Mobile crowdsensing has become a novel and promising paradigm in collecting environmental data. A critical problem in improving the QoS of crowdsensing is to decide which users to select to perform sensing tasks, in order to obtain the most informative data, while maintaining the total sensing costs below a given budget. The key challenges lie in (i) finding an effective measure of the informativeness of users\u27 data, (ii) learning users\u27 sensing costs which are unknown a priori, and (iii) designing efficient user selection algorithms that achieve low-regret guarantees. In this paper, we build Gaussian Processes (GPs) to model spatial locations, and provide a mutual information-based criteria to characterize users\u27 informativeness. ...
The adoption of smart device technologies is steadily increasing. Most of the smart devices in use t...
The adoption of smart device technologies is steadily increasing. Most of the smart devices in use t...
This paper first defines a novel spatial-temporal coverage metric, k-depth coverage, for mobile crow...
The Internet of Things (IoT) and mobile techniques enable real-time sensing for urban computing syst...
Mobile crowd sensing (MCS) acts as a key component of Internet of Things (IoT), which has attracted ...
With the rapid popularization and application of smart sensing devices, mobile crowd sensing (MCS) h...
In a densely distributed mobile crowdsourcing system, data collected by neighboring participants oft...
In a densely distributed mobile crowdsourcing system, data collected by neighboring participants oft...
In a practical Mobile Crowd Sensing (MCS) system, there usually exist multiple heterogeneous MCS tas...
Mobile Crowd Sensing (MCS) acts as a key component of Internet of Things (IoTs), which has attracted...
none4noNowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuab...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
The Internet of Things (IoT) and mobile techniques enable real-time sensing for urban computing sys...
The adoption of smart device technologies is steadily increasing. Most of the smart devices in use t...
The adoption of smart device technologies is steadily increasing. Most of the smart devices in use t...
This paper first defines a novel spatial-temporal coverage metric, k-depth coverage, for mobile crow...
The Internet of Things (IoT) and mobile techniques enable real-time sensing for urban computing syst...
Mobile crowd sensing (MCS) acts as a key component of Internet of Things (IoT), which has attracted ...
With the rapid popularization and application of smart sensing devices, mobile crowd sensing (MCS) h...
In a densely distributed mobile crowdsourcing system, data collected by neighboring participants oft...
In a densely distributed mobile crowdsourcing system, data collected by neighboring participants oft...
In a practical Mobile Crowd Sensing (MCS) system, there usually exist multiple heterogeneous MCS tas...
Mobile Crowd Sensing (MCS) acts as a key component of Internet of Things (IoTs), which has attracted...
none4noNowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuab...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
Nowadays, sensor-rich smartphones potentially enable the harvesting of huge amounts of valuable sens...
The Internet of Things (IoT) and mobile techniques enable real-time sensing for urban computing sys...
The adoption of smart device technologies is steadily increasing. Most of the smart devices in use t...
The adoption of smart device technologies is steadily increasing. Most of the smart devices in use t...
This paper first defines a novel spatial-temporal coverage metric, k-depth coverage, for mobile crow...