Learning Bayesian Network Structure from Heterogeneous Data
نویسنده
چکیده
There has been some work on learning bayesian network structure from data. In this paper, there is an investigation of search and score methods for assessing the factors that contribute to greater skill in intelligent games such as chess and go. I will discuss different search strategies and compare their efficiencies. There will also be a discussion on speeding up bayesian network structure
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