A Probabilistic Model for Node Classification in Directed Graphs
In this work, we present a probabilistic model for directed graphs where nodes have attributes and labels. This model serves as a generative classifier capable of predicting the labels of unseen nodes using either maximum likelihood or maximum a posteriori estimations. The predictions made by this m...
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Zusammenfassung: | In this work, we present a probabilistic model for directed graphs where
nodes have attributes and labels. This model serves as a generative classifier
capable of predicting the labels of unseen nodes using either maximum
likelihood or maximum a posteriori estimations. The predictions made by this
model are highly interpretable, contrasting with some common methods for node
classification, such as graph neural networks. We applied the model to two
datasets, demonstrating predictive performance that is competitive with, and
even superior to, state-of-the-art methods. One of the datasets considered is
adapted from the Math Genealogy Project, which has not previously been utilized
for this purpose. Consequently, we evaluated several classification algorithms
on this dataset to compare the performance of our model and provide benchmarks
for this new resource. |
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DOI: | 10.48550/arxiv.2501.01630 |