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Main Authors: Bonagiri, Akash, Borkar, Devang, Anderias, Gerard Janno, Rafatirad, Setareh, Homayoun, Houman
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.25338
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author Bonagiri, Akash
Borkar, Devang
Anderias, Gerard Janno
Rafatirad, Setareh
Homayoun, Houman
author_facet Bonagiri, Akash
Borkar, Devang
Anderias, Gerard Janno
Rafatirad, Setareh
Homayoun, Houman
contents Large language model (LLM) agents frequently fail on multi-step tasks involving reasoning, tool use, and environment interaction. While such failures are typically logged or retried heuristically, they contain structured signals about where execution broke down. We introduce CausalFlow, an interventional framework that converts failed agent traces into minimal counterfactual repairs and reusable supervision. CausalFlow models execution traces as sequential chains of dependent steps and computes Causal Responsibility Scores(CRS) via step-level counterfactual intervention to identify failure-inducing steps. For these steps, we generate minimally edited repairs that flip the final outcome to success, producing validated contrastive pairs of the form (wrong step, corrected step). CausalFlow supports two complementary uses: targeted test-time repair that recovers from failures with minimal behavioral drift, and training-time supervision suitable for offline preference optimization or reward modeling. Across four benchmarks spanning mathematical reasoning, code generation, question answering, and medical browsing, CausalFlow converts failed executions into validated minimal repairs with high minimality and causal-consensus scores, and demonstrates that causal attribution is necessary for reliable improvement across diverse agent tasks, outperforming heuristic refinement in complex retrieval settings while producing more localized repairs throughout. These results demonstrate that interventional analysis over structured execution traces provides a principled and scalable mechanism for transforming agent failures into reliability gains and learning-ready supervision.
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle CausalFlow: Causal Attribution and Counterfactual Repair for LLM Agent Failures
Bonagiri, Akash
Borkar, Devang
Anderias, Gerard Janno
Rafatirad, Setareh
Homayoun, Houman
Machine Learning
Artificial Intelligence
Large language model (LLM) agents frequently fail on multi-step tasks involving reasoning, tool use, and environment interaction. While such failures are typically logged or retried heuristically, they contain structured signals about where execution broke down. We introduce CausalFlow, an interventional framework that converts failed agent traces into minimal counterfactual repairs and reusable supervision. CausalFlow models execution traces as sequential chains of dependent steps and computes Causal Responsibility Scores(CRS) via step-level counterfactual intervention to identify failure-inducing steps. For these steps, we generate minimally edited repairs that flip the final outcome to success, producing validated contrastive pairs of the form (wrong step, corrected step). CausalFlow supports two complementary uses: targeted test-time repair that recovers from failures with minimal behavioral drift, and training-time supervision suitable for offline preference optimization or reward modeling. Across four benchmarks spanning mathematical reasoning, code generation, question answering, and medical browsing, CausalFlow converts failed executions into validated minimal repairs with high minimality and causal-consensus scores, and demonstrates that causal attribution is necessary for reliable improvement across diverse agent tasks, outperforming heuristic refinement in complex retrieval settings while producing more localized repairs throughout. These results demonstrate that interventional analysis over structured execution traces provides a principled and scalable mechanism for transforming agent failures into reliability gains and learning-ready supervision.
title CausalFlow: Causal Attribution and Counterfactual Repair for LLM Agent Failures
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2605.25338