Protecting Big Data Privacy Using Randomized Tensor Network Decomposition and Dispersed Tensor Computation
Jenn-Bing Ong, Wee-Keong Ng, Ivan Tjuawinata, Chao Li, Jielin Yang,, Sai None Myne, Huaxiong Wang, Kwok-Yan Lam, C.-C. Jay Kuo

TL;DR
This paper introduces a novel approach using randomized tensor network decomposition to enhance big data privacy, enabling secure, distributed storage and computation with reduced complexity and improved privacy guarantees.
Contribution
It proposes a new randomized tensor network method for big data privacy preservation, leveraging non-uniqueness and dispersal properties for secure distributed computation.
Findings
Effective data anonymization demonstrated in experiments
Reduced computational and communication costs
Enhanced privacy through tensor randomization
Abstract
Data privacy is an important issue for organizations and enterprises to securely outsource data storage, sharing, and computation on clouds / fogs. However, data encryption is complicated in terms of the key management and distribution; existing secure computation techniques are expensive in terms of computational / communication cost and therefore do not scale to big data computation. Tensor network decomposition and distributed tensor computation have been widely used in signal processing and machine learning for dimensionality reduction and large-scale optimization. However, the potential of distributed tensor networks for big data privacy preservation have not been considered before, this motivates the current study. Our primary intuition is that tensor network representations are mathematically non-unique, unlinkable, and uninterpretable; tensor network representations naturally…
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Taxonomy
TopicsTensor decomposition and applications · Stochastic Gradient Optimization Techniques · Privacy-Preserving Technologies in Data
