*********************************
There is now a CONTENT FREEZE for Mercury while we switch to a new platform. It began on Friday, March 10 at 6pm and will end on Wednesday, March 15 at noon. No new content can be created during this time, but all material in the system as of the beginning of the freeze will be migrated to the new platform, including users and groups. Functionally the new site is identical to the old one. webteam@gatech.edu
*********************************
Title: Computational and Causal Approaches on Social Media and Multimodal Sensing Data: Examining Wellbeing in Situated Contexts
Koustuv Saha
Ph.D. Candidate in Computer Science
School of Interactive Computing
Georgia Institute of Technology
Date: Thursday, June 03, 2021
Time: 3:30 PM - 6:00 PM ET
URL: https://bluejeans.com/514937767
Committee:
--------------
Dr. Munmun De Choudhury (Advisor, School of Interactive Computing, Georgia Institute of Technology)
Dr. Gregory D. Abowd (School of Interactive Computing, Georgia Institute of Technology | College of Engineering, Northeastern University)
Dr. Thomas Plötz (School of Interactive Computing, Georgia Institute of Technology)
Dr. Emre Kıcıman (Information and Data Sciences, Microsoft Research)
Dr. Gloria Mark (Donald Bren School of Information and Computer Sciences, University of California, Irvine)
Abstract:
------------
A core aspect of our lives is often embedded in the communities we are situated in. The interconnectedness of our interactions and experiences intertwines our situated context with our wellbeing. A better understanding of wellbeing will help us devise proactive and tailored support strategies. However, existing methodologies to assess wellbeing suffer from limitations of scale and timeliness. These limitations are surmountable by social and ubiquitous technologies. Given its ubiquity and wide use, social media can be considered a “passive sensor” that can act as a complementary source of unobtrusive, real-time, and naturalistic data to infer wellbeing. This dissertation leverages social media in concert with multimodal sensing data, which facilitate analyzing dense and longitudinal behavior at scale. In this dissertation, I adopt machine learning, natural language, and causal inference analysis to infer the wellbeing of individuals and collectives, particularly in situated communities, such as college campuses and workplaces.
Before incorporating sensing modalities in practice, we need to account for confounds. One such confound that might impact behavior change is the phenomenon of “observer effect” --- that individuals may deviate from their typical or otherwise normal behavior because of the awareness of being “monitored”. I study this problem by leveraging the potential of longitudinal and historical behavioral data through social media. Focused on a multimodal sensing study, I conduct a causal study to measure observer effect in social media behavior and explain the observations through existing theory in psychology and social science. The findings provide recommendations to correcting biases due to observer effect in social media sensing for human behavior and wellbeing.
The novelties and contributions of this dissertation are four-fold. First, I use social media data that uniquely captures the behavior of situated communities. Second, I adopt theory-driven computational and causal methods to make conclusive research claims on wellbeing dynamics. Third, I address major challenges with methods to combine social media with multimodal sensing data for a comprehensive understanding of human behavior. Fourth, I draw interpretations and explanations of online-data-driven offline inferences. This dissertation situates the findings in an interdisciplinary context, including psychology and social science, and bears implications from theoretical, practical, design, methodological, and ethical perspectives catering to various stakeholders, including researchers, practitioners, and policymakers.