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Fighting Fire with Fire: The Dual Role of LLMs in Crafting and Detecting Elusive Disinformation

About

Recent ubiquity and disruptive impacts of large language models (LLMs) have raised concerns about their potential to be misused (.i.e, generating large-scale harmful and misleading content). To combat this emerging risk of LLMs, we propose a novel "Fighting Fire with Fire" (F3) strategy that harnesses modern LLMs' generative and emergent reasoning capabilities to counter human-written and LLM-generated disinformation. First, we leverage GPT-3.5-turbo to synthesize authentic and deceptive LLM-generated content through paraphrase-based and perturbation-based prefix-style prompts, respectively. Second, we apply zero-shot in-context semantic reasoning techniques with cloze-style prompts to discern genuine from deceptive posts and news articles. In our extensive experiments, we observe GPT-3.5-turbo's zero-shot superiority for both in-distribution and out-of-distribution datasets, where GPT-3.5-turbo consistently achieved accuracy at 68-72%, unlike the decline observed in previous customized and fine-tuned disinformation detectors. Our codebase and dataset are available at https://github.com/mickeymst/F3.

Jason Lucas, Adaku Uchendu, Michiharu Yamashita, Jooyoung Lee, Shaurya Rohatgi, Dongwon Lee• 2023

Related benchmarks

TaskDatasetResultRank
Fake News DetectionPolitiFact
Accuracy62.2
53
Fake News DetectionGossipcop
Accuracy41
48
Disinformation DetectionFive datasets overall
F1 Score0.765
20
Fake News DetectionANTiVax--
19
Hate Speech DetectionHASOC
Accuracy60.7
11
Rumor DetectionPheme
Accuracy65.1
11
Rumor DetectionTwitter16
Accuracy49.2
11
Rumour DetectionTwitter 15
Accuracy51
11
Rumour DetectionRumourEval
Accuracy41.5
11
Sarcasm DetectionTwitter
Accuracy63.2
11
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