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Machine learning and points of interest: typical tourist Italian cities

机译:机器学习与兴趣点:典型的旅游意大利城市

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Today georeferenced images posted on the social network provide a lot of information about people behaviours and movements. Using social media platforms users upload photos, share locations and post comments about their activities, influencing other people. In this research, we examine the relationship between human mobility and touristic attractions through geo-located images provided by Flickr users. A sample of 26,392 pictures related to 6 Italian cities has been collected and analysed applying cluster analysis. In our work, the function of the clustering analysis, employed in Wolfram Mathematica Machine Learning, allows one to automatically identify clusters surrounding points of interest (POIs). Findings show that social media datasets are valuable data to understand tourist behaviour and mobility within a location. The scope is to delineate famous or unpopular places and propose new touristic scenarios, highlighting how the social part covers the main role in the POIs' recommendation process in the touristic field. Furthermore, we aim to promote the machine learning approach as a useful support in human behaviour research.
机译:今天,在社交网络上发表的地理学的图像提供了有关人们行为和动作的大量信息。使用社交媒体平台用户上传照片,分享地点并发表评论他们的活动,影响其他人。在这项研究中,我们通过Flickr Users提供的地理图像来研究人类流动性和旅游景点的关系。采集了26,392幅画的示例,并分析了群集分析。在我们的工作中,在Wolfram Mathematica Machine学习中使用的聚类分析的功能允许人们自动识别围绕兴趣点(POI)的集群。调查结果表明,社交媒体数据集是有价值的数据,以了解旅游行为和地点的移动性。范围是描绘着名或不受欢迎的地方,并提出了新的旅游情景,突出了社会部门如何涵盖了旅游领域的POIS推荐过程中的主要作用。此外,我们的目标是将机器学习方法推广为人类行为研究的有用支持。

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