【摘 要】
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In this talk I will talk about the latest development of applications of tensor theory to probability and statistics. Those include the moment tensor of ran
【机 构】
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SuzhouUniversityofScienceandTechnology
【出 处】
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2016年张量和矩阵学术研讨会(International conference on Tensor, Matrix a
论文部分内容阅读
In this talk I will talk about the latest development of applications of tensor theory to probability and statistics. Those include the moment tensor of random variables, the probability transition tensor of a Markov chain, and the covariance tensor of some random variables. The covariance tensor can be regarded as a generalization of the covariance matrices, and can be used to investigate the multi-relationship among several variables.
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