1. What are the contributions mentioned in the paper "Binary- and multi-class group sparse canonical correlation analysis for feature extraction and classification" ?
This paper incorporates the group sparse representation into the well-known canonical correlation analysis ( CCA ) framework and proposes a novel discriminant feature extraction technique named group sparse canonical correlation analysis ( GSCCA ).. Comparative analysis between this work and the related studies demonstrate that their algorithm is more general exhibiting attractive properties.. The projection matrix of GSCCA is analytically solved by applying eigen-decomposition and trace ratio ( TR ) optimization.. Results show that their approach delivers promising results, compared with other related algorithms.
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2. What are the future works mentioned in the paper "Binary- and multi-class group sparse canonical correlation analysis for feature extraction and classification" ?
By defining one of the two sets to be a class label matrix, GSCCA is naturally extended for multiclass feature extraction and classification.. In their future work, investigating the approach of accelerating the sparse representation process is required.. Also, the authors must admit that, in machine learning and pattern recognition areas, determination of optimal reduced dimensions still remains an open problem that needs further exploration.
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