I. Introduction
With the rapid development of the mobile computing in Internet of Things (IoT), Mobile CrowdSensing (MCS) [2], [3], [4], which recruits mobile users carrying IoT devices to collect various urban sensing data [5], [6], [7], [8], [9], has become an increasingly powerful sensing paradigm. In real-world scenarios, traditional MCS usually recruits a huge amount of users to collect all of the required data, which obviously costs a lot. To reduce sensing cost, some researchers introduce data inference techniques, called Sparse MCS [10], [11], which can sense a part of data, explore the correlations, and infer the remaining ones.