Learning kernels for time sequences classification

Telecommunications Forum(2012)

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摘要
In this paper we consider a direct application of advanced machine learning methods to standard model of time sequences data to avoid preprocessing. Besides classical machine learning methods, such as support vector machines, we used kernel learning to improve accuracy of learned knowledge. Kernel learning, especially multiple kernel learning (MKL), allows automated model creation to describe complex data and performs feature selection. The approach is tested using several publicly available machine learning software tools and time series datasets and its good generalization properties are demonstrated.
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关键词
generalisation (artificial intelligence),learning (artificial intelligence),pattern classification,public domain software,time series,mkl,automated model creation,feature selection,generalization properties,learned knowledge accuracy improvement,multiple kernel learning,publicly available machine learning software tools,support vector machines,time sequence data classification,time series datasets,learning kernels,machine learning,time sequences,learning artificial intelligence
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