Using Dependencies to Pair Samples for Multi-View Learning

Reference:

Abhishek Tripathi, Arto Klami, and Samuel Kaski. Using dependencies to pair samples for multi-view learning. In Proceedings of ICASSP 09, the International Conference on Acoustics, Speech, and Signal Processing, pages 1561–1564. IEEE, 2009.

Abstract:

Several data analysis tools such as (kernel) canonical correlation analysis and various multi-view learning methods require paired observations in two data sets. We study the problem of inferring such pairing for data sets with no known one-to-one pairing. The pairing is found by an iterative algorithm that alternates between searching for feature representations that reveal statistical dependencies between the data sets, and finding the best pairs for the samples. The method is applied on pairing probe sets of two different microarray platforms.

Suggested BibTeX entry:

@inproceedings{Tripathi09icassp,
    author = {Abhishek Tripathi and Arto Klami and Samuel Kaski},
    booktitle = {Proceedings of ICASSP 09, the International Conference on Acoustics, Speech, and Signal Processing},
    pages = {1561--1564},
    publisher = {IEEE},
    title = {Using Dependencies to Pair Samples for Multi-View Learning},
    year = {2009},
}

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