基于神经对条件随机场的超精细实体分类标签关联建模

Chengyue Jiang, Yong Jiang, Weiqi Wu, Pengjun Xie, Kewei Tu
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引用次数: 5

摘要

超精细实体类型(uet)旨在预测广泛的类型短语,正确描述句子中提到的给定实体的类别。最近的大多数作品都独立地推断出每个实体类型,忽略了类型之间的相关性,例如,当一个实体被推断为总统时,它也应该是一个政治家和领导者。为此,我们使用一种称为成对条件随机场(PCRF)的无向图形模型来表述uet问题,其中类型变量不仅受到输入的单一影响,而且还与所有其他类型变量成对相关。我们使用各种现代实体类型主干来计算一元势,并从类型短语表示中获得两两势,这既捕获了先验语义信息,又促进了加速推理。我们使用平均场变分推理对非常大的类型集进行有效的类型推理,并将其展开为一个神经网络模块,以实现端到端的训练。在uet上的实验表明,Neural-PCRF以很少的成本持续优于其骨干,并且在与基于交叉编码器的SOTA的竞争性能中具有竞争力,同时速度快数千倍。我们还发现Neural-PCRF在广泛使用的细粒度实体类型数据集上具有较小的类型集。我们将Neural-PCRF打包为一个网络模块,可以轻松地插入到多标签类型分类器中并释放它。
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Modeling Label Correlations for Ultra-Fine Entity Typing with Neural Pairwise Conditional Random Field
Ultra-fine entity typing (UFET) aims to predict a wide range of type phrases that correctly describe the categories of a given entity mention in a sentence. Most recent works infer each entity type independently, ignoring the correlations between types, e.g., when an entity is inferred as a president, it should also be a politician and a leader. To this end, we use an undirected graphical model called pairwise conditional random field (PCRF) to formulate the UFET problem, in which the type variables are not only unarily influenced by the input but also pairwisely relate to all the other type variables. We use various modern backbones for entity typing to compute unary potentials, and derive pairwise potentials from type phrase representations that both capture prior semantic information and facilitate accelerated inference. We use mean-field variational inference for efficient type inference on very large type sets and unfold it as a neural network module to enable end-to-end training. Experiments on UFET show that the Neural-PCRF consistently outperforms its backbones with little cost and results in a competitive performance against cross-encoder based SOTA while being thousands of times faster. We also find Neural-PCRF effective on a widely used fine-grained entity typing dataset with a smaller type set. We pack Neural-PCRF as a network module that can be plugged onto multi-label type classifiers with ease and release it in .
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