AIJan 19

Human Emotion Verification by Action Languages via Answer Set Programming

arXiv:2601.12912v1
Originality Incremental advance
AI Analysis

This work addresses the need for formalizing and verifying human emotions in controlled agent behaviors, which is incremental as it builds on existing psychological theories and answer set programming.

The paper tackles the problem of modeling human mental state evolution, specifically emotions, by introducing the action language C-MT based on answer set programming and psychological theories, enabling controlled reasoning and comparison of dynamics through transition constraints and trajectories.

In this paper, we introduce the action language C-MT (Mind Transition Language). It is built on top of answer set programming (ASP) and transition systems to represent how human mental states evolve in response to sequences of observable actions. Drawing on well-established psychological theories, such as the Appraisal Theory of Emotion, we formalize mental states, such as emotions, as multi-dimensional configurations. With the objective to address the need for controlled agent behaviors and to restrict unwanted mental side-effects of actions, we extend the language with a novel causal rule, forbids to cause, along with expressions specialized for mental state dynamics, which enables the modeling of principles for valid transitions between mental states. These principles of mental change are translated into transition constraints, and properties of invariance, which are rigorously evaluated using transition systems in terms of so-called trajectories. This enables controlled reasoning about the dynamic evolution of human mental states. Furthermore, the framework supports the comparison of different dynamics of change by analyzing trajectories that adhere to different psychological principles. We apply the action language to design models for emotion verification. Under consideration in Theory and Practice of Logic Programming (TPLP).

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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