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Main Authors: Tang, Yixuan, Wang, Jincheng, Tung, Anthony K. H.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.00489
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author Tang, Yixuan
Wang, Jincheng
Tung, Anthony K. H.
author_facet Tang, Yixuan
Wang, Jincheng
Tung, Anthony K. H.
contents Fact verification systems typically assess whether a claim is supported by retrieved evidence, assuming that truthfulness depends solely on what is stated. However, many real-world claims are half-truths, factually correct yet misleading due to the omission of critical context. Existing models struggle with such cases, as they are not designed to reason about omitted information. We introduce the task of half-truth detection, and propose PolitiFact-Hidden, a new benchmark with 15k political claims annotated with sentence-level evidence alignment and inferred claim intent. To address this challenge, we present TRACER, a modular re-assessment framework that identifies omission-based misinformation by aligning evidence, inferring implied intent, and estimating the causal impact of hidden content. TRACER can be integrated into existing fact-checking pipelines and consistently improves performance across multiple strong baselines. Notably, it boosts Half-True classification F1 by up to 16 points, highlighting the importance of modeling omissions for trustworthy fact verification. The benchmark and code are available via https://github.com/tangyixuan/TRACER.
format Preprint
id arxiv_https___arxiv_org_abs_2508_00489
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle The Missing Parts: Augmenting Fact Verification with Half-Truth Detection
Tang, Yixuan
Wang, Jincheng
Tung, Anthony K. H.
Computation and Language
Fact verification systems typically assess whether a claim is supported by retrieved evidence, assuming that truthfulness depends solely on what is stated. However, many real-world claims are half-truths, factually correct yet misleading due to the omission of critical context. Existing models struggle with such cases, as they are not designed to reason about omitted information. We introduce the task of half-truth detection, and propose PolitiFact-Hidden, a new benchmark with 15k political claims annotated with sentence-level evidence alignment and inferred claim intent. To address this challenge, we present TRACER, a modular re-assessment framework that identifies omission-based misinformation by aligning evidence, inferring implied intent, and estimating the causal impact of hidden content. TRACER can be integrated into existing fact-checking pipelines and consistently improves performance across multiple strong baselines. Notably, it boosts Half-True classification F1 by up to 16 points, highlighting the importance of modeling omissions for trustworthy fact verification. The benchmark and code are available via https://github.com/tangyixuan/TRACER.
title The Missing Parts: Augmenting Fact Verification with Half-Truth Detection
topic Computation and Language
url https://arxiv.org/abs/2508.00489