LLM Reasoning 相关度: 6/10

GeMA: Learning Latent Manifold Frontiers for Benchmarking Complex Systems

Jia Ming Li, Anupriya, Daniel J. Graham
arXiv: 2603.16729v1 发布: 2026-03-17 更新: 2026-03-17

AI 摘要

GeMA利用变分自编码器学习潜在流形边界,用于复杂系统效率评估和基准测试。

主要贡献

  • 提出Geometric Manifold Analysis (GeMA)方法
  • 使用productivity-manifold variational autoencoder (ProMan-VAE)
  • 通过局部认证半径量化效率分数的几何鲁棒性

方法论

使用变分自编码器学习潜在空间的流形边界,将生产集表示为低维流形的边界,评估效率。

原文摘要

Benchmarking the performance of complex systems such as rail networks, renewable generation assets and national economies is central to transport planning, regulation and macroeconomic analysis. Classical frontier methods, notably Data Envelopment Analysis (DEA) and Stochastic Frontier Analysis (SFA), estimate an efficient frontier in the observed input-output space and define efficiency as distance to this frontier, but rely on restrictive assumptions on the production set and only indirectly address heterogeneity and scale effects. We propose Geometric Manifold Analysis (GeMA), a latent manifold frontier framework implemented via a productivity-manifold variational autoencoder (ProMan-VAE). Instead of specifying a frontier function in the observed space, GeMA represents the production set as the boundary of a low-dimensional manifold embedded in the joint input-output space. A split-head encoder learns latent variables that capture technological structure and operational inefficiency. Efficiency is evaluated with respect to the learned manifold, endogenous peer groups arise as clusters in latent technology space, a quotient construction supports scale-invariant benchmarking, and a local certification radius, derived from the decoder Jacobian and a Lipschitz bound, quantifies the geometric robustness of efficiency scores. We validate GeMA on synthetic data with non-convex frontiers, heterogeneous technologies and scale bias, and on four real-world case studies: global urban rail systems (COMET), British rail operators (ORR), national economies (Penn World Table) and a high-frequency wind-farm dataset. Across these domains GeMA behaves comparably to established methods when classical assumptions hold, and provides additional insight in settings with pronounced heterogeneity, non-convexity or size-related bias.

标签

效率评估 基准测试 流形学习 变分自编码器 复杂系统

arXiv 分类

cs.LG cs.CE econ.EM math.OC stat.ML