Tensor-train-bBased high-order dominant eigen decomposition for multimodal prediction services
Year of publication: |
2021
|
---|---|
Authors: | Liu, Huazhong ; Yang, Laurence Tianruo ; Ding, Jihong ; Guo, Yimu ; Yau, Stephen S. |
Published in: |
IEEE transactions on engineering management : EM. - New York, NY : IEEE, ISSN 0018-9391, ZDB-ID 160438-7. - Vol. 68.2021, 1, p. 197-211
|
Subject: | Accurate services | big data | high-order dominant eigen decomposition (HODED) | multivariate Markov model | multimodal prediction | scalable tensor computations | tensor-train (TT)-based Einstein product | Prognoseverfahren | Forecasting model | Theorie | Theory | Dekompositionsverfahren | Decomposition method | Big Data | Big data | Markov-Kette | Markov chain |
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