| Literature DB >> 35345796 |
Abstract
E-commerce product recommendation system can help users to find their own products quickly from a large number of products. To address the shortcomings of the current e-commerce product recommendation system, such as low efficiency and large recommendation errors, we designed an intelligent recommendation system based on social awareness and mobile computing. The behavioral characteristics of the current e-commerce product recommendation system are analyzed; the e-commerce product recommendation system is built according to the data processing technology of mobile computing, and the key technologies of the e-commerce product recommendation system are designed. The test results show that the proposed system overcomes the shortcomings of the traditional e-commerce product recommendation system, speeds up the speed of users to find the products they really need from a large number of products, improves the accuracy of e-commerce product recommendations, and the error of e-commerce product recommendations is much lower than that of the traditional, which has higher practical application value.Entities:
Mesh:
Year: 2022 PMID: 35345796 PMCID: PMC8957409 DOI: 10.1155/2022/9501246
Source DB: PubMed Journal: Comput Intell Neurosci
Comparison of the main recommended technologies.
| Advantage | Shortcoming | |
|---|---|---|
| Collaborative filtering technology | Discover new and different interests and do not depend on domain knowledge. With the passage of time and the accumulation of data, the effect is getting better and better. The recommendation process has a high degree of personalization and automation and can deal with complex unstructured objects | There are typical problems such as scalability, sparsity and cold start, and the recommendation quality depends on the historical data set |
| Association rule mining | Can discover new and different points of interest, independent of domain knowledge | Rule extraction is difficult and time-consuming, and the degree of personalization is low |
| Knowledge experience-based approach | It can consider nonproduct attributes, reflect user needs, and make up for the lack of user knowledge and experience | Knowledge and experience are difficult to obtain, and recommendation is static |
Figure 1Working principle of e-commerce product recommendation system for mobile computing.
Figure 2Intelligent recommendation process for e-commerce products.
Figure 3Recall of e-commerce product intelligence recommendation system.
Figure 4Completeness rate of intelligent recommendation systems for e-commerce products.
Figure 5Recommendation time of an intelligent recommendation system for e-commerce products.
Figure 6Social connection network based on intimacy.
Figure 7MCS task distribution experiment I.
Figure 8MCS task distribution experiment II.