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Fraud Detection with Graphs

Data Skeptic

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Exploring Multiple Instance Learning and Hierarchical Structures

This chapter examines the evolution of multiple instance learning from traditional machine learning, introducing the idea of 'bags' that group vectors to predict a single label. It also discusses hierarchical multi-instance learning and the critical role of aggregation functions in obtaining a global label for effective model training and classification.

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