CADENCE recovers individualized continuous-time trajectories from cross-sectional snapshots via context-anchored latent dynamics, a bijective score-based encoder, and SMoE routing, with claimed identifiability guarantees and benchmark performance matching dense-data models.
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Hardmax transformers converge to leader-determined clusters, enabling an interpretable model for sentiment analysis.
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Learning Individual Dynamics from Sparse Cross-Sectional Snapshots
CADENCE recovers individualized continuous-time trajectories from cross-sectional snapshots via context-anchored latent dynamics, a bijective score-based encoder, and SMoE routing, with claimed identifiability guarantees and benchmark performance matching dense-data models.
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Clustering in pure-attention hardmax transformers and its role in sentiment analysis
Hardmax transformers converge to leader-determined clusters, enabling an interpretable model for sentiment analysis.