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CosMo: Conditional SEQ2SEQ-based Mixture Model for Zero-Shot Commonsense Question Answering

机译:COSMO:条件SEQ2SEQ的混合模型零击致义阵列问答

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Commonsense reasoning refers to the ability of evaluating a social situation and acting accordingly. Identification of the implicit causes and effects of a social context is the driving capability which can enable machines to perform commonsense reasoning. The dynamic world of social interactions requires context-dependent on-demand systems to infer such underlying information. However, current approaches in this realm lack the ability to perform commonsense reasoning upon facing an unseen situation, mostly due to incapability of identifying a diverse range of implicit social relations. Hence they fail to estimate the correct reasoning path. In this paper, we present Conditional SEQ2SEQ-based Mixture model (COSMO), which provides us withlhe capabilities of dynamic and diverse content generation. We use COSMO to generate context-dependent clauses, which form a dynamic Knowledge Graph (KG) on-the-fly for commonsense reasoning. To show the adaptability of our model to context-dependant knowledge generation, we address the task of zero-shot commonsense question answering. The empirical results indicate an improvement of up to +5.2% over the state-of-the-art models.
机译:致辞称赞是指评估社会局面和相应行动的能力。识别社会上下文的隐含原因和效果是驾驶能力,可以使机器能够执行致辞推理。社交交互的动态世界需要上下文的按需系统来推断出这样的基础信息。然而,在这个领域的目前的方法缺乏在面对不间断的情况下进行勤义推理的能力,主要是由于无法识别不同范围的隐含社会关系。因此,他们未能估计正确的推理路径。在本文中,我们呈现有条件的SEQ2Seq的混合物模型(COSMO),为我们提供了动态和多样化的内容生成的能力。我们使用COSMO生成上下文相关的条款,该条款形成动态知识图(KG),以便在即致动推理。为了表明我们模型的适应性依赖于上下文的知识生成,我们解决了零击酷义章问题的任务。经验结果表明,在最先进的模型上提高了最高+ 5.2%。

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