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Low-Rank Subspace Override for Unsupervised Domain Adaptation

机译:低秩子空间覆盖无监督域适应

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Current supervised learning models cannot generalize well across domain boundaries, which is a known problem in many applications, such as robotics or visual classification. Domain adaptation methods are used to improve these generalization properties. However, these techniques suffer either from being restricted to a particular task, such as visual adaptation, require a lot of computational time and data, which is not always guaranteed, have complex parameterization, or expensive optimization procedures. In this work, we present an approach that requires only a well-chosen snapshot of data to find a single domain invariant subspace. The subspace is calculated in closed form and overrides domain structures, which makes it fast and stable in parameterization. By employing low-rank techniques, we emphasize on descriptive characteristics of data. The presented idea is evaluated on various domain adaptation tasks such as text and image classification against state of the art domain adaptation approaches and achieves remarkable performance across all tasks.
机译:当前监督的学习模型无法概括域边界井,这是许多应用中的已知问题,例如机器人或可视化分类。域适配方法用于改善这些泛化属性。然而,这些技术遭受限于限制为特定任务,例如视觉适应,需要大量的计算时间和数据,这并不总是保证,具有复杂的参数化或昂贵的优化过程。在这项工作中,我们提出了一种需要只需要一个选择的数据快照来查找单个域不变子空间。子空间以封闭形式计算并覆盖域结构,使其在参数化中快速稳定。通过采用低级技术,我们强调数据的描述性特征。呈现的想法是对各种域的适应任务评估,例如用于艺术域适应方法的文本和图像分类,并在所有任务中实现了显着的性能。

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