计算机科学
负迁移
学习迁移
水准点(测量)
传输(计算)
航程(航空)
任务(项目管理)
人工智能
机器学习
理论计算机科学
算法
哲学
语言学
材料科学
管理
大地测量学
并行计算
第一语言
经济
复合材料
地理
作者
Zi-Rui Wang,Zihang Dai,Barnabás Póczos,Jaime Carbonell
标识
DOI:10.1109/cvpr.2019.01155
摘要
When labeled data is scarce for a specific target task, transfer learning often offers an effective solution by utilizing data from a related source task. However, when transferring knowledge from a less related source, it may inversely hurt the target performance, a phenomenon known as negative transfer. Despite its pervasiveness, negative transfer is usually described in an informal manner, lacking rigorous definition, careful analysis, or systematic treatment. This paper proposes a formal definition of negative transfer and analyzes three important aspects thereof. Stemming from this analysis, a novel technique is proposed to circumvent negative transfer by filtering out unrelated source data. Based on adversarial networks, the technique is highly generic and can be applied to a wide range of transfer learning algorithms. The proposed approach is evaluated on six state-of-the-art deep transfer methods via experiments on four benchmark datasets with varying levels of difficulty. Empirically, the proposed method consistently improves the performance of all baseline methods and largely avoids negative transfer, even when the source data is degenerate.
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