Does Slightly Mean Somewhat? Measuring Vague Intensity Words in LLM Numeric Actions
Daniel Tabach (Georgia Institute of Technology)

TL;DR
This study investigates how language models interpret vague intensity words when translating them into numeric actions, revealing compression, state dependence, and boundary effects in their numeric outputs.
Contribution
It provides a detailed analysis of how LLMs encode intensity words into numeric actions, highlighting compression and context effects not previously documented.
Findings
Model compresses 10 intensity words into 5 median outputs.
Contextual system state influences numeric outputs more than lexical differences.
Near operational limits, model behaviors diverge into three distinct modes.
Abstract
Do language models preserve the ordinal meaning of intensity words when those words must produce numeric actions? I study a researcher-constructed scale of 10 English degree modifiers, from slightly to drastically, informed by the Quirk et al. degree-modifier taxonomy, in a controlled resource-allocation environment where Claude Haiku receives a natural-language instruction, produces a numeric allocation, and a deterministic backend converts that allocation into a measurable outcome. The only variable that changes between runs is the intensity word or the starting system state, isolating their effects on the model's numeric output. Across 6,620 runs at T=0.0 and T=0.7, three patterns emerge. First, the model compresses 10 intensity words into 5 distinct median outputs: four lower-tier words all map to the same value, while stronger words break into higher regimes (Spearman rho =…
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