Finite state machine based place name address component recognition

Z. Wang
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Abstract

In the process of Chinese address information processing, the identification accuracy of address components directly affects the accuracy of matching, and plays an indispensable role in people's life. In this paper, the finite-state machine (FSM) model is used to enter the finite-state machine with the address elements as input, and the CRF++ tool is used to train the CRF annotation model among the states of the address components annotated by the word, and the finite-state machine transformation function is constructed. After further disambiguating by state verification function, this paper compares the address recognition results of finite state machine model with those of statistical model tools such as cascade conditional random field. The results show that the finite-state machine address component recognition model with verification function has higher accuracy and better and more comprehensive understanding of address diversity.
基于有限状态机的地名地址成分识别
在中文地址信息处理过程中,地址成分的识别准确性直接影响到匹配的准确性,在人们的生活中起着不可缺少的作用。本文采用有限状态机(FSM)模型以地址元素为输入进入有限状态机,并利用crf++工具在单词标注的地址组件状态之间训练CRF标注模型,构造有限状态机转换函数。通过状态验证函数进一步消除歧义后,将有限状态机模型的地址识别结果与级联条件随机场等统计模型工具的地址识别结果进行了比较。结果表明,具有验证功能的有限状态机地址成分识别模型具有更高的准确性,对地址多样性的理解也更好、更全面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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