类定制的领域适应:用单个注释解锁每个客户特定的类

IF 13.7
Kaixin Chen;Huiying Chang;Mengqiu Xu;Ruoyi Du;Ming Wu;Zhanyu Ma;Chuang Zhang
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引用次数: 0

摘要

模型定制减轻了与在专门领域和定义良好的任务中使用通用模型相关的性能不足、资源浪费和隐私风险等问题。然而,以低注释成本实现定制仍然是一个挑战。现有的领域适应研究已经解决了所有定制类都出现在标记数据库中的情况,但是涉及客户特定类的场景仍然没有解决。因此,本文提出了一种新的类自定义域自适应(CCDA)方法,该方法只需要为每个客户特定的类添加一个额外的注释就可以解决后一种情况。CCDA采用经典的适应训练框架,包括两种创新的训练方法。首先,为了保证来自数据库的共享类知识和来自附加注释的私有类知识被传递和传播到目标域内的正确区域,我们设计了基于特征对齐的力学特性的部分特征对齐策略。其次,我们提出了软平衡抽样来解决标记数据中的长尾分布问题,防止模型过度拟合客户特定类别的标记样本。CCDA的有效性已经在48个领域自适应基准和两个现实世界自定义场景的模拟任务中得到验证,始终表现出优异的性能。此外,广泛的分析实验说明了两种创新技术的贡献。代码可在https://github.com/CHEN-kx/ClassCustomizedDA上获得
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Class-Customized Domain Adaptation: Unlock Each Customer-Specific Class With Single Annotation
Model customization mitigates the issues of inadequate performance, resource wastage, and privacy risks associated with using general-purpose models in specialized domains and well-defined tasks. However, achieving customization at a low annotation cost still poses a challenge. Existing domain adaptation research has addressed cases where all customized classes are present in the labeled database, yet scenarios involving customer-specific classes are still unresolved. Therefore, this paper proposes a novel Class-Customized Domain Adaptation (CCDA) method, addressing the latter scenario with just one additional annotation for each customer-specific class. CCDA adopts the classic adaptation training framework and comprises two innovative techniques. Firstly, to ensure the shared class knowledge from the database and the private class knowledge from additional annotations are transferred and propagated to the correct regions within the target domain, we design the partial-feature alignment strategy, based on the mechanical properties of feature alignment. Second, we propose soft-balanced sampling to tackle the long-tail distribution problem in labeled data, preventing the model from overfitting to the labeled samples of customer-specific classes. The effectiveness of CCDA has been validated across 48 tasks simulated on domain adaptation benchmarks and two real-world customization scenarios, consistently showing excellent performance. Additionally, extensive analytical experiments illustrate the contributions of two innovative techniques. The code is available at https://github.com/CHEN-kx/ClassCustomizedDA
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