Litcius/Paper detail

Paragraph-level Commonsense Transformers with Recurrent Memory

Saadia Gabriel, Chandra Bhagavatula, Vered Shwartz, Ronan Le Bras, Maxwell Forbes, Yejin Choi

2021Proceedings of the AAAI Conference on Artificial Intelligence29 citationsDOIOpen Access PDF

Abstract

Human understanding of narrative texts requires making commonsense inferences beyond what is stated in the text explicitly. A recent model, COMET, can generate such inferences along several dimensions such as pre- and post-conditions, motivations, and mental states of the participants. However, COMET was trained on short phrases, and is therefore discourse-agnostic. When presented with each sentence of a multi-sentence narrative, it might generate inferences that are inconsistent with the rest of the narrative. We present the task of discourse-aware commonsense inference. Given a sentence within a narrative, the goal is to generate commonsense inferences along predefined dimensions, while maintaining coherence with the rest of the narrative. Such large-scale paragraph-level annotation is hard to get and costly, so we use available sentence-level annotations to efficiently and automatically construct a distantly supervised corpus. Using this corpus, we train PARA-COMET, a discourse-aware model that incorporates paragraph-level information to generate coherent commonsense inferences from narratives. PARA-COMET captures both semantic knowledge pertaining to prior world knowledge, and episodic knowledge involving how current events relate to prior and future events in a narrative. Our results confirm that PARA-COMET outperforms the sentence-level baselines, particularly in generating inferences that are both coherent and novel.

Topics & Concepts

ParagraphNarrativeSentenceComputer scienceCommonsense knowledgeNatural language processingAutomatic summarizationInferenceArtificial intelligenceCometConstruct (python library)LinguisticsKnowledge basePhilosophyPhysicsProgramming languageWorld Wide WebAstrophysicsTopic ModelingNatural Language Processing TechniquesAdvanced Text Analysis Techniques
Paragraph-level Commonsense Transformers with Recurrent Memory | Litcius