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Classification-Based Strategies for Combining Multiple 5-W QuestionAnswering Systems

机译:基于分类的组合多个5 W质量系统的策略

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We describe and analyze inference strategies for combining outputs from multiple question answering systems each of which was developed independently. Specifically, we address the DARPA-funded GALE information distillation Year 3 task of finding answers to the 5-Wh questions (who, what, when, where, and why) for each given sentence. The approach we take revolves around determining the best system using discriminative learning. In particular, we train support vector machines with a set of novel features that encode systems' capabilities of returning as many correct answers as possible. We analyze two combination strategies: one combines multiple systems at the granularity of sentences, and the other at the granularity of individual fields. Our experimental results indicate that the proposed features and combination strategies were able to improve the overall performance by 22% to 36% relative to a random selection, 16% to 35% relative to a majority voting scheme, and 15% to 23% relative to the best individual system.
机译:我们描述并分析了组合来自多个问题应答系统的输出的推理策略,每个问题都是独立开发的。具体而言,我们解决了DARPA资助的巨大的大脑信息蒸馏,为每个给定句子的5-WH问题(世卫组织,何时,何地和原因)找到答案的任务。我们采取的方法围绕使用歧视性学习确定最佳系统。特别是,我们培养支持向量机,其中一组新颖的功能编码了系统的返回返回的能力尽可能多的正确答案。我们分析了两个组合策略:一个组合多个系统在句子的粒度下,另一个在各个领域的粒度。我们的实验结果表明,相对于随机选择,拟议的特征和组合策略能够将整体性能提高22%至36%,相对于大多数投票方案,16%至35%,相对于达到15%至23%最好的个体系统。

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