DocumentCode
633118
Title
A hierarchy of independence assumptions for multi-relational Bayes net classifiers
Author
Schulte, Oliver ; Bina, Bahareh ; Crawford, Broderick ; Bingham, Derek ; Yi Xiong
Author_Institution
Sch. of Comput. Sci., Simon Fraser Univ., Vancouver, BC, Canada
fYear
2013
fDate
16-19 April 2013
Firstpage
150
Lastpage
159
Abstract
Many databases store data in relational format, with different types of entities and information about their attributes and links between the entities. Link-based classification (LBC) is the problem of predicting the class attribute of a target entity given the attributes of entities linked to it. In this paper we propose a new relational Bayes net classifier method for LBC, which assumes that different links of an object are independently drawn from the same distribution, given attribute information from the linked tables. We show that this assumption allows very fast multi-relational Bayes net learning. We define three more independence assumptions for LBC to unify proposals from different researchers in a single novel hierarchy. Our proposed model is at the top and the wellknown multi-relational Naive Bayes classifier is at the bottom of this hierarchy. The model in each level of the hierarchy uses a new independence assumption in addition to the assumptions used in the higher levels. In experiments on four benchmark datasets, our proposed link independence model has the best predictive accuracy compared to the hierarchy models and a variety of relational classifiers.
Keywords
belief networks; pattern classification; relational databases; LBC; databases; independence assumptions; link independence model; link-based classification; multirelational Bayes net classifiers; multirelational naive Bayes classifier; relational classifiers; relational format; Correlation; Data mining; Databases; Educational institutions; Lifting equipment; Mathematical model; Predictive models; Bayes net classifier; Knowledge Discovery in Databases; Link-based Classification; Statistical-relational learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Computational Intelligence and Data Mining (CIDM), 2013 IEEE Symposium on
Conference_Location
Singapore
Type
conf
DOI
10.1109/CIDM.2013.6597230
Filename
6597230
Link To Document