Abstract
This paper mainly analyzes the current situation of e-commerce in domestic SMEs and points out that there are limited initial investment and difficulty in financing in China’s SMEs; e-commerce control is not scientific; e-commerce personnel of SMEs are not of high quality, in the case of improper setting of the e-commerce sector and shortage of talents, rigid management model, and outdated management concepts. By using the loss function and the value chain management theory of the deep learning in the stationary wavelet domain residual learning model, the e-commerce model of SMEs is newly constructed, and the e-commerce department as the core department of the enterprise is proposed. By training the optimal parameters of the deep residual network and comparing the results with other models, the method of this paper has a good effect against the sample. The original loss function based on the residual learning model deep learning is modified to solve the original model fuzzy problem, which improves the effect and has good robustness. Finally, based on the wavelet residual depth residual evaluation method, this paper evaluates the application effect of this model and proposes relevant suggestions for improving this model, including rationalizing and perfecting the external value chain coordination mechanism, establishing the e-commerce value chain sharing center, and promoting integration of e-commerce business, strengthening measures and recommendations in various aspects of e-commerce information construction. At last, taking the business activities of a company as an example, applying the theory described in this paper to specific practice proves the feasibility and practical value of the theory.
Highlights
Before the emergence of value chain management theory, the management mode of enterprises is static and only for its internal, and the emergence is of this theory has driven the development of enterprise management mode to open dynamic management mode
The theory of value chain management has gradually extended to all aspects of the enterprise management system in decades, “becoming the theoretical basis and analytical basis for e-commerce, market strategy management, and sales management” [1,2,3]
E-commerce is an important part of enterprise management, in order to pursue the greatest enterprise value, while value chain management creates more added value for enterprises and consumers. e same control purpose allows the two to merge with each other, which leads to e-commerce concept modernity
Summary
Before the emergence of value chain management theory, the management mode of enterprises is static and only for its internal, and the emergence is of this theory has driven the development of enterprise management mode to open dynamic management mode. Inspired by the application of stationary wavelet transform and deep convolutional neural network in the processing of e-commerce mode, this paper proposes a deep residual neural network for stationary wavelet transform (SWT-deep) learning model. SWT-deep learning can learn the mapping relationship between input and label Using this mapping relationship, the high frequency can be indirectly predicted from the highfrequency coefficient of the street quality e-commerce model. Based on the wavelet residual depth residual evaluation method, this paper evaluates the application effect of this model and proposes relevant suggestions for improving this model, including rationalizing and perfecting the external value chain coordination mechanism, establishing the e-commerce value chain sharing center, and promoting integration of e-commerce business, strengthening measures and recommendations in various aspects of e-commerce information construction. Taking the business activities of a company as an example, applying the theory described in this paper to specific practice proves the feasibility and practical value of the theory
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