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A hybrid approach to address normalization

机译:混合方法解决正常化

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摘要

Accuracy is critical when multiple databases are merged into a single system, because an error in a single record could lead to multiple mismatches. Address normalization is fairly common in database merging. We have developed a system to accurately and efficiently normalize mailing addresses. However, our system differs from other neural network architectures. Its key ingredients are an address dictionary and a scoring system. The scoring system is based on analog neural network systems, but the address dictionary follows a digital approach. The two key processes in our system are learning and address normalization. Learning is further split into dictionary creation updating and system parameters training.
机译:当多个数据库的准确性是至关重要的合并成一个单一的系统,因为一个错误单个记录可能导致多个不匹配。常见的数据库合并。系统准确、有效地正常化邮寄地址。与其他神经网络架构。是一个地址字典和成分评分系统。模拟神经网络系统,但是地址字典是一个数字的方法。在我们系统学习和关键过程地址标准化。到字典创建更新和系统参数训练。

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