CausalExplain: Causal Explanations of Black-box Models with Training Data Subsets
Summary: Demo of CausalExplain, a model-agnostic system tracing ML predictions to training-data subsets via causal DAGs. It outputs top-k data-centric explanations from training-data predicates that causally drive the prediction, aiding debugging and insight across datasets and models. (summarized by gpt-5-nano on Feb 09 2026)
Incoming Non-self Citations Over Time
No non-self incoming citations found for this paper in this database.
Authors
- 1. Arman Ashkari
- 2. El Kindi Rezig
Incoming Citations (Sorted by Pagerank)
Showing 0 of 0 citing papers.
| Rank | Citing Paper | Year | Venue | Pagerank |
|---|
Previous
Page 1 / 1
Next
Outgoing Citations (Sorted by Pagerank)
Showing 4 of 4 cited papers.
Citations counted here include only citations to other VLDB/SIGMOD/CIDR/PODS papers in this database.
| Rank | Cited Paper | Year | Venue | Pagerank |
|---|---|---|---|---|
| 2,923 | Explaining Black-Box Algorithms Using Probabilistic Contrastive Counterfactuals | 2021 | SIGMOD | 7.8953538e-05 |
| 6,944 | DataPrism: Exposing Disconnect between Data and Systems | 2022 | SIGMOD | 4.8912787e-05 |
| 7,000 | Generating Interpretable Data-Based Explanations for Fairness Debugging using Gopher | 2022 | SIGMOD | 4.8676312e-05 |
| 7,482 | Provenance-Enabled Explainable AI | 2024 | SIGMOD | 4.7180617e-05 |
Previous
Page 1 / 1
Next
Semantically Similar Papers
| Overall Rank | Paper | Year | Venue | Pagerank |
|---|---|---|---|---|
| 7,482 | Provenance-Enabled Explainable AI | 2024 | SIGMOD | 4.7180617e-05 |
| 4,872 | Explainable AI: Foundations, Applications, Opportunities for Data Management Research | 2022 | SIGMOD | 5.8609352e-05 |
| 1,867 | Interpretable Data-Based Explanations for Fairness Debugging | 2022 | SIGMOD | 0.00010272055 |
| 10,429 | CauSumX: Summarized Causal Explanations For Group-By-Average Queries | 2025 | SIGMOD | 4.1945683e-05 |
| 10,715 | What If: Causal Analysis with Graph Databases | 2025 | VLDB | 4.1945683e-05 |
| 10,427 | CausaLens: A System for Summarizing Causal DAGs | 2025 | SIGMOD | 4.1945683e-05 |
| 6,565 | Toward Interpretable and Actionable Data Analysis with Explanations and Causality | 2022 | VLDB | 5.0081626e-05 |
| 13,260 | Demonstration of Generating Explanations for Black-Box Algorithms Using Lewis | 2021 | VLDB | - |
| 2,402 | Causality and Explanations in Databases | 2014 | VLDB | 8.8928361e-05 |
| 2,923 | Explaining Black-Box Algorithms Using Probabilistic Contrastive Counterfactuals | 2021 | SIGMOD | 7.8953538e-05 |