Dataset Bias Mitigation in Multiple-Choice Visual Question Answering and Beyond
Zhecan Wang,
Long Chen,
Haoxuan You
et al.
Abstract:Vision-language (VL) understanding tasks evaluate models' comprehension of complex visual scenes through multiple-choice questions. However, we have identified two dataset biases that models can exploit as shortcuts to resolve various VL tasks correctly without proper understanding. The first type of dataset bias is Unbalanced Matching bias, where the correct answer overlaps the question and image more than the incorrect answers. The second type of dataset bias is Distractor Similarity bias, where incorrect an… Show more
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