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An Efficient Model for Finding and Ranking Related Questions in Community Question Answering Systems

机译:在社区问题应答系统中找到和排名相关问题的有效模型

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The task of finding- and ranking-related questions plays the most important role for any real-world Community Question Answering (cQA) systems. This paper proposes a new method to solve this problem by considering multi-views for measuring the similarities between the input questions and the question-answering pairs in the database. Our model will investigate various aspects for understanding questions. Beside the traditional features such as bag of n-grams, we will use more efficient aspects that include word embeddings and question categories. We will use a word representation model for generating word embeddings, a question classification module for determining the category for an input question. Then all these obtained features are combined into a machine learning-based framework for getting similarity existing question-answering pairs as well as for ranking these pairs. We tested our proposed approach on the dataset SemEval 2016 and the experiment shows obtained results with the Accuracy and MAP of 80.43% and 77.43%, respectively, which are the highest accuracies in comparison with previous studies.
机译:寻找和排名相关问题的任务对任何现实世界界面问题的回答(CQA)系统发挥着最重要的作用。本文通过考虑测量数据库中的输入问题与问题答案对之间的相似性来提出解决此问题的新方法。我们的模型将调查理解问题的各个方面。除了传统的特征,如袋子的N-GRAM,我们将使用更有效的方面,包括Word Embeddings和问题类别。我们将使用单词表示模型来生成Word Embeddings,一个问题分类模块,用于确定输入问题的类别。然后将所有这些所获得的功能组合成基于机器学习的框架,用于获得相似性现有的问答对以及排名这些对。我们在数据集2016年上测试了所提出的方法,实验表明,即80.43%和77.43%的准确性和地图分别获得了80.43%和77.43%的结果,这是与先前研究相比的最高准确性。

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