论文标题
采矿形状的专业知识:一种基于卷积神经网络的新方法
Mining Shape of Expertise: A Novel Approach Based on Convolutional Neural Network
论文作者
论文摘要
专家发现解决了在用户查询主题上检索和排名有才华的人的任务。这是社区问题回答网络的实际问题。寻找知识渊博的人职位的招聘人员是专家发现系统中最重要的客户。除了员工专业知识外,雇用新员工的成本是组织的另一个重要问题。应对这种担忧的有效解决方案是聘请具有成本效益的T形专家。在这项研究中,我们为基于卷积神经网络的T形专家提出了一个新的深层模型。提出的模型试图通过从其相应文档中提取本地和位置不变的功能来匹配查询和用户。换句话说,它通过同时从用户的文档中学习模式来检测用户的专业知识形状。提出的模型包含两个并行的CNN,它们根据其相应的文档提取用户和查询的潜在向量,并将它们加入最后一层,以与用户匹配查询。大量堆栈溢出文档的实验表明,根据NDCG,MRR和ERR评估指标,提出的方法针对基准的有效性。
Expert finding addresses the task of retrieving and ranking talented people on the subject of user query. It is a practical issue in the Community Question Answering networks. Recruiters looking for knowledgeable people for their job positions are the most important clients of expert finding systems. In addition to employee expertise, the cost of hiring new staff is another significant concern for organizations. An efficient solution to cope with this concern is to hire T-shaped experts that are cost-effective. In this study, we have proposed a new deep model for T-shaped experts finding based on Convolutional Neural Networks. The proposed model tries to match queries and users by extracting local and position-invariant features from their corresponding documents. In other words, it detects users' shape of expertise by learning patterns from documents of users and queries simultaneously. The proposed model contains two parallel CNN's that extract latent vectors of users and queries based on their corresponding documents and join them together in the last layer to match queries with users. Experiments on a large subset of Stack Overflow documents indicate the effectiveness of the proposed method against baselines in terms of NDCG, MRR, and ERR evaluation metrics.