Abstract
Due to the complex distribution of web data and frequent updates under the cloud service architecture, it is easy to drive data disasters and data accidents. This leads to many problems in web data mining, such as how to choose the best algorithm to process the corresponding type of data, and how to effectively reduce the dimensionality of the web data in the cloud service architecture and process multiple target information and multiple customer needs at the same time. In order to overcome these problems, we transform the multi-information goal and multi-user demand (constraint conditions) in web data mining into a constrained multi-objective optimization model, and solve it by a constrained particle swarm multi-objective optimization algorithm. In order to make it easier for the constrained multi-objective particle swarm algorithm to solve different types of problems to find an effective solution set closer to the real Pareto front, a new manifold learning algorithm based on the constrained multi-objective particle swarm algorithm is built and used to solve this problem. Experiments results demonstrate that this can improve the service efficiency of cloud computing.
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Acknowledgement
This work was supported by Characteristic innovation projects of Department of Education of Guangdong Province under No. Grant KJ2021C014 and Science and Technology Ph.D. Research Startup Project, China (SZIIT2022KJ001).
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Wang, H., Cai, T., Wang, Y., Yang, G., Liang, J. (2022). Web Data Mining Algorithm in Cloud Service Architecture Based on New Popular Learning Algorithm and Adaptive Adjustment Mechanism. In: Li, K., Liu, Y., Wang, W. (eds) Exploration of Novel Intelligent Optimization Algorithms. ISICA 2021. Communications in Computer and Information Science, vol 1590. Springer, Singapore. https://doi.org/10.1007/978-981-19-4109-2_46
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DOI: https://doi.org/10.1007/978-981-19-4109-2_46
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