Collaborative Temporal Feature Generation via Critic-Free Reinforcement Learning for Cross-User Sensor-Based Activity Recognition
arXiv cs.LG / 3/18/2026
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Key Points
- The paper tackles cross-user variability in wearable-sensor Human Activity Recognition and proposes a collaborative temporal feature generation framework (CTFG) that uses a Transformer-based autoregressive generator.
- It introduces a critic-free Group-Relative Policy Optimization algorithm to evaluate each generated feature sequence against alternatives sampled from the same input, avoiding critic-based value estimation.
- A tri-objective reward comprising class discrimination, cross-user invariance, and temporal fidelity guides the feature space to be discriminative, user-agnostic, and temporally faithful.
- On DSADS and PAMAP2 benchmarks, the approach achieves state-of-the-art cross-user accuracy (88.53% and 75.22%), reduces training variance, accelerates convergence, and generalizes across varying action-space dimensionalities.
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