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Learning the Structure of Variable-Order CRFs: a Finite-State Perspective

机译:学习可变阶CRF的结构:有限状态视角

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The computational complexity of linear-chain Conditional Random Fields (CRFs) makes it difficult to deal with very large label sets and long range dependencies Such situations are not rare and arise when dealing with morphologically rich languages or joint labelling tasks. We extend here recent proposals to consider van-able order CRFs. Using an effective finite-state representation of variable-length dependencies, we propose new ways to perform feature selection at large scale and report experimental results where we outperform strong baselines on a tagging task.
机译:线性链条件随机字段(CRF)的计算复杂性使其难以处理非常大的标签集和长期依赖关系。这种情况并不罕见,并且在处理形态丰富的语言或联合标签任务时会出现。在此,我们将最近的建议扩展到考虑可行订单CRF。使用可变长度依赖项的有效有限状态表示,我们提出了新的方法来进行大规模特征选择,并报告实验结果,而在标记任务上,这些结果要优于严格的基准。

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