融合机器学习算法在旅游推荐中的研究与实现

Kong Ting
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引用次数: 0

摘要

精准的旅游景点推荐,有利于提高用户的出行效率和旅游体验。然而,旅游特征因素的选择和推荐算法的不同会影响景区推荐的准确性。针对现有旅游推荐研究中存在的数据稀疏、旅游因素不足、推荐准确率低等问题,本文将机器学习算法的研究整合到旅游推荐中,是开发旅游推荐融合机器学习算法的研究项目。本研究的主要目的是根据游客的兴趣和行为来推荐游客,使他们在参观新的地方时能够充分利用他们的旅游体验。开发该系统的主要原因是旅游行业存在旅游吸引力不足、服务质量低、价格高、顾客满意度差等问题。这个问题可以通过机器学习技术和深度神经网络(DNN)来解决,深度神经网络已经被证明可以根据过去的数据预测未来的结果。因此,我们开发了一个DNN模型来推荐游客。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research and Implementation of Fusion Machine Learning Algorithm in Tourism Recommendation
Accurate recommendation of tourist attractions is conducive to improving the travel efficiency and tourism experience of users. However, the choice of tourism feature factors and the different recommendation algorithms will affect the accuracy of scenic spot recommendation. In view of the problems of sparse data, insufficient tourism factors and low recommendation accuracy in the existing tourism recommendation research, this paper integrates the research of machine learning algorithm in tourism recommendation, which is a research project to develop the tourism recommendation fusion machine learning algorithm. The main purpose of this study is to recommend tourists according to their interests and behaviors so that they can make full use of their tourism experience when visiting new places. The main reason for developing the system is that there are many problems in the tourism industry, such as lack of tourism attraction, low service quality, high price and poor customer satisfaction. This problem can be solved by using machine learning technology and deep neural network (DNN), which has been proven to be effective in predicting future results based on past data. Therefore, we developed a DNN model for recommending tourists.
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