Real-Time Learning from An Expert in Deep Recommendation Systems with Marginal Distance Probability Distribution

Recommendation systems play an important role in today's digital world. They have found applications in various applications such as music platforms, e.g., Spotify, and movie streaming services, e.g., Netflix. Less research effort has been devoted to physical exercise recommendation systems. Sedentary lifestyles have become the major driver of several diseases as well as healthcare costs. In this paper, we develop a recommendation system for daily exercise activities to users based on their history, profile and similar users. The developed recommendation system uses a deep recurrent neural network with user-profile attention and temporal attention mechanisms. Moreover, exercise recommendation systems are significantly different from streaming recommendation systems in that we are not able to collect click feedback from the participants in exercise recommendation systems. Thus, we propose a real-time, expert-in-the-loop active learning procedure. The active learners calculate the uncertainty of the recommender at each time step for each user and ask an expert for a recommendation when the certainty is low. In this paper, we derive the probability distribution function of marginal distance, and use it to determine when to ask experts for feedback. Our experimental results on a mHealth dataset show improved accuracy after incorporating the real-time active learner with the recommendation system.

[1]  Qingming Huang,et al.  State-Relabeling Adversarial Active Learning , 2020, 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR).

[2]  Christofer Toumazou,et al.  A DNA-Based Intelligent Expert System for Personalised Skin-Health Recommendations , 2020, IEEE Journal of Biomedical and Health Informatics.

[3]  Joost van de Weijer,et al.  Active Learning for Deep Detection Neural Networks , 2019, 2019 IEEE/CVF International Conference on Computer Vision (ICCV).

[4]  Homanga Bharadhwaj,et al.  Meta-Learning for User Cold-Start Recommendation , 2019, 2019 International Joint Conference on Neural Networks (IJCNN).

[5]  Julian J. McAuley,et al.  Modeling Heart Rate and Activity Data for Personalized Fitness Recommendation , 2019, WWW.

[6]  Nicolai Petkov,et al.  Proposal for an eHealth Based Ecosystem Serving National Healthcare , 2019, IEEE Journal of Biomedical and Health Informatics.

[7]  Subhro Das,et al.  An Adaptive, Data-Driven Personalized Advisor for Increasing Physical Activity , 2019, IEEE Journal of Biomedical and Health Informatics.

[8]  G. Michael Youngblood,et al.  Scaffolding the Mastery of Healthy Behaviors with Fittle+ Systems: Evidence-Based Interventions and Theory , 2018, Hum. Comput. Interact..

[9]  Christopher Kanan,et al.  Data Augmentation for Visual Question Answering , 2017, INLG.

[10]  Jinsung Yoon,et al.  Discovery and Clinical Decision Support for Personalized Healthcare , 2017, IEEE Journal of Biomedical and Health Informatics.

[11]  Alex Beutel,et al.  Recurrent Recommender Networks , 2017, WSDM.

[12]  P. Pirolli A computational cognitive model of self-efficacy and daily adherence in mHealth , 2016, Translational behavioral medicine.

[13]  Daniel R. Masys,et al.  News from the NIH: potential contributions of the behavioral and social sciences to the precision medicine initiative , 2015, Translational behavioral medicine.

[14]  Steve Whittaker,et al.  Finding the Adaptive Sweet Spot: Balancing Compliance and Achievement in Automated Stress Reduction , 2015, CHI.

[15]  Jimmy Ba,et al.  Adam: A Method for Stochastic Optimization , 2014, ICLR.

[16]  Therdpong Daengsi,et al.  mHealth: A Design of an Exercise Recommendation System for the Android Operating System , 2014 .

[17]  Min Chen,et al.  WE-CARE: An Intelligent Mobile Telecardiology System to Enable mHealth Applications , 2014, IEEE Journal of Biomedical and Health Informatics.

[18]  Guy Albert Dumont,et al.  Development of mHealth Applications for Pre-Eclampsia Triage , 2014, IEEE Journal of Biomedical and Health Informatics.

[19]  Masahiro Terabe,et al.  Design of Physical Activity Recommendation System , 2008, IADIS European Conf. Data Mining.

[20]  Anand V. Bodapati Recommendation Systems with Purchase Data , 2008 .

[21]  M. Steinbach,et al.  Introduction to Data Mining , 2019, Scalable Comput. Pract. Exp..

[22]  Shengmei Zhao,et al.  Hierarchical Data Augmentation and the Application in Text Classification , 2019, IEEE Access.

[23]  Christos Strydis,et al.  Enhancing Heart-Beat-Based Security for mHealth Applications , 2017, IEEE Journal of Biomedical and Health Informatics.

[24]  Guang-Zhong Yang,et al.  Deep Learning for Health Informatics , 2017, IEEE Journal of Biomedical and Health Informatics.

[25]  Dongqing Liu,et al.  A Recurrent Neural Network Based Recommendation System , 2016 .

[26]  Y. Song,et al.  A Survey of Music Recommendation Systems and Future Perspectives , 2012 .

[27]  T. Minka Estimating a Dirichlet distribution , 2012 .

[28]  James Bennett,et al.  The Netflix Prize , 2007 .

[29]  Greg Linden,et al.  Amazon . com Recommendations Item-to-Item Collaborative Filtering , 2001 .