Title
Clairvoyant-push: A real-time news personalized push notifier using topic modeling and social scoring for enhanced reader engagement
Abstract
Push Notification (PN) and Personalized Push Notifications (PPN) are key contemporary topics in mobile app industry today. Push notifications provide a viable content recommendation channel which complements in-app recommendation in mobile apps. There are existing algorithms for in-app content recommendation, however, the PN based recommendation systems are still under research. In this paper, we present \"Clairvoyant-Push\" ¿ a novel Personalized Push Notification system based on user segmentation and social scoring. User segmentation is done by using the Latent Dirichlet Allocation (LDA) based topic modeling. Moreover, social scoring is used to assign score to each articles to filter out the quality news content for each segments. We have deployed and tested our proposed system using A/B testing framework. The results show an average of 89% lift in opening rate compared to the control group. Further, the results indicate that our system is outperforming with an opening rate of 1012% compared to the industry standard personalised push opening rate of 6¿8%.
Year
DOI
Venue
2015
10.1109/BigData.2015.7364120
Big Data
Keywords
Field
DocType
Recommendation, personalized push notification, mobile apps
Push technology,Recommender system,Resource management,Data mining,Latent Dirichlet allocation,Computer science,Segmentation,Communication channel,Topic model,Multimedia,Mobile telephony
Conference
Citations 
PageRank 
References 
1
0.35
3
Authors
5
Name
Order
Citations
PageRank
Biying Tan110.35
Sangaralingam Kajanan2204.97
Vivek Kumar Singh327039.83
Chandra Sekhar Saripaka410.35
Giuseppe Manai510.68