Literature DB >> 24073182

Twitter classification model: the ABC of two million fitness tweets.

Theodore A Vickey1, Kathleen Martin Ginis, John G Breslin, Maciej Dabrowski.   

Abstract

The purpose of this project was to design and test data collection and management tools that can be used to study the use of mobile fitness applications and social networking within the context of physical activity. This project was conducted over a 6-month period and involved collecting publically shared Twitter data from five mobile fitness apps (Nike+, RunKeeper, MyFitnessPal, Endomondo, and dailymile). During that time, over 2.8 million tweets were collected, processed, and categorized using an online tweet collection application and a customized JavaScript. Using the grounded theory, a classification model was developed to categorize and understand the types of information being shared by application users. Our data show that by tracking mobile fitness app hashtags, a wealth of information can be gathered to include but not limited to daily use patterns, exercise frequency, location-based workouts, and overall workout sentiment.

Entities:  

Keywords:  Mobile fitness apps; Online social network; Physical activity; Twitter

Year:  2013        PMID: 24073182      PMCID: PMC3771015          DOI: 10.1007/s13142-013-0209-0

Source DB:  PubMed          Journal:  Transl Behav Med        ISSN: 1613-9860            Impact factor:   3.046


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