The increasing popularity of social media platforms makes it important to study user engagement, which is a crucial aspect of any marketing strategy or business model. The over-saturation of content on social media platforms has persuaded us to identify the important factors that affect content popularity. This comes from the fact that only an iota of the humongous content available online receives the attention of the target audience. Comprehensive research has been done in the area of popularity prediction using several Machine Learning techniques. However, we observe that there is still significant scope for improvement in analyzing the social importance of media content. We propose the DFW-PP framework, to learn the importance of different features that vary over time. Further, the proposed method controls the skewness of the distribution of the features by applying a log-log normalization. The proposed method is experimented with a benchmark dataset, to show promising results. The code will be made publicly available at https://github.com/chaitnayabasava/DFW-PP.
翻译:社交媒体平台越来越受欢迎,因此,必须研究用户参与,这是任何营销战略或商业模式的一个关键方面。社交媒体平台内容的过度饱和促使我们查明影响内容受欢迎度的重要因素。这来自这样一个事实,即网上可提供的大量内容只得到目标受众的注意。利用若干机器学习技术,在普及性预测领域进行了全面研究。然而,我们注意到,在分析媒体内容的社会重要性方面仍有很大的改进余地。我们提议了DFW-PP框架,以了解不同特点的重要性,这些特点随着时间的推移而变化。此外,拟议方法通过应用对日志的正常化来控制特征分布的偏差。拟议方法以基准数据集进行试验,以显示有希望的结果。该代码将在https://github.com/chaitnayabasava/DFW-PPP上公布。