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Studying the Impact of
Ubiquitous Monitoring
Technology on Office Worker
Behaviours: The Value of
Sharing Research Data
Stuart Moran, Irene Lopez de Vallejo, Keiichi
Nakata, Ruth Conroy-Dalton, Rachael Luck,
Peter McLennan and Steve Hailes
Introduction
 Pervasive Computing
 Benefits in the workplace
 Gaps on how to use data
    ◦ Method/Guide to using data
------------------------------------------------------
 Monitoring changes behaviour
 Undesirable effects
    ◦ Method for predicting
      behavioural responses
Mutual
                Project 1                   Project 2
                             Aspects

Background    Engineering                   Sociology

                             Impact of
Motivation
                              PerCom

 Questions     Literature                  Real World

               Positivism                 Interpretivism
Methodology
              /Mix.Method                  /Mix.Method
                             Interview
   Data
                                Data

  Analysis    Deduction                     Induction


Conclusion                  Conclusions

               Predictive
  Output                                  Methodology
                 Model
Mutual
                Project 1                   Project 2
                             Aspects

Background    Engineering                   Sociology

                             Impact of
Motivation
                              PerCom

 Questions     Literature                  Real World

               Positivism                 Interpretivism
Methodology
              /Mix.Method                  /Mix.Method
                             Interview
   Data
                                Data

  Analysis    Deduction                     Induction


Conclusion                  Conclusions

               Predictive
  Output                                  Methodology
                 Model
Mutual
                Project 1                   Project 2
                             Aspects

Background    Engineering                   Sociology

                             Impact of
Motivation
                              PerCom

 Questions     Literature                  Real World

               Positivism                 Interpretivism
Methodology
              /Mix.Method                  /Mix.Method
                             Interview
   Data
                                Data

  Analysis    Deduction                     Induction


Conclusion                  Conclusions

               Predictive
  Output                                  Methodology
                 Model
Mutual
                Project 1                   Project 2
                             Aspects

Background    Engineering                   Sociology

                             Impact of
Motivation
                              PerCom

 Questions     Literature                  Real World

               Positivism                 Interpretivism
Methodology
              /Mix.Method                  /Mix.Method
                             Interview
   Data
                                Data

  Analysis    Deduction                     Induction


Conclusion                  Conclusions

               Predictive
  Output                                  Methodology
                 Model
Methodology
   Positivism / Mixed Methods
    ◦ Reality is believed to be directly observable and measureable
 Thematic Content Analysis
 Questionnaire and Statistical Analysis
 Simulation developed in VenSim
 Triangulate VenSim prediction with Interview Data


   Interpretivism / Mixed Methods
    ◦ Reality is believed to only be understood through subjective
      interpretation
 Interviews and Observation data triangulated to portray
  complex socio technical system
 Research allowed to evolve and unfold, rather than constrain
  it through structure
Mutual
                Project 1                   Project 2
                             Aspects

Background    Engineering                   Sociology

                             Impact of
Motivation
                              PerCom

 Questions     Literature                  Real World

               Positivism                 Interpretivism
Methodology
              /Mix.Method                  /Mix.Method
                             Interview
   Data
                                Data

  Analysis    Deduction                     Induction


Conclusion                  Conclusions

               Predictive
  Output                                  Methodology
                 Model
Data
 Six week temporary pilot project (2005)
 Testing of wearable location tracking
  technology in office
 Two wearable RFID tags
 28 semi structured interviews
 This data was shared

                                                                      Buffer




                                                   


                                  


                                            Cell 2
                   Cell 1
                                                         
                                

                                                             Sensor
                          

                                             
Mutual
                Project 1                   Project 2
                             Aspects

Background    Engineering                   Sociology

                             Impact of
Motivation
                              PerCom

 Questions     Literature                  Real World

               Positivism                 Interpretivism
Methodology
              /Mix.Method                  /Mix.Method
                             Interview
   Data
                                Data

  Analysis    Deduction                     Induction


Conclusion                  Conclusions

               Predictive
  Output                                  Methodology
                 Model
“I don’t understand how the
                                         technology works and what

Analysis                                will happen at the end of the
                                                    trial”


