【摘 要】
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Tensors are used to collect data according to different "modes" or dimensions.Decomposing them is often used to extract intrinsic information hidden in this
【出 处】
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International Conference on the spectral theory of the tenso
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Tensors are used to collect data according to different "modes" or dimensions.Decomposing them is often used to extract intrinsic information hidden in this data.This problem appears in many domains such as signal processing,data analysis,complexity analysis,phylogenetic,...In such domains,the input data coming from measurements is known with some uncertainty.
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