A Comparison of Loss Weighting Strategies for Multi task Learning in Deep Neural Networks

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Abstract

With the success of deep learning in a wide variety of areas, many deep multi-Task learning (MTL) models have been proposed claiming improvements in performance obtained by sharing the learned structure across several related tasks. However, the dynamics of multi-Task learning in deep neural networks is still not well understood at either the theoretical or experimental level. In particular, the usefulness of different task pairs is not known a priori. Practically, this means that properly combining the losses of different tasks becomes a critical issue in multi-Task learning, as different methods may yield different results. In this paper, we benchmarked different multi-Task learning approaches using shared trunk with task specific branches architecture across three different MTL datasets. For the first dataset, i.e. Multi-MNIST (Modified National Institute of Standards and Technology database), we thoroughly tested several weighting strategies, including simply adding task-specific cost functions together, dynamic weight average (DWA) and uncertainty weighting methods each with various amounts of training data per-Task. We find that multi-Task learning typically does not improve performance for a user-defined combination of tasks. Further experiments evaluated on diverse tasks and network architectures on various datasets suggested that multi-Task learning requires careful selection of both task pairs and weighting strategies to equal or exceed the performance of single task learning.

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APA

Gong, T., Lee, T., Stephenson, C., Renduchintala, V., Padhy, S., Ndirango, A., … Elibol, O. H. (2019). A Comparison of Loss Weighting Strategies for Multi task Learning in Deep Neural Networks. IEEE Access, 7, 141627–141632. https://doi.org/10.1109/ACCESS.2019.2943604

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