In this paper, we propose a digital twin (DT)-assisted resource demand prediction scheme to enhance prediction accuracy for multicast short video streaming. Particularly, we first construct user DTs (UDTs) for collecting real-time user status, including channel condition, location, watching duration, and preference. A reinforcement learning-empowered K-means++ algorithm is developed to cluster users based on the collected user status in UDTs. We then analyze users' watching duration and preferences in each multicast group to obtain the swiping probability distribution and recommended videos, respectively. The obtained information is utilized to predict radio and computing resource demand of each multicast group. Initial simulation results demonstrate that the proposed scheme can accurately predict resource demand.
Xinyu HuangWen WuShisheng HuMushu LiConghao ZhouXuemin Shen
Shengbo LiuWen WuShaofeng LiTom H. LuanNing Zhang
Xinyu HuangShisheng HuMushu LiCheng HuangXuemin Shen
Xinyu HuangShisheng HuHaojun YangXinghan WangYingying PeiXuemin Shen
Jian-zheng ZhouJianguo JiangMeibin Qi