乡村旅游融入人工智能技术,助力乡村振兴现代化

Lu Gan
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引用次数: 0

摘要

在现代化和发展的过程中,智能技术赋予乡村旅游以赋能,从而使乡村振兴战略得以有效实施。本文构建了结合人工智能技术的乡村旅游推荐模型,通过对旅游数据的挖掘和分析,提取旅游特征因素,有效提高了旅游景点推荐的准确性和个性化水平。其次,利用随机森林分类算法建立随机森林偏好吸引力预测模型,并结合多种推荐算法设计个性化乡村旅游推荐模型,提高游客旅游推荐的准确性。最后,对城市周边乡村进行调查,探索乡村旅游的现代发展,助力乡村振兴。结果表明,接收到的人数在城市和乡村旅游游客的数量受到省在2022年是9.72亿,14.24亿年超过2014年,在城市和乡村旅游的总收入和总该省的旅游业收入在2022年是7248亿,1202 .02点十亿人民币超过2014年,它可以看出,高水平的旅游收入维持与游客的数量正相关。表明乡村旅游提高了乡村整体经济水平,加快了乡村社会进步进程,为乡村振兴的现代化和发展做出了强有力的贡献。
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Rural tourism incorporating artificial intelligence technology to help modernize rural revitalization
Abstract In the process of modernization and development, intelligent technology empowers rural tourism, which in turn enables the effective implementation of the rural revitalization strategy. In this paper, a rural tourism recommendation model combined with artificial intelligence technology is constructed, which effectively improves the accuracy and personalization level of tourist attraction recommendation by mining and analyzing tourism data and extracting tourism characteristic factors. Secondly, the random forest classification algorithm is used to establish a random forest preference attraction prediction model, and several recommendation algorithms are combined to design a personalized rural tourism recommendation model to improve the accuracy of tourists’ tourism recommendations. Finally, the countryside around a city is being investigated to explore the modern development of rural tourism and help revitalize rural areas. The results show that the number of people received by rural tourism in City A and the number of tourists received by the province in 2022 is 972 million and 1,424 million more than that of 2014, and the total income from rural tourism in City A and the total income from tourism in the province in 2022 is 724.8 billion and 1,202.02 billion yuan more than that of 2014, and it can be seen that the high level of tourism income maintains a positive correlation with the number of tourists received. It shows that rural tourism improves the overall economic level of the countryside, accelerates the process of social progress in rural areas, and strongly contributes to the modernization and development of rural revitalization.
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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