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gibson:teaching:fall-2012:math445:lab8 [2012/11/05 09:48]
gibson
gibson:teaching:fall-2012:math445:lab8 [2012/11/06 06:24] (current)
gibson [Math 445 Lab 8: Presidential election]
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 wins red and the bins corresponding to Obama wins blue, or else just draw a vertical ​ wins red and the bins corresponding to Obama wins blue, or else just draw a vertical ​
 line at the magic number of 270 electoral votes needed to win the election outright. line at the magic number of 270 electoral votes needed to win the election outright.
 +
 +===== Questions =====
  
 Then answer the following questions Then answer the following questions
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   - What is the probability that the most likely winner will actually win?   - What is the probability that the most likely winner will actually win?
   - What is the most likely range of electoral votes for the winner? (among the bins of width 10 specified above)   - What is the most likely range of electoral votes for the winner? (among the bins of width 10 specified above)
-  ​+  ​- What is the likelihood of a 269-269 electoral vote tie?  
 Turn in print-outs of your codes, your histogram, and your answers to the above questions. ​ Turn in print-outs of your codes, your histogram, and your answers to the above questions. ​
  
-Tips:+ 
 +===== Tips ===== 
  
   * Start with a small number of simulated elections (say 100) and then increase to a large number (say 10,000) when you're confident your code is working correctly. ​   * Start with a small number of simulated elections (say 100) and then increase to a large number (say 10,000) when you're confident your code is working correctly. ​
   * You can also develop your code using simulated data, for example, just ten states all with the same polling numbers and a very small margin of error.   * You can also develop your code using simulated data, for example, just ten states all with the same polling numbers and a very small margin of error.
 +  * Try to use as few for-loops as possible. If you are really on fire, you can do it with just one for-loop that loops over the number of trials. ​
   * Changing the colors of histogram bins in Matlab is not as easy as one might hope. You'll need to take data returned from the **hist** function and replot it with the **bar** command. See http://​www.mathworks.com/​matlabcentral/​newsreader/​view_thread/​290534 for an example of how to do this.   * Changing the colors of histogram bins in Matlab is not as easy as one might hope. You'll need to take data returned from the **hist** function and replot it with the **bar** command. See http://​www.mathworks.com/​matlabcentral/​newsreader/​view_thread/​290534 for an example of how to do this.
  
 +===== Broader questions =====
  
 Some further questions you might also address Some further questions you might also address
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   * How many elections do you need to simulate in order to get reliable answers?   * How many elections do you need to simulate in order to get reliable answers?
   * The lab as written assumes a two-party presidential election. Should we include third-party candidates? Why or why not? How would you revise your code to include a third party? Would it change the results significantly?​   * The lab as written assumes a two-party presidential election. Should we include third-party candidates? Why or why not? How would you revise your code to include a third party? Would it change the results significantly?​
-  * We are trusting that the polling data form an accurate estimate of the actual votes cast, to within the margins of error. ​Is this valid assumptionWhy or why not? +  * We are trusting that the polling data form an accurate estimate of the actual votes cast, to within the margins of error. ​The data reported below was obtained from [[http://​fivethirtyeight.blogs.nytimes.com/​]],​ and is claimed by its compiler to be unbiased and statistically reliable estimate, though there is fair amount of controversy about this, split along party and ideological lines. Do you think the given polling data is fair and accurateIs there a reason to suspect it is or is not?
   * Do you believe your own election prediction? Why or why not?   * Do you believe your own election prediction? Why or why not?
  
  
-Relevant matlab commands; **rand**, **randn**, **sum**, **hist**, plus standard plotting commands such as **xlabel**, **ylabel**, **title**. ​+Relevant matlab commands; **rand**, **randn**, **sum**, **hist**, and **bar**, plus standard plotting commands such as **xlabel**, **ylabel**, **title**. ​ 
 + 
 +===== Background =====
  
