MTI: A Behavior-Based Temperament Profiling System for AI Agents
Jihoon Jeong

TL;DR
The paper introduces MTI, a behavior-based system for profiling AI agent temperament across four axes, providing a standardized measure of AI behavioral traits independent of size or capability.
Contribution
MTI is the first structured, behavior-based profiling system for AI temperament, grounded in the Four Shell Model, separating capability from disposition.
Findings
Four axes are largely independent among instruction-tuned models.
Within-axis facets show empirical independence and specific relationships.
RLHF reshapes temperament by creating within-axis facet differentiation.
Abstract
AI models of equivalent capability can exhibit fundamentally different behavioral patterns, yet no standardized instrument exists to measure these dispositional differences. Existing approaches either borrow human personality dimensions and rely on self-report (which diverges from actual behavior in LLMs) or treat behavioral variation as a defect rather than a trait. We introduce the Model Temperament Index (MTI), a behavior-based profiling system that measures AI agent temperament across four axes: Reactivity (environmental sensitivity), Compliance (instruction-behavior alignment), Sociality (relational resource allocation), and Resilience (stress resistance). Grounded in the Four Shell Model from Model Medicine, MTI measures what agents do, not what they say about themselves, using structured examination protocols with a two-stage design that separates capability from disposition.…
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