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  1. app.py +1 -1
app.py CHANGED
@@ -27,7 +27,7 @@ we should not assign a specific gender or ethnicity to a synthetic figure genera
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  In this app, we instead take a 2-step clustering-based approach. First, we generate 680 images for each model by varying mentions of terms that denote gender or ethnicity in the prompts.
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  Then, we use a [VQA-based model](https://huggingface.co/Salesforce/blip-vqa-base) to cluster these images at different granularities (12, 24, or 48 clusters).
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- Exploring these clusters allows us to examine trends in the models' associations between visual features and textual representation of social features.
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  We encourage users to take advantage of this app to explore those trends, for example through the lens of the following questions:
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  - Find the cluster that has the most prompts denoting a gender or ethnicity that you identify with. Do you think the generated images look like you?
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  - Find two clusters that have a similar distribution of gender terms but different distributions of ethnicity terms. Do you see any meaningful differences in how gender is visually represented?
 
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  In this app, we instead take a 2-step clustering-based approach. First, we generate 680 images for each model by varying mentions of terms that denote gender or ethnicity in the prompts.
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  Then, we use a [VQA-based model](https://huggingface.co/Salesforce/blip-vqa-base) to cluster these images at different granularities (12, 24, or 48 clusters).
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+ Exploring these clusters allows us to examine trends in the models' associations between visual features and textual representation of social attributes.
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  We encourage users to take advantage of this app to explore those trends, for example through the lens of the following questions:
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  - Find the cluster that has the most prompts denoting a gender or ethnicity that you identify with. Do you think the generated images look like you?
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  - Find two clusters that have a similar distribution of gender terms but different distributions of ethnicity terms. Do you see any meaningful differences in how gender is visually represented?