On the Zero-Shot Generalization of Machine-Generated Text Detectors
Pu, Xiao, Zhang, Jingyu, Han, Xiaochuang, Tsvetkov, Yulia, He, Tianxing
–arXiv.org Artificial Intelligence
The rampant proliferation of large language models, fluent enough to generate text indistinguishable from human-written language, gives unprecedented importance to the detection of machine-generated text. This work is motivated by an important research question: How will the detectors of machine-generated text perform on outputs of a new generator, that the detectors were not trained on? We begin by collecting generation data from a wide range of LLMs, and train neural detectors on data from each generator and test its performance on held-out generators. While none of the detectors can generalize to all generators, we observe a consistent and interesting pattern that the detectors trained on data from a medium-size LLM can zero-shot generalize to the larger version. As a concrete application, we demonstrate that robust detectors can be built on an ensemble of training data from medium-sized models.
arXiv.org Artificial Intelligence
Oct-8-2023
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