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ECNU at SemEval-2016 Task 3: Exploring Traditional Method and Deep Learning Method for Question Retrieval and Answer Ranking in Community Question Answering

机译:ECNU在Semeval-2016任务3:探索传统方法和答复的深度学习方法,在社区问题回答中的答案中排名

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This paper describes the system we submitted to the task 3 (Community Question Answering) in SemEval 2016, which contains three subtasks, i.e., Question-Comment Similarity (subtask A), Question-Question Similarity (subtask B), and Question-External Comment Similarity (subtask C). For subtask A, we employed three different methods to rank question-comment pair, i.e., supervised model using traditional features, Convolutional Neural Network and Long-Short Term Memory Network. For subtask B, we proposed two novel methods to improve semantic similarity estimation between question-question pair by integrating the rank information of question-comment pair. For subtask C, we implemented a two-step strategy to select out the similar questions and filter the unrelated comments with respect to the original question.
机译:本文介绍了我们在Semeval 2016中提交的系统,其中包含三个子任务,即问题 - 评论相似性(SubTask A),问题问题相似性(SubTask B)和问题外部评论相似性(子任务c)。对于SubTask A,我们使用三种不同的方法来排名问题评论对,即使用传统特征,卷积神经网络和长短期内存网络的监督模型。对于SubTask B,我们提出了两种新的方法来通过集成问题 - 注释对的等级信息来改进问题对对之间的语义相似性估计。对于SubTask C,我们实施了一项两步策略,以选择类似的问题,并在原始问题上过滤无关的评论。

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