Graph enhancements to artificial intelligence (AI) and machine learning (ML) are changing the landscape of intelligent applications.
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In this session, we focus on how using
connected features improves the accuracy, precision and recall of
machine learning models. We discuss how
graph algorithms provide more predictive features and aid in feature selection that reduces overfitting.
We also look at a
link prediction example that highlights how graph-based features infer collaboration with measurable improvement.
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