 Nate Silver, a sports statistician,​ pioneered the use of Monte Carlo methods ​ Nate Silver, a sports statistician,​ pioneered the use of Monte Carlo methods ​
-in election prediction during the 2008 elections ([[http://​fivethirtyeight.blogs.nytimes.com/​]],​ [[http://​en.wikipedia.org/​wiki/​FiveThirtyEight]]). In the 2008 elections, His model predicted 49 of 50 states correctly for the Presidential race (missing Indiana, which went to Obama by 1%) and all 35 Senate races correctly. Note that this lab does not cover the subtlest and most difficult aspect of election prediction: producing good composite poll numbers and margins of error from large numbers of pollsters using different methods, sample sizes, and polling dates. There is quite a bit of controversy in the current election over Mr. Silver'​s methods and his assessment that Obama has an 80% chance of winning the election. See, for example, ​[[http://​cosmiclog.nbcnews.com/​_news/​2012/​10/​30/​14809227-political-forecasts-stir-up-a-storm?​lite]],​  +in election prediction during the 2008 elections ([[http://​fivethirtyeight.blogs.nytimes.com/​]],​ [[http://​en.wikipedia.org/​wiki/​FiveThirtyEight]]). In the 2008 elections, His model predicted 49 of 50 states correctly for the Presidential race (missing Indiana, which went to Obama by 1%) and all 35 Senate races correctly. Note that this lab does not cover the subtlest and most difficult aspect of election prediction: producing good composite poll numbers and margins of error from large numbers of pollsters using different methods, sample sizes, and polling dates. There is quite a bit of controversy in the current election over Mr. Silver'​s methods and his assessment that Obama has an 91% chance of winning the election. See, for example, ​
-[[http://​www.dailykos.com/​story/​2012/​11/​01/​1153661/​-Nate-Silver-s-Math-Based-Math]],​ or google "Nate Silver controversy"​.+
  
 +  * [[http://​cosmiclog.nbcnews.com/​_news/​2012/​10/​30/​14809227-political-forecasts-stir-up-a-storm?​lite]], ​
 +  * [[http://​www.dailykos.com/​story/​2012/​11/​01/​1153661/​-Nate-Silver-s-Math-Based-Math]]
 +  * [[http://​2012.talkingpointsmemo.com/​2012/​11/​nate-silver-colbert-report-pundits.php?​ref=fpnewsfeed|Nate Silver on Colbert ​  the Colbert Report]]
 +  * google:"​Nate Silver controversy"​| ​
 +===== Data =====
  
