This papers presents a deep learning-based framework to predict crowdsourced service availability spatially and temporally. A novel two-stage prediction model is introduced based on historical spatio-temporal traces of mobile crowdsourced services. The prediction model first clusters mobile crowdsourced services into regions. The availability prediction of a mobile crowdsourced service at a certain location and time is then formulated as a classification problem. To determine the availability duration of predicted mobile crowdsourced services, we formulate a forecasting task of time series using the Gramian Angular Field. We validated the effectiveness of the proposed framework through multiple experiments
Real-time prediction of spatial information such as road-traffic-related information has attracted m...
Abstract—With the vast availability of traffic sensors fromwhich traffic information can be derived,...
Abstract—Mobile location-based services are thriving, provid-ing an unprecedented opportunity to col...
This papers presents a deep learning-based framework to predict crowdsourced service availability sp...
Mobile crowd computing (MCC) that utilizes public-owned (crowd’s) smart mobile devices (SMDs)...
Mobile crowdsourcing has become easier thanks to the widespread of smartphones capable of seamlessly...
Abstract: Predicting the location of a mobile user in the near future can be used for a large number...
Abstract: The rapid development of wireless and web technologies has allowed the mobile users to req...
In recent years, there has been a rapid increase in demand for forecasting services in the fields of...
The widespread adoption of the internet of things is producing a huge amount of spatiotemporal data....
The understanding of the user temporal behavior is a crucial aspect for all those systems that rely ...
Understanding human mobility patterns is a significant research endeavour that has recently received...
Vehicle-to-grid services make use of the aggregated capacity available from a fleet of vehicles to p...
Predicting the location of a mobile user in the near future can be used for a very large number of u...
A public transport journey planning service often yields multiple alternative journeys plans to get ...
Real-time prediction of spatial information such as road-traffic-related information has attracted m...
Abstract—With the vast availability of traffic sensors fromwhich traffic information can be derived,...
Abstract—Mobile location-based services are thriving, provid-ing an unprecedented opportunity to col...
This papers presents a deep learning-based framework to predict crowdsourced service availability sp...
Mobile crowd computing (MCC) that utilizes public-owned (crowd’s) smart mobile devices (SMDs)...
Mobile crowdsourcing has become easier thanks to the widespread of smartphones capable of seamlessly...
Abstract: Predicting the location of a mobile user in the near future can be used for a large number...
Abstract: The rapid development of wireless and web technologies has allowed the mobile users to req...
In recent years, there has been a rapid increase in demand for forecasting services in the fields of...
The widespread adoption of the internet of things is producing a huge amount of spatiotemporal data....
The understanding of the user temporal behavior is a crucial aspect for all those systems that rely ...
Understanding human mobility patterns is a significant research endeavour that has recently received...
Vehicle-to-grid services make use of the aggregated capacity available from a fleet of vehicles to p...
Predicting the location of a mobile user in the near future can be used for a very large number of u...
A public transport journey planning service often yields multiple alternative journeys plans to get ...
Real-time prediction of spatial information such as road-traffic-related information has attracted m...
Abstract—With the vast availability of traffic sensors fromwhich traffic information can be derived,...
Abstract—Mobile location-based services are thriving, provid-ing an unprecedented opportunity to col...