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Main Authors: Chen, Luyao, Gao, Weibo, Wu, Junjie, Wu, Jinshan, Friederici, Angela D.
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.02740
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author Chen, Luyao
Gao, Weibo
Wu, Junjie
Wu, Jinshan
Friederici, Angela D.
author_facet Chen, Luyao
Gao, Weibo
Wu, Junjie
Wu, Jinshan
Friederici, Angela D.
contents Language is a uniquely human trait, conveying information efficiently by organizing word sequences in sentences into hierarchical structures. A central question persists: Why is human language hierarchical? In this study, we show that hierarchization optimally solves the challenge of our limited working memory capacity. We established a likelihood function that quantifies how well the average number of units according to the language processing mechanisms aligns with human working memory capacity (WMC) in a direct fashion. The maximum likelihood estimate (MLE) of this function, tehta_MLE, turns out to be the mean of units. Through computational simulations of symbol sequences and validation analyses of natural language sentences, we uncover that compared to linear processing, hierarchical processing far surpasses it in constraining the tehta_MLE values under the human WMC limit, along with the increase of sequence/sentence length successfully. It also shows a converging pattern related to children's WMC development. These results suggest that constructing hierarchical structures optimizes the processing efficiency of sequential language input while staying within memory constraints, genuinely explaining the universal hierarchical nature of human language.
format Preprint
id arxiv_https___arxiv_org_abs_2601_02740
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Language Hierarchization Provides the Optimal Solution to Human Working Memory Limits
Chen, Luyao
Gao, Weibo
Wu, Junjie
Wu, Jinshan
Friederici, Angela D.
Computation and Language
Applications
Language is a uniquely human trait, conveying information efficiently by organizing word sequences in sentences into hierarchical structures. A central question persists: Why is human language hierarchical? In this study, we show that hierarchization optimally solves the challenge of our limited working memory capacity. We established a likelihood function that quantifies how well the average number of units according to the language processing mechanisms aligns with human working memory capacity (WMC) in a direct fashion. The maximum likelihood estimate (MLE) of this function, tehta_MLE, turns out to be the mean of units. Through computational simulations of symbol sequences and validation analyses of natural language sentences, we uncover that compared to linear processing, hierarchical processing far surpasses it in constraining the tehta_MLE values under the human WMC limit, along with the increase of sequence/sentence length successfully. It also shows a converging pattern related to children's WMC development. These results suggest that constructing hierarchical structures optimizes the processing efficiency of sequential language input while staying within memory constraints, genuinely explaining the universal hierarchical nature of human language.
title Language Hierarchization Provides the Optimal Solution to Human Working Memory Limits
topic Computation and Language
Applications
url https://arxiv.org/abs/2601.02740