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An SVM-Based Framework for Long-Term Learning Systems

机译:基于SVM的长期学习系统框架

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In our research, we study the problem of learning a sequence of supervised tasks. This is a long-standing challenge in machine learning. Our work relies on transfer of knowledge between hypotheses learned with Support Vector Machines. Transfer occurs in two directions: forward and backward. We have proposed to selectively transfer forward support vector coefficients from previous hypotheses as upper-bounds on support vector coefficients to be learned on a target task. We also proposed a novel method for refining existing hypotheses by transferring backward knowledge from a target hypothesis learned recently. We have improved this method through a hypothesis refinement approach that refines whilst encouraging retention of knowledge. Our contribution is represented in a long-term learning framework for binary classification tasks received sequentially one at a time.
机译:在我们的研究中,我们研究了学习一系列监督任务的问题。 这是机器学习中的长期挑战。 我们的工作依赖于通过支持向量机学习的假设之间的知识转移。 转移发生在两个方向上:向前和向后。 我们提出从先前假设中选择性地转发支持向量系数作为在目标任务上学习的支持向量系数上的上限。 我们还提出了一种通过从最近学到的目标假设转移后向知识来精炼现有假设的新方法。 我们通过假设细化方法改进了这种方法,该方法在鼓励知识保留时改善。 我们的贡献是在一次接收的二进制分类任务的长期学习框架中表示。

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