cs.AI updates on arXiv.org 07月25日 12:28
On the Performance of Concept Probing: The Influence of the Data (Extended Version)
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本文针对概念探测在图像分类中的应用,探讨训练探测模型所需数据对模型性能的影响,并提供两个常用数据集的概念标签。

arXiv:2507.18550v1 Announce Type: new Abstract: Concept probing has recently garnered increasing interest as a way to help interpret artificial neural networks, dealing both with their typically large size and their subsymbolic nature, which ultimately renders them unfeasible for direct human interpretation. Concept probing works by training additional classifiers to map the internal representations of a model into human-defined concepts of interest, thus allowing humans to peek inside artificial neural networks. Research on concept probing has mainly focused on the model being probed or the probing model itself, paying limited attention to the data required to train such probing models. In this paper, we address this gap. Focusing on concept probing in the context of image classification tasks, we investigate the effect of the data used to train probing models on their performance. We also make available concept labels for two widely used datasets.

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概念探测 图像分类 数据影响 模型性能 数据集
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