Search Machine Learning Repository: @inproceedings{icml2014c2_nguyenc14,
    Publisher = {JMLR Workshop and Conference Proceedings},
    Title = {Multivariate Maximal Correlation Analysis},
    Url = {http://jmlr.org/proceedings/papers/v32/nguyenc14.pdf},
    Abstract = {Correlation analysis is one of the key elements of statistics, and has various applications in data analysis. Whereas most existing measures can only detect pairwise correlations between two dimensions, modern analysis aims at detecting correlations in multi-dimensional spaces. We propose MAC, a novel multivariate correlation measure designed for discovering multi-dimensional patterns. It belongs to the powerful class of maximal correlation analysis, for which we propose a generalization to multivariate domains. We highlight the limitations of current methods in this class, and address these with MAC. Our experiments show that MAC outperforms existing solutions, is robust to noise, and discovers interesting and useful patterns.},
    Author = {Hoang V. Nguyen and Emmanuel Müller and Jilles Vreeken and Pavel Efros and Klemens Böhm},
    Editor = {Tony Jebara and Eric P. Xing},
    Year = {2014},
    Booktitle = {Proceedings of the 31st International Conference on Machine Learning (ICML-14)},
    Pages = {775-783}
   }