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MSnet: A BERT-based Network for Gendered Pronoun Resolution

机译:MSnet:用于性别代词解析的基于BERT的网络

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摘要

The pre-trained BERT model achieves a remarkable state of the art across a wide range of tasks in natural language processing. For solving the gender bias in gendered pronoun resolution task, I propose a novel neural network model based on the pre-trained BERT. This model is a type of mention score classifier and uses an attention mechanism with no parameters to compute the contextual representation of entity span, and a vector to represent the triple-wise semantic similarity among the pronoun and the entities. In stage 1 of the gendered pronoun resolution task, a variant of this model, trained in the fine-tuning approach, reduced the multi-class logarithmic loss to 0.3033 in the 5-fold cross-validation of training set and 0.2795 in testing set. Besides, this variant won the 2nd place with a score at 0.17289 in stage 2 of the task.
机译:经过预训练的BERT模型在自然语言处理的各种任务中实现了卓越的技术水平。为了解决性别代词解析任务中的性别偏见,我提出了一种基于预训练的BERT的新型神经网络模型。该模型是一种提及得分分类器,它使用没有参数的注意力机制来计算实体跨度的上下文表示,并使用一个向量来表示代词和实体之间的三重语义相似性。在性别代词解析任务的第1阶段中,采用微调方法训练的该模型的变体在训练集的5倍交叉验证中将多类对数损失减少至0.3033,在测试集中将其减少至0.2795。此外,该变体在任务的第二阶段以0.17289的分数赢得了第二名。

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