Simple decision forests for multi-relational classification

Decision Support Systems(2013)

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摘要
An important task in multi-relational data mining is link-based classification which takes advantage of attributes of links and linked entities, to predict the class label. The relational Naive Bayes classifier exploits independence assumptions to achieve scalability. We introduce a weaker independence assumption to the effect that information from different data tables is independent given the class label. The independence assumption entails a closed-form formula for combining probabilistic predictions based on decision trees learned on different database tables. Logistic regression learns different weights for information from different tables and prunes irrelevant tables. In experiments, learning was very fast with competitive accuracy.
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关键词
simple decision forest,competitive accuracy,weaker independence assumption,multi-relational data mining,different database table,different table,class label,different weight,different data table,multi-relational classification,closed-form formula,independence assumption,logistic regression
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