Evaluating alignment between humans and neural network representations in image-based learning tasks

Neural Information Processing Systems 

We found that while training dataset size was a core determinant of alignment with human choices, contrastive training with multi-modal data (text and imagery) was a common feature of currently publicly available models that predicted human generalisation. Intrinsic dimensionality of representations had different effects on alignment for different model types. Lastly, we tested three sets of human-aligned representations and found no consistent improvements in predictive accuracy compared to the baselines.

Similar Docs  Excel Report  more

TitleSimilaritySource
None found