The proposed tutorial aims to introduce the UMAP community to modern user profiling approaches leveraging graph neural networks (GNNs).We will begin by discussing the conceptual foundations of user profiling and GNNs and providing a literature review of the two topics.We will then present a systematic overview of the state-of-the-art GNN architectures designed for user profiling, including the types of data that are typically used for this purpose.We will also discuss ethical considerations and beyond-accuracy perspectives (i.e.fairness and explainability), which can arise within the potential applications of adopting GNNs for user profiling.In the practical session of the tutorial, attendees will have the opportunity to understand concretely how recent GNN models for user profiling are built and trained with open-source tools and publicly available datasets.The audience will also be engaged in investigating the impact of the presented models on case studies involving bias detection and mitigation, as well as user profiles explanations.The tutorial will end with an analysis of existing and emerging open challenges in the field and their future research directions.

Tutorial on User Profiling with Graph Neural Networks and Related Beyond-Accuracy Perspectives

Boratto L.;
2023-01-01

Abstract

The proposed tutorial aims to introduce the UMAP community to modern user profiling approaches leveraging graph neural networks (GNNs).We will begin by discussing the conceptual foundations of user profiling and GNNs and providing a literature review of the two topics.We will then present a systematic overview of the state-of-the-art GNN architectures designed for user profiling, including the types of data that are typically used for this purpose.We will also discuss ethical considerations and beyond-accuracy perspectives (i.e.fairness and explainability), which can arise within the potential applications of adopting GNNs for user profiling.In the practical session of the tutorial, attendees will have the opportunity to understand concretely how recent GNN models for user profiling are built and trained with open-source tools and publicly available datasets.The audience will also be engaged in investigating the impact of the presented models on case studies involving bias detection and mitigation, as well as user profiles explanations.The tutorial will end with an analysis of existing and emerging open challenges in the field and their future research directions.
2023
9781450399326
Explainability
Fairness
Graph Neural Networks
User Profiling
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11584/390357
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