A probabilistic framework for learning task relationships in multi-task learning

@inproceedings{Yeung2011APF,
  title={A probabilistic framework for learning task relationships in multi-task learning},
  author={Dit-Yan Yeung and Y. Zhang},
  year={2011}
}
For many real-world machine learning applications, labeled data is costly because the data labeling process is laborious and time consuming. As a consequence, only limited labeled data is available for model training, leading to the so-called labeled data deficiency problem. In the machine learning research community, several directions have been pursued to address this problem. Among these efforts, a promising direction is multi-task learning which is a learning paradigm that seeks to boost… Expand
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