method
active
method:squared-difference-lossSquared Difference Loss
Loss function used in both experiments: sum of squared differences between predicted and target grid
Neighborhood — ranked by edge-count
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.
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