weibo

Research on Weibo marketing advertising push method based on social network data mining

The current advertising push methods have low accuracy and poor advertising conversion effects. Therefore, a Weibo marketing advertising push method based on social network data mining is studied. Firstly, establish a social network graph and use graph clustering algorithm to mine the association relationships of users in the network. Secondly, through sparsisation processing, the association between nodes in the social network graph is excavated. Then, evaluate the tightness between user preferences and other nodes in the social network, and use the TF-IDF algorithm to extract user interest features. Finally, an attention mechanism is introduced to improve the deep learning model, which matches user interests with advertising domain features and outputs push results. The experimental results show that the push accuracy of this method is higher than 95%, with a maximum advertising click through rate of 82.7% and a maximum advertising conversion rate of 60.7%.




weibo

We (can’t) Chat: “709 Crackdown” Discussion Blocked on Weibo and WeChat

Toronto, ON – Researchers at the Citizen Lab, based at the University of Toronto’s Munk School of Global Affairs, published a report today that reveals how discussions about a nationwide government crackdown on rights lawyers and activists in China are censored on WeChat and Weibo, two of the leading social networks in China. The crackdown […]