Cultural Encoding in Large Language Models: The Existence Gap in AI-Mediated Brand Discovery
Huang Junyao, Situ Ruimin, and Ye Renqin

TL;DR
This paper explores how large language models exhibit cultural encoding biases, affecting brand recommendations and creating invisible market barriers due to training data disparities, with implications for strategic brand positioning.
Contribution
It introduces the concept of the Existence Gap and the Data Moat Framework, highlighting how training data geography influences AI responses and strategic brand visibility.
Findings
Chinese LLMs mention brands 30.6% more than International LLMs.
Training data geography, not language, drives brand recommendation disparities.
Brands absent from training data are effectively invisible in AI responses.
Abstract
As artificial intelligence systems increasingly mediate consumer information discovery, brands face algorithmic invisibility. This study investigates Cultural Encoding in Large Language Models (LLMs) -- systematic differences in brand recommendations arising from training data composition. Analyzing 1,909 pure-English queries across 6 LLMs (GPT-4o, Claude, Gemini, Qwen3, DeepSeek, Doubao) and 30 brands, we find Chinese LLMs exhibit 30.6 percentage points higher brand mention rates than International LLMs (88.9% vs. 58.3%, p<.001). This disparity persists in identical English queries, indicating training data geography -- not language -- drives the effect. We introduce the Existence Gap: brands absent from LLM training corpora lack "existence" in AI responses regardless of quality. Through a case study of Zhizibianjie (OmniEdge), a collaboration platform with 65.6%…
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Taxonomy
TopicsComputational and Text Analysis Methods · AI in Service Interactions · Digital Marketing and Social Media
