Summary-Source Proposition-level Alignment: Task, Datasets and Supervised Baseline
Abstract
Aligning sentences in a reference summary with their counterparts in source documents was shown as a useful auxiliary summarization task, notably for generating training data for salience detection. Despite its assessed utility, the alignment step was mostly approached with heuristic unsupervised methods, typically ROUGE-based, and was never independently optimized or evaluated. In this paper, we propose establishing summary-source alignment as an explicit task, while introducing two major novelties: (1) applying it at the more accurate proposition span level, and (2) approaching it as a supervised classification task. To that end, we created a novel training dataset for proposition-level alignment, derived automatically from available summarization evaluation data. In addition, we crowdsourced dev and test datasets, enabling model development and proper evaluation. Utilizing these data, we present a supervised proposition alignment baseline model, showing improved alignment-quality over the unsupervised approach.
Cite
@article{arxiv.2009.00590,
title = {Summary-Source Proposition-level Alignment: Task, Datasets and Supervised Baseline},
author = {Ori Ernst and Ori Shapira and Ramakanth Pasunuru and Michael Lepioshkin and Jacob Goldberger and Mohit Bansal and Ido Dagan},
journal= {arXiv preprint arXiv:2009.00590},
year = {2021}
}
Comments
CoNLL 2021