concept
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concept:in-context-learning-tasks-with-complex-graph-geometriesin-context learning tasks with complex graph geometries
Tasks involving graph-structured geometries for in-context learning, used to test manifold steering.
Neighborhood — ranked by edge-count
Concepts (2)
concept
- An additional task in the full paper where geometric structure is predefined and used to test whether representation and behavior geometry align.
- Language model experimental setting with complex relational structure.
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.
- Reports phase-like breakpoints and geometry changes as context scales; UCCT provides measurable predictor
- Language model experimental setting used to test manifold steering.
- Learning paradigm that jointly learns multiple related tasks using a single model
- Related work on spatial mapping as graph learning; mentioned alongside Hawkins for grid cells in neocortex discussion.
- A more complex geometric structure used to characterize in-context learning task representations
- Evidence that in-context learning is not mere pattern matching but genuine optimization, relevant to applying the thesis to inference
- Test-time adaptation from prompt or retrieved context with no parameter updates.