Litcius/Paper detail

Conversational Semantic Role Labeling

Kun Xu, Han Wu, Linfeng Song, Haisong Zhang, Linqi Song, Dong Yu

2021IEEE/ACM Transactions on Audio Speech and Language Processing25 citationsDOI

Abstract

Semantic role labeling (SRL) aims to extract the arguments for each predicate in an input sentence. Traditional SRL can fail to analyze dialogues because it only works on every single sentence, while ellipsis and anaphora frequently occur in dialogues. To address this problem, we propose the conversational SRL task, where an argument can be the dialogue participants, a phrase in the dialogue history or the current sentence. As the existing SRL datasets are in the sentence level, we manually annotate semantic roles for 3000 chit-chat dialogues (27198 sentences) to boost the research in this direction. Experiments show that while traditional SRL systems (even with the help of coreference resolution or rewriting) perform poorly for analyzing dialogues, modeling dialogue histories and participants greatly helps the performance, indicating that adapting SRL to conversations is very promising for universal dialogue understanding. Our initial study by applying CSRL to two mainstream conversational tasks, dialogue response generation and dialogue context rewriting, also confirms the usefulness of CSRL.

Topics & Concepts

Computer scienceSentenceCoreferenceNatural language processingSemantic role labelingPredicate (mathematical logic)Argument (complex analysis)RewritingArtificial intelligencePhraseAnaphora (linguistics)Context (archaeology)LinguisticsResolution (logic)Programming languageBiologyPaleontologyBiochemistryPhilosophyChemistryTopic ModelingNatural Language Processing TechniquesSpeech and dialogue systems