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Adaptive conformal semi-supervised vector quantization for dissimilarity data

机译:相异数据的自适应共形半监督矢量量化

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摘要

Existing semi-supervised learning algorithms focus on vectorial data given in Euclidean space. But many real life data are non-metric, given as (dis-)similarities which are not widely addressed. We propose a conformal prototype-based classifier for dissimilarity data to semi-supervised tasks. A 'secure region' of unlabeled data is identified to improve the trained model based on labeled data and to adapt the model complexity. The new approach (ⅰ) can directly deal with arbitrary symmetric dissimilarity matrices, (ⅱ) offers intuitive classification by sparse prototypes, (ⅲ) adapts the model complexity. Experiments confirm the effectiveness of our approach in comparison to state-of-the-art methods.
机译:现有的半监督学习算法专注于在欧几里得空间中给出的矢量数据。但是许多现实生活中的数据都是非度量的,因为(非)相似性并未得到广泛解决。我们针对半监督任务的相异性数据提出了一种基于共形原型的分类器。识别未标记数据的“安全区域”以基于标记数据改善训练模型并适应模型复杂性。新方法(ⅰ)可以直接处理任意对称的不相似矩阵,(ⅱ)通过稀疏原型提供直观的分类,(ⅲ)适应模型的复杂性。实验证实了我们的方法与最新方法相比的有效性。

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