Streaming data recovery through Bayesian tensor train decomposition is explored in this paper. The proposed SPTT algorithm excels in recovering high-order, incomplete, and noisy streaming data. Experiments on synthetic and real-world datasets demonstrate the accuracy of the method compared to existing Bayesian tensor decomposition methods.
The paper discusses the challenges of processing streaming data with traditional tensor decomposition methods designed for static data. It introduces a novel approach based on TT decomposition and a Gaussian prior tailored for streaming data analysis. The SPTT algorithm aims to estimate the latent structure online based on current observed elements and recover missing elements using this structure.
By leveraging a probabilistic model of TT decomposition and applying the SVB method, SPTT provides an effective solution for streaming tensor train decomposition. The algorithm updates the posterior distribution of TT-cores and noise precision iteratively as new data batches are received.
Experimental results show that SPTT outperforms existing methods in terms of predictive performance on both synthetic and real-world datasets. The running relative error analysis demonstrates the effectiveness of SPTT over time as more data batches are processed.
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by Yunyu Huang,... في arxiv.org 02-29-2024
https://arxiv.org/pdf/2302.12148.pdfاستفسارات أعمق