Semantic Bundle AI introduces stable anchor-based coordinates as a complementarysemantic management layer for Large Language Models 4,5. A key open question from priorwork concerns anchor design: what constitutes an effective anchor, and how should anchorsbe selected?This paper addresses that question through two experiments. First, we demonstrate thatanchors constructed as stable semantic regions — averaged embeddings of meaning-neighborclusters rather than single words — achieve substantially higher inter-model stability thanword-level anchors (Spearman r = 0.704 vs. 0.101, a 7× improvement). Second, we identify afundamental tradeoff between cluster stability and domain discriminability: generic anchorsexcel at intra-cluster cohesion (variance ratio 0.047–0.067), while domain-specific conceptvectors achieve 4.4× higher inter-domain separation (0.739 vs. 0.166). We propose a four-axisevaluation framework for semantic stability — inter-model consistency, temporal consistency,cross-cultural robustness, and perturbation resistance — and provide initial validation ontwo axes. These results establish concrete design principles for anchor selection and positionsemantic stability as an empirically tractable research programCorrected a metric conflation in the Discussion (H-102/ranking consistency); core results unchanged.
makoto saitou (Thu,) studied this question.