A Deep Transfer Learning Toponym Extraction and Geospatial Clustering Framework for Investigating Scenic Spots as Cognitive Regions

Chengkun Zhang, Yiran Zhang, Jiajun Zhang, Junwei Yao, Hongjiu Liu, Tao He, Xinyu Zheng, Xingyu Xue, Liang Xu, Jing Yang, Yuanyuan Wang, Liuchang Xu
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引用次数: 1

Abstract

In recent years, the Chinese tourism industry has developed rapidly, leading to significant changes in the relationship between people and space patterns in scenic regions. To attract more tourists, the surrounding environment of a scenic region is usually well developed, attracting a large number of human activities, which creates a cognitive range for the scenic region. From the perspective of tourism, tourists’ perceptions of the region in which tourist attractions are located in a city usually differ from the objective region of the scenic spots. Among them, social media serves as an important medium for tourists to share information about scenic spots and for potential tourists to learn scenic spot information, and it interacts to influence people’s perceptions of the destination image. Extracting the names of tourist attractions from social media data and exploring their spatial distribution patterns is the basis for research on the cognitive region of tourist attractions. This study takes Hangzhou, a well-known tourist city in China, as a case study to explore the human cognitive region of its popular scenic spots. First, we propose a Chinese tourist attraction name extraction model based on RoBERTa-BiLSTM-CRF to extract the names of tourist attractions from social media data. Then, we use a multi-distance spatial clustering method called Ripley’s K to filter the extracted tourist attraction names. Finally, we combine road network data and polygons generated using the chi-shape algorithm to construct the vague cognitive regions of each scenic spot. The results show that the classification indicators of our proposed tourist attraction name extraction model are significantly better than those of previous toponym extraction models and algorithms (precision = 0.7371, recall = 0.6926, F1 = 0.7141), and the extracted vague cognitive regions of tourist attractions also generally conform to people’s habitual cognition.
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基于深度迁移学习的景区地名提取与地理空间聚类框架
近年来,中国旅游业发展迅速,导致风景名胜区人与空间格局的关系发生了重大变化。为了吸引更多的游客,风景名胜区的周边环境通常都很发达,吸引了大量的人类活动,这就为风景名胜区创造了一个认知范围。从旅游的角度来看,游客对城市旅游景点所在区域的感知通常与景点的客观区域不同。其中,社交媒体是游客分享景点信息和潜在游客了解景点信息的重要媒介,并相互作用影响人们对目的地形象的认知。从社交媒体数据中提取旅游景点名称并探索其空间分布格局是旅游景点认知区域研究的基础。本研究以中国著名旅游城市杭州为例,探讨其热门景点的人类认知区域。首先,我们提出了基于RoBERTa-BiLSTM-CRF的中国旅游景点名称提取模型,从社交媒体数据中提取旅游景点名称。然后,我们使用一种称为Ripley’s K的多距离空间聚类方法对提取的旅游景点名称进行过滤。最后,结合路网数据和chi-shape算法生成的多边形,构建各景区的模糊认知区域。结果表明:本文提出的旅游景点名称提取模型的分类指标明显优于已有的地名提取模型和算法(precision = 0.7371, recall = 0.6926, F1 = 0.7141),提取的旅游景点模糊认知区域也基本符合人们的习惯性认知。
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