CLMar 28, 2024

Collaborative Knowledge Infusion for Low-resource Stance Detection

arXiv:2403.19219v114 citationsh-index: 72Big Data Min Anal
Originality Incremental advance
AI Analysis

This addresses stance detection challenges in low-resource settings, such as social media analysis, but is incremental as it builds on existing knowledge-infused methods.

The paper tackles low-resource stance detection by proposing a collaborative knowledge infusion approach that integrates target knowledge from multiple sources with alignment and efficient parameter learning, achieving significant performance improvements on three public datasets.

Stance detection is the view towards a specific target by a given context (\textit{e.g.} tweets, commercial reviews). Target-related knowledge is often needed to assist stance detection models in understanding the target well and making detection correctly. However, prevailing works for knowledge-infused stance detection predominantly incorporate target knowledge from a singular source that lacks knowledge verification in limited domain knowledge. The low-resource training data further increases the challenge for the data-driven large models in this task. To address those challenges, we propose a collaborative knowledge infusion approach for low-resource stance detection tasks, employing a combination of aligned knowledge enhancement and efficient parameter learning techniques. Specifically, our stance detection approach leverages target background knowledge collaboratively from different knowledge sources with the help of knowledge alignment. Additionally, we also introduce the parameter-efficient collaborative adaptor with a staged optimization algorithm, which collaboratively addresses the challenges associated with low-resource stance detection tasks from both network structure and learning perspectives. To assess the effectiveness of our method, we conduct extensive experiments on three public stance detection datasets, including low-resource and cross-target settings. The results demonstrate significant performance improvements compared to the existing stance detection approaches.

Foundations

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