Better Together: Using Multi-task Learning to Improve Feature Selection within Structural Datasets

Bee, S. C., Papatheou, E., Haywood-Alexander, M, Mills, R. S., Bull, L. A., Worden, K., Dervilis, N.

arXiv.org Artificial Intelligence 

There have been recent efforts to move to population-based structural health monitoring (PBSHM) systems. One area of PBSHM which has been recognised for potential development is the use of multi-task learning (MTL); algorithms which differ from traditional independent learning algorithms. Presented here is the use of the MTL, ''Joint Feature Selection with LASSO'', to provide automatic feature selection for a structural dataset. The classification task is to differentiate between the port and starboard side of a tailplane, for samples from two aircraft of the same model. The independent learner produced perfect F1 scores but had poor engineering insight; whereas the MTL results were interpretable, highlighting structural differences as opposed to differences in experimental set-up.

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