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Learning Bayesian Networks from Ordinal Data
2021
Bayesian networks are a powerful framework for studying the dependency structure of variables in a complex system. The problem of learning Bayesian networks is tightly associated with the given data type. Ordinal data, such as stages of cancer, rating scale survey questions, and letter grades for exams, are ubiquitous in applied research. However, existing solutions are mainly for continuous and nominal data. In this work, we propose an iterative score-and-search method -called the Ordinal
doi:10.5451/unibas-ep87480
fatcat:tb4aqae4hjb7lbwnv4nzfjqbna