Exploring Multi-Modal Integration with Tool-Augmented LLM Agents for Precise Causal Discovery
Causal inference is an imperative foundation for decision-making across domains, such as smart health, AI for drug discovery and AIOps. Traditional statistical causal discovery methods, while well-established, predominantly rely on observational data and often overlook the semantic cues inherent in...
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Zusammenfassung: | Causal inference is an imperative foundation for decision-making across
domains, such as smart health, AI for drug discovery and AIOps. Traditional
statistical causal discovery methods, while well-established, predominantly
rely on observational data and often overlook the semantic cues inherent in
cause-and-effect relationships. The advent of Large Language Models (LLMs) has
ushered in an affordable way of leveraging the semantic cues for
knowledge-driven causal discovery, but the development of LLMs for causal
discovery lags behind other areas, particularly in the exploration of
multi-modality data. To bridge the gap, we introduce MATMCD, a multi-agent
system powered by tool-augmented LLMs. MATMCD has two key agents: a Data
Augmentation agent that retrieves and processes modality-augmented data, and a
Causal Constraint agent that integrates multi-modal data for knowledge-driven
inference. Delicate design of the inner-workings ensures successful cooperation
of the agents. Our empirical study across seven datasets suggests the
significant potential of multi-modality enhanced causal discovery. |
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DOI: | 10.48550/arxiv.2412.13667 |