GAN-based Data Mapping for Model Adaptation

Felipe Leno da Silva, R. Glatt, Raphael Cóbe, R. Vicente
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Abstract

Although Machine Learning algorithms are solving tasks of ever-increasing complexity, gathering data and building training sets remains an error prone, costly, and difficult problem. However, reusing knowledge from related previouslysolved tasks enables reducing the amount of data required to learn a new task. We here propose a method for learning a mapping model that maps data from a source task with labeled data to a related target task with only unlabeled data. We perform an empirical evaluation showing that our method achieves performance comparable to a model learned directly in the target task.
基于gan的模型自适应数据映射
尽管机器学习算法正在解决日益复杂的任务,但收集数据和构建训练集仍然是一个容易出错、成本高昂且困难的问题。然而,重用先前解决的相关任务中的知识可以减少学习新任务所需的数据量。我们在这里提出了一种学习映射模型的方法,该模型将数据从具有标记数据的源任务映射到仅具有未标记数据的相关目标任务。我们进行了实证评估,表明我们的方法达到了与直接在目标任务中学习的模型相当的性能。
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