6,298 research outputs found
Measuring the Popularity of Job Skills in Recruitment Market: A Multi-Criteria Approach
To cope with the accelerating pace of technological changes, talents are
urged to add and refresh their skills for staying in active and gainful
employment. This raises a natural question: what are the right skills to learn?
Indeed, it is a nontrivial task to measure the popularity of job skills due to
the diversified criteria of jobs and the complicated connections within job
skills. To that end, in this paper, we propose a data driven approach for
modeling the popularity of job skills based on the analysis of large-scale
recruitment data. Specifically, we first build a job skill network by exploring
a large corpus of job postings. Then, we develop a novel Skill Popularity based
Topic Model (SPTM) for modeling the generation of the skill network. In
particular, SPTM can integrate different criteria of jobs (e.g., salary levels,
company size) as well as the latent connections within skills, thus we can
effectively rank the job skills based on their multi-faceted popularity.
Extensive experiments on real-world recruitment data validate the effectiveness
of SPTM for measuring the popularity of job skills, and also reveal some
interesting rules, such as the popular job skills which lead to high-paid
employment.Comment: 8 pages, 14 figures, AAAI 201
Codebook-Based Beam Tracking for Conformal ArrayEnabled UAV MmWave Networks
Millimeter wave (mmWave) communications can potentially meet the high
data-rate requirements of unmanned aerial vehicle (UAV) networks. However, as
the prerequisite of mmWave communications, the narrow directional beam tracking
is very challenging because of the three-dimensional (3D) mobility and attitude
variation of UAVs. Aiming to address the beam tracking difficulties, we propose
to integrate the conformal array (CA) with the surface of each UAV, which
enables the full spatial coverage and the agile beam tracking in highly dynamic
UAV mmWave networks. More specifically, the key contributions of our work are
three-fold. 1) A new mmWave beam tracking framework is established for the
CA-enabled UAV mmWave network. 2) A specialized hierarchical codebook is
constructed to drive the directional radiating element (DRE)-covered
cylindrical conformal array (CCA), which contains both the angular beam pattern
and the subarray pattern to fully utilize the potential of the CA. 3) A
codebook-based multiuser beam tracking scheme is proposed, where the Gaussian
process machine learning enabled UAV position/attitude predication is developed
to improve the beam tracking efficiency in conjunction with the tracking-error
aware adaptive beamwidth control. Simulation results validate the effectiveness
of the proposed codebook-based beam tracking scheme in the CA-enabled UAV
mmWave network, and demonstrate the advantages of CA over the conventional
planner array in terms of spectrum efficiency and outage probability in the
highly dynamic scenarios
Energy-Efficient Non-Orthogonal Transmission under Reliability and Finite Blocklength Constraints
This paper investigates an energy-efficient non-orthogonal transmission
design problem for two downlink receivers that have strict reliability and
finite blocklength (latency) constraints. The Shannon capacity formula widely
used in traditional designs needs the assumption of infinite blocklength and
thus is no longer appropriate. We adopt the newly finite blocklength coding
capacity formula for explicitly specifying the trade-off between reliability
and code blocklength. However, conventional successive interference
cancellation (SIC) may become infeasible due to heterogeneous blocklengths. We
thus consider several scenarios with different channel conditions and
with/without SIC. By carefully examining the problem structure, we present in
closed-form the optimal power and code blocklength for energy-efficient
transmissions. Simulation results provide interesting insights into conditions
for which non-orthogonal transmission is more energy efficient than the
orthogonal transmission such as TDMA.Comment: accepted by IEEE GlobeCom workshop on URLLC, 201
Learning Practically Feasible Policies for Online 3D Bin Packing
We tackle the Online 3D Bin Packing Problem, a challenging yet practically
useful variant of the classical Bin Packing Problem. In this problem, the items
are delivered to the agent without informing the full sequence information.
Agent must directly pack these items into the target bin stably without
changing their arrival order, and no further adjustment is permitted. Online
3D-BPP can be naturally formulated as Markov Decision Process (MDP). We adopt
deep reinforcement learning, in particular, the on-policy actor-critic
framework, to solve this MDP with constrained action space. To learn a
practically feasible packing policy, we propose three critical designs. First,
we propose an online analysis of packing stability based on a novel stacking
tree. It attains a high analysis accuracy while reducing the computational
complexity from to , making it especially suited for RL
training. Second, we propose a decoupled packing policy learning for different
dimensions of placement which enables high-resolution spatial discretization
and hence high packing precision. Third, we introduce a reward function that
dictates the robot to place items in a far-to-near order and therefore
simplifies the collision avoidance in movement planning of the robotic arm.
Furthermore, we provide a comprehensive discussion on several key implemental
issues. The extensive evaluation demonstrates that our learned policy
outperforms the state-of-the-art methods significantly and is practically
usable for real-world applications.Comment: Science China Information Science
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