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Learning Analogy-Preserving Sentence Embeddings for Answer Selection

机译:学习保留类比的句子嵌入以进行答案选择

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Answer selection aims at identifying the correct answer for a given question from a set of potentially correct answers. Contrary to previous works, which typically focus on the semantic similarity between a question and its answer, our hypothesis is that question-answer pairs are often in analogical relation to each other. Using analogical inference as our use case, we propose a framework and a neural network architecture for learning dedicated sentence embeddings that preserve analogical properties in the semantic space. We evaluate the proposed method on benchmark datasets for answer selection and demonstrate that our sentence embeddings indeed capture analogical properties better than conventional embeddings, and that analogy-based question answering outperforms a comparable similarity-based technique.
机译:答案选择旨在从一组潜在的正确答案中识别出给定问题的正确答案。与以前的工作(通常侧重于问题及其答案之间的语义相似性)相反,我们的假设是,问题-答案对之间通常是类比关系。使用类比推理作为我们的用例,我们提出了一个框架和一个神经网络体系结构,用于学习在语义空间中保留类比属性的专用句子嵌入。我们在基准数据集上评估提出的方法以进行答案选择,并证明我们的句子嵌入确实比常规嵌入更好地捕获了类比属性,并且基于类比的问题解答优于可比的基于相似性的技术。

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