Transfer Learning on Trial: A Case Study to Apply Existing Models to Heterogeneous Datasets

Lei Jin, Chongxiao Qu, Yongjin Zhang, Changjun Fan, Zhongke Zhu, Shuo Liu
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Abstract

Nowadays, transfer learning is getting more and more popular in both industry and academia. It enables people to benefit from current advanced AI technologies, which used to be only accessible to professional teams with the most powerful talents, software and hardware resources. It has been proved that transfer learning is the best available option to apply learned patterns for one problem to a different but related problem. But rare research has been done to evaluate the performance of employing an existing model to a less related problem. In this paper, we apply the pre-trained model in the computer vision field, VGG, to a radar dataset, Ionosphere, which is heterogeneous to the above vision data, and carry out extensive experiments. The results show that the classification accuracy is much lower than that in the early research work, and the application of transfer learning should depend on certain situations.
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迁移学习试验:将现有模型应用于异构数据集的案例研究
目前,迁移学习在工业界和学术界都受到越来越多的关注。它使人们能够从当前先进的人工智能技术中受益,而过去只有拥有最强大人才、软件和硬件资源的专业团队才能使用这些技术。事实证明,迁移学习是将一个问题的学习模式应用于另一个不同但相关的问题的最佳选择。但是,很少有研究对一个不太相关的问题使用现有模型的性能进行评估。本文将计算机视觉领域的预训练模型VGG应用于与上述视觉数据异构的雷达数据集电离层,并进行了大量实验。结果表明,分类精度远低于早期的研究工作,迁移学习的应用应该取决于特定的情况。
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