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Main Authors: Kristanto, Sepyan Purnama, Hakim, Lutfi, Yusuf, Dianni
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.22153
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author Kristanto, Sepyan Purnama
Hakim, Lutfi
Yusuf, Dianni
author_facet Kristanto, Sepyan Purnama
Hakim, Lutfi
Yusuf, Dianni
contents The widespread adoption of large language models (LLMs) has made it difficult to distinguish human writing from machine-produced text in many real applications. Detectors that were effective for one generation of models tend to degrade when newer models or modified decoding strategies are introduced. In this work, we study this lack of stability and propose a hybrid ensemble that is explicitly designed to cope with changing generator distributions. The ensemble combines three complementary components: a RoBERTa-based classifier fine-tuned for supervised detection, a curvature-inspired score based on perturbing the input and measuring changes in model likelihood, and a compact stylometric model built on hand-crafted linguistic features. The outputs of these components are fused on the probability simplex, and the weights are chosen via validation-based search. We frame this approach in terms of variance reduction and risk under mixtures of generators, and show that the simplex constraint provides a simple way to trade off the strengths and weaknesses of each branch. Experiments on a 30000 document corpus drawn from several LLM families including models unseen during training and paraphrased attack variants show that the proposed method achieves 94.2% accuracy and an AUC of 0.978. The ensemble also lowers false positives on scientific articles compared to strong baselines, which is critical in educational and research settings where wrongly flagging human work is costly
format Preprint
id arxiv_https___arxiv_org_abs_2511_22153
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Simplex-Optimized Hybrid Ensemble for Large Language Model Text Detection Under Generative Distribution Drif
Kristanto, Sepyan Purnama
Hakim, Lutfi
Yusuf, Dianni
Computation and Language
Artificial Intelligence
The widespread adoption of large language models (LLMs) has made it difficult to distinguish human writing from machine-produced text in many real applications. Detectors that were effective for one generation of models tend to degrade when newer models or modified decoding strategies are introduced. In this work, we study this lack of stability and propose a hybrid ensemble that is explicitly designed to cope with changing generator distributions. The ensemble combines three complementary components: a RoBERTa-based classifier fine-tuned for supervised detection, a curvature-inspired score based on perturbing the input and measuring changes in model likelihood, and a compact stylometric model built on hand-crafted linguistic features. The outputs of these components are fused on the probability simplex, and the weights are chosen via validation-based search. We frame this approach in terms of variance reduction and risk under mixtures of generators, and show that the simplex constraint provides a simple way to trade off the strengths and weaknesses of each branch. Experiments on a 30000 document corpus drawn from several LLM families including models unseen during training and paraphrased attack variants show that the proposed method achieves 94.2% accuracy and an AUC of 0.978. The ensemble also lowers false positives on scientific articles compared to strong baselines, which is critical in educational and research settings where wrongly flagging human work is costly
title Simplex-Optimized Hybrid Ensemble for Large Language Model Text Detection Under Generative Distribution Drif
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2511.22153