Value and path optimization of multi-data fusion algorithm to help sports tourism high-quality development
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04 nov. 2023
À propos de cet article
Publié en ligne: 04 nov. 2023
Reçu: 14 févr. 2023
Accepté: 15 mai 2023
DOI: https://doi.org/10.2478/amns.2023.2.00947
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© 2023 Jiawen Cheng et al., published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
This paper begins by analyzing the high-quality development of sports tourism and then characterizes the massive data in sports tourism with multi-source heterogeneous and heterogeneous data. The parallel data fusion platform is Hadoop, and the multi-data feature extraction algorithm is LSTM. To complete multi-source data fusion, a random forest model enhances the algorithm’s classification performance. It is verified that the information weight value H in the weight of high-quality development of sports tourism gradually increases and stabilizes at 9.87. The multi-source data fusion algorithm can help in the in-depth fusion and common sharing of data resources in sports tourism and promote the high-quality development of sports tourism.