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The application of artificial neural network in watch modeling design with network community media

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Abstract

In order to study the design direction of watch modelling in the future, the needs of consumer groups were collected by using network social media. Enterprises and designers carried out preliminary design according to the needs description of consumers. Then, these design data were summarized and analyzed by computer neural network, and then revised according to the feedback of consumers, so as to get the poduct modeling as close as possible to the needs of consumers. The results show that, as an economic model that can mobilize the social activity and communication power of consumers, the network community media can obtain more accurate consumer demand. In the process of integration analysis, the data are vague, so the integration is difficult, but it can provide more creative materials and ideas for designers. The watch eventually designed can meet the needs of consumers to the greatest extent. It can be seen that the use of network social media and computer neural network has a certain significance for watch modeling design and appearance design of other products.

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Correspondence to Yuchen Gao.

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Gao, Y. The application of artificial neural network in watch modeling design with network community media. J Ambient Intell Human Comput (2020). https://doi.org/10.1007/s12652-020-01689-6

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