Online Tensor-Based Learning for Multi-Way Data
This work addresses the need for incremental updates in tensor-based predictive models for structural health monitoring, representing an incremental improvement over existing online tensor analysis methods.
The paper tackled the problem of online analysis of multi-way tensor data with evolving distributions by proposing NeSGD for efficient CP decomposition and a criteria for updating predictive models, resulting in significantly improved classification error rates and high predictive accuracy in structural health monitoring case studies.
The online analysis of multi-way data stored in a tensor $\mathcal{X} \in \mathbb{R} ^{I_1 \times \dots \times I_N} $ has become an essential tool for capturing the underlying structures and extracting the sensitive features which can be used to learn a predictive model. However, data distributions often evolve with time and a current predictive model may not be sufficiently representative in the future. Therefore, incrementally updating the tensor-based features and model coefficients are required in such situations. A new efficient tensor-based feature extraction, named NeSGD, is proposed for online $CANDECOMP/PARAFAC$ (CP) decomposition. According to the new features obtained from the resultant matrices of NeSGD, a new criteria is triggered for the updated process of the online predictive model. Experimental evaluation in the field of structural health monitoring using laboratory-based and real-life structural datasets show that our methods provide more accurate results compared with existing online tensor analysis and model learning. The results showed that the proposed methods significantly improved the classification error rates, were able to assimilate the changes in the positive data distribution over time, and maintained a high predictive accuracy in all case studies.