   Deduction
    ◦ Use factors as coding
   Induction
    ◦ Allow themes to emerge

    Vallejo et al. Themes     Moran and Nakata Factors
       Understanding and           Informed User, and
        Communication            Application Assumptions
       Temporary Nature
                                     Temporal Effects
      of the Deployment
                                Perceived Privacy Invasion,
          Privacy and
                                  Device Obtrusion and
            Intrusio
                                  Positioning of Device
                                  Perceived Usefulness,
         Attitudes and
                                Undesirable Behaviours and
     Organisational Culture
                                   Influencing Attitude
Mutual
                Project 1                   Project 2
                             Aspects

Background    Engineering                   Sociology

                             Impact of
Motivation
                              PerCom

 Questions     Literature                  Real World

               Positivism                 Interpretivism
Methodology
              /Mix.Method                  /Mix.Method
                             Interview
   Data
                                Data

  Analysis    Deduction                     Induction


Conclusion                  Conclusions

               Predictive
  Output                                  Methodology
                 Model
Interview Conclusions
   Cross Comparison demonstrated very similar
    conclusions

   Different approaches adopted by researchers
    add confidence to comparison

   Moran and Nakata’s factors confirmed as
    effective monitoring based coding scheme
Mutual
                Project 1                   Project 2
                             Aspects

Background    Engineering                   Sociology

                             Impact of
Motivation
                              PerCom

 Questions     Literature                  Real World

               Positivism                 Interpretivism
Methodology
              /Mix.Method                  /Mix.Method
                             Interview
   Data
                                Data

  Analysis    Deduction                     Induction


Conclusion                  Conclusions

               Predictive
  Output                                  Methodology
                 Model
Output
   Project 1: developed the PSA-BI model for
    predicting monitored user behaviour
                                                                           Exogenous Moderating Variables

                                         Moderating Anchors
                                   Past         Computer
                                                                 Context           Age          Gender       Environment       Role          Culture
                                Experience      Skill Level



                                                                                                              Behavior Based
                                                                            Social Influence                     Attitudes

           External Variables                Object Based
           Anchors                           Beliefs                   Object Based Attitudes


                  Application                   Application                  Attitude toward
                    Space                       Perceptions                    Application
                                                                                                         Attitude toward              Behaviour
                                                                                                            Behaviour                 Intention

                 Technology                     Technology                   Attitude toward
                   Space                        Perceptions                   Technology




                                       Adjusters                              Facilitating
                                                                              Conditions
                             New
                                       Experience         Time
                         Information




   Project 2: developed a guide on how to
    make use of accurate location data in
    understanding flow interaction dynamics in
    organisations
Conclusions
   Different projects, aims and methods

   Same question, data and conclusions

   Reminder that there is value in sharing
    research data between researchers and
    across disciplines

   Online repository of qualitative and
    quantitative to facilitate the sharing of data
Questions?
Discussion Questions
 Why is research data not more frequently
  and widely shared?
 How can we (in this room) collaborate and
  share resources?
 What immediate benefits can really be
  gained from Pervasive technology in the
  next 5 years?
 What social implications are we already
  aware of?

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Studying the Impact of Ubiquitous Monitoring Technology on Office Worker Behaviours: The Value of Sharing Research Data

