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Exploring the Role of Task Transferability in Large-Scale Multi-Task Learning

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arxiv 2204.11117 v2 pith:4URWH7D2 submitted 2022-04-23 cs.CL cs.LG

Exploring the Role of Task Transferability in Large-Scale Multi-Task Learning

classification cs.CL cs.LG
keywords tasksmulti-tasklearningtasktrainingdownstreamlarge-scalenumber
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent work has found that multi-task training with a large number of diverse tasks can uniformly improve downstream performance on unseen target tasks. In contrast, literature on task transferability has established that the choice of intermediate tasks can heavily affect downstream task performance. In this work, we aim to disentangle the effect of scale and relatedness of tasks in multi-task representation learning. We find that, on average, increasing the scale of multi-task learning, in terms of the number of tasks, indeed results in better learned representations than smaller multi-task setups. However, if the target tasks are known ahead of time, then training on a smaller set of related tasks is competitive to the large-scale multi-task training at a reduced computational cost.

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