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arxiv:2510.00902

Intuitions of Machine Learning Researchers about Transfer Learning for Medical Image Classification

Published on Oct 1, 2025
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Abstract

Human-centered study reveals that medical imaging practitioners rely on task-dependent heuristics and community practices when selecting source datasets for transfer learning, with similarity assessments not always aligning with expected performance.

AI-generated summary

Transfer learning is crucial for medical imaging, yet the selection of source datasets - which can impact the generalizability of algorithms, and thus patient outcomes - often relies on researchers' intuition rather than systematic principles. This study investigates these decisions through a task-based survey with machine learning practitioners. Unlike prior work that benchmarks models and experimental setups, we take a human-centered HCI perspective on how practitioners select source datasets. Our findings indicate that choices are task-dependent and influenced by community practices, dataset properties, and computational (data embedding), or perceived visual or semantic similarity. However, similarity ratings and expected performance are not always aligned, challenging a traditional "more similar is better" view. Participants often used ambiguous terminology, which suggests a need for clearer definitions and HCI tools to make them explicit and usable. By clarifying these heuristics, this work provides practical insights for more systematic source selection in transfer learning.

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