融合多源大数据和机器学习的旅游目的地竞争力评价模型

IF 3.6
Lei Zou
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引用次数: 0

摘要

智能物联网在旅游行业中发挥了一定的作用。在旅游目的地竞争力评价中,可以通过物联网收集旅游目的地的文字评价和图像。其中,文本数据处理相对简单,但图像和视频处理较为困难,数据源不同会导致联邦学习算法衰落等问题。为了改善旅游目的地竞争力评价中的数据处理问题,解决系统异构导致的计算和通信资源利用不平衡的问题,本文提出了一种基于过时阈值控制的自适应异步聚合方法(HiFedCNM)。实验结果表明,该算法在模型训练精度、计算效率、通信效率和系统成本等方面均优于现有的一些优秀算法。此外,本文还提出了旅游目的地竞争力的概念模型。通过案例分析可以看出,本文提出的模型在旅游目的地竞争力分析中可以起到一定的作用。同时,本文提出的模型方法可以为后续旅游物联网数据的异构融合提供可靠的参考,也可以为旅游目的地竞争力评价提供可靠的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tourism destination competitiveness evaluation model integrating multi-source big data and machine learning
The intelligent Internet of Things has played a certain role in the tourism industry. In the evaluation of tourist destination competitiveness, the text evaluation and images of tourist destination can be collected through the Internet of Things. Among them, text data processing is relatively simple, but image and video processing is more difficult, and different data sources will lead to problems such as the decline of federated learning algorithms. In order to improve the data processing problem in the evaluation of tourist destination competitiveness and to solve the problem of unbalanced utilization of computing and communication resources caused by system heterogeneity, this paper proposes an adaptive asynchronous aggregation method Adaptive asynchronous aggregation method based on outdated threshold control (HiFedCNM) based on obsolescence threshold control. The experimental results show that the algorithm outperforms some existing excellent algorithms in model training accuracy, computational efficiency, communication efficiency and system cost. In addition, this paper proposes a conceptual model of tourism destination competitiveness. Through the case study, it can be seen that the model proposed in this paper can play a certain role in the analysis of tourist destination competitiveness. At the same time, the model method proposed in this paper can provide a reliable reference for the subsequent heterogeneous fusion of tourism Internet of Things data, and can provide a reliable method for evaluating the competitiveness of tourism destinations.
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