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Heavy Tailed Homogeneous Structural Causal Models

Vishal Routh, Shuyang Bai

Abstract

We consider causal discovery in structural causal models driven by heavy-tailed noise, where extremes carry important information about causal direction. We introduce the Heavy-Tailed Homogeneous Structural Causal Model (HT-HSCM), a unified framework that generalizes heavy-tailed linear and max-linear models. We demonstrate that causal tail coefficients identify the complete ancestral partial order of the underlying directed acyclic graph. We also formulate a recursive algorithm for recovering quantities associated with the model called ancestral impulse-responses from the causal tail coefficients. Our results provide a general and theoretically justified framework for causal discovery in heavy-tailed systems.

Heavy Tailed Homogeneous Structural Causal Models

Abstract

We consider causal discovery in structural causal models driven by heavy-tailed noise, where extremes carry important information about causal direction. We introduce the Heavy-Tailed Homogeneous Structural Causal Model (HT-HSCM), a unified framework that generalizes heavy-tailed linear and max-linear models. We demonstrate that causal tail coefficients identify the complete ancestral partial order of the underlying directed acyclic graph. We also formulate a recursive algorithm for recovering quantities associated with the model called ancestral impulse-responses from the causal tail coefficients. Our results provide a general and theoretically justified framework for causal discovery in heavy-tailed systems.

Paper Structure

This paper contains 10 sections, 8 theorems, 40 equations, 1 table, 1 algorithm.

Key Result

Lemma 6

For any two distinct nodes $i, j \in V$, we have $\blacktriangleleft$$\blacktriangleleft$

Theorems & Definitions (22)

  • Definition 1
  • Remark 2
  • Definition 3
  • Definition 4
  • Definition 5
  • Lemma 6
  • Theorem 7
  • proof
  • Remark 8
  • Lemma 9
  • ...and 12 more