Poster
Evaluating alignment between humans and neural network representations in image-based learning tasks
Can Demircan · Tankred Saanum · Leonardo Pettini · Marcel Binz · Blazej Baczkowski · Christian Doeller · Mona Garvert · Eric Schulz
Humans represent scenes and objects in rich feature spaces, carrying information that allows us to generalise about category memberships and abstract functions with few examples. What determines whether a neural network model generalises like a human? We tested how well the representations of 77 pretrained neural network models mapped to human learning trajectories across two tasks where humans had to learn continuous relationships and categories of natural images. In these tasks, both human participants and neural networks successfully identified the relevant stimulus features within a few trials, demonstrating effective generalisation. 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 models that predicted human generalisation. Factors such as model size and intrinsic dimensionality had different effects on alignment for different model types. Lastly, we tested three sets of human-aligned representations and found that only one alignment method improved predictive accuracy in our tasks compared to the baselines. In conclusion, pretrained neural networks can serve to extract representations for cognitive models, as they appear to capture some fundamental aspects of cognition that are transferable across tasks. Both our paradigms and modelling approach offer a novel way to quantify alignment between neural networks and humans and extend cognitive science into more naturalistic domains.
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