Durrant, Simon, Hardoon, D. R., Brechmann, A. , Shawe-Taylor, J., Miranda, E. R. and Scheich, H. (2009) GLM and SVM analyses of neural response to tonal and atonal stimuli: new techniques and a comparison. Connection Science, 21 (2-3). pp. 161-175. ISSN 0954-0091
Full content URL: http://www.tandfonline.com/doi/abs/10.1080/0954009...
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GLM_and_SVM_analyses_of_neural_response_to_tonal_and_atonal_stimuli_-_new_techniques_and_a_comparison_(Durrant_2009).pdf - Whole Document Restricted to Repository staff only 1MB |
Item Type: | Article |
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Item Status: | Live Archive |
Abstract
This paper gives both general linear model (GLM) and support vector machine (SVM) analyses of an experiment concerned with tonality in music. The two forms of analysis are both contrasted and used to complement each other, and a new technique employing the GLM as a pre-processing step for the SVM is presented. The SVM is given the task of classifying the stimulus conditions (tonal or atonal) on the basis of the blood oxygen level-dependent signal of novel data, and the prediction performance is evaluated. In
addition, a more detailed assessment of the SVM performance is given in a comparison of the similarity in the identification of voxels relevant to the classification of the SVM and a GLM.A high level of similarity between SVM weight and GLM t-maps demonstrate that the SVM is successfully identifying relevant voxels, and it is this that allows it to perform well in the classification task in spite of very noisy data and stimuli that involve higher-order cognitive functions and considerably inter-subject variation in neural response.
Additional Information: | This paper gives both general linear model (GLM) and support vector machine (SVM) analyses of an experiment concerned with tonality in music. The two forms of analysis are both contrasted and used to complement each other, and a new technique employing the GLM as a pre-processing step for the SVM is presented. The SVM is given the task of classifying the stimulus conditions (tonal or atonal) on the basis of the blood oxygen level-dependent signal of novel data, and the prediction performance is evaluated. In addition, a more detailed assessment of the SVM performance is given in a comparison of the similarity in the identification of voxels relevant to the classification of the SVM and a GLM.A high level of similarity between SVM weight and GLM t-maps demonstrate that the SVM is successfully identifying relevant voxels, and it is this that allows it to perform well in the classification task in spite of very noisy data and stimuli that involve higher-order cognitive functions and considerably inter-subject variation in neural response. |
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Keywords: | fMRI, support vector machine, general linear model, music cognition, machine learning |
Subjects: | C Biological Sciences > C800 Psychology C Biological Sciences > C850 Cognitive Psychology C Biological Sciences > C860 Neuropsychology |
Divisions: | College of Social Science > School of Psychology |
Related URLs: | |
ID Code: | 4722 |
Deposited On: | 12 Oct 2011 06:48 |
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