MMODELYST
Papers/SEEK: Semantic Evidence Extraction via Adaptive ChunKing for Multilingual Fact-Checking
PAP

SEEK: Semantic Evidence Extraction via Adaptive ChunKing for Multilingual Fact-Checking

May 26, 2026

arXiv
Abstract

Multilingual fact verification requires evidence that is both relevant and sufficiently complete for reliable factuality prediction. However, existing systems often rely on search snippets, sentence-level evidence, or locally segmented passages, which can miss decisive context and produce fragmented evidence. To overcome these limitations, we propose SEEK, a Semantic Evidence Extraction with an adaptive chunKing framework that constructs coherent evidence chunks from full fact-checking articles by identifying semantic topic transitions and preserving local verification context. The constructed chunks are encoded using a multilingual encoder and then multilingual LLMs are finetuned using LoRA adapter for veracity prediction. Experiments on X-FACT and RU22Fact show that SEEK improves macro-f1 by up to 10% over semantic chunking, 19% over sentence chunking, and 20% over search-snippet baselines. Evidence completeness and significance analyses further show that SEEK preserves richer verification context and enables more reliable multilingual fact-checking.

Select text to highlight · click a highlight to remove · saved in this browser only
Authors
Babu Kumar, Gaurav Kumar, Ayush Garg, Aditya Kishore, Jasabanta Patro
Your notes (browser-local)
saved
arXiv:2605.26755