A person with short dark hair and bangs stands confidently behind a green metal barrier, wearing a black blazer over a black top and a light gray plaid skirt. Sunlight filters through the leaves of a tree in the background, casting dappled shadows on the ground. The scene is outdoors, set against a backdrop of greenery and an urban structure.
A person with short dark hair and bangs stands confidently behind a green metal barrier, wearing a black blazer over a black top and a light gray plaid skirt. Sunlight filters through the leaves of a tree in the background, casting dappled shadows on the ground. The scene is outdoors, set against a backdrop of greenery and an urban structure.

Bias analysis framework

Bias Analysis

Decomposing bias into data-layer and model-layer for fairness.

An analog scale with a white dial and a metallic frame is prominently featured. Numbers and markings in black are visible on the scale's dial. In the background, there are several blurred figures, possibly people, along with a blurry environment that suggests a market setting.
An analog scale with a white dial and a metallic frame is prominently featured. Numbers and markings in black are visible on the scale's dial. In the background, there are several blurred figures, possibly people, along with a blurry environment that suggests a market setting.
Dynamic Detection

Utilizing GPT-4 API for identifying implicit biases in text generation.

A rustic wall features traditional balance scales hanging vertically. The scales are made of rough, woven materials. One scale holds a variety of colorful fruits, while the other appears empty. The arrangement is simple, with a branch supporting a small plant and the balanced fruits.
A rustic wall features traditional balance scales hanging vertically. The scales are made of rough, woven materials. One scale holds a variety of colorful fruits, while the other appears empty. The arrangement is simple, with a branch supporting a small plant and the balanced fruits.
Fairness Regularization

Developing algorithms to enforce fair representations through adversarial sample generation.

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