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Task recommendation in crowdsourcing systems: A bibliometric analysis

机译:众包系统中的任务建议:学者计量分析

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Existing studies on task recommendation in crowdsourcing systems provide additional insights into the field from their perspectives, methodologies, frameworks, and disciplines, resulting in a highly productive but unorganized knowledge domain. This paper is motivated to exploit bibliometric techniques to derive insights that exceed the boundaries of individual systems and identify the potentially transformative changes from 268 published articles. The explicit features (i.e., affiliation, author, citation, and keywords) and implicit information (i.e., topic distribution, potential structure, hidden insights, and evolutionary trend) of domain literature are discovered by network analysis, cluster analysis, and timeline analysis. We summarize the generic framework based on knowledge domain structure and highlight the position of knowledge source, especially textual information, in task recommendation models. Drawing on the Shneider four-stage model, the temporal evolution trend is graphically illustrated to emphasize avenues for future research. Our study conveys accumulated and synthesized specialty knowledge to researchers or newcomers to help them design, initiate, implement, manage, and evaluate recommender systems in crowdsourcing.
机译:众包系统中的任务建议的现有研究从他们的角度来看,从他们的角度来看,方法,方法,框架和学科提供了额外的见解,从而产生了高效但无组织的知识领域。本文有动力利用了派对的生学金技术来获得超出各个系统的边界的洞察力,并确定从268个公布的文章中识别可能的变革变化。通过网络分析,聚类分析和时间线分析发现了域文学的显式特征(即,附属,作者,引文和关键字)和隐含信息(即,主题分布,潜在结构,隐藏洞察力和进化趋势)。我们总结了基于知识域结构的通用框架,并突出了知识源,尤其是文本信息的位置,在任务推荐模型中。绘画在Shneider四阶段模型中,以图形方式说明了时间演进趋势,以强调未来研究的途径。我们的研究将积累和综合专业知识传达给研究人员或新人,以帮助他们在众包中设计,发起,实施,管理和评估推荐系统。

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