首页> 外文会议>1st EMNLP workshop blackboxNLP: analyzing and interpreting neural networks for NLP 2018 >How much should you ask? On the question structure in QA systems.
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How much should you ask? On the question structure in QA systems.

机译:你应该问多少?关于质量保证体系中的问题结构。

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Datasets that boosted state-of-the-art solutions for Question Answering (QA) systems prove that it is possible to ask questions in natural language manner. However, users are still used to query-like systems where they type in keywords to search for answer. In this study we validate which parts of questions are essential for obtaining valid answer. In order to conclude that, we take advantage of LIME - a framework that explains prediction by local approximation. We find that grammar and natural language is disregarded by QA. State-of-the-art model can answer properly even if 'asked' only with a few words with high coefficients calculated with LIME. According to our knowledge, it is the first time that QA model is being explained by LIME.
机译:增强了问答系统(QA)系统最新解决方案的数据集证明,有可能以自然语言方式提问。但是,用户仍然习惯于使用类似查询的系统,他们在其中键入关键字来搜索答案。在这项研究中,我们验证问题的哪些部分对于获得有效答案至关重要。为了得出结论,我们利用LIME的优势-通过局部逼近解释预测的框架。我们发现语法和自然语言被质量检查忽略。即使仅用LIME计算出的具有高系数的几个单词“询问”,最新的模型也可以正确回答。据我们了解,这是LIME首次解释QA模型。

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