2021
DOI: 10.48550/arxiv.2103.01575
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Kernel-Based Models for Influence Maximization on Graphs based on Gaussian Process Variance Minimization

Abstract: The inference of novel knowledge, the discovery of hidden patterns, and the uncovering of insights from large amounts of data from a multitude of sources make Data Science (DS) to an art rather than just a mere scientific discipline. The study and design of mathematical models able to analyze information represents a central research topic in DS. In this work, we introduce and investigate a novel model for influence maximization (IM) on graphs using ideas from kernel-based approximation, Gaussian process regre… Show more

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