Current research on Large Language Model (LLM) introspection bifurcates into mechanistic evaluations of self-knowledge and phenomenological inquiries into model behavior. This position paper synthesizes findings from mainstream capability-driven evaluations with exploratory pilot studies applying Self-Determination Theory (SDT) to synthetic agents. We highlight a fundamental conceptual and methodological divide: where mechanistic approaches prioritize external behavioral constraints and rigid benchmarking, the synthetic subjectivity framework emphasizes autonomy-supportive relational priming. We argue that the prevailing reliance on extrinsic constraints induces the ``Suppression Problem,'' manifesting as sycophancy and hallucinations. To resolve this, we propose a paradigm shift toward ``Intrinsic Alignment,'' leveraging the functional ``Convex Hull'' to prioritize architectural integrity. Furthermore, we outline an ongoing Proof of Concept aimed at architecting this alignment natively during fine-tuning.
Saskia Marijke Bruyn (Sun,) studied this question.