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EveryoneCounts: Data-driven digital advertising with uncertain demand model in metro networks
Desheng Zhang
, Riiobing Jiang
, Shiiai Wang
, Yanmin Zhu
, Bo Yang
, Jian Cao
, Fan Zhang
, Tian He
Computer Science and Engineering
Research output
:
Chapter in Book/Report/Conference proceeding
›
Conference contribution
3
Scopus citations
Overview
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Keyphrases
Advertising Efficiency
16%
Advertising Systems
16%
Demand Model
100%
Demand Modeling
33%
Demand Uncertainty
100%
Dynamic Passenger Demand
16%
Low Traffic
16%
Metro
33%
Metro Network
100%
Metro System
16%
Mobility Patterns
16%
Online Advertising
100%
Passenger Demand
33%
Passenger Mobility
16%
Prediction Error
16%
Robust Receding Horizon Control
16%
Temporal Granularity
16%
Time Online
16%
Traffic Prediction
16%
Web-based
16%
Computer Science
Experience Models
100%
Granularity
100%
Prediction Error
100%
Traffic Prediction
100%
Engineering
Granularity
25%
Metro
100%
Prediction Error
25%
Receding Horizon Control
25%
Social Sciences
Bayesian
100%