Anais Do 15. Congresso Brasileiro De Inteligência Computacional 2021
DOI: 10.21528/cbic2021-161
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How do loss functions impact the performance of graph neural networks?

Abstract: Graph neural networks (GNNs) have become the de facto approach for supervised learning on graph data.To train these networks, most practitioners employ the categorical cross-entropy (CE) loss. We can attribute this largely to the probabilistic interpretability of models trained using CE, since it corresponds to the negative log of the categorical/softmax likelihood.We can attribute this largely to the probabilistic interpretation of CE, since it corresponds to the negative log of the categorical/softmax likeli… Show more

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