Relevant Subsequence Detection with Sparse Dictionary Learning

نویسندگان

  • Sam Blasiak
  • Huzefa Rangwala
  • Kathryn B. Laskey
چکیده

Sparse Dictionary Learning has recently become popular for discovering latent components that can be used to reconstruct elements in a dataset. Analysis of sequence data could also bene t from this type of decomposition, but sequence datasets are not natively accepted by the Sparse Dictionary Learning model. A strategy for making sequence data more manageable is to extract all subsequences of a xed length from the original sequence dataset. This subsequence representation can then be input to a Sparse Dictionary Learner. This strategy can be problematic because self-similar patterns within sequences are over-represented. In this work, we propose an alternative for applying Sparse Dictionary Learning to sequence datasets. We call this alternative Relevant Subsequence Dictionary Learning (RS-DL). Our method involves constructing separate dictionaries for each sequence in a dataset from shared sets of relevant subsequence patterns. Through experiments, we show that decompositions of sequence data induced by our RS-DL model can be e ective both for discovering repeated patterns meaningful to humans and for extracting features useful for sequence classi cation. Code: http://cs.gmu.edu/∼sblasiak/RS-DL.tar.gz

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تاریخ انتشار 2013