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Lifelong Learning CRF for Supervised Aspect Extraction

机译:Lifelong学习CRF用于监督方面提取

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摘要

This paper makes a focused contribution to supervised aspect extraction. It shows that if the system has performed aspect extraction from many past domains and retained their results as knowledge, Conditional Random Fields (CRF) can leverage this knowledge in a lifelong learning manner to extract in a new domain markedly better than the traditional CRF without using this prior knowledge. The key innovation is that even after CRF training, the model can still improve its extraction with experiences in its applications.
机译:本文对监督方面提取作出了一项重点贡献。它表明,如果系统已经从许多过去域中提取并保留了它们作为知识的结果,则条件随机字段(CRF)可以利用终身学习方式利用这种知识,以在不使用传统CRF的情况下显着提取新域中的新域中提取这个先验知识。关键创新是,即使在CRF培训之后,该模型仍然可以通过其应用中的经验提升其提取。

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