Autoassociative Learning of Structural Representations for Modeling and Classification in Medical Imaging
- URL: http://arxiv.org/abs/2411.12070v2
- Date: Mon, 25 Nov 2024 10:36:37 GMT
- Title: Autoassociative Learning of Structural Representations for Modeling and Classification in Medical Imaging
- Authors: Zuzanna Buchnajzer, Kacper Dobek, Stanisław Hapke, Daniel Jankowski, Krzysztof Krawiec,
- Abstract summary: This study proposes a class of neurosymbolic systems that learn by reconstructing the observed images in terms of visual primitives.
When applied to the task of diagnosing abnormalities in histological imaging, the method proved superior to a conventional deep learning architecture in terms of classification accuracy.
- Score: 0.157286095422595
- License:
- Abstract: Deep learning architectures based on convolutional neural networks tend to rely on continuous, smooth features. While this characteristics provides significant robustness and proves useful in many real-world tasks, it is strikingly incompatible with the physical characteristic of the world, which, at the scale in which humans operate, comprises crisp objects, typically representing well-defined categories. This study proposes a class of neurosymbolic systems that learn by reconstructing the observed images in terms of visual primitives and are thus forced to form high-level, structural explanations of them. When applied to the task of diagnosing abnormalities in histological imaging, the method proved superior to a conventional deep learning architecture in terms of classification accuracy, while being more transparent.
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