Saturday, April 25, 2020
Mayfield High School Maths Coursework Essay Example
Mayfield High School Maths Coursework Essay  I have chosen this particular hypothesis because many students who tend to have a high IQ, have a high KS2 result too. I have also chosen this hypothesis because, many students at my school who have a high IQ tend to do well in their KS2 exams and get a high grade and therefore I would like to find this out for my-self.  The data which I will be using to find out if my hypothesis is right or wrong will be from Mayfield High School. All the data that I will need will be provided for me at school on the computers. This data will include a range of different information on students from years 7-11.  Sampling  For my hypothesis I will be choosing a sampling size. I have chosen my sample size to be 50, as it will be more accurate. Also using the sample size of 50 will give me a wider range of data and therefore help me with my hypothesis more. There are various samples, which can be used. However, I am going to use random sampling and stratify sampling and this way it will avoid bias results. The random sampling will pick out my data in any order. The below formula is used to stratify my samples.      We will write a custom essay sample on Mayfield High School Maths Coursework specifically for you for only $16.38 $13.9/page    Order now      We will write a custom essay sample on Mayfield High School Maths Coursework specifically for you FOR ONLY $16.38 $13.9/page    Hire Writer      We will write a custom essay sample on Mayfield High School Maths Coursework specifically for you FOR ONLY $16.38 $13.9/page    Hire Writer  The formula that I will use to work out my samples is:-  Number of students used in sample=  Total number of girls/boys in year X Sample Size  Total number of students in the school  Below is a table with the data which we were provided and also showing how I worked out my samples. All the samples are 0d.p  Year Group  Number of Boys  Samples for Boys  Number of Girls  Samples for Girls  Total  7  151  151/1183 x 50  = 6  131  131/1183 x 50 = 6  282  8  145  145/1183 x 50 =6  125  125/1183 x 50 = 5  270  9  118  118/1183 x 50 = 5  143  143/1183 x 50 = 6  261  10  106  106/1183 x 50 = 4  94  94/1183 x 50  = 4  200  11  84  84/1183 x 50 = 4  86  86/1183 x 50  = 4  170  The number in bold, tells me how much samples I will need from the girls and boys and it also tells me how much samples I will need from each year.  Random Sampling  After doing the stratified sample, I had to choose the students which I will use to prove my hypothesis. I will need to pick them out from the data which is provided on a spreadsheet. I will pick the samples out by using the random formula which is:-  (RAND()*150+1)  However, the number after the * changes depending on how much girl or boy students there are in that year. When I put the number in I had to minus one away and then add one back on. However, as I wanted a couple of samples for the same year and same gender, I kept on pressing F9 until I got the random amounts of students I needed. Below are all my samples which I have gathered by using the random formula:-  Random Numbers  For Year 7 Boys:  103, 119, 89, 6, 4, 78  For Year 7 girls:  73, 114, 30, 23, 34, 76  For Year 8 Boys:  134, 96, 29, 60, 63, 104  For Year 8 Girls:- 39, 69,112, 36, 10  For Year 9 Boys:  64, 11, 14, 48, 81  For Year 9 Girls:  6, 130, 54, 101, 28, 4  For Year 10 Boys:  66, 88, 57, 84  For Year 10 Girls:  60, 53, 66, 47  For Year 11 Boys:  37, 26, 8, 16  For Year 11 Girls:  65, 50, 43, 33  Relevant Data  The table below shows the IQ and KS2 results of each student that was selected. This is all the necessary data that is needed. However I have not noted which students are from which years to make sure it is not biased in any way.  IQ  ENG  MATHS  SCIENCE  107  5  5  5  106  5  4  5  108  4  5  5  101  4  4  4  99  4  4  4  104  4  5  5  122  5  5  5  100  4  4  4  104  5  4  5  100  4  4  4  109  5  5  5  97  4  4  4  100  4  4  4  112  5  5  5  100  4  4  4  114  5  5  5  100  4  4  4  105  5  4  4  89  3  3  3  114  5  5  5  108  5  5  5  101  4  4  4  101  5  4  4  92  3  3  4  102  5  4  4  91  3  3  4  109  4  5  5  102  4  4  5  91  3  4  4  117  5  5  5  110  5  4  5  100  4  4  4  116  5  5  5  101  4  4  4  100  4  4  4  100  4  4  4  110  5  5  5  102  3  5  4  99  4  4  4  100  4  4  4  92  3  3  3  92  4  3  3  96  3  3  3  106  5  5  5  103  5  4  4  100  4  4  4  103  4  4  5  100  4  4  4  98  4  4  5  92  3  3  4  My Graph  From my samples I am going to create a graph. I have decided to do a scatter graph because; it will make it easier for me to see if my hypothesis is correct. It will make it easier for me see this, as all my points will be plotted on the graph and therefore it will give me a better understanding of my results and also a clear view of my correlation line. Below is my graph:-  From the graph you can see that my hypothesis is correct. This is because as the IQ results are going higher, so are the KS2 results going higher. I think this because, the clever you are, the more intelligent you are, as you know many things and you can gain more marks. However, from the graph you can see that there is a strong positive correlation. We can see this because, as the KS2 results are going higher, the IQ goes higher too. For example, a student who has a low KS2 result, such as, a level 3, they have a low IQ. However, if you look at the graph, a student who has got a level 5 for English, Maths and Science has got the highest IQ.  