Abstract
With the continuous accumulation of knowledge and the rapid development of science, modularization, as an advanced form of generalization, serialization and combination, is a structural mode especially suitable for complex products. It makes the products have the characteristics of rapid derivation and upgrading, high reliability and economy, and continuous pursuit of high performance, and can realize the rapid development of products. However, it can only represent the surface correlation existing in the product production process, and a large number of implicit correlation can not be visualized effectively. In order to solve the above problems, association rule mining technology is used to mine hidden association relations, so as to enrich the connotation of association relations in modular design. Firstly, the basic concept of modular design is briefly summarized; Then it analyzes the development status and existing problems of modular design in association relationship, expounds the application of association rule mining method in modular design in order to solve the existing problems, and finally summarizes the development trend of association relationship in modular design in the future.
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Shang, B., Xia, Y., Zhang, F. (2022). A Study of Modular Association Relation Based on Association Relation Mining. In: Sugumaran, V., Sreedevi, A.G., Xu, Z. (eds) Application of Intelligent Systems in Multi-modal Information Analytics. ICMMIA 2022. Lecture Notes on Data Engineering and Communications Technologies, vol 136. Springer, Cham. https://doi.org/10.1007/978-3-031-05237-8_108
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DOI: https://doi.org/10.1007/978-3-031-05237-8_108
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