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Semi-supervised learning in initially labeled non-stationary environments with gradual drift

机译:最初标记为非平稳环境且具有逐渐漂移的半监督学习

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Semi-supervised learning (SSL) in non-stationary environments has received relatively little attention in machine learning, despite a growing number of applications that can benefit from a properly configured SSL algorithm. Previous works in learning non-stationary data have analyzed such cases where both labeled and unlabeled instances are received at every time step and/or in regular intervals; however, to the best of our knowledge, no work has investigated the case where labeled instances are received only at the initial time step, followed by unlabeled instances provided in subsequent time steps. In this proof-of-concept work, we propose a new framework for learning in a non-stationary environment that provides only unlabeled data after the initial time step, to which we refer to as initially labeled environment. The proposed framework generates labels for previously unlabeled data at each time step to be combined with incoming unlabeled data - possibly from a drifting distribution - using a compacted polytope sample extraction algorithm. We have conducted two experiments to demonstrate the feasibility and reliability of the approach. This proof-of-concept is presented in two dimensions; however, the algorithm can be extended to higher dimensions with appropriate modifications.
机译:尽管有越来越多的应用程序可以从正确配置的SSL算法中受益,但非平稳环境中的半监督学习(SSL)在机器学习中的关注相对较少。以前学习非平稳数据的工作已经分析了这样的情况,即在每个时间步长和/或有规律的时间间隔都接收到带标签和不带标签的实例。但是,据我们所知,没有工作调查仅在初始时间步收到标记实例的情况,随后在后续时间步中提供未标记实例的情况。在此概念验证工作中,我们提出了一个用于在非平稳环境中学习的新框架,该框架在初始时间步长之后仅提供未标记的数据,我们将其称为初始标记的环境。所提出的框架在每个时间步骤为先前未标记的数据生成标签,并使用压缩的多边形样本提取算法将其与传入的未标记数据(可能来自漂移分布)组合在一起。我们进行了两个实验,以证明该方法的可行性和可靠性。此概念证明有两个维度:但是,可以通过适当的修改将算法扩展到更高的维度。

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