Learning to Predict, Discover, and Reason in High-Dimensional Discrete Event Sequences
arXiv cs.AI / 3/18/2026
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Key Points
- The work reframes vehicle diagnostic sequences as a high-dimensional language and proposes Transformer-based architectures for predictive maintenance.
- It unifies event sequence modeling, causal discovery, and large language models to scale to high-cardinality, long-sequence automotive data.
- It introduces scalable causal discovery frameworks and a multi-agent system to automate the synthesis of Boolean error-pattern rules.
- It emphasizes that tens of thousands of unique DTCs create a vocabulary-scale challenge akin to natural language.
- It presents a three-part progression from prediction to causal understanding to reasoning in vehicle diagnostics, with implications for safety-critical systems.
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