 Here's some current polling data, taken from [[http://​fivethirtyeight.blogs.nytimes.com]] on 2012-11-01. You can load this into Matlab as a matrix ''​P''​ by cutting and pasting the data into a text file ''​P.asc''​ and running ''​load P.asc''​ within Matlab. If you don't believe this polling data, feel free to use something you trust more.  Here's some current polling data, taken from [[http://​fivethirtyeight.blogs.nytimes.com]] on 2012-11-01. You can load this into Matlab as a matrix ''​P''​ by cutting and pasting the data into a text file ''​P.asc''​ and running ''​load P.asc''​ within Matlab. If you don't believe this polling data, feel free to use something you trust more. 
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 % Composite Presidential election polling numbers % Composite Presidential election polling numbers
 % from http://​fivethirtyeight.blogs.nytimes.com % from http://​fivethirtyeight.blogs.nytimes.com
-% 2012-11-01+% 2012-11-06 1am
 % %
 %  O == Obama percentage ​ %  O == Obama percentage ​
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 % %
 % O    R    M    EV      state % O    R    M    EV      state
-36. 62. 3.  9   ​% ​ AL +36. 62. 3.  9   ​% ​ AL 
-38. 60. 6.  3   ​% ​ AK +38. 59. 6.  3   ​% ​ AK 
-45. 53. 4. ​11 ​  ​% ​ AZ +46. 53. 3. ​11 ​  ​% ​ AZ 
-37. 60. 4.  6   ​% ​ AR +38. 59. 3.  6   ​% ​ AR 
-58.2  40.5  ​3. ​55 ​  ​% ​ CA +58.2  40.5  ​2. ​55 ​  ​% ​ CA 
-50. 48. 3.  9   ​% ​ CO +50. 48. 3.  9   ​% ​ CO 
-55. 43. 3.  7   ​% ​ CT +56. 42. 3.  7   ​% ​ CT 
-59. 39. 5.  3   ​% ​ DE +59. 39. 5.  3   ​% ​ DE 
-92.  6. ​3.2 ​  ​3 ​  ​% ​ DC   +93.  6. ​3.2 ​  ​3 ​  ​% ​ DC   
-49. 50. 3.2  29   ​% ​ FL +49. 49. 2.7  ​29 ​  ​% ​ FL 
-44. 54. 3. ​16 ​  ​% ​ GA +45. 54. 2. ​16 ​  ​% ​ GA 
-67. 31. 4.9   ​4 ​  ​% ​ HA +66. 32. 3.9   ​4 ​  ​% ​ HA 
-31. 66. 4.  4   ​% ​ ID +32. 66. 4.  4   ​% ​ ID 
-59. 40. 3. ​20 ​  ​% ​ IL +59. 39. 3. ​20 ​  ​% ​ IL 
-43. 55. 3. ​11 ​  ​% ​ IN +45. 53. 3. ​11 ​  ​% ​ IN 
-51. 48. 3.  6   ​% ​ IA +51. 47. 3.  6   ​% ​ IA 
-37. 61. 6.  6   ​% ​ KA +38. 61. 6.  6   ​% ​ KA 
-39. 59. 4.  8   ​% ​ KY +40. 58. 4.  8   ​% ​ KY 
-40. 58. 6.  8   ​% ​ LA +39. 59. 3.  8   ​% ​ LA 
-56.1  42. 4.  4   ​% ​ ME +56.1  42. 3.  4   ​% ​ ME 
-60. 38. 3. ​10 ​  ​% ​ MD +61. 38. 3. ​10 ​  ​% ​ MD 
-58. 39. 4. ​11 ​  ​% ​ MA +59. 39. 3. ​11 ​  ​% ​ MA 
-52. 45. 3. ​16 ​  ​% ​ MI +53. 45. 2. ​16 ​  ​% ​ MI 
-52.8  45. 3. ​10 ​  ​% ​ MN +53.8  45. 2. ​10 ​  ​% ​ MN 
-39. 60. 5.  6   ​% ​ MS +39. 60. 5.  6   ​% ​ MS 
-45. 54. 3. ​10 ​  ​% ​ MO +45. 53. 2. ​10 ​  ​% ​ MO 
-44. 53. 4.  3   ​% ​ MT +45. 53. 3.  3   ​% ​ MT 
-39. 60. 3.  5   ​% ​ NE +40. 58. 3.  5   ​% ​ NE 
-51. 47. 3.  6   ​% ​ NV +51. 47. 2.  6   ​% ​ NV 
-51. 48. 4.  4   ​% ​ NH +51. 47. 3.  4   ​% ​ NH 
-55. 44. 3. ​14 ​  ​% ​ NJ +55. 43. 3. ​14 ​  ​% ​ NJ 
-53. 45. 4.  5   ​% ​ NM +54. 44. 3.  5   ​% ​ NM 
-62. ​36.9  ​3.2  29   ​% ​ NY +62. ​36.9 ​ 2.8  ​29 ​  ​% ​ NY 
-48. 51. 3. ​15 ​  ​% ​ NC   +48. 50. 2. ​15 ​  ​% ​ NC   
-41. 57. 4.3   ​3 ​  ​% ​ ND +42. 56. 3.9   3   ​% ​ ND 
-50. 48. 3.2  18   ​% ​ OH +51. 47. 2.7  ​18 ​  ​% ​ OH 
-33. 66. 4.  7   ​% ​ OK +33. 65. 3.  7   ​% ​ OK 
-52.7  44. 4.  7   ​% ​ OR +53.7  44. 3.  7   ​% ​ OR 
-52. 46. 3. ​20 ​  ​% ​ PA +52. 46. 2. ​20 ​  ​% ​ PA 
-62. 36. 4.  4   ​% ​ RI +61. 36. 4.  4   ​% ​ RI 
-43. 56. 4.  9   ​% ​ SC +43. 56. 4.  9   ​% ​ SC 
-41. 57. 4.  3   ​% ​ SD +42. 56. 4.  3   ​% ​ SD 
-39. 59. 4. ​11 ​  ​% ​ TN +41. 57. 3. ​11 ​  ​% ​ TN 
-41. 57. 3. ​38 ​  ​% ​ TX +41. 58. 3. ​38 ​  ​% ​ TX 
-26. 71. 4.  6   ​% ​ UT +27. 70. 4.  6   ​% ​ UT 
-65. 33. 5.  3   ​% ​ VT +66. 32. 4.  3   ​% ​ VT 
-50. 49. 2. ​13 ​  ​% ​ VA +50. 48. 2. ​13 ​  ​% ​ VA 
-55. 43. 3. ​12 ​  ​% ​ WA +56. 42. 3. ​12 ​  ​% ​ WA 
-40. 58. 5.  5   ​% ​ WV +41. 57. 4.  5   ​% ​ WV 
-51. 47. 3. ​10 ​  ​% ​ WI +52. 46. 2. ​10 ​  ​% ​ WI 
-30. 68. 6.  3   ​% ​ WY+30. 67. 6.  3   ​% ​ WY
 </​code>​ </​code>​
gibson/teaching/fall-2012/math445/lab8.1352137681.txt.gz · Last modified: 2012/11/05 09:48 by gibson