Cyber-Enabled Well-Being Oriented Daily Living Support Based on Personal Data Analysis

We are living in a cyber-physical-social environment with a variety of lifestyles and values. Living support has become important in such a diverse society. Owing to the ability to collect a large amount of personal data or life logs in the cyber-physical-social environment, it is now possible for us to provide living support based on personal data analysis. Moreover, analyzing such data can facilitate a deep understanding of an individual. In this study, we focus on the provision of cyber-enabled well-being oriented daily living support for an individual based on personal data analysis. Three categories of personal data are identified from an individual's daily life data. In this paper, we discuss the basic concept, model, and framework for well-being oriented personal data analysis in order to offer suggestions and advices to improve the living quality of an individual. Finally, we report a feasibility study with an application scenario by using personal and environmental data.

[1]  Juan Carlos Augusto,et al.  Flexible context aware interface for ambient assisted living , 2014, Human-centric Computing and Information Sciences.

[2]  Vassilis Christophides,et al.  Report on the First International Workshop on Personal Data Analytics in the Internet of Things (PDA@IOT 2014) , 2015, SGMD.

[3]  C. Keyes,et al.  The structure of psychological well-being revisited. , 1995, Journal of personality and social psychology.

[4]  Björn Eskofier,et al.  Classification of Daily Life Activities by Decision Level Fusion of Inertial Sensor Data , 2013, BODYNETS.

[5]  Deborah Estrin,et al.  Personal data vaults: a locus of control for personal data streams , 2010, CoNEXT.

[6]  Larry Kerschberg,et al.  Personal Health Explorer: A Semantic Health Recommendation System , 2012, 2012 IEEE 28th International Conference on Data Engineering Workshops.

[7]  Weimin Li,et al.  Personalized fitting recommendation based on support vector regression , 2015, Human-centric Computing and Information Sciences.

[9]  F. Hamprecht Introduction to Statistics , 2022 .

[10]  Qun Jin,et al.  Personal Data Analytics for Well-Being Oriented Life Support: Experiment and Feasibility Study , 2016, ICADIWT.

[11]  Chunqiang Tang,et al.  Intelligent Personal Health Record: Experience and Open Issues , 2010, Journal of Medical Systems.

[12]  Fabio Casati,et al.  Recommendation and Weaving of Reusable Mashup Model Patterns for Assisted Development , 2014, TOIT.

[13]  Gordon Bell,et al.  MyLifeBits: fulfilling the Memex vision , 2002, MULTIMEDIA '02.

[14]  Deokjai Choi,et al.  Modeling and discovering human behavior from smartphone sensing life-log data for identification purpose , 2015, Human-centric Computing and Information Sciences.

[15]  Qun Jin,et al.  Ubi-Liven: A Human-Centric Safe and Secure Framework of Ubiquitous Living Environments for the Elderly , 2016, 2016 International Conference on Advanced Cloud and Big Data (CBD).

[16]  Lamjed Ben Said,et al.  A spatial data warehouse recommendation approach: conceptual framework and experimental evaluation , 2015, Human-centric Computing and Information Sciences.

[17]  Konrad Tollmar,et al.  Health Mashups: Presenting Statistical Patterns between Wellbeing Data and Context in Natural Language to Promote Behavior Change , 2013, TCHI.

[18]  S. S. S. Yahaya,et al.  Sensitivity analysis of Welch's t-test , 2014 .

[19]  Koji Yatani,et al.  Effect Sizes and Power Analysis in HCI , 2016 .

[20]  Diane J. Cook,et al.  Data-Driven Activity Prediction: Algorithms, Evaluation Methodology, and Applications , 2015, KDD.

[21]  Xiaoyun Zhang,et al.  Context-aware recommender for mobile learners , 2014, Human-centric Computing and Information Sciences.

[22]  Alex Pentland,et al.  Daily Stress Recognition from Mobile Phone Data, Weather Conditions and Individual Traits , 2014, ACM Multimedia.

[23]  Qun Jin,et al.  A Framework of Personal Data Analytics for Well-Being Oriented Life Support , 2016 .

[24]  David W. McDonald,et al.  Theory-driven design strategies for technologies that support behavior change in everyday life , 2009, CHI.

[25]  E. Næsset Determination of mean tree height of forest stands using airborne laser scanner data , 1997 .

[26]  Teruhiko Teraoka,et al.  Organization and exploration of heterogeneous personal data collected in daily life , 2012, Human-centric Computing and Information Sciences.

[27]  Gregory J. Pottie,et al.  Context guided and personalized activity classification system , 2011, Wireless Health.

[28]  Deborah Estrin,et al.  Small data, where n = me , 2014, Commun. ACM.

[29]  B. L. Welch THE SIGNIFICANCE OF THE DIFFERENCE BETWEEN TWO MEANS WHEN THE POPULATION VARIANCES ARE UNEQUAL , 1938 .

[30]  Luís A. Castro,et al.  Behavioral data gathering for assessing functional status and health in older adults using mobile phones , 2014, Personal and Ubiquitous Computing.

[31]  Serguei Dobrinevski,et al.  Personal Analytics as a Factor of Change in Enterprise Communication and Collaboration Patterns , 2013, 2013 27th International Conference on Advanced Information Networking and Applications Workshops.

[32]  Ramesh C. Jain,et al.  Building health persona from personal data streams , 2013, PDM '13.

[33]  Sean A. Munson,et al.  A lived informatics model of personal informatics , 2015, UbiComp.

[34]  K. Allison Ecosystems and Human Well-Being: Health Synthesis , 2006 .