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Main Authors: Rallapalli, Swati, Gallagher, Shannon, Yurko, Ronald, Brooks, Tyler, Loughin, Chuck, Sezgin, Michele, Turri, Violet
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.14111
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author Rallapalli, Swati
Gallagher, Shannon
Yurko, Ronald
Brooks, Tyler
Loughin, Chuck
Sezgin, Michele
Turri, Violet
author_facet Rallapalli, Swati
Gallagher, Shannon
Yurko, Ronald
Brooks, Tyler
Loughin, Chuck
Sezgin, Michele
Turri, Violet
contents Large Language Models (LLMs) are now capable of generating highly fluent, human-like text. They enable many applications, but also raise concerns such as large scale spam, phishing, or academic misuse. While much work has focused on detecting LLM-generated text, only limited work has gone into understanding the stylistic differences between human-written and machine-generated text. In this work, we perform a large scale analysis of stylistic variation across human-written text and outputs from 11 LLMs spanning 8 different genres and 4 decoding strategies using Douglas Biber's set of lexicogrammatical and functional features. Our findings reveal insights that can guide intentional LLM usage. First, key linguistic differentiators of LLM-generated text seem robust to generation conditions (e.g., prompt settings to nudge them to generate human-like text, or availability of human-written text to continue the style); second, genre exerts a stronger influence on stylistic features than the source itself; third, chat variants of the models generally appear to be clustered together in stylistic space, and finally, model has a larger effect on the style than decoding strategy, with some exceptions. These results highlight the relative importance of model and genre over prompting and decoding strategies in shaping the stylistic behavior of machine-generated text.
format Preprint
id arxiv_https___arxiv_org_abs_2604_14111
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Interpretable Stylistic Variation in Human and LLM Writing Across Genres, Models, and Decoding Strategies
Rallapalli, Swati
Gallagher, Shannon
Yurko, Ronald
Brooks, Tyler
Loughin, Chuck
Sezgin, Michele
Turri, Violet
Computation and Language
Large Language Models (LLMs) are now capable of generating highly fluent, human-like text. They enable many applications, but also raise concerns such as large scale spam, phishing, or academic misuse. While much work has focused on detecting LLM-generated text, only limited work has gone into understanding the stylistic differences between human-written and machine-generated text. In this work, we perform a large scale analysis of stylistic variation across human-written text and outputs from 11 LLMs spanning 8 different genres and 4 decoding strategies using Douglas Biber's set of lexicogrammatical and functional features. Our findings reveal insights that can guide intentional LLM usage. First, key linguistic differentiators of LLM-generated text seem robust to generation conditions (e.g., prompt settings to nudge them to generate human-like text, or availability of human-written text to continue the style); second, genre exerts a stronger influence on stylistic features than the source itself; third, chat variants of the models generally appear to be clustered together in stylistic space, and finally, model has a larger effect on the style than decoding strategy, with some exceptions. These results highlight the relative importance of model and genre over prompting and decoding strategies in shaping the stylistic behavior of machine-generated text.
title Interpretable Stylistic Variation in Human and LLM Writing Across Genres, Models, and Decoding Strategies
topic Computation and Language
url https://arxiv.org/abs/2604.14111