Department of Mechanical Engineering, Tianjin Renai College, Tianjin, China.
Comput Intell Neurosci. 2022 Jul 22;2022:2688602. doi: 10.1155/2022/2688602. eCollection 2022.
Personalized push service is one of the more popular research and application fields, which has received more and more attention. Its application prospects are also more and more extensive. This research mainly designs and implements personalized push services through feature extraction and pattern recognition. In this study, the Chinese texts of user-visited pages are classified according to keywords, so as to obtain the user's interest characteristic data. Then, according to the frequency of each feature category, the weight of the user's interest feature is calculated, and the user's interest field is predicted and identified. After that, resources that match the user's interest field are pushed to it. In order to verify the effectiveness of the improved model, this study carried out experiments and comparisons on the precision rate, recall rate, and comprehensive classification rate of the original model and the improved model on the implemented personalized push service system. In the research, the error between the interest results under each interest topic in the test set and the results obtained by the statistical analysis of the training set is within a reasonable range, the maximum of which is about 5%. The accuracy of interest degree prediction in different scenarios can reach more than 90%, which directly confirms the good applicability and effectiveness of the analysis and calculation method and the constructed model for user interest in this study. The personalized push service framework proposed in this study has good application value in the field of time-sensitive information services.
个性化推送服务是当前较为热门的研究和应用领域之一,受到了越来越多的关注,其应用前景也越来越广泛。本研究主要通过特征提取和模式识别来设计和实现个性化推送服务。在本研究中,根据关键词对用户访问页面的中文文本进行分类,从而获取用户的兴趣特征数据。然后,根据每个特征类别的出现频率,计算用户兴趣特征的权重,并预测和识别用户的兴趣领域。之后,向用户推送与其兴趣领域相匹配的资源。为了验证改进模型的有效性,本研究在实现的个性化推送服务系统上,针对原始模型和改进模型的准确率、召回率和综合分类率进行了实验和比较。在研究中,测试集中每个兴趣主题下的兴趣结果与训练集统计分析得到的结果之间的误差在合理范围内,最大误差约为 5%。不同场景下的兴趣度预测准确率均可达 90%以上,这直接证实了本研究中用户兴趣的分析计算方法和构建模型具有良好的适用性和有效性。本研究提出的个性化推送服务框架在时敏信息服务领域具有良好的应用价值。