Preference Guided Iterated Pareto Referent Optimisation for Accessible Route Planning
AI 摘要
提出PG-IPRO算法,通过用户反馈迭代优化城市路线规划,适用于不同可达性需求。
主要贡献
- 提出PG-IPRO算法
- 基于用户反馈的迭代优化
- 提升计算效率,缩短等待时间
方法论
用户交互提供反馈,系统最小化或放松目标,迭代逼近Pareto最优解。
原文摘要
We propose the Preference Guided Iterated Pareto Referent Optimisation (PG-IPRO) for urban route planning for people with different accessibility requirements and preferences. With this algorithm the user can interact with the system by giving feedback on a route, i.e., the user can say which objective should be further minimized, or conversely can be relaxed. This leads to intuitive user interaction, that is especially effective during early iterations compared to information-gain-based interaction. Furthermore, due to PG-IPRO's iterative nature, the full set of alternative, possibly optimal policies (the Pareto front), is never computed, leading to higher computational efficiency and shorter waiting times for users.