Recent work in entity disambiguation (ED) has typically neglected structured knowledge base (KB) facts, and instead relied on a limited subset of KB information, such as entity descriptions or types. This limits the range of contexts in which entities can be disambiguated. To allow the use of all KB facts, as well as descriptions and types, we introduce an ED model which links entities by reasoning over a symbolic knowledge base in a fully differentiable fashion. Our model surpasses state-of-the-art baselines on six well-established ED datasets by 1.3 F1 on average. By allowing access to all KB information, our model is less reliant on popularity-based entity priors, and improves performance on the challenging ShadowLink dataset (which emphasises infrequent and ambiguous entities) by 12.7 F1.
翻译:最近关于实体脱钩的工作通常忽略了结构化知识基础(KB)事实,而是依赖有限的一部分KB信息,例如实体说明或类型。这限制了实体可以脱钩的背景范围。为了使用所有KB事实以及描述和类型,我们采用了一种ED模式,将实体通过完全不同的方式推理象征性知识基础而联系在一起。我们的模型超过了六套成熟的ED数据集的最新基线,平均为1.3 F1。通过允许获取所有KB信息,我们的模型不那么依赖基于受欢迎实体的前身,提高具有挑战性的影子链接数据集(强调不常见和模棱两可的实体)的绩效,为12.7 F1。