About this Research Topic
The most recent decades have witnessed the prominent performance of machine learning models in a wide variety of tasks such as feature learning, classification, and pattern recognition. With the abundance of data generated by the ubiquitously deployed sensors (i.e., traffic speed sensors, climate sensor networks, social networks, political polls, etc.), we believe that there will be tremendous research opportunities for machine learning models in estimating the future impacts of social events. Differing from anomaly detection in the pattern mining field, social events mining and impact estimation address the problems of learning the representations of the events from multiple heterogeneous data sources (i.e., social media, urban sensors, news articles, and research publications) and forecasting the future socio-economical influence from multiple aspects. In the scope of estimating the social impacts of spatiotemporal events with machine learning models, we announce four major target directions of this Research Topic: 1) learning the representations of events, 2) quantifying the impacts of events, 3) modeling the patterns of events, and 4) forecasting the trends of events.
Submissions may include but are not limited to:
- Learning the representation of events: models that can extract representative features from fusions of heterogeneous sensor datasets and formulate the definition of social events
- Quantifying the impacts of events: models that can quantify the social impacts in specific target domains. Such impacts include temporal duration, spatial congestion, and topical influences
- Modeling the patterns of events: models that can recognize the learned patterns from heterogeneous data sources and generalize the patterns in other domains
- Forecasting trends of the events: models that predict the future trends of the social events given a combination of heterogeneous sensor data, and inspire further studies
Keywords: Artificial intelligence, machine learning, forecasting, spatiotemporal
Important Note: All contributions to this Research Topic must be within the scope of the section and journal to which they are submitted, as defined in their mission statements. Frontiers reserves the right to guide an out-of-scope manuscript to a more suitable section or journal at any stage of peer review.