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Collaborating Authors

 Schweikert, Gabriele


An Empirical Analysis of Domain Adaptation Algorithms for Genomic Sequence Analysis

Neural Information Processing Systems

We study the problem of domain transfer for a supervised classification task in mRNA splicing. We consider a number of recent domain transfer methods from machine learning, including some that are novel, and evaluate them on genomic sequence data from model organisms of varying evolutionary distance. We find that in cases where the organisms are not closely related, the use of domain adaptation methods can help improve classification performance. Papers published at the Neural Information Processing Systems Conference.


An Empirical Analysis of Domain Adaptation Algorithms for Genomic Sequence Analysis

Neural Information Processing Systems

We study the problem of domain transfer for a supervised classification task in mRNA splicing. We consider a number of recent domain transfer methods from machine learning, including some that are novel, and evaluate them on genomic sequence data from model organisms of varying evolutionary distance. We find that in cases where the organisms are not closely related, the use of domain adaptation methods can help improve classification performance.