Resto Restaurant Menu Helper By: Shashank Ranjan, Amlan Pradhan, Rohit Kumar Malik Problem to be...
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![Page 1: Resto Restaurant Menu Helper By: Shashank Ranjan, Amlan Pradhan, Rohit Kumar Malik Problem to be addressed: New international students face problems and.](https://reader036.fdocuments.us/reader036/viewer/2022062308/56649db95503460f94aa8e27/html5/thumbnails/1.jpg)
RestoRestaurant Menu Helper
By: Shashank Ranjan, Amlan Pradhan, Rohit Kumar Malik
Problem to be addressed: New international students face problems and embarrassment in conveying orders at restaurants •What is the food item?•What is it called here?•How to pronounce it correctly?
![Page 2: Resto Restaurant Menu Helper By: Shashank Ranjan, Amlan Pradhan, Rohit Kumar Malik Problem to be addressed: New international students face problems and.](https://reader036.fdocuments.us/reader036/viewer/2022062308/56649db95503460f94aa8e27/html5/thumbnails/2.jpg)
Existing Systems
![Page 3: Resto Restaurant Menu Helper By: Shashank Ranjan, Amlan Pradhan, Rohit Kumar Malik Problem to be addressed: New international students face problems and.](https://reader036.fdocuments.us/reader036/viewer/2022062308/56649db95503460f94aa8e27/html5/thumbnails/3.jpg)
Our Interface
![Page 4: Resto Restaurant Menu Helper By: Shashank Ranjan, Amlan Pradhan, Rohit Kumar Malik Problem to be addressed: New international students face problems and.](https://reader036.fdocuments.us/reader036/viewer/2022062308/56649db95503460f94aa8e27/html5/thumbnails/4.jpg)
User Study Conditions• Number of Participants – 33• Target population- Indian Students studying at
University of Florida – Frequently visit fast food restaurants around the campus– Face difficulty with names and pronunciations of food
items• Comparison against multiple systems– Users use varied systems to solve this problem
• Study Conditions– Within subjects/repeated measures– First explain and rate the existing methods used– Then use application for a week as many times as desired.
![Page 5: Resto Restaurant Menu Helper By: Shashank Ranjan, Amlan Pradhan, Rohit Kumar Malik Problem to be addressed: New international students face problems and.](https://reader036.fdocuments.us/reader036/viewer/2022062308/56649db95503460f94aa8e27/html5/thumbnails/5.jpg)
Results and Analysis• Statistical Test Performed: Correlated Samples T-test• Primary Hypothesis:
–p-value <.0001 – given result is unlikely to change– t-value = +7.33 – recommendation score for our app are higher
• Secondary Hypothesis:
–p-value = 0.0003 – given result is unlikely to change– t-value = -3.81 – embarrassment level of our app is lower
Existing Systems Resto
Mean 4.5455 8.1515
Standard Deviation 2.49 1.39
Existing Systems Resto
Mean 5.6364 2.8788
Standard Deviation 3.22 2.50
![Page 6: Resto Restaurant Menu Helper By: Shashank Ranjan, Amlan Pradhan, Rohit Kumar Malik Problem to be addressed: New international students face problems and.](https://reader036.fdocuments.us/reader036/viewer/2022062308/56649db95503460f94aa8e27/html5/thumbnails/6.jpg)
Conclusion• We reject the null hypothesis of our primary
hypothesis – Our app is as good or better than previous
employed methods for building or conveying orders at restaurants.
• We reject the null hypothesis of our secondary hypothesis– Our app is as or more comfortable to use than
previous methods employed by the users.