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Entity Identification on Microblogs by CRF Model with Adaptive Dependency

机译:基于自适应依赖关系的CRF模型在微博上的实体识别

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We address the problem of entity identification on a microblog with special attention to indirect reference cases in which entities are not referred to by their names. Most studies on identifying entities referred to by their full/partial name or abbreviation, while there are many indirectly mentioned entities in microblogs, which are difficult to identify in short text such as microblogs. We therefore tackled indirect reference cases by developing features that are particularly important for certain types of indirect references and modeling dependency among referred entities by a Conditional Random Field (CRF) model. In addition, we model non-sequential order dependency while keeping the inference tractable by dynamically building dependency among entities. The experimental results suggest that our features were effective for indirect references, and our CRF model with adaptive dependency was robust even when there were multiple mentions in a microblog and achieved the same high performance as that with the fully connected CRF model.
机译:我们在微博上解决实体标识的问题,并特别注意其中实体名称未提及的间接参考案例。大多数关于识别以实体的全名/部分名或缩写表示的实体的研究,而在微博中有许多间接提及的实体,很难在短文本(如微博)中进行识别。因此,我们通过开发对某些类型的间接引用和通过条件随机场(CRF)模型对被引用实体之间的依赖关系建模特别重要的功能来解决间接引用案例。另外,我们通过动态建立实体之间的依存关系来对非顺序依存关系建模,同时保持推理的可处理性。实验结果表明,我们的功能对于间接引用有效,并且即使在微博中有多次提及,我们具有自适应依赖性的CRF模型也很健壮,并且可以实现与完全连接的CRF模型相同的高性能。

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