基于数据扩充的亲属关系预测组合概化

Kangda Wei, Sayan Ghosh, Shashank Srivastava
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引用次数: 0

摘要

基于变压器的模型在许多NLP任务中表现出了良好的性能。然而,最近的工作表明,这种模型在显示组合泛化方面的局限性,这需要模型泛化到已知概念的新组合。在这项工作中,我们探索了两种基于故事的亲属关系预测任务的组合泛化策略,(1)数据增强和(2)预测和使用中间结构化表示(以亲属关系图的形式)。我们的实验表明,相对于不使用这些策略的先前工作的基线模型,数据增强将泛化性能平均提高了约20%。然而,与仅利用数据增强的模型相比,预测和使用中间亲属关系图会导致亲属关系预测的泛化程度平均下降约50%。
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Compositional Generalization for Kinship Prediction through Data Augmentation
Transformer-based models have shown promising performance in numerous NLP tasks. However, recent work has shown the limitation of such models in showing compositional generalization, which requires models to generalize to novel compositions of known concepts. In this work, we explore two strategies for compositional generalization on the task of kinship prediction from stories, (1) data augmentation and (2) predicting and using intermediate structured representation (in form of kinship graphs). Our experiments show that data augmentation boosts generalization performance by around 20% on average relative to a baseline model from prior work not using these strategies. However, predicting and using intermediate kinship graphs leads to a deterioration in the generalization of kinship prediction by around 50% on average relative to models that only leverage data augmentation.
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