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FISETIO: A FIne-grained Structured and Enriched Tourism Dataset for Indoor and Outdoor attractions

机译:FISETIO:针对室内和室外景点的细粒度结构化和丰富的旅游数据集

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摘要

This paper aims to introduce our publicly available datasets in the area of tourism demand prediction for future experiments and comparisons. Most of the previous works in the area of tourism demand forecasting are based on coarse-grained analysis (level of countries or regions) and there are very few works and consequently datasets available for fine-grained tourism analysis (level of attractions and points of interest). In this article, we present our fine-grained enriched datasets for two types of attractions – (I) indoor attractions (27 Museums and Galleries in U.K.) and (II) outdoor attractions (76 U.S. National Parks) enriched with official number of visits, social media reviews and environmental data for each of them. In addition, the complete analysis of prediction results, methodology and exploited models, features' performance analysis, anomalies, etc, are available in our original paper, “Fine-grained tourism prediction: Impact of social and environmental features”[2].
机译:本文旨在介绍我们在旅游需求预测领域的公开数据集,以供将来进行实验和比较。先前在旅游需求预测领域的大多数工作都是基于粗粒度分析(国家或地区的水平),并且很少有工作,因此可用于细粒度旅游分析的数据集(景点和兴趣点的水平) )。在本文中,我们介绍了两种景点的细粒度,丰富的数据集-(I)室内景点(英国27个博物馆和美术馆)和(II)室外景点(76个美国国家公园),其中包含官方访问次数,社交媒体评论和每个人的环境数据。另外,在我们的原始论文《旅游业的细粒度预测:社会和环境特征的影响》 [2]中,可以得到对预测结果,方法和开发模型,特征性能分析,异常情况的完整分析。

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