Burn-Out Application TEAM MEMBERS PROBLEM JONATHAN BURNETT

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Burn-Out Application TEAM MEMBERS PROBLEM JONATHAN BURNETT AARUSHI MITTAL DEKITA MOON ALISON NOLAN PROBLEM BURNING THE INTENDED AMOUNT OF CALORIES IN A SPECIFIC AMOUNT OF TIME

Our System LOGIN SCREEN INPUT SCREEN

Our System SUGGESTED ACTIVITIES ACTIVITY PLANNER

Study Conditions 30 participants for a two-week study 2 TASK: Given only one interface per week (3 usage minimum) Consent form read and signed TASKS Use both interface for the specified week given (minimum use of 3 times) - Download Exercise Calorie Calculator Complete Post-Survey - Access to our application via link

Results and Analysis Paired t test results Two-tailed P value = 0.1039 Confidence interval: 95% T = 1.8091 standard error of difference = 0.442 This interface is useful when I have a limited time to burn a fixed amount of calories. ( 5-Strongly Agree, 1 - Strongly Disagree) Min Value Max Value Mean Variance Standard Deviation Our App 1 5 4.08 0.45 0.67 Competitors 3.50 2.72 1.65 SUS Scores (Mean): Burn-out = 81.67 Competitors = 78

Conclusion Not statistically different so we cannot reject the null hypothesis Test a bigger population Subjective Data for both apps: Completing tasks successfully Making the app easier