finding
active
finding:active-inference-null-model-no-prior-preferences-achieved-average-score-50-03-49-70-50-35-in-deterministic-frozenlakeActive Inference null model (no prior preferences) achieved average score 50.03 [49.70, 50.35] in deterministic FrozenLake.
Table 1.
Source paper
extracted_from(2021) · Noor Sajid · Philip J. Ball · Thomas Parr · Karl J. Friston
Neighborhood — ranked by edge-count
Claims (1)
claim
- Abstract and §3, preference learning section.
Related by similarity (8)
cosine ≥ 0.65 · no typed edgeEntities in the same semantic neighborhood but without a typed relation to this one — candidates for new edges or unrecognized duplicates.
- Table 1, deterministic environment row.
- Table 2 first row; reward shaping section.
- Bayesian model-based RL achieved average score 99.76 [99.45, 100.00] in deterministic FrozenLake.finding0.842Table 1.
- Discussion of Figure 3.
- Table 2, row 3, showing equivalence when prior preferences match rewards.
- Table 1.
- Figure 4 and discussion in §3.
- Key empirical result validating online planning capability of active inference.