8 research outputs found
Personalization Paradox in Behavior Change Apps:Lessons from a Social Comparison-Based Personalized App for Physical Activity
Social comparison-based features are widely used in social computing apps.
However, most existing apps are not grounded in social comparison theories and
do not consider individual differences in social comparison preferences and
reactions. This paper is among the first to automatically personalize social
comparison targets. In the context of an m-health app for physical activity, we
use artificial intelligence (AI) techniques of multi-armed bandits. Results
from our user study (n=53) indicate that there is some evidence that motivation
can be increased using the AI-based personalization of social comparison. The
detected effects achieved small-to-moderate effect sizes, illustrating the
real-world implications of the intervention for enhancing motivation and
physical activity. In addition to design implications for social comparison
features in social apps, this paper identified the personalization paradox, the
conflict between user modeling and adaptation, as a key design challenge of
personalized applications for behavior change. Additionally, we propose
research directions to mitigate this Personalization Paradox
Learning Combinatory Categorial Grammars for Plan Recognition
This paper defines a learning algorithm for plan grammars used for plan recognition. The algorithm learns Combinatory Categorial Grammars (CCGs) that capture the structure of plans from a set of successful plan execution traces paired with the goal of the actions. This work is motivated by past work on CCG learning algorithms for natural language processing, and is evaluated on five well know planning domains
Building Helpful Virtual Agents Using Plan Recognition and Planning
This paper presents a new model of cooperative behavior based on the interaction of plan recognition and automated planning.  Based on observations of the actions of an "initiator" agent, a "supporter" agent uses plan recognition to hypothesize the plans and goals of the initiator.  The supporter agent then proposes and plans for a set of subgoals it will achieve to help the initiator. The approach is demonstrated in an open-source, virtual robot platform
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Mapping a Plurality of Explanations with NLP: A Case Study of Mothers and Health Workers in India
Understanding the values, norms, behaviors, and causal beliefs of communities is a central goal of cognitive science, with practical benefits of grasping and improving community factors such as healthcare delivery. These cultural causal beliefs are evident, in part, within narratives, interview transcripts, ethnography, and other textual sources, but analyzing these texts presently involves tedious expert hand-coding or relatively shallow qualitative text analysis or classification. We present a novel approach for extracting graphical causal models from text via NLP, including qualitative causality, intentions, teleology, sentiment, welfare, social influence, and other rationale. The factors (i.e., nodes) of these causal models are tagged with ethnographic attributes and word-senses, allowing aggregation of causal models over thousands of passages to identify correlations and recurring themes. We apply this approach to a corpus of narrative interviews about maternal and child health and healthcare delivery in Bihar, India, corroborating the hand-coded results of human experts and also identifying novel insights about explanatory structure
A collective AI via lifelong learning and sharing at the edge
One vision of a future artificial intelligence (AI) is where many separate units can learn independently over a lifetime and share their knowledge with each other. The synergy between lifelong learning and sharing has the potential to create a society of AI systems, as each individual unit can contribute to and benefit from the collective knowledge. Essential to this vision are the abilities to learn multiple skills incrementally during a lifetime, to exchange knowledge among units via a common language, to use both local data and communication to learn, and to rely on edge devices to host the necessary decentralized computation and data. The result is a network of agents that can quickly respond to and learn new tasks, that collectively hold more knowledge than a single agent and that can extend current knowledge in more diverse ways than a single agent. Open research questions include when and what knowledge should be shared to maximize both the rate of learning and the long-term learning performance. Here we review recent machine learning advances converging towards creating a collective machine-learned intelligence. We propose that the convergence of such scientific and technological advances will lead to the emergence of new types of scalable, resilient and sustainable AI systems.</p