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Argumentative Large Language Models for Explainable and Contestable Claim Verification

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The profusion of knowledge encoded in large language models (LLMs) and their ability to apply this knowledge zero-shot in a range of settings makes them promising candidates for use in decision-making. However, they are currently limited by their inability to provide outputs which can be faithfully explained and effectively contested to correct mistakes. In this paper, we attempt to reconcile these strengths and weaknesses by introducing \emph{argumentative LLMs (ArgLLMs)}, a method for augmenting LLMs with argumentative reasoning. Concretely, ArgLLMs construct argumentation frameworks, which then serve as the basis for formal reasoning in support of decision-making. The interpretable nature of these argumentation frameworks and formal reasoning means that any decision made by ArgLLMs may be explained and contested. We evaluate ArgLLMs' performance experimentally in comparison with state-of-the-art techniques, in the context of the decision-making task of claim verification. We also define novel properties to characterise contestability and assess ArgLLMs formally in terms of these properties.

Gabriel Freedman, Adam Dejl, Deniz Gorur, Xiang Yin, Antonio Rago, Francesca Toni• 2024

Related benchmarks

TaskDatasetResultRank
Claim VerificationMed Claim
Accuracy83
56
Claim VerificationTruthful Claim
Accuracy81
49
Claim VerificationStrategy Claim
Accuracy75
49
Glioblastoma (GBM) treatment predictionGlioblastoma (GBM) treatment prediction
LMR0.8676
26
Ternary claim verificationTFU (test)
Accuracy58.5
26
Ternary claim verificationAVeriTeC (test)
Balanced Accuracy40.6
26
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