Learning Lineage-guided Geodesics with Finsler Geometry
AI 摘要
提出了结合几何和分类的Finsler度量,用于轨迹推断,提升了在合成和真实数据上的插值性能。
主要贡献
- 提出了一种新的Finsler度量
- 结合了几何和分类先验知识
- 提高了轨迹推断的插值性能
方法论
使用Finsler度量结合几何和分类先验,进行轨迹推断,优化动态系统的时间点插值。
原文摘要
Trajectory inference investigates how to interpolate paths between observed timepoints of dynamical systems, such as temporally resolved population distributions, with the goal of inferring trajectories at unseen times and better understanding system dynamics. Previous work has focused on continuous geometric priors, utilizing data-dependent spatial features to define a Riemannian metric. In many applications, there exists discrete, directed prior knowledge over admissible transitions (e.g. lineage trees in developmental biology). We introduce a Finsler metric that combines geometry with classification and incorporate both types of priors in trajectory inference, yielding improved performance on interpolation tasks in synthetic and real-world data.