  • 1. Studying the Impact of Ubiquitous Monitoring Technology on Office Worker Behaviours: The Value of Sharing Research Data Stuart Moran, Irene Lopez de Vallejo, Keiichi Nakata, Ruth Conroy-Dalton, Rachael Luck, Peter McLennan and Steve Hailes
  • 2.
  • 3. Introduction  Pervasive Computing  Benefits in the workplace  Gaps on how to use data ◦ Method/Guide to using data ------------------------------------------------------  Monitoring changes behaviour  Undesirable effects ◦ Method for predicting behavioural responses
  • 4. Mutual Project 1 Project 2 Aspects Background Engineering Sociology Impact of Motivation PerCom Questions Literature Real World Positivism Interpretivism Methodology /Mix.Method /Mix.Method Interview Data Data Analysis Deduction Induction Conclusion Conclusions Predictive Output Methodology Model
  • 5. Mutual Project 1 Project 2 Aspects Background Engineering Sociology Impact of Motivation PerCom Questions Literature Real World Positivism Interpretivism Methodology /Mix.Method /Mix.Method Interview Data Data Analysis Deduction Induction Conclusion Conclusions Predictive Output Methodology Model
  • 6. Mutual Project 1 Project 2 Aspects Background Engineering Sociology Impact of Motivation PerCom Questions Literature Real World Positivism Interpretivism Methodology /Mix.Method /Mix.Method Interview Data Data Analysis Deduction Induction Conclusion Conclusions Predictive Output Methodology Model
  • 7. Mutual Project 1 Project 2 Aspects Background Engineering Sociology Impact of Motivation PerCom Questions Literature Real World Positivism Interpretivism Methodology /Mix.Method /Mix.Method Interview Data Data Analysis Deduction Induction Conclusion Conclusions Predictive Output Methodology Model
  • 8. Methodology  Positivism / Mixed Methods ◦ Reality is believed to be directly observable and measureable  Thematic Content Analysis  Questionnaire and Statistical Analysis  Simulation developed in VenSim  Triangulate VenSim prediction with Interview Data  Interpretivism / Mixed Methods ◦ Reality is believed to only be understood through subjective interpretation  Interviews and Observation data triangulated to portray complex socio technical system  Research allowed to evolve and unfold, rather than constrain it through structure
  • 9. Mutual Project 1 Project 2 Aspects Background Engineering Sociology Impact of Motivation PerCom Questions Literature Real World Positivism Interpretivism Methodology /Mix.Method /Mix.Method Interview Data Data Analysis Deduction Induction Conclusion Conclusions Predictive Output Methodology Model
  • 10. Data  Six week temporary pilot project (2005)  Testing of wearable location tracking technology in office  Two wearable RFID tags  28 semi structured interviews  This data was shared Buffer       Cell 2 Cell 1   Sensor    
  • 11. Mutual Project 1 Project 2 Aspects Background Engineering Sociology Impact of Motivation PerCom Questions Literature Real World Positivism Interpretivism Methodology /Mix.Method /Mix.Method Interview Data Data Analysis Deduction Induction Conclusion Conclusions Predictive Output Methodology Model
  • 12. “I don’t understand how the technology works and what Analysis will happen at the end of the trial”  Deduction ◦ Use factors as coding  Induction ◦ Allow themes to emerge Vallejo et al. Themes Moran and Nakata Factors Understanding and Informed User, and Communication Application Assumptions Temporary Nature Temporal Effects of the Deployment Perceived Privacy Invasion, Privacy and Device Obtrusion and Intrusio Positioning of Device Perceived Usefulness, Attitudes and Undesirable Behaviours and Organisational Culture Influencing Attitude
  • 13. Mutual Project 1 Project 2 Aspects Background Engineering Sociology Impact of Motivation PerCom Questions Literature Real World Positivism Interpretivism Methodology /Mix.Method /Mix.Method Interview Data Data Analysis Deduction Induction Conclusion Conclusions Predictive Output Methodology Model
  • 14. Interview Conclusions  Cross Comparison demonstrated very similar conclusions  Different approaches adopted by researchers add confidence to comparison  Moran and Nakata’s factors confirmed as effective monitoring based coding scheme
  • 15. Mutual Project 1 Project 2 Aspects Background Engineering Sociology Impact of Motivation PerCom Questions Literature Real World Positivism Interpretivism Methodology /Mix.Method /Mix.Method Interview Data Data Analysis Deduction Induction Conclusion Conclusions Predictive Output Methodology Model
  • 16. Output  Project 1: developed the PSA-BI model for predicting monitored user behaviour Exogenous Moderating Variables Moderating Anchors Past Computer Context Age Gender Environment Role Culture Experience Skill Level Behavior Based Social Influence Attitudes External Variables Object Based Anchors Beliefs Object Based Attitudes Application Application Attitude toward Space Perceptions Application Attitude toward Behaviour Behaviour Intention Technology Technology Attitude toward Space Perceptions Technology Adjusters Facilitating Conditions New Experience Time Information  Project 2: developed a guide on how to make use of accurate location data in understanding flow interaction dynamics in organisations
  • 17. Conclusions  Different projects, aims and methods  Same question, data and conclusions  Reminder that there is value in sharing research data between researchers and across disciplines  Online repository of qualitative and quantitative to facilitate the sharing of data
  • 19. Discussion Questions  Why is research data not more frequently and widely shared?  How can we (in this room) collaborate and share resources?  What immediate benefits can really be gained from Pervasive technology in the next 5 years?  What social implications are we already aware of?