Title
Target-adaptive Graph for Cross-target Stance Detection
Abstract
ABSTRACT Target plays an essential role in stance detection of an opinionated review/claim, since the stance expressed in the text often depends on the target. In practice, we need to deal with targets unseen in the annotated training data. As such, detecting stance for an unknown or unseen target is an important research problem. This paper presents a novel approach that automatically identifies and adapts the target-dependent and target-independent roles that a word plays with respect to a specific target in stance expressions, so as to achieve cross-target stance detection. More concretely, we explore a novel solution of constructing heterogeneous target-adaptive pragmatics dependency graphs (TPDG) for each sentence towards a given target. An in-target graph is constructed to produce inherent pragmatics dependencies of words for a distinct target. In addition, another cross-target graph is constructed to develop the versatility of words across all targets for boosting the learning of dominant word-level stance expressions available to an unknown target. A novel graph-aware model with interactive Graphical Convolutional Network (GCN) blocks is developed to derive the target-adaptive graph representation of the context for stance detection. The experimental results on a number of benchmark datasets show that our proposed model outperforms state-of-the-art methods in cross-target stance detection.
Year
DOI
Venue
2021
10.1145/3442381.3449790
International World Wide Web Conference
Keywords
DocType
Citations 
cross-target stance detection, graph networks, opinion mining
Conference
2
PageRank 
References 
Authors
0.45
0
7
Name
Order
Citations
PageRank
Bin Liang153.81
Yonghao Fu220.79
Lin Gui3186.43
Min Yang47720.41
Du Jiachen5369.02
Yulan He61934123.88
Xu Ruifeng743253.04