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arxiv 2110.09431 v1 pith:D2A44R5Y submitted 2021-10-18 cs.HC cs.CVcs.LG

Comparing Deep Neural Nets with UMAP Tour

classification cs.HC cs.CVcs.LG
keywords neuralsimilarityconceptslayerslearnedmeasuremodelsnetwork
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Neural networks should be interpretable to humans. In particular, there is a growing interest in concepts learned in a layer and similarity between layers. In this work, a tool, UMAP Tour, is built to visually inspect and compare internal behavior of real-world neural network models using well-aligned, instance-level representations. The method used in the visualization also implies a new similarity measure between neural network layers. Using the visual tool and the similarity measure, we find concepts learned in state-of-the-art models and dissimilarities between them, such as GoogLeNet and ResNet.

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