Evaluating Large Language Models for Gait Classification Using Text-Encoded Kinematic Waveforms
arXiv cs.LG / 3/17/2026
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Key Points
- The study evaluated whether general-purpose LLMs can classify continuous gait kinematics when encoded as textual numeric sequences and compared their performance to traditional classifiers (KNN and OCSVM) using Leave-One-Subject-Out cross-validation.
- The supervised KNN achieved the highest multiclass MCC of 0.88, outperforming the zero-shot LLMs.
- GPT-5 with reference grounding reached a multiclass MCC of 0.70 and a binary MCC of 0.68, still below the KNN and above the class-independent OCSVM.
- Using high-confidence predictions increased the LLM multiclass MCC to 0.83 on the filtered subset, indicating sensitivity to confidence thresholds.
- The o4-mini model performed comparably to larger models, highlighting computational efficiency and suggesting LLMs may be more suitable for exploratory analysis rather than direct diagnostic use.
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