Mathematics (Oct 2023)

An Adaptive Mixup Hard Negative Sampling for Zero-Shot Entity Linking

  • Shisen Cai,
  • Xi Wu,
  • Maihemuti Maimaiti,
  • Yichang Chen,
  • Zhixiang Wang,
  • Jiong Zheng

DOI
https://doi.org/10.3390/math11204366
Journal volume & issue
Vol. 11, no. 20
p. 4366

Abstract

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Recently, the focus of entity linking research has centered on the zero-shot scenario, where the entity purposed to be labeled at the time of testing was never observed during the training phase, or it may belong to a different domain than the source domain. Current studies have used BERT as the base encoder, as it effectively establishes distributional links between source and target domains. The currently available negative sampling methods all use an extractive approach, which makes it difficult for the models to learn diverse and more challenging negative samples. To address this problem, we propose a generative negative sampling method, adaptive_mixup_hard, which generates more difficult negative entities by fusing the features of both positive and negative samples on top of hard negative sampling and introduces a transformable adaptive parameter, W, to increase the diversity of negative samples. Next, we fuse our method with the Biencoder architecture and evaluate its performance under three different score functions. Ultimately, experimental results on the standard benchmark dataset, Zeshel, demonstrate the effectiveness of our method.

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