A Link Analysis Extension of Correspondence Analysis for Mining Relational Databases

IEEE Transactions on Knowledge and Data Engineering(2011)

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摘要
This work introduces a link analysis procedure for discovering relationships in a relational database or a graph, generalizing both simple and multiple correspondence analysis. It is based on a random walk model through the database defining a Markov chain having as many states as elements in the database. Suppose we are interested in analyzing the relationships between some elements (or records) contained in two different tables of the relational database. To this end, in a first step, a reduced, much smaller, Markov chain containing only the elements of interest and preserving the main characteristics of the initial chain, is extracted by stochastic complementation. This reduced chain is then analyzed by projecting jointly the elements of interest in the diffusion map subspace and visualizing the results. This two-step procedure reduces to simple correspondence analysis when only two tables are defined, and to multiple correspondence analysis when the database takes the form of a simple star-schema. On the other hand, a kernel version of the diffusion map distance, generalizing the basic diffusion map distance to directed graphs, is also introduced and the links with spectral clustering are discussed. Several data sets are analyzed by using the proposed methodology, showing the usefulness of the technique for extracting relationships in relational databases or graphs.
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关键词
relational databases,random walk model,reduced chain,simple correspondence analysis,pattern clustering,relationships extraction,relational database,graph mining,diffusion map distance,link analysis,statistical relational learning.,data analysis,mining relational databases,dimensionality reduction,kernel on a graph,stochastic complementation extraction,diffusion map subspace,link analysis extension,diffusion map,link analysis procedure,spectral clustering,relational database mining,correspondence analysis,markov chain,data mining,basic diffusion map distance,markov processes,multiple correspondence analysis,initial chain,symmetric matrices,markov process,statistical relational learning,kernel
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