2015 IEEE Symposium Series on Computational Intelligence 2015
DOI: 10.1109/ssci.2015.198
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Subclass Marginal Fisher Analysis

Abstract: General rightsThis document is made available in accordance with publisher policies. Please cite only the published version using the reference above. Abstract-Subspace learning techniques have been extensively used for dimensionality reduction (DR) in many pattern classification problem domains. Recently, Discriminant Analysis (DA) methods, which use subclass information for the discrimination between the data classes, have attracted much attention. As DA methods are strongly dependent on the underlying distr… Show more

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Cited by 3 publications
(2 citation statements)
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“…It is worth noting that in contrast to the intrinsic graph matrix, the values of the penalty graph matrix depend merely on the class information regardless of the subclass labels. In this way, constraints between subclasses belonging to the same class are avoided, offering better generalisation chances [9].…”
Section: A Subclass Marginal Fisher Analysismentioning
confidence: 99%
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“…It is worth noting that in contrast to the intrinsic graph matrix, the values of the penalty graph matrix depend merely on the class information regardless of the subclass labels. In this way, constraints between subclasses belonging to the same class are avoided, offering better generalisation chances [9].…”
Section: A Subclass Marginal Fisher Analysismentioning
confidence: 99%
“…In this paper, motivated by the above demand, we propose the use of Subclass Marginal Fisher Analysis (SMFA) [9] in SSVEP detection from EEG signals. SMFA belongs to a general category of techniques, known as Subspace Learning (SL) [10], which in the process of feature extraction reduce the dimensionality of the raw data, while retaining as much discriminant information as possible.…”
Section: Introduction Steady State Visual Evoked Potentials (Ssvepmentioning
confidence: 99%