报告题目:Case Studies in Big-Data and Decision Science
报 告 人:叶荫宇 教授(美国斯坦福大学)
报告时间:2015年7月3日下午4:00
报告地点:南一楼中311室
邀 请 方:“多谱信息处理技术”国家级重点实验室
Abstract:
We present three case studies driven by online, uncertain and massive data. We show how analytical decision models and numerical algorithms can be used to achieve efficiency and optimality
1) The personal vehicle is expected to evolve into a device distinct from what exists today. In particular, plug-in electric vehicles (PEV) will have flexible charging options, and may be capable of transmitting electricity back to the grid, or discharging. We construct an automated algorithm/mechanism for a fleet of PEVs that efficiently organizes distributed electricity utilization.
2) Information or prediction market is a place where information is aggregated via market for the primary purpose of forecasting events, or the probability that an event will occur. We design a mechanism to organize such a market effectively.
3) Service location based on geographic data, where we provide a fast algorithm to partition a convex region on a region into multiple sub-regions such that each piece has two density measurements equalized. Applications include redistricting, surveillance covering, vehicle routing, service region drawing, Big-Data and Decision Science