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Batch recommendation of experts to questions in community-based question-answering with a sailfish optimizer

机译:专家的批量推荐在以社区为基础的问答与旗鱼优化器的问题

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To facilitate question-answering in community-based question-answering (CQA), this paper proposes an approach for the batch recommendation of answerers by optimizing the utilization of expert resources. First, questions and experts are modeled with a biterm topic model (BTM). Next, the answered questions are clustered based on a novel discrete sailfish optimizer (SFO) with a genetic algorithm (GA), and the topic distribution is obtained. Then, experts are ranked in each cluster based on activeness, recency, and professionalism. Considering the limited number of experts, to ensure that core questions are answered and to avoid repeated answers to similar or duplicate questions, coverage, answerability and the consumption of expert resources are taken as objects to be optimized. This scenario is formulated as a multiobjective optimization problem and is addressed by the proposed novel binary multiobjective SFO (MOSFO) with a GA. The solution of the model includes not only the selected questions to be answered but also the matching between the questions and experts. The proposed approach is evaluated with a real dataset, and the experimental results show that the proposed approach is feasible and has superior performance to the question-priority method, the expert-priority method and other swarm intelligence (SI) methods. This study is the first to make batch recommendations, providing a new idea and extending research on expert recommendation. Additionally, the approach can be used practically to improve the satisfaction of the knowledge needs of users by improving the answerability of high-coverage questions.
机译:为了促进基于社区的问答(CQA)中的问答(CQA),本文通过优化专家资源的利用,提出了一种批量推荐批评人员的方法。首先,问题和专家用沥青主题模型(BTM)进行建模。接下来,基于具有遗传算法(GA)的新型离散帆船优化器(SFO)来聚集回答的问题,并且获得了主题分布。然后,专家根据活动,新近度和专业性,在每个集群中排名。考虑到有限数量的专家,以确保回答核心问题,并避免对类似或重复的问题的重复答案,覆盖,可应答性和专家资源的消费被视为要优化的对象。这种情况被制定为多目标优化问题,并由所提出的小型二元多目标SFO(MOSFO)与GA有关。该模型的解决方案不仅包括要回答的所选问题,而且还包括问题和专家之间的匹配。通过实际数据集评估所提出的方法,实验结果表明,该方法是可行的,并且对问题优先方法,专家优先方法和其他群智能(SI)方法具有卓越的性能。本研究是第一个制作批量建议,为专家推荐提供新的想法和扩展研究。此外,该方法几乎可以通过改善高覆盖问题的应答性来改善用户的知识需求的满足。

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