HCAICYNCFeb 24, 2025

Teleology-Driven Affective Computing: A Causal Framework for Sustained Well-Being

arXiv:2502.17172v11 citationsh-index: 1
Originality Incremental advance
AI Analysis

This work addresses the problem of short-term focus in affective computing for researchers and developers, proposing a foundational but incremental framework for personalized, ethically aligned AI systems.

The paper tackles the lack of a comprehensive framework for long-term human well-being in affective computing by proposing a teleology-driven approach that unifies emotion theories and emphasizes causal modeling and personalized interventions, aiming to shift focus from statistical correlations to proactive responses.

Affective computing has made significant strides in emotion recognition and generation, yet current approaches mainly focus on short-term pattern recognition and lack a comprehensive framework to guide affective agents toward long-term human well-being. To address this, we propose a teleology-driven affective computing framework that unifies major emotion theories (basic emotion, appraisal, and constructivist approaches) under the premise that affect is an adaptive, goal-directed process that facilitates survival and development. Our framework emphasizes aligning agent responses with both personal/individual and group/collective well-being over extended timescales. We advocate for creating a "dataverse" of personal affective events, capturing the interplay between beliefs, goals, actions, and outcomes through real-world experience sampling and immersive virtual reality. By leveraging causal modeling, this "dataverse" enables AI systems to infer individuals' unique affective concerns and provide tailored interventions for sustained well-being. Additionally, we introduce a meta-reinforcement learning paradigm to train agents in simulated environments, allowing them to adapt to evolving affective concerns and balance hierarchical goals - from immediate emotional needs to long-term self-actualization. This framework shifts the focus from statistical correlations to causal reasoning, enhancing agents' ability to predict and respond proactively to emotional challenges, and offers a foundation for developing personalized, ethically aligned affective systems that promote meaningful human-AI interactions and societal well-being.

Foundations

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