A basic condition for efficient transfer learning is the similarity between a target model and source models. In practice, however, the similarity condition is difficult to meet or is even violated. Instead of the similarity condition, a brand-new strategy, linear correlation-ratio, is introduced in this paper to build an accurate relationship between the models. Such a correlation-ratio can be easily estimated by historical data or a part of sample. Then, a correlation-ratio transfer learning likelihood is established based on the correlation-ratio combination. On the practical side, the new framework is applied to some application scenarios, especially the areas of data streams and medical studies. Methodologically, some techniques are suggested for transferring the information from simple source models to a relatively complex target model. Theoretically, some favorable properties, including the global convergence rate, are achieved, even for the case where the source models are not similar to the target model. All in all, it can be seen from the theories and experimental results that the inference on the target model is significantly improved by the information from similar or dissimilar source models. In other words, a variational Stein's paradox is illustrated in the context of transfer learning.
翻译:高效转让学习的基本条件是目标模型和源模型之间的相似性。但在实践中,相似性条件难以满足,甚至被违反。本文中采用了一种崭新的战略,即线性对应关系,而不是相似性条件,以建立模型之间的准确关系。这种关联性参数可以很容易地通过历史数据或一部分样本来估计。然后,根据关联性参数和源模型的组合,确定一个相对性差转移学习的可能性。在实际方面,新框架适用于一些应用情景,特别是数据流和医学研究领域。在方法上,建议采用一些技术,将信息从简单的源模型转移到相对复杂的目标模型。理论上讲,一些有利的特性,包括全球趋同率,即使源模型与目标模型并不相似。从理论和实验结果看,目标模型的推论大大改进了目标模型的推论,来自类似或不同来源模型的信息。换言之,在转移学习的背景下,说明了变异 Stein的悖论。