Addressing the Ecological Fallacy in Larger LMs with Human Context

Published: 18 May 2026, Last Modified: 19 May 2026CoNLL 2026 ArchivalEveryoneRevisionsBibTeXCC BY 4.0
Keywords: human-context-aware LMs, author context, human language models, ecological fallacy, human LLMs, large human language models, human context, LLMs
Abstract: Language model training and inference ignore a fundamental linguistic fact: there is a dependence between multiple sequences of text written by the same person. Prior work has shown that addressing this form of \textit{ecological fallacy} can greatly improve the performance of multiple smaller (~124M) GPT-based models. In this work, we ask if addressing the ecological fallacy by modeling the author's language context with a specific LM task (called HuLM) can provide similar benefits for a larger-scale model, an 8B Llama model. To this end, we explore variants that process an author's language in the context of their other temporally ordered texts. We study the effect of pre-training with this author context using the HuLM objective, as well as using it during fine-tuning with author context (\textit{HuFT:Human-aware Fine-Tuning}). Empirical comparisons show that addressing the ecological fallacy during fine-tuning alone using QLoRA improves the performance of the larger 8B model over standard fine-tuning. Additionally, QLoRA-based continued HuLM pre-training results in a human-aware model generalizable for improved performance over eight downstream tasks with linear task classifier training alone. These results indicate the utility and importance of modeling language in the context of its original generators, the authors.
Scope Confirmation: To the best of my judgment, this submission falls within the scope of CoNLL.
Primary Area Selection: Computational Social Science and Sociolinguistics
Use Of Generative Artificial Intelligence Tools: No, not at all
Data Collection From Human Subjects: No
Submission Type: Archival: I certify that the submission has not been previously published, nor is the material in it under review by another journal or conference. Further, no material in it will be submitted for review at another conference or journal while under review by CoNLL 2026.
Submission Number: 141
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