Classification Model Learning for Bulletin Board Site Analysis Based on Unbalanced Textual Examples

S. Sakurai, R. Orihara
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引用次数: 1

Abstract

This paper proposes a method that acquires a more appropriate classification model for label extraction. The model can extract specific labels from articles included in bulletin board sites. The labels represent the contents of the articles and are used to characterize the articles. The method selects two kinds of important examples not including a specific label by using expressions related to the label. The method inductively acquires the classification model from the selected examples and examples including the label. The paper applies the method to articles collected from three bulletin board sites and verifies its effect through comparative experiments.
基于非平衡文本示例的公告板站点分析分类模型学习
本文提出了一种获取更合适的标签提取分类模型的方法。该模型可以从布告栏网站中包含的文章中提取特定的标签。标签表示物品的内容,并用于描述物品的特征。该方法通过使用与标签相关的表达式来选择两种不包含特定标签的重要示例。该方法从选择的样本和包含标签的样本中归纳地获得分类模型。本文将该方法应用于从三个公告栏网站收集的文章,并通过对比实验验证了其效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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