An Agent Program in an IoT System to Recommend Plans of Activities to Minimize Childhood Obesity

Overweight and obesity in children is a recognized worldwide epidemic. They are associated with several current and future chronic diseases. OCARIoT is a joint EU-Brazil joint that aims to develop a sophisticated, noninvasive, unobtrusive, personalized IoT system to detect and normalize the behaviors that put a child at risk of developing obesity or eating disorders. In a recent written work, we proposed the design of an agent-based approach to recommend individual physical and food-related activities, based on data collected from wearable devices. In this paper, we present the design of an expanded approach that, in addition to recommendations for individual activities, should recommend activity plans, i.e., sequences of activities organized to minimize childhood obesity. The first results with the extended version were very promising. During the experiments, the selected individual activities and sequences of activities organized by the approach proved to be effective in conducting children, with different profiles and initial states, to the desired states of various attributes associated with childhood obesity.

[1]  L. Andersen,et al.  Physical activity, fitness and health in children , 2011, Scandinavian journal of medicine & science in sports.

[2]  Deborah I Thompson,et al.  A Systematic Review of Health Videogames on Childhood Obesity Prevention and Intervention. , 2013, Games for health journal.

[3]  Adrian Ramirez Nafarrate,et al.  An agent-based simulation framework to analyze the prevalence of child obesity , 2013, WSC.

[4]  Shlomo Zilberstein,et al.  Efficient resource-bounded reasoning in AT-RALPH , 1992 .

[5]  Gustavo Augusto Lima de Campos,et al.  An agent program in an IoT system to recommend activities to minimize childhood obesity problems , 2020, SAC.

[6]  Barbara Messing,et al.  An Introduction to MultiAgent Systems , 2002, Künstliche Intell..

[7]  Dominik Rachoń,et al.  Bad eating habits as the main cause of obesity among children. , 2013, Pediatric endocrinology, diabetes, and metabolism.

[8]  Gary M. Lee,et al.  Nonlinear interpolation , 1971, IEEE Trans. Inf. Theory.

[9]  Peter Norvig,et al.  Artificial Intelligence: A Modern Approach , 1995 .

[10]  Stuart J. Russell An architecture for bounded rationality , 1991, SGAR.

[11]  Amran Ahmed,et al.  Data Mining Techniques for Classification of Childhood Obesity Among Year 6 School Children , 2016, SCDM.

[12]  Stuart J. Russell Execution Architectures and Compilation , 1989, IJCAI.

[13]  T M Dugan,et al.  Machine Learning Techniques for Prediction of Early Childhood Obesity. , 2015, Applied clinical informatics.