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Story Link Detection Based on Event Model with Uneven SVM

机译:基于事件模型的不平衡支持向量机故事链接检测

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Topic Detection and Tracking refers to automatic techniques for locating topically related materials in streams of data. As a core of it, story link detection is to determine whether two stories are about the same topic. Up to now, many representation models have been used in story link detection. But few of them are specific to stories. This paper proposes an event model based on the characters of stories. This model is used for story link detection and evaluated on the TDT4 Chinese corpus. The experimental results indicate that the system using the event model achieves a better performance than that using the baseline model. Furthermore, it shows a larger improvement to the former, especially when using uneven SVM as the multi-similarity integration strategy.
机译:主题检测和跟踪是指用于在数据流中定位与主题相关的材料的自动技术。作为其核心,故事链接检测是确定两个故事是否与同一个主题有关。到目前为止,在故事链接检测中已经使用了许多表示模型。但是它们很少是故事所特有的。本文提出了一个基于故事特征的事件模型。该模型用于故事链接检测,并在TDT4中文语料库上进行评估。实验结果表明,使用事件模型的系统比使用基线模型的系统具有更好的性能。此外,它显示了对前者的更大改进,尤其是在使用不均匀支持向量机作为多相似度集成策略时。

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