학술논문

Organized Event Participant Prediction Enhanced by Social Media Retweeting Data
Document Type
Conference
Source
2023 IEEE International Conference on Web Intelligence and Intelligent Agent Technology (WI-IAT) WI-IAT Web Intelligence and Intelligent Agent Technology (WI-IAT), 2023 IEEE International Conference on. :243-248 Oct, 2023
Subject
Computing and Processing
Learning systems
Bridges
Social networking (online)
Training data
Knowledge graphs
Predictive models
Data models
event-based system
social media
cross-domain system
graph embedding
neural recommendation
Language
Abstract
Nowadays, many platforms on the Web offer organized events, allowing users to be organizers or participants. For such platforms, it is beneficial to predict potential event participants. Existing work on this problem tends to borrow recommendation techniques. However, compared to e-commerce items and purchases, events and participation are usually of a much smaller frequency, and the data may be insufficient to learn an accurate model. In this paper, we propose to utilize social media retweeting activity data to enhance the learning of event participant prediction models. We create a joint knowledge graph to bridge the social media and the target domain, assuming that event descriptions and tweets are written in the same language. Furthermore, we propose a learning model that utilizes retweeting information for the target domain prediction more effectively. We conduct comprehensive experiments in two scenarios with real-world data. In each scenario, we set up training data of different sizes, as well as warm and cold test cases. The evaluation results show that our approach consistently outperforms several baseline models, especially with the warm test cases, and when target domain data is limited.