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Stochastic Gradient Descent for Incomplete Tensor Linear Systems

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arxiv 2510.07630 v2 pith:MMJVVPUA submitted 2025-10-08 math.NA cs.NA

Stochastic Gradient Descent for Incomplete Tensor Linear Systems

classification math.NA cs.NA
keywords datamissinggradientlinearmethodresultsstochasticsystems
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Solving large tensor linear systems poses significant challenges due to the high volume of data stored, and it only becomes more challenging when some of the data is missing. Recently, Ma et al. showed that this problem can be tackled using a stochastic gradient descent-based method, assuming that the missing data follows a uniform missing pattern. We adapt the technique by modifying the update direction, showing that the method is applicable under other missing data models. We prove convergence results and experimentally verify these results on synthetic data.

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