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Main Authors: Jiang, Liwei, Chai, Yuanjun, Li, Margaret, Liu, Mickel, Fok, Raymond, Dziri, Nouha, Tsvetkov, Yulia, Sap, Maarten, Albalak, Alon, Choi, Yejin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.22954
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author Jiang, Liwei
Chai, Yuanjun
Li, Margaret
Liu, Mickel
Fok, Raymond
Dziri, Nouha
Tsvetkov, Yulia
Sap, Maarten
Albalak, Alon
Choi, Yejin
author_facet Jiang, Liwei
Chai, Yuanjun
Li, Margaret
Liu, Mickel
Fok, Raymond
Dziri, Nouha
Tsvetkov, Yulia
Sap, Maarten
Albalak, Alon
Choi, Yejin
contents Language models (LMs) often struggle to generate diverse, human-like creative content, raising concerns about the long-term homogenization of human thought through repeated exposure to similar outputs. Yet scalable methods for evaluating LM output diversity remain limited, especially beyond narrow tasks such as random number or name generation, or beyond repeated sampling from a single model. We introduce Infinity-Chat, a large-scale dataset of 26K diverse, real-world, open-ended user queries that admit a wide range of plausible answers with no single ground truth. We introduce the first comprehensive taxonomy for characterizing the full spectrum of open-ended prompts posed to LMs, comprising 6 top-level categories (e.g., brainstorm & ideation) that further breaks down to 17 subcategories. Using Infinity-Chat, we present a large-scale study of mode collapse in LMs, revealing a pronounced Artificial Hivemind effect in open-ended generation of LMs, characterized by (1) intra-model repetition, where a single model consistently generates similar responses, and more so (2) inter-model homogeneity, where different models produce strikingly similar outputs. Infinity-Chat also includes 31,250 human annotations, across absolute ratings and pairwise preferences, with 25 independent human annotations per example. This enables studying collective and individual-specific human preferences in response to open-ended queries. Our findings show that LMs, reward models, and LM judges are less well calibrated to human ratings on model generations that elicit differing idiosyncratic annotator preferences, despite maintaining comparable overall quality. Overall, INFINITY-CHAT presents the first large-scale resource for systematically studying real-world open-ended queries to LMs, revealing critical insights to guide future research for mitigating long-term AI safety risks posed by the Artificial Hivemind.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Artificial Hivemind: The Open-Ended Homogeneity of Language Models (and Beyond)
Jiang, Liwei
Chai, Yuanjun
Li, Margaret
Liu, Mickel
Fok, Raymond
Dziri, Nouha
Tsvetkov, Yulia
Sap, Maarten
Albalak, Alon
Choi, Yejin
Computation and Language
Language models (LMs) often struggle to generate diverse, human-like creative content, raising concerns about the long-term homogenization of human thought through repeated exposure to similar outputs. Yet scalable methods for evaluating LM output diversity remain limited, especially beyond narrow tasks such as random number or name generation, or beyond repeated sampling from a single model. We introduce Infinity-Chat, a large-scale dataset of 26K diverse, real-world, open-ended user queries that admit a wide range of plausible answers with no single ground truth. We introduce the first comprehensive taxonomy for characterizing the full spectrum of open-ended prompts posed to LMs, comprising 6 top-level categories (e.g., brainstorm & ideation) that further breaks down to 17 subcategories. Using Infinity-Chat, we present a large-scale study of mode collapse in LMs, revealing a pronounced Artificial Hivemind effect in open-ended generation of LMs, characterized by (1) intra-model repetition, where a single model consistently generates similar responses, and more so (2) inter-model homogeneity, where different models produce strikingly similar outputs. Infinity-Chat also includes 31,250 human annotations, across absolute ratings and pairwise preferences, with 25 independent human annotations per example. This enables studying collective and individual-specific human preferences in response to open-ended queries. Our findings show that LMs, reward models, and LM judges are less well calibrated to human ratings on model generations that elicit differing idiosyncratic annotator preferences, despite maintaining comparable overall quality. Overall, INFINITY-CHAT presents the first large-scale resource for systematically studying real-world open-ended queries to LMs, revealing critical insights to guide future research for mitigating long-term AI safety risks posed by the Artificial Hivemind.
title Artificial Hivemind: The Open-Ended Homogeneity of Language Models (and Beyond)
topic Computation and Language
url https://arxiv.org/abs/2510.22954