Insights from machine-learned diet success prediction
To support people trying to lose weight and stay healthy, more and more fitness apps have sprung up including the ability to track both calories intake and expenditure. Users of such apps are part of a wider “quantified self“ movement and many opt-in to publicly share their logged data. In this pape...
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sg-smu-ink.sis_research-53832020-03-25T09:28:23Z Insights from machine-learned diet success prediction WEBER, Ingmar ACHANANUPARP, Palakorn To support people trying to lose weight and stay healthy, more and more fitness apps have sprung up including the ability to track both calories intake and expenditure. Users of such apps are part of a wider “quantified self“ movement and many opt-in to publicly share their logged data. In this paper, we use public food diaries of more than 4,000 long-term active MyFitnessPal users to study the characteristics of a (un-)successful diet. Concretely, we train a machine learning model to predict repeatedly being over or under self-set daily calories goals and then look at which features contribute to the model’s prediction. Our findings include both expected results, such as the token “mcdonalds” or the category “dessert” being indicative for being over the calories goal, but also less obvious ones such as the di erence between pork and poultry concerning dieting success, or the use of the “quick added calories” functionality being indicative of over-shooting calorie-wise. This study also hints at the feasibility of using such data for more in-depth data mining, e.g., looking at the interaction between consumed foods such as mixing protein- and carbohydrate-rich foods. To the best of our knowledge, this is the first systematic study of public food diaries. 2016-01-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/4380 info:doi/10.1142/9789814749411_0049 https://ink.library.smu.edu.sg/context/sis_research/article/5383/viewcontent/Insights_from_machine_learned_diet_success_prediction.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Calorie counting MyFitnessPal Quantified self Weight loss Databases and Information Systems Health Information Technology Software Engineering |
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Calorie counting MyFitnessPal Quantified self Weight loss Databases and Information Systems Health Information Technology Software Engineering WEBER, Ingmar ACHANANUPARP, Palakorn Insights from machine-learned diet success prediction |
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To support people trying to lose weight and stay healthy, more and more fitness apps have sprung up including the ability to track both calories intake and expenditure. Users of such apps are part of a wider “quantified self“ movement and many opt-in to publicly share their logged data. In this paper, we use public food diaries of more than 4,000 long-term active MyFitnessPal users to study the characteristics of a (un-)successful diet. Concretely, we train a machine learning model to predict repeatedly being over or under self-set daily calories goals and then look at which features contribute to the model’s prediction. Our findings include both expected results, such as the token “mcdonalds” or the category “dessert” being indicative for being over the calories goal, but also less obvious ones such as the di erence between pork and poultry concerning dieting success, or the use of the “quick added calories” functionality being indicative of over-shooting calorie-wise. This study also hints at the feasibility of using such data for more in-depth data mining, e.g., looking at the interaction between consumed foods such as mixing protein- and carbohydrate-rich foods. To the best of our knowledge, this is the first systematic study of public food diaries. |
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WEBER, Ingmar ACHANANUPARP, Palakorn |
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WEBER, Ingmar ACHANANUPARP, Palakorn |
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WEBER, Ingmar |
title |
Insights from machine-learned diet success prediction |
title_short |
Insights from machine-learned diet success prediction |
title_full |
Insights from machine-learned diet success prediction |
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Insights from machine-learned diet success prediction |
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Insights from machine-learned diet success prediction |
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insights from machine-learned diet success prediction |
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Institutional Knowledge at Singapore Management University |
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2016 |
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https://ink.library.smu.edu.sg/sis_research/4380 https://ink.library.smu.edu.sg/context/sis_research/article/5383/viewcontent/Insights_from_machine_learned_diet_success_prediction.pdf |
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