通过学习集成多个地理编码器来提高地理编码质量

Konstantinos Alexis, Vassilis Kaffes, Ilias Varkas, A. Syngros, Nontas Tsakonas, G. Giannopoulos
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引用次数: 1

摘要

本文介绍了一种提高地理编码质量的方法。地理编码是指将文本形式的地址映射到一对精确的空间坐标的过程。虽然有各种可用的地理编码器,包括开源的和商业的,它们以半自动或全自动的方式管理这种映射,但没有一个放之四海而皆准的系统。根据每个地理编码器的底层算法,其输出可能对某些地址、地区或国家非常准确,而无法正确定位其他一些地址、地区或国家。考虑到这一点,我们的设置可以被认为是一个元地理编码管道,建立在可用的地理编码器之上。我们提出了一种机器学习方法,给定一个地址和由独立地理编码器建议的坐标对序列,它能够识别出最准确的一个。为了实现这一目标,我们将任务制定为一个多类分类问题,并引入一系列特定领域的训练特征,捕获每个坐标对建议的基本信息,并计算不同建议之间的比较度量。这些特征被输入到几个分类算法中,并在一个地理营销公司的专有地址数据集上进行评估。此外,我们提出了LGM-GC,一个QGIS插件,它通过用户友好的界面提供了我们的方法的功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving geocoding quality via learning to integrate multiple geocoders
In this paper, we introduce an approach for improving the quality of the geocoding process. Geocoding refers to the procedure of mapping an address of textual form to a pair of accurate spatial coordinates. While there is a variety of available geocoders, both open source and commercial, that curate this mapping in either a semi-automated or fully-automated way, there is no one-size-fits-all system. Depending on the underlying algorithm of each geocoder, its output may be very accurate for some addresses, districts or countries, while failing to properly locate some others. Given that, our setup can be thought of as a meta-geocoding pipeline, built on top of the available geocoders. We propose a machine learning approach, which, given an address and a sequence of coordinate pairs suggested by standalone geocoders, it is able to identify the most accurate one. In order to achieve this, we formulate the task as a multi-class classification problem and introduce a series of domain specific training features, capturing essential information about each coordinate pair suggestion, as well as computing comparative metrics among different suggestions. These features are fed into several classification algorithms and are evaluated on a proprietary address dataset of a geo-marketing company. Furthermore, we present LGM-GC, a QGIS plugin, which provides the functionality of our approach through a user-friendly interface.
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