Affiliation:
1. Zhejiang Sci-Tech University , Hangzhou , Zhejiang , , China .
Abstract
Abstract
The digitized quality of rural traditional cultural resources is relatively low, and there are problems such as heterogeneity and incompleteness in the resource data, resulting in the limitation of related cultural data information mining and the inability to realize deep development and innovation. Therefore, this paper combines the fully connected neural network and fuzzy C-mean clustering algorithm to construct a cultural digital resource clustering model, and based on the clustering results combined with CR-LDA and collaborative filtering algorithm to achieve personalized recommendation of rural traditional cultural digital resources. The experimental results show that the clustering model combining a fully connected neural network and a fuzzy C-mean clustering algorithm has a better clustering effect than the other three clustering models, and it also shows good robustness and stability. In addition, although the collaborative filtering model combining the CR-LDA algorithm has a slight increase in runtime compared to the LDA model runtime, the classification accuracy is significantly improved. It thus can provide platform users with practical and reliable cultural resource recommendations. Most users indicated in the survey that they agreed with the results of the model’s personalized cultural digital resource recommendations.
Reference19 articles.
1. Chen Qixiang, Su Changhong (2020).Research on cultural relics element mapping model based on cultural gene .Popular literature and art,2020(05). 240-241.
2. Li Z, Wang W, Chen Y, et al (2019). A novel method of text line segmentation for historical document image of the uchen Tibetan. journal of Visual Communication and Image Representation,. 2019, 61(05): 23-32.
3. Huang Peijun (2019). Analyzing the innovation of Guangxi Zhuang folk culture in the design of cultural and creative products. western Leather, 2019,41(24):133-134.
4. Zhang Kai (2019). “Net red” late official marketing revelation.Knowledge Economy, 2019(14):100-103.
5. Ma L, Long C, Duan L, et al (2020). Segmentation and recognition for historical Tibetan document images. ieee access, 2020(8): 52641-52641.