Efficient method for Tucker3 model selection

There has been a growing interest in Tucker3 analysis recently. One of the biggest challenges in Tucker3 analysis is the model selection problem: how to choose the number of components in each mode of an observed tensor. An alternative Tucker3 model selection approach is developed based on principal component analysis (PCA) for this problem. It is computationally efficient and straightforward to implement. Its effectiveness is demonstrated by experiment.

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