首页> 外文会议>Mexican International Conference on Artificial Intelligence(MICAI 2005); 20051114-18; Monterrey(MX) >Self-training and Co-training Applied to Spanish Named Entity Recognition
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Self-training and Co-training Applied to Spanish Named Entity Recognition

机译:自我训练和联合训练应用于西班牙命名实体识别

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The paper discusses the usage of unlabeled data for Spanish Named Entity Recognition. Two techniques have been used: self-training for detecting the entities in the text and co-training for classifying these already detected entities. We introduce a new co-training algorithm, which applies voting techniques in order to decide which unlabeled example should be added into the training set at each iteration. A proposal for improving the performance of the detected entities has been made. A brief comparative study with already existing co-training algorithms is demonstrated.
机译:本文讨论了西班牙西班牙语命名实体识别中未标记数据的用法。已经使用了两种技术:用于检测文本中实体的自我训练和用于对这些已经检测到的实体进行分类的共同训练。我们引入了一种新的协同训练算法,该算法采用投票技术,以便确定在每次迭代时应将哪些未标记的示例添加到训练集中。已经提出了用于改善所检测到的实体的性能的提议。与现有的协同训练算法进行了简短的比较研究。

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