Read original ↗
paperarXivTrust 82 · PrimaryPublished 8d agoLive · 7d ago

Forecasting With LLMs: Improved Generalization Through Feature Steering

Successful forecasting involves identifying patterns between historical and future states of the world which generalize to future observations. We apply LLMs to a variety of forecasting tasks and inspect their internal states using sparse autoencoders to understand whether they appear to rely on time-specific pieces of knowledge versus generalizable patterns. Our analyses identify features associated with both time-aware reasoning and look-ahead-biased reasoning. We then apply the LLMs to an entirely different domain and intervene on these features. We find that amplifying time-awareness featu

Lineage graph

Paper → model → repo connections mined from source citations (Tier-1 exact match).

Implements (incoming)

Related across the graph

Topics