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Zero-shot stance detection based on cross-domain feature enhancement by contrastive learning

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arxiv 2210.03380 v1 pith:4CHLERQD submitted 2022-10-07 cs.CL cs.AI

Zero-shot stance detection based on cross-domain feature enhancement by contrastive learning

classification cs.CL cs.AI
keywords featuresstancedetectiontargetstransferableunseenzero-shotcapture
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Zero-shot stance detection is challenging because it requires detecting the stance of previously unseen targets in the inference phase. The ability to learn transferable target-invariant features is critical for zero-shot stance detection. In this work, we propose a stance detection approach that can efficiently adapt to unseen targets, the core of which is to capture target-invariant syntactic expression patterns as transferable knowledge. Specifically, we first augment the data by masking the topic words of sentences, and then feed the augmented data to an unsupervised contrastive learning module to capture transferable features. Then, to fit a specific target, we encode the raw texts as target-specific features. Finally, we adopt an attention mechanism, which combines syntactic expression patterns with target-specific features to obtain enhanced features for predicting previously unseen targets. Experiments demonstrate that our model outperforms competitive baselines on four benchmark datasets.

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