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Multiview Contextual Commonsense Inference: A New Dataset and Task

A new dataset CICEROv2 and pre-training objectives, including concept denoising and utterance sorting, enhance T5-Large for contextual commonsense inference.

Year
2022
Venue
arXiv 2022
Authors
6
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arxiv.org/abs/2210.02890v2ARXIV-DEFAULT
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Abstract

Contextual commonsense inference is the task of generating various types of explanations around the events in a dyadic dialogue, including cause, motivation, emotional reaction, and others. Producing a coherent and non-trivial explanation requires awareness of the dialogue's structure and of how an event is grounded in the context. In this work, we create CICEROv2, a dataset consisting of 8,351 instances from 2,379 dialogues, containing multiple human-written answers for each contextual commonsense inference question, representing a type of explanation on cause, subsequent event, motivation, and emotional reaction. We show that the inferences in CICEROv2 are more semantically diverse than other contextual commonsense inference datasets. To solve the inference task, we propose a collection of pre-training objectives, including concept denoising and utterance sorting to prepare a pre-trained model for the downstream contextual commonsense inference task. Our results show that the proposed pre-training objectives are effective at adapting the pre-trained T5-Large model for the contextual commonsense inference task.

Authors

6