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AAAI 2024

Discovering Heterogeneous Causal Effects in Relational Data

Short Paper AAAI Doctoral Consortium Track Artificial Intelligence

Abstract

Causal inference in relational data should account for the non-IID nature of the data and the interference phenomenon, which occurs when a unit's outcome is influenced by the treatments or outcomes of others. Existing solutions to causal inference under interference consider either homogeneous influence from peers or specific heterogeneous influence contexts (e.g., local neighborhood structure). This thesis investigates causal reasoning in relational data and the automated discovery of heterogeneous causal effects under arbitrary heterogeneous peer influence contexts and effect modification.

Authors

Keywords

  • Causal Discovery
  • Causal Inference
  • Heterogeneous Treatment Effects
  • Network Effects
  • Network Interference

Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
543630505617785841