By Caitlin Crenshaw Courtney Mast. Name____________ Grade____________ How many hours a week do you spend on extracurricular activities? _______ How many.

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Presentation transcript:

By Caitlin Crenshaw Courtney Mast

Name____________ Grade____________ How many hours a week do you spend on extracurricular activities? _______ How many hours a week do you spend on homework? _______ Rank your priorities after school. (1 most important / 5 least important) ___Homework ___Friends ___ Entertainment (video games, computer, etc.) ___Sleep ___ Extracurricular activities What is your overall GPA? a) b) c) d) e) 1.6-below

Population: high school students at gull lake Surveyed: 30 athletes 30 non athletes Potential bias: We are only surveying people from Gull Lake. Also the athletes at Gull Lake high school must pass all of their classes in order to continue with athletics. Most of the students surveyed are our friends which could increase the mean because we both have above a 3.5 GPA. Further bias could include the fact we are both female sophomores whose friends are mainly sophomores.

 Jordan Mitchell (10)  Ashley Showerman (10)  Nick Strebel (10)  Cassie Bryant (12)  Gordon Thompson (10)  Zack Carr (9)  Jack Sheppard (9)  Erica Phillips (12)  Ben Kellam (10)  Nate Murray (10)  Jason Shivley (10)  Ryan Fluery (10)  Erika Olsen (10)  Emily Stadt (12)  Tyler Olsen (12)  Katie Thompson (11)  Mike Heenan (10)  Alex Mutual (10)  Amanda Haase (10)  Sarah Phillips (10)  Zac Caldwell (9)  Emily Owen (12)  Leo Pavletic (10)  Evan Krohn (10)  Katie Stewart (10)  Zach Teel (9)  Jeffrey Christensen (10)  Emma Robbins (12)  Sam Crum (11)  Reilly Calhoun(10)

 Hunter Dyer (10)  Maddie Lansdale (10)  Frankie Edds (10)  Lauren Oorbeck (10)  Josh Weigel (10)  Cede C. (11)  Lance Mcauley (9)  Jasmine Macias (10)  Katie Bruns (10)  Allie Neighbors (11)  Devin Barns (10)  Andrew Dowd (10)  Josh Massar (11)  Mike Mcpherson (10)  Lonnie Saunders (11)  Julia Archer (11)  Macy Foss (11)  Alex Murphy (10)  Mark Bunch (11)  Sarah Snyder (10)  Andrew Spears (12)  Blake Smith (12)  Zach White (12)  No name (11)  Logan C.(11)  Brandon Snyder (12)  Jordan Hinds (11)  Rosemary Her (12)  Bryan Knickerbocker (12)  Kimberly Winchester (10)

 1  th 4 10 th th 2 12 th 6

 1  Homework a week Extracurricular a week 9 th 1 10 th th th 6

#1 vote = 5 pts #2 vote = 4pts #3 vote = 3pts #4 vote = 2 pts #5 vote =1 pt 105 pts95 pts 62 pts 72 pts

 The Athletes surveyed priorities for the things they do after school are as follow; extracurriculars, homework, friends, sleep, and entertainment. This makes sense because most athletes go right from school to a practice or a game, and usually if they are waiting around after school they try to get their homework done.

 The students we surveyed that did NOT play sports priorities after school are friends homework entertainment sleep then their extra curricular activities if any. Most of the people we survey were curious on what to put if they didn’t do anything outside of school. Students that are not in sports spend more time with friends or on entertainment. This makes sense because they don’t have practice everyday, and or a game to participate in allowing them have more time to do things they want to do.

 The non athletes grade point average is significantly lower than the athletes this is because the non athletes do not need passing grades in order to continue being eligible for their extracurricular activities and without those expectations some of the non athletes are failing.

 The athletes grade point is significantly higher than the non athletes because most of the athletes are determined to keep there grades up in order to continue with there sports. None of the athletes in our survey were failing.

Hours a week spent on extracurricular activities Hours a week spent on homeworkHours a week spent on homework

Hours spent in a week on Extracurricular Hours a week spent on homeworkHours a week spent on homework

Non - AthletesAthletes  R:.02  Y=.02X+6.5  R:.15  Y=.17X+4.24 Summary: There is not a very good relationship between the amount of time you spend on homework and the time you spend on extracurricular activities. I believe that the relationship wasn’t as good as we expected because, some of the athletes surveyed were not in a sport right now, and some of the non- athletes extracurricular activities are not in season.

HoursaweekspentonhomeworkHoursaweekspentonhomework Hours spent in a week on Extracurricular Outliers Removed

Hours a week spent on homework Hours spent in a week on Extracurricular Outliers Removed

Non - AthletesAthletes  R= -.08  Y= -.04X+ 5.3  R=.245  Y=.28X Summary: Even with removing the outliers the data did not hold a strong linear relationship in either of the samples surveyed. The correlation coefficient did increase but not enough for us to say that they are directly related to each other. We believe that the data would be strong if we would have changed the question to ask if how much time they spend on extracurricularactivities during their busiest season.

Extracurricular activitieshomework  Mean  10 hours  Number surveyed  30 Gull Lake high school students  Min  0 hours  Q1  6 hours  Median  10 hours  Q3  15 hours  Max  19 hours  Standard deviation  4.8  Mode  10, 15  Mean  6.6 hrs  Number surveyed  30 Gull Lake high school students  Min  0 hours  Q1  2 hours  Median  4 hours  Q3  8 hours  Max  20 hours  Standard deviation  6.5  Mode  2

Extracurricular activitieshomework  Mean  4.8 hours  Number surveyed  30 Gull Lake high school students  Min  0 hours  Q1  0 hours  Median  2.5 hours  Q3  6 hours  Max  28 hours  Standard deviation  6.6  Mode  0  Mean  6.6 hrs  Number surveyed  30 Gull Lake high school students  Min  1 hours  Q1  2 hours  Median  4.5 hours  Q3  8 hours  Max  30 hours  Standard deviation  6.5  Mode  6

Non- Athletes Athletes  Confidence interval  95%  85%  Z scores  Hunter Dyer 57%  Kim Winchester -45%  Confidence interval  95%  80%  Z scores  Jack Sheppard 66%  Amanda Haase -15%

 The data we collected didn’t have a very strong relationship. I believe we could have made a stronger relationship if we would have phrased our questions differently because even after everything we did we didn’t really figure out if there was a correlation between GPA and extracurricular activities. The Data we collected made more sense to fit the survey of extracurricular activities vs. time spent on homework. The data may have been more supportive if we would’ve compared time spent on homework to the GPA. The survey did prove that athletes did have a higher GPA even when the mean of their extracurricular activities was DOUBLE the non- athletes. Though the athletes GPA’s are higher I wish we would have asked the classes they are taking, because the mean of the time spent on homework was less then the non- athletes. We believe that the classes they are taking could have a huge impact on what their GPAs were. After accumulating the data we have realized that though athletes may have an overall higher GPA, we are unaware of what classes they are taking compared to those students who aren’t participation in athletics.

 I made the surveys, did the potential bias, and I got half of the surveys filled out. I also accumulated the data and made the graphs for both athletes and non athletes. (histograms and pie charts.) I made the box and whisker plots (videos & charts), and found the new R values and equations with outliers removed. I also wrote the overall summary, the summaries for the regressions and equations, and made the new scatter plots when outliers were removed.

 I gathered half of the surveys. I made the initial scatter plots. I also did the math for the box and whisker plots, the z-scores, and the confidence interval. I also wrote the summaries for the pie charts.