
    time.
   We used a pie chart to show the percent that
    each song was at number one.
   The first graph plotted the name of the comic
    book and how much it sold.
   The second graph we displayed the number of
    times each song was number one in the charts.
   The third graph we showed how the number of
    people that attended the X Games changed
    over the past years.
   The last graph we used a pie chart to show the
    percent of how long each song was number
    one.

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Trends in Comic Book Sales and Music Charts

  • 2. 2006 Comic Book Orders 250000 200000 150000 Est. Sales 100000 50000 0 0 5 10 15 20 25 Comic Book Number  Scatter Plot: Used to show trends in data.
  • 3. MOST POPULAR ITUNES DOWNLOADED FREQUENCY 25,000 20,000 15,000 Frequency 10,000 5,000 0 Hung Up, Madonna Chris Brown Black Eyed Peas Stickwitu, The Pussycat Dolls Dance, Dance, Fall Out Boy Kanye West Down, Fall Out Boy Santana Run It!, My Humps, Photograpgh, Nickelback Laffy Taffy, D4L Gold Digger, We're Going There It Go!, Juelz Sugar, Name of Song  Bar Graph: To show the amounts of number times a value occurs.
  • 4. History of the X Games # of People in Attendance 300000 250000 200000 # of people 150000 100000 50000 0 Providence & Newport, RI San Diego, CA San Diego, CA San Francisco, CA Philadelphia, PA Newport, RI X Games One X Games Two X Games Three X Games Four X Games Five X Games Seven 1995 1996 1997 1998 1999 2001 Years  Line graph: Plot changes over time
  • 5. Weeks at Number 1 Hung Up Don't Forget 4% About Us 5% Wake Up Invisible 3% Feeling 5% This 5% Leave (Get Out) 8% Holla Back Girl 9% The Way 6% Untitled 4% Hold On 6% Roses 8% So Yesterday 7% My Band 8% Toxic 8% Naughty Girl Everytime 7% 7%  Pie Chart: to show the percent a particular item represents
  • 6. We used a scatter plot for the first graph because it was the easiest way to show this large number of data.  We used a bar graph to show how much that song was downloaded.  We used a scatter plot to show the number of people in attendance during the X Games over time.  We used a pie chart to show the percent that each song was at number one.
  • 7. The first graph plotted the name of the comic book and how much it sold.  The second graph we displayed the number of times each song was number one in the charts.  The third graph we showed how the number of people that attended the X Games changed over the past years.  The last graph we used a pie chart to show the percent of how long each song was number one.