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Property Inheritance for Subtensors in Tensor Train Decompositions

15 April 2025
HanQin Cai
Longxiu Huang
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Abstract

Tensor dimensionality reduction is one of the fundamental tools for modern data science. To address the high computational overhead, fiber-wise sampled subtensors that preserve the original tensor rank are often used in designing efficient and scalable tensor dimensionality reduction. However, the theory of property inheritance for subtensors is still underdevelopment, that is, how the essential properties of the original tensor will be passed to its subtensors. This paper theoretically studies the property inheritance of the two key tensor properties, namely incoherence and condition number, under the tensor train setting. We also show how tensor train rank is preserved through fiber-wise sampling. The key parameters introduced in theorems are numerically evaluated under various settings. The results show that the properties of interest can be well preserved to the subtensors formed via fiber-wise sampling. Overall, this paper provides several handy analytic tools for developing efficient tensor analysis

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@article{cai2025_2504.11396,
  title={ Property Inheritance for Subtensors in Tensor Train Decompositions },
  author={ HanQin Cai and Longxiu Huang },
  journal={arXiv preprint arXiv:2504.11396},
  year={ 2025 }
}
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