decontextualisation
Improving Zero-shot Sentence Decontextualisation with Content Selection and Planning
Deng, Zhenyun, Chen, Yulong, Vlachos, Andreas
Extracting individual sentences from a document as evidence or reasoning steps is commonly done in many NLP tasks. However, extracted sentences often lack context necessary to make them understood, e.g., coreference and background information. To this end, we propose a content selection and planning framework for zero-shot decontextualisation, which determines what content should be mentioned and in what order for a sentence to be understood out of context. Specifically, given a potentially ambiguous sentence and its context, we first segment it into basic semantically-independent units. We then identify potentially ambiguous units from the given sentence, and extract relevant units from the context based on their discourse relations. Finally, we generate a content plan to rewrite the sentence by enriching each ambiguous unit with its relevant units. Experimental results demonstrate that our approach is competitive for sentence decontextualisation, producing sentences that exhibit better semantic integrity and discourse coherence, outperforming existing methods.
- Oceania > New Zealand (0.04)
- North America > United States > Missouri > Jackson County > Kansas City (0.04)
- North America > United States > Maine > Androscoggin County > Lewiston (0.04)
- (6 more...)
- Media > Film (1.00)
- Health & Medicine (1.00)
- Government > Regional Government > North America Government > United States Government (1.00)
- (2 more...)
Document-level Claim Extraction and Decontextualisation for Fact-Checking
Deng, Zhenyun, Schlichtkrull, Michael, Vlachos, Andreas
Selecting which claims to check is a time-consuming task for human fact-checkers, especially from documents consisting of multiple sentences and containing multiple claims. However, existing claim extraction approaches focus more on identifying and extracting claims from individual sentences, e.g., identifying whether a sentence contains a claim or the exact boundaries of the claim within a sentence. In this paper, we propose a method for document-level claim extraction for fact-checking, which aims to extract check-worthy claims from documents and decontextualise them so that they can be understood out of context. Specifically, we first recast claim extraction as extractive summarization in order to identify central sentences from documents, then rewrite them to include necessary context from the originating document through sentence decontextualisation. Evaluation with both automatic metrics and a fact-checking professional shows that our method is able to extract check-worthy claims from documents more accurately than previous work, while also improving evidence retrieval.
- Asia > India (0.28)
- Europe > Middle East (0.06)
- Africa > Middle East (0.06)
- (7 more...)