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CORRELATION & MEDIAN REGRESSION LINE General Mathematics
In order to answer this we need to collect some data Is there a mathematical relationship between a person’s age and the number of sickies they take?
 
 
 
 
 
 
 
 
 
 
 
Linear Modelling
To draw a line of best fit we have (as a rule of thumb), roughly as many points on one side of the straight line as we have on the other side
To draw a line of best fit we have (as a rule of thumb), roughly as many points on one side of the straight line as we have on the other side
60 19.5-6.1 = 13.4 Gradient =
The “y-intercept” 19.5 y = mx + b “ y” = Number of sickies (N) “ x” = Age in years (A) N = -0.2233A + 19.5
A statistically more accurate way is to find a  median regression line This is a more fancy way of finding the line of best fit, eliminating the  possibility of getting variations from one person to another, ie. there is only one  true  line of best fit.
Step 1:   Divide all the points into three equal groups from left to right
Step 2:  In each block find the median from left to right
Step 3:  Find the median from top to bottom
Step 4:  Draw a line joining first and third median pts
Step 5:  Draw a line parallel to this through the middle median point
Step 6:  Move the solid line  ⅓  of the way towards  the dotted line
Step 6:  Move the solid line  ⅓  of the way towards  the dotted line
Step 6:  Move the solid line  ⅓  of the way towards  the dotted line
Step 6:  Move the solid line  ⅓  of the way towards  the dotted line
Step 6:  Move the solid line  ⅓  of the way towards  the dotted line
Step 6:  Move the solid line  ⅓  of the way towards  the dotted line
Step 6:  Move the solid line  ⅓  of the way towards  the dotted line
Step 6:  Move the solid line  ⅓  of the way towards  the dotted line
Step 6:  Move the solid line  ⅓  of the way towards  the dotted line
Step 6:  Move the solid line  ⅓  of the way towards  the dotted line
By removing all our construction lines we can see our median regression line clearly and can work out the equation.
By removing all our construction lines we can see our median regression line clearly and can work out the equation.
Correlation
These points show some strong relationship between the person’s age and the number of sickies they take (Correlation)
These points show a correlation that is not so strong:
These points show a correlation that is relatively weak:
These points show no correlation at all:
Correlation Coefficients
The degree of correlation can be assigned a number from  – 1 to 1
These points are perfectly correlated, so they possess a correlation coefficient of +1 (positive because of positive slope)
Let us see what happens as the correlation gradually fades away: Correlation = +1
Let us see what happens as the correlation gradually fades away: Correlation = +0.98
Let us see what happens as the correlation gradually fades away: Correlation = +0.90
Let us see what happens as the correlation gradually fades away: Correlation = +0.36
Let us see what happens as the correlation gradually fades away: Correlation = 0
Let us see what happens as the correlation gradually fades away: Correlation = -0.41
Let us see what happens as the correlation gradually fades away: Correlation = -0.90
Let us see what happens as the correlation gradually fades away: Correlation = -0.97
Let us see what happens has the correlation gradually fades away: Correlation = -1 Correlation is negative because of negative slope
We can also assign words to describe the degree of correlation
Strong   positive  correlation
Moderate positive  correlation
Weak positive  correlation
No correlation
Weak negative  correlation
Moderate negative  correlation
Strong negative  correlation
The End

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Correlation

  • 1. CORRELATION & MEDIAN REGRESSION LINE General Mathematics
  • 2. In order to answer this we need to collect some data Is there a mathematical relationship between a person’s age and the number of sickies they take?
  • 3.  
  • 4.  
  • 5.  
  • 6.  
  • 7.  
  • 8.  
  • 9.  
  • 10.  
  • 11.  
  • 12.  
  • 13.  
  • 15. To draw a line of best fit we have (as a rule of thumb), roughly as many points on one side of the straight line as we have on the other side
  • 16. To draw a line of best fit we have (as a rule of thumb), roughly as many points on one side of the straight line as we have on the other side
  • 17. 60 19.5-6.1 = 13.4 Gradient =
  • 18. The “y-intercept” 19.5 y = mx + b “ y” = Number of sickies (N) “ x” = Age in years (A) N = -0.2233A + 19.5
  • 19. A statistically more accurate way is to find a median regression line This is a more fancy way of finding the line of best fit, eliminating the possibility of getting variations from one person to another, ie. there is only one true line of best fit.
  • 20. Step 1: Divide all the points into three equal groups from left to right
  • 21. Step 2: In each block find the median from left to right
  • 22. Step 3: Find the median from top to bottom
  • 23. Step 4: Draw a line joining first and third median pts
  • 24. Step 5: Draw a line parallel to this through the middle median point
  • 25. Step 6: Move the solid line ⅓ of the way towards the dotted line
  • 26. Step 6: Move the solid line ⅓ of the way towards the dotted line
  • 27. Step 6: Move the solid line ⅓ of the way towards the dotted line
  • 28. Step 6: Move the solid line ⅓ of the way towards the dotted line
  • 29. Step 6: Move the solid line ⅓ of the way towards the dotted line
  • 30. Step 6: Move the solid line ⅓ of the way towards the dotted line
  • 31. Step 6: Move the solid line ⅓ of the way towards the dotted line
  • 32. Step 6: Move the solid line ⅓ of the way towards the dotted line
  • 33. Step 6: Move the solid line ⅓ of the way towards the dotted line
  • 34. Step 6: Move the solid line ⅓ of the way towards the dotted line
  • 35. By removing all our construction lines we can see our median regression line clearly and can work out the equation.
  • 36. By removing all our construction lines we can see our median regression line clearly and can work out the equation.
  • 38. These points show some strong relationship between the person’s age and the number of sickies they take (Correlation)
  • 39. These points show a correlation that is not so strong:
  • 40. These points show a correlation that is relatively weak:
  • 41. These points show no correlation at all:
  • 43. The degree of correlation can be assigned a number from – 1 to 1
  • 44. These points are perfectly correlated, so they possess a correlation coefficient of +1 (positive because of positive slope)
  • 45. Let us see what happens as the correlation gradually fades away: Correlation = +1
  • 46. Let us see what happens as the correlation gradually fades away: Correlation = +0.98
  • 47. Let us see what happens as the correlation gradually fades away: Correlation = +0.90
  • 48. Let us see what happens as the correlation gradually fades away: Correlation = +0.36
  • 49. Let us see what happens as the correlation gradually fades away: Correlation = 0
  • 50. Let us see what happens as the correlation gradually fades away: Correlation = -0.41
  • 51. Let us see what happens as the correlation gradually fades away: Correlation = -0.90
  • 52. Let us see what happens as the correlation gradually fades away: Correlation = -0.97
  • 53. Let us see what happens has the correlation gradually fades away: Correlation = -1 Correlation is negative because of negative slope
  • 54. We can also assign words to describe the degree of correlation
  • 55. Strong positive correlation
  • 56. Moderate positive correlation
  • 57. Weak positive correlation
  • 59. Weak negative correlation
  • 60. Moderate negative correlation
  • 61. Strong negative correlation