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Active Framework by Sparsity Exploitation for Constructing a Training Set

机译:由稀疏剥削构建培训集的积极框架

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This paper addresses the problem of actively constructing a training set for the linear model with sparse structure. This problem usually occurs in the scenario that no nonlinear mappings give similar performance for large-scale learning data, but it has to train a linear model quickly. In this paper, an active framework is proposed to reduce the time expense further in constructing the training set. The training examples are iteratively selected by matching partial components and their weights given by the classifier in pairs, in order to exploit model's sparsity to precisely separate out more informative examples from others in a short time. The proposed framework is evaluated on a group of classification tasks, including the texts and images.
机译:本文解决了积极构建具有稀疏结构线性模型的训练的问题。此问题通常发生在方案中,没有非线性映射为大规模学习数据提供类似的性能,但它必须快速培训线性模型。在本文中,提出了一种积极的框架,以在构建训练集中进一步减少时间费用。通过成对匹配分类器给出的部分组分及其权重来迭代地选择训练示例,以便利用模型的稀疏性,以便在短时间内精确地将更多信息示例分开更多信息。所提出的框架是在一组分类任务中进行评估,包括文本和图像。

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