Knowledge Graph-Enhanced Zero-Shot Topic Classification: A Multi-Strategy Comparative Study 文章

ArXiv CS.CL2026-06-01NEWSen作者: Shahana Akter, Yatharth Vohra, Ankita Shukla, Souvika Sarkar

摘要

arXiv:2605.30465v1 Announce Type: new Abstract: Multi-label topic classification without labeled training data is a challenging task, specially when documents contain complex relational information. We present a zero-shot multi-label topic classification framework and systematically investigate how per-article knowledge graph augmentation affects its performance. The base framework classifies topics in documents without labeled training data and has four variants: article-only classification, keyword-enhanced classification, and self-consistency decoding variants of both. Then, we augment each base variant with per article knowledge graph. This graph is extracted from the input document through a pipeline similar to KGGen based on subject-predicate-object triples. We test all eight methods, four base and four graph augmented on fifteen LLMs and eight multi-label datasets across different domains.

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