We study the joint feature selection problem when learning multiple related classification or regression tasks. By imposing an automatic relevance determination prior on the hypothesis classes associated with each of the tasks and regularizing the variance of the hypothesis parameters, similar feature patterns across different tasks are encouraged and features that are relevant to all (or most) of the tasks are identified. Our analysis shows that the proposed probabilistic framework can be seen as a generalization of previous result from adaptive ridge regression to the multi-task learning setting. We provide a detailed description of the proposed algorithms for simultaneous model construction and justify the proposed algorithms in several aspects. Our experimental results show that this approach outperforms a regularized multi-task learning approach and the traditional methods where individual tasks are solved independently on synthetic data and the real-world data sets for lung cancer prognosis.
Abstract-It is through experience one could as certain that the classifier in the arsenal or machine learning technique is the Nearest Neighbour Classifier. Automatic melakarta raaga identification system is achieved by identifying the nearest neighbours to a query example and using those neighbours to determine the class of the query. This approach to classification is of particular importance today because issues of poor run-time performance are not such a problem these days with the computational power that is available. This paper presents an overview of techniques for Nearest Neighbour classification focusing on; mechanisms for finding distance between neighbours using Cosine Distance, Earth Movers Distance and formulas are used to identify nearest neighbours, algorithm for classification in training and testing for identifying Melakarta raagas in Carnatic music. From the derived results it is concluded that Earth Movers Distance is producing better results than Cosine Distance measure.
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