Due to people’s increasing dependence on social networks,it is essential to develop a consensus model considering not only their own factors but also the interaction between people.Both external trust relationship am...Due to people’s increasing dependence on social networks,it is essential to develop a consensus model considering not only their own factors but also the interaction between people.Both external trust relationship among experts and the internal reliability of experts are important factors in decision-making.This paper focuses on improving the scientificity and effectiveness of decision-making and presents a consensus model combining trust relationship among experts and expert reliability in social network group decision-making(SN-GDM).A concept named matching degree is proposed to measure expert reliability.Meanwhile,linguistic information is applied to manage the imprecise and vague information.Matching degree is expressed by a 2-tuple linguistic model,and experts’preferences are measured by a probabilistic linguistic term set(PLTS).Subsequently,a hybrid weight is explored to weigh experts’importance in a group.Then a consensus measure is introduced and a feedback mechanism is developed to produce some personalized recommendations with higher group consensus.Finally,a comparative example is provided to prove the scientificity and effectiveness of the proposed consensus model.展开更多
基于事件社会网络(event-based social network,简称EBSN)是一种结合了线上网络和线下网络的新型社会网络,近年来得到了越来越多的关注,已有许多国内外重要研究机构的研究者对其进行研究并取得了许多研究成果.在EBSN推荐系统中,一个重...基于事件社会网络(event-based social network,简称EBSN)是一种结合了线上网络和线下网络的新型社会网络,近年来得到了越来越多的关注,已有许多国内外重要研究机构的研究者对其进行研究并取得了许多研究成果.在EBSN推荐系统中,一个重要的任务就是设计出更好、更合理的推荐算法以提高推荐精确度和用户满意度,其关键在于充分结合EBSN中的各种上下文信息去挖掘用户、事件和群组的隐藏特征.主要对EBSN推荐系统的最新研究进展进行综述.首先,概述EBSN的定义、结构、属性和特征,介绍EBSN推荐系统的基本框架,并分析EBSN推荐系统与其他推荐系统的区别;其次,对EBSN推荐系统的主要推荐方法和推荐内容进行归纳、总结和对比分析;最后,分析EBSN推荐系统的研究难点及其发展趋势,并给出总结.展开更多
基金the National Natural Science Foundation of China(71871121).
文摘Due to people’s increasing dependence on social networks,it is essential to develop a consensus model considering not only their own factors but also the interaction between people.Both external trust relationship among experts and the internal reliability of experts are important factors in decision-making.This paper focuses on improving the scientificity and effectiveness of decision-making and presents a consensus model combining trust relationship among experts and expert reliability in social network group decision-making(SN-GDM).A concept named matching degree is proposed to measure expert reliability.Meanwhile,linguistic information is applied to manage the imprecise and vague information.Matching degree is expressed by a 2-tuple linguistic model,and experts’preferences are measured by a probabilistic linguistic term set(PLTS).Subsequently,a hybrid weight is explored to weigh experts’importance in a group.Then a consensus measure is introduced and a feedback mechanism is developed to produce some personalized recommendations with higher group consensus.Finally,a comparative example is provided to prove the scientificity and effectiveness of the proposed consensus model.
文摘基于事件社会网络(event-based social network,简称EBSN)是一种结合了线上网络和线下网络的新型社会网络,近年来得到了越来越多的关注,已有许多国内外重要研究机构的研究者对其进行研究并取得了许多研究成果.在EBSN推荐系统中,一个重要的任务就是设计出更好、更合理的推荐算法以提高推荐精确度和用户满意度,其关键在于充分结合EBSN中的各种上下文信息去挖掘用户、事件和群组的隐藏特征.主要对EBSN推荐系统的最新研究进展进行综述.首先,概述EBSN的定义、结构、属性和特征,介绍EBSN推荐系统的基本框架,并分析EBSN推荐系统与其他推荐系统的区别;其次,对EBSN推荐系统的主要推荐方法和推荐内容进行归纳、总结和对比分析;最后,分析EBSN推荐系统的研究难点及其发展趋势,并给出总结.