DiscoverMachine Learning Tech Brief By HackerNoonHow Generative Data Expands AI’s Understanding of the Real World
How Generative Data Expands AI’s Understanding of the Real World

How Generative Data Expands AI’s Understanding of the Real World

Update: 2025-11-12
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This story was originally published on HackerNoon at: https://hackernoon.com/how-generative-data-expands-ais-understanding-of-the-real-world.

DiverGen reduces distribution bias in instance segmentation by diversifying generative data among models, prompts, and categories.

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By introducing Generative Data Diversity Enhancement (GDDE) and conducting a thorough examination of data distribution inconsistencies, DiverGen promotes generative data augmentation for example segmentation. DiverGen recognizes that a lack of real data biases model learning and extends the learnable distribution using three complementary diversity axes: generative model diversity (combining Stable Diffusion and DeepFloyd-IF outputs), prompt diversity (using ChatGPT-generated descriptions), and category diversity (adding ImageNet-based categories).

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How Generative Data Expands AI’s Understanding of the Real World

How Generative Data Expands AI’s Understanding of the Real World

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