Title
Reinforcement Learning Framework for Modeling Spatial Sequential Decisions under Uncertainty: (Extended Abstract).
Abstract
We consider the problem of trajectory prediction, where a trajectory is an ordered sequence of location visits and corresponding timestamps. The problem arises when an agent makes sequential decisions to visit a set of spatial locations of interest. Each location bears a stochastic utility and the agent has a limited budget to spend. Given the agentu0027s observed partial trajectory, our goal is to predict the remaining trajectory. We propose a solution framework to the problem considering both the uncertainty of utility and the budget constraint. We use reinforcement learning (RL) to model the underlying decision processes and inverse RL to learn the utility distributions of the locations. We then propose two decision models to make predictions: one is based on long-term optimal planning of RL and another uses myopic heuristics. We finally apply the framework to predict real-world human trajectories and are able to explain the underlying processes of the observed actions.
Year
DOI
Venue
2016
10.5555/2936924.2937204
AAMAS
Field
DocType
Citations 
Inverse,Mathematical optimization,Budget constraint,Computer science,Markov decision process,Heuristics,Timestamp,Decision model,Artificial intelligence,Trajectory,Machine learning,Reinforcement learning
Conference
0
PageRank 
References 
Authors
0.34
1
3
Name
Order
Citations
PageRank
Truc Viet Le1104.08
Siyuan Liu254437.89
Hoong Chuin Lau373991.69