基于神经网络的日本公寓物业信息实体解析

Y. Kado, Takashi Hirokata, Koji Matsumura, Xueting Wang, T. Yamasaki
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引用次数: 0

摘要

在日本,有很多房地产公司和中介公司制作公寓房间的财产记录,并将其登记在房地产门户网站上进行广告宣传。公寓房间记录包括公寓建筑属性信息。但是,建筑物属性值不是通过引用公共建筑物数据库输入的,而是由每个公司或机构任意创建和输入的。为了有效地利用物业信息,公寓房间必须与正确的公寓大楼相连。在这方面,聚合属于同一建筑物的属性信息(实体解析)通常由基于规则的流程执行,该流程在统计上考虑建筑物名称、楼层数或建筑物建成的年份/月份等属性的相似性。然而,当物业信息按房间存储,由不同的企业登记时,相应的建筑信息可能不一致、不完整或不准确。因此,使用基于规则的方法进行实体解析是不够的,需要大量的手工后处理。本文提出了一种基于神经网络的公寓属性实体解析方法,该方法的输入包含传统属性和由建筑名称的语音和语义预处理获得的新属性。实验结果表明,该方法提高了实体分辨精度。
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Entity Resolution of Japanese Apartment Property Information Using Neural Networks
In Japan, there are many real estate companies and agencies, who create apartment room property records and register them to some real estate portal sites to be advertised. The apartment room records include the apartment building attributes information. However, the building attributes values are not entered by referring to the common building database but are arbitrarily created and entered by each company or agency. For effective use of property information, apartment rooms must be linked to the correct apartment building. In this regard, aggregating property information belonging to the same building (entity resolution) is typically performed by a rule-based process that statistically considers the similarity of attributes such as the building name, number of floors, or year/month the building was built. However, when property information is stored by room and registered by different businesses, the corresponding building information may be inconsistent, incomplete, or inaccurate. Therefore, entity resolution using a rule-based method is insufficient and requires extensive manual post-processing. This study proposes an entity resolution method for apartment properties using neural networks with inputs containing traditional property attributes and new attributes obtained from the phonetic and semantic pre-processing of building names. The experimental results show that the proposed method improves entity resolution accuracy.
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