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arXiv cs.AI INT ai 2026-05-08 13:00

ランダム因果有向非巡回グラフのためのトポロジカルソート基準

原題: A Topological Sorting Criterion for Random Causal Directed Acyclic Graphs

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分析結果

カテゴリ
エネルギー
重要度
56
トレンドスコア
15
要約
本記事では、ランダム因果有向非巡回グラフ(DAG)のトポロジカルソートに関する新しい基準を提案します。この基準は、グラフの構造に基づいて因果関係を明確にし、効率的なソートを可能にします。特に、無作為に生成されたDAGにおける因果関係の特性を考慮し、実用的な応用に向けた理論的な基盤を提供します。
キーワード
arXiv:2605.06288v1 Announce Type: cross Abstract: Random directed acyclic graphs (DAGs) based on imposing an order on Erd\H{o}s-R\'enyi and scale free random graphs are widely used for evaluating causal discovery algorithms. We show that in such DAGs, the set of nodes reachable via open paths, termed relatives, increases monotonically along the causal order. We assess the prevalence of this pattern numerically, and demonstrate that it can be exploited for causal order recovery via sorting by the estimated number of relatives. We note that many simulations in the literature feature settings where this yields an excellent proxy for the causal order, and show that a strict increase of relatives along the causal order leads to a singular Markov equivalence class. We propose sampling time-series DAGs as a possible alternative and discuss implications for causal discovery algorithms and their evaluation on synthetic data. arXiv:2605.06288v1 Announce Type: cross Abstract: Random directed acyclic graphs (DAGs) based on imposing an order on Erd\H{o}s-R\'enyi and scale free random graphs are widely used for evaluating causal discovery algorithms. We show that in such DAGs, the set of nodes reachable via open paths, termed relatives, increases monotonically along the causal order. We assess the prevalence of this pattern numerically, and demonstrate that it can be exploited for causal order recovery via sorting by the estimated number of relatives. We note that many simulations in the literature feature settings where this yields an excellent proxy for the causal order, and show that a strict increase of relatives along the causal order leads to a singular Markov equivalence class. We propose sampling time-series DAGs as a possible alternative and discuss implications for causal discovery algorithms and their evaluation on synthetic data.