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Rectify Heterogeneous Models with Semantic Mapping

机译:用语义映射纠正异构模型

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摘要

On the way to the robust learner for real-world applications, there are still great challenges, including considering unknown environments with limited data. Learnware (Zhou; 2016) describes a novel perspective, and claims that learning models should have reusable and evolvable properties. We propose to Encode Meta InformaTion of features (EMIT), as the model specification for characterizing the changes, which grants the model evolvability to bridge heterogeneous feature spaces. Then, pre-trained models from related tasks can be Reused by our REctiFy via heterOgeneous pRedictor Mapping (REFORM}) framework. In summary, the pre-trained model is adapted to a new environment with different features, through model refining on only a small amount of training data in the current task. Experimental results over both synthetic and real-world tasks with diverse feature configurations validate the effectiveness and practical utility of the proposed framework.
机译:在面向实际应用程序的强大学习者的路上,仍然存在巨大的挑战,包括考虑数据有限的未知环境。 Learnware(Zhou; 2016)描述了一种新颖的观点,并声称学习模型应该具有可重用和可演化的属性。我们建议对特征的元信息(EMIT)进行编码,以作为表征变化的模型规范,从而赋予模型可扩展性以桥接异构特征空间。然后,我们的REctiFy可以通过异构pRedictor映射(REFORM})框架重用来自相关任务的预训练模型。总之,通过对当前任务中的少量训练数据进行模型细化,可以将预训练模型适应具有不同功能的新环境。具有各种功能配置的合成任务和实际任务的实验结果验证了所提出框架的有效性和实用性。

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