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Main Authors: Zhang, Yuqing, Ürker, Ecesu, Verhoef, Tessa, Boleda, Gemma, Bisazza, Arianna
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.25674
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author Zhang, Yuqing
Ürker, Ecesu
Verhoef, Tessa
Boleda, Gemma
Bisazza, Arianna
author_facet Zhang, Yuqing
Ürker, Ecesu
Verhoef, Tessa
Boleda, Gemma
Bisazza, Arianna
contents Modeling the emergence of human-like lexicons in computational systems has advanced through the use of interacting neural agents, which simulate both learning and communicative pressures. The NeLLCom-Lex framework (Zhang et al., 2025) allows neural agents to develop pragmatic color naming behavior and human-like lexicons through supervised learning (SL) from human data and reinforcement learning (RL) in referential games. Despite these successes, the lexicons that emerge diverge systematically from human color categories, producing highly non-convex regions in color space, which contrast with the convexity typical of human categories. To address this, we introduce two factors, upsampling rare color terms during SL and multi-listener RL interactions, and adopt a convexity measure to quantify geometric coherence. We find that upsampling improves lexical diversity and system-level informativeness of the color lexicon, while many-listener setups promote more convex color categories. The combination of moderate upsampling and multiple listeners produces lexicons most similar to human systems.
format Preprint
id arxiv_https___arxiv_org_abs_2604_25674
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Modeling Human-Like Color Naming Behavior in Context
Zhang, Yuqing
Ürker, Ecesu
Verhoef, Tessa
Boleda, Gemma
Bisazza, Arianna
Computation and Language
Modeling the emergence of human-like lexicons in computational systems has advanced through the use of interacting neural agents, which simulate both learning and communicative pressures. The NeLLCom-Lex framework (Zhang et al., 2025) allows neural agents to develop pragmatic color naming behavior and human-like lexicons through supervised learning (SL) from human data and reinforcement learning (RL) in referential games. Despite these successes, the lexicons that emerge diverge systematically from human color categories, producing highly non-convex regions in color space, which contrast with the convexity typical of human categories. To address this, we introduce two factors, upsampling rare color terms during SL and multi-listener RL interactions, and adopt a convexity measure to quantify geometric coherence. We find that upsampling improves lexical diversity and system-level informativeness of the color lexicon, while many-listener setups promote more convex color categories. The combination of moderate upsampling and multiple listeners produces lexicons most similar to human systems.
title Modeling Human-Like Color Naming Behavior in Context
topic Computation and Language
url https://arxiv.org/abs/2604.25674