Convy, Ian and Whaley, K Birgitta (2022) Interaction decompositions for tensor network regression. Machine Learning: Science and Technology, 3 (4). 045027. ISSN 2632-2153
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Abstract
It is well known that tensor network regression models operate on an exponentially large feature space, but questions remain as to how effectively they are able to utilize this space. Using a polynomial featurization, we propose an interaction decomposition as a tool that can assess the relative importance of different regressors as a function of their polynomial degree. We apply this decomposition to tensor ring and tree tensor network models trained on the MNIST and Fashion MNIST datasets, and find that up to 75% of interaction degrees are contributing meaningfully to these models. We also introduce a new type of tensor network model that is explicitly trained on only a small subset of interaction degrees, and find that these models are able to match or even outperform the full models using only a fraction of the exponential feature space. This suggests that standard tensor network models utilize their polynomial regressors in an inefficient manner, with the lower degree terms being vastly under-utilized.
Item Type: | Article |
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Subjects: | OA STM Library > Multidisciplinary |
Depositing User: | Unnamed user with email support@oastmlibrary.com |
Date Deposited: | 02 Sep 2024 12:32 |
Last Modified: | 02 Sep 2024 12:32 |
URI: | http://geographical.openscholararchive.com/id/eprint/1291 |