Paper Link: https://openreview.net/forum?id=oIHR0YKPDW4
Paper Type: Long paper (up to eight pages of content + unlimited references and appendices)
Abstract: Media news framing bias can increase political polarization and undermine civil society. The need for automatic mitigation methods is therefore growing. We propose a new task, a neutral summary generation from multiple news articles of the varying political leanings
to facilitate balanced and unbiased news reading.
In this paper, we first collect a new dataset, illustrate insights about framing bias through a case study, and propose a new effective metric and model (NeuS-Title) for the task.
Based on our discovery that title provides a good signal for framing bias, we present NeuS-Title that learns to neutralize news content in hierarchical order from title to article. Our hierarchical multi-task learning is achieved by formatting our hierarchical data pair (title, article) sequentially with identifier-tokens (``TITLE=>'', ``ARTICLE=>'') and fine-tuning the auto-regressive decoder with the standard negative log-likelihood objective.
We then analyze and point out the remaining challenges and future directions. One of the most interesting observations is that neural NLG models can hallucinate not only factually inaccurate or unverifiable content but also politically biased content.
Dataset: zip
Presentation Mode: This paper will be presented virtually
Virtual Presentation Timezone: UTC-5
Copyright Consent Signature (type Name Or NA If Not Transferrable): Nayeon Lee
Copyright Consent Name And Address: Nayeon Lee, Hong Kong University of Science and Technology
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