Community Safety and Well-being in Touristic Spots Using Open Data

Dineu Assis, M. Neto, M. Motta
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Abstract

There are many different reasons that can lead a tourist to decide which destination will be chosen on his/her next trip. Besides knowing what are the attractions that must be visited, it is also common to look for more information regarding the overall safety and well-being conditions of travel destinations. Usually shared by local authorities, this kind of information can also be found in a less structured form through public sources, such as web sites and social platforms. However, there are a couple of challenges to be considered: the predominance of unstructured data; the lack of a common standard to distinguish safe and unsafe places; the distinct period needed to update the collected data. In this study, the proposed model combines official census data with open data, social platforms and other online sources, allowing the definition of a score for touristic spots in Lisbon. The resulting score should be able to quantify the community safety and well-being, as well as to identify threats and opportunities for the local tourism industry. Furthermore, it would not only help tourists in their traveling decisions but also, allow decision-makers to track socioeconomic issues and to support public management through a data-driven approach.
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基于开放数据的旅游景点社区安全与幸福感研究
有许多不同的原因可以引导游客决定他/她下次旅行的目的地。除了知道哪些是必须参观的景点,寻找更多关于旅游目的地的整体安全和健康状况的信息也是很常见的。这类信息通常由地方政府共享,但也可以通过网站和社交平台等公共资源以不太结构化的形式找到。然而,有几个挑战需要考虑:非结构化数据的主导地位;缺乏区分安全和不安全场所的共同标准;需要更新所收集数据的不同时期。在这项研究中,提出的模型将官方人口普查数据与开放数据、社交平台和其他在线资源相结合,从而为里斯本的旅游景点定义一个分数。结果得分应该能够量化社区安全和福祉,以及确定当地旅游业的威胁和机会。此外,它不仅可以帮助游客做出旅游决策,还可以让决策者跟踪社会经济问题,并通过数据驱动的方法支持公共管理。
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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