Product Moment Correlation  YR GROUP  X  Y  XY  X  Y  Yr 7 Boys  107  5  535  11449  25  106  5  530  11236  25  108  5  540  11664  25  101  4  404  10201  16  99  4  396  9801  16  104  5  520  10816  25  Yr 7 Girls  122  5  610  14884  25  100  4  400  10000  16  104  5  520  10816  25  100  4  400  10000  16  109  5  545  11881  25  97  4  388  9409  16  Yr 8 Boys  100  4  400  10000  16  112  5  560  12544  25  100  4  400  10000  16  114  5  570  12996  25  100  4  400  10000  16  105  4  420  11025  16  Yr 8 Girls  89  3  267  7921  9  114  5  570  12996  25  108  5  540  11664  25  101  4  404  10201  16  101  4  404  10201  16  Yr 9 Boys  92  3  276  8464  9  102  4  408  10404  16  91  3  273  8281  9  109  5  545  11881  25  102  4  408  10404  16  Yr 9 Girls  91  4  364  8281  16  117  5  585  13689  25  110  5  550  12100  25  100  4  400  10000  16  116  5  580  13456  25  101  4  404  10201  16  Yr 10 Boys  100  4  400  10000  16  100  4  400  10000  16  110  5  550  12100  25  102  4  408  10404  16  Yr 10 Girls  99  4  396  9801  16  100  4  400  10000  16  92  3  276  8464  9  92  3  276  8464  9  Yr 11 Boys  96  3  288  9216  9  106  5  530  11236  25  103  4  412  10609  16  100  4  400  10000  16  Yr 11 Girls  103  4  412  10609  16  100  4  400  10000  16  98  4  392  9604  16  92  3  276  8464  9  Total  ?5125  ?98  ?21732  ?527837  ?904  Standard Deviation for X and Y Data  Standard deviation for IQ Results  SD = ? ? à ¯Ã ¿Ã ½ ? ? à ¯Ã ¿Ã ½  -  -  n n  n = 50 (number of samples)  ? ? = 5125 (whole sample added together)  ? ? à ¯Ã ¿Ã ½ = 527837 (Square of each data point of the sample added together)  SD = 527837 5125 à ¯Ã ¿Ã ½      50 50  SD = 10556.74- (102.5)à ¯Ã ¿Ã ½  SD = 10556.74- 10506.25  SD = 50.49  SD = 7.105631569  SD = 7.1 (1 D.P)  The average value for the X data is:-  5125   = 102.5  50  This therefore, shows that my data is not reliable, as my points would not be close together. I know this because the number that I got when working out my standard deviation, it was, 7.11 and when I worked out the average mean I got 102.5 and therefore, these two numbers are far apart.  Standard deviation for the KS2 Results:-  SD = ? y à ¯Ã ¿Ã ½ ? y à ¯Ã ¿Ã ½  -  -  n n  n = 50 (Number of sample)  ? y = 98 2 (Whole sample added together)  ? yà ¯Ã ¿Ã ½ = 904 (Square of each data point of the sample added together)  SD = 904 98 à ¯Ã ¿Ã ½      50 50  SD = 18.08  (1.96) à ¯Ã ¿Ã ½  SD = 18.08  3.8416  SD = 14.2384  SD = 3.773380447  SD = 3.8 (1 D.P)  The average value for Y data is:-  98   = 1.96  50  This show that my results for my Y data is reliable, as my standard deviation answer was, 3.77 and my average value answer was, 1.96. As the two numbers are close, this therefore proves that my data is reliable.  Product Moment Correlation Coefficient  I am now going to work out the Product Moment Correlation Coefficient this is normally written as, Yxy. I will work this out by using the table on the sixth page. I will work this out by using the following formula:-  ?xy ?x ?y    - -  n n n    ?xà ¯Ã ¿Ã ½ ?x à ¯Ã ¿Ã ½ ?yà ¯Ã ¿Ã ½ ?y à ¯Ã ¿Ã ½    - X     n n n n  ?  SD = ? ? à ¯Ã ¿Ã ½ ? ? à ¯Ã ¿Ã ½  -  -  n n  SD = ? y à ¯Ã ¿Ã ½ ? y à ¯Ã ¿Ã ½  -  -  n n  Top of Yxy:  21732 5125 98  -  - x  = 434.64  (102.5 x 1.96) = 233.74  50 50 50  Bottom of Yxy:   527838 5125 à ¯Ã ¿Ã ½     = 7.105631569  50 50  10556.74  10506.25 = 50.49  904 98 à ¯Ã ¿Ã ½  -   = 3.773380447  50 50  18.08  3.8416 = 14.2384  Yxy = 2.33.74 / (7.105631569 x 3.773380447)  Yxy = 2.3374 / 26.81225123  Yxy = 0.086900573  Yxy = 0.1 (1 D.P)  Conclusion  Conclusion for my product moment correlation coefficient  From working out the standard deviation, I have concluded that my regression line has no correlation. This is because my end result which I got after working out the standard deviation my regression line was 0.0869 This therefore, shows that my regression line has no correlation. However, I am able to tell that my regression line is a positive because it is not a negative number. This shows that my hypothesis was correct, but it was not strongly proved, as my regression line was not a perfect correlation.  Overall, from the whole hypothesis I found that the higher the IQ results a student has and more likely they are going to have a higher KS2 result too. You are able to see this on my graph earlier in the work. This therefore proves my hypothesis to be correct.    
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