Complexity Scaling Laws - Model Checkpoints
收藏DataCite Commons2025-10-21 更新2026-05-07 收录
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https://data.lib.vt.edu/articles/dataset/Complexity_Scaling_Laws_-_Model_Checkpoints/30359275
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资源简介:
Model checkpoints required to reproduce paper evaluations for model parameter, TSP node, and TSP spatial dimensions scaling experiments.Recent work on neural scaling laws demonstrates that model performance scales predictably with compute budget, model size, and dataset size. In this work, we develop scaling laws based on problem complexity. We analyze two fundamental complexity measures: solution space size and representation space size. Using the Traveling Salesman Problem (TSP) as a case study, we show that combinatorial optimization promotes smooth cost trends, and therefore meaningful scaling laws can be obtained even in the absence of an interpretable loss. We then show that suboptimality grows predictably for fixed-size models when scaling the number of TSP nodes or spatial dimensions, independent of whether the model was trained with reinforcement learning or supervised fine-tuning on a static dataset. We conclude with an analogy to problem complexity scaling in local search, showing that a much simpler gradient descent of the cost landscape produces similar trends.
提供机构:
University Libraries, Virginia Tech
创建时间:
2025-10-21



