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Manifold Criterion Guided Transfer Learning via Intermediate Domain Generation

机译:流形准则通过中间域生成指导转移学习

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In many practical transfer learning scenarios, the feature distribution is different across the source and target domains (i.e., nonindependent identical distribution). Maximum mean discrepancy (MMD), as a domain discrepancy metric, has achieved promising performance in unsupervised domain adaptation (DA). We argue that the MMD-based DA methods ignore the data locality structure, which, up to some extent, would cause the negative transfer effect. The locality plays an important role in minimizing the nonlinear local domain discrepancy underlying the marginal distributions. For better exploiting the domain locality, a novel local generative discrepancy metric-based intermediate domain generation learning called Manifold Criterion guided Transfer Learning (MCTL) is proposed in this paper. The merits of the proposed MCTL are fourfold: 1) the concept of manifold criterion (MC) is first proposed as a measure validating the distribution matching across domains, and DA is achieved if the MC is satisfied; 2) the proposed MC can well guide the generation of the intermediate domain sharing similar distribution with the target domain, by minimizing the local domain discrepancy; 3) a global generative discrepancy metric is presented, such that both the global and local discrepancies can be effectively and positively reduced; and 4) a simplified version of MCTL called MCTL-S is presented under a perfect domain generation assumption for more generic learning scenario. Experiments on a number of benchmark visual transfer tasks demonstrate the superiority of the proposed MC guided generative transfer method, by comparing with the other state-of-the-art methods. The source code is available in https://github.com/wangshanshanCQU/MCTL.
机译:在许多实际的转移学习方案中,特征分布在源域和目标域之间是不同的(即非独立的相同分布)。最大平均差异(MMD)作为域差异度量标准,在无监督域自适应(DA)中取得了可观的性能。我们认为基于MMD的DA方法会忽略数据局部性结构,这在一定程度上会引起负面的转移效应。局部性在最小化边缘分布背后的非线性局部域差异方面起着重要作用。为了更好地利用域局部性,本文提出了一种新的基于局部生成差异度量的中间域生成学习方法,该方法称为流形准则指导转移学习(MCTL)。提出的MCTL的优点有四点:1)首先提出流形准则(MC)的概念,作为验证跨域分布匹配的度量,如果满足MC,则可以实现DA。 2)拟议的MC可以通过最小化本地域差异,很好地指导与目标域共享相似分布的中间域的生成; 3)提出了一个全球生成差异标准,以便可以有效,积极地减少全球和本地差异;和4)在更理想的域生成假设下提供了一个称为MCTL-S的MCTL简化版本,用于更通用的学习场景。通过与其他最新方法进行比较,在许多基准视觉转移任务上进行的实验证明了所提出的MC指导的生成转移方法的优越性。源代码可在https://github.com/wangshanshanCQU/MCTL中获得。

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