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arxiv:2502.08167

DNNs May Determine Major Properties of Their Outputs Early, with Timing Possibly Driven by Bias

Published on Feb 12, 2025
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Abstract

DNNs make early inference decisions influenced by design and training biases, similar to human heuristics, as demonstrated using diffusion models.

AI-generated summary

This paper argues that deep neural networks (DNNs) mostly determine their outputs during the early stages of inference, where biases inherent in the model play a crucial role in shaping this process. We draw a parallel between this phenomenon and human decision-making, which often relies on fast, intuitive heuristics. Using diffusion models (DMs) as a case study, we demonstrate that DNNs often make early-stage decision-making influenced by the type and extent of bias in their design and training. Our findings offer a new perspective on bias mitigation, efficient inference, and the interpretation of machine learning systems. By identifying the temporal dynamics of decision-making in DNNs, this paper aims to inspire further discussion and research within the machine learning community.

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