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Single-dataset Experts for Multi-dataset Question Answering
[article]
2021
Many datasets have been created for training reading comprehension models, and a natural question is whether we can combine them to build models that (1) perform better on all of the training datasets and (2) generalize and transfer better to new datasets. Prior work has addressed this goal by training one network simultaneously on multiple datasets, which works well on average but is prone to over- or under-fitting different sub-distributions and might transfer worse compared to source models
doi:10.48550/arxiv.2109.13880
fatcat:mwjstjgcyrc5poxeypwv3jmpfi