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Cascaded Span Extraction and Response Generation for Document-Grounded Dialog

The paper describes approaches for predicting spans in documents and generating agent responses in goal-oriented document-grounded dialogs, achieving improvements over baselines using biaffine classifiers and cascaded models.

Year
2021
Venue
ACL (dialdoc) 2021 8
Authors
4
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arxiv.org/abs/2106.07275ARXIV-DEFAULT
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Abstract

This paper summarizes our entries to both subtasks of the first DialDoc shared task which focuses on the agent response prediction task in goal-oriented document-grounded dialogs. The task is split into two subtasks: predicting a span in a document that grounds an agent turn and generating an agent response based on a dialog and grounding document. In the first subtask, we restrict the set of valid spans to the ones defined in the dataset, use a biaffine classifier to model spans, and finally use an ensemble of different models. For the second subtask, we use a cascaded model which grounds the response prediction on the predicted span instead of the full document. With these approaches, we obtain significant improvements in both subtasks compared to the baseline.

Authors

4