Title :
A Statistically Efficient and Scalable Method for Log-Linear Analysis of High-Dimensional Data
Author :
Petitjean, Francois ; Allison, Lloyd ; Webb, Geoffrey I.
Author_Institution :
Fac. of Inf. Technol., Monash Univ., Melbourne, VIC, Australia
Abstract :
Log-linear analysis is the primary statistical approach to discovering conditional dependencies between the variables of a dataset. A good log-linear analysis method requires both high precision and statistical efficiency. High precision means that the risk of false discoveries should be kept very low. Statistical efficiency means that the method should discover actual associations with as few samples as possible. Classical approaches to log-linear analysis make use of χ2 tests to control this balance between quality and complexity. We present an information-theoretic approach to log-linear analysis. We show that our approach 1) requires significantly fewer samples to discover the true associations than statistical approaches -- statistical efficiency -- 2) controls for the risk of false discoveries as well as statistical approaches -- high precision - and 3) can perform the discovery on datasets with hundreds of variables on a standard desktop computer -- computational efficiency.
Keywords :
data mining; statistical analysis; high-dimensional data; information-theoretic approach; log-linear analysis; statistical efficiency; Computational modeling; Data models; Encoding; Head; Maximum likelihood estimation; Particle separators; Standards; Association discovery; Data modeling; Graphical models; High-dimensional data; Information theory; Log-linear Analysis; Statistical inference;
Conference_Titel :
Data Mining (ICDM), 2014 IEEE International Conference on
Conference_Location :
Shenzhen
Print_ISBN :
978-1-4799-4303-6
DOI :
10.1109/ICDM.2014.23