PRATO:一个基于自动分类的评审员提案分配系统

Q2 Computer Science
Basem Y. Alkazemi
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The list of proposal-reviewer assignments generated by the system was sent to human experts for voting and subsequently to make final assignments accordingly. With expert votes and final decisions as evaluation criteria, data system-expert agreements (in terms of “accept” or “reject”) were collected and analyzed by tallying PRATO: An Automated Reviewers-Proposals Assignment System 384 frequencies and calculating rejection/acceptance ratios to assess the system’s performance. Contribution This work helped the Deanship of Scientific Research (DSR), a funding agency at Umm Al-Qura University, in managing the process of reviewing proposals submitted for funding. We believe the work can also benefit any organizations or conferences to automate the assignment of papers to the most appropriate reviewers. Findings Our developed prototype, PRATO, showed a considerable impact on the entire process of reviewing proposals at DSR. 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引用次数: 3

摘要

目的/目的本文报告了我们实现的一个原型系统,即PRATO(提案评审员基于自动分类的组织),用于根据分类轨迹和评审员的研究兴趣档案与提案关键词的部分匹配,自动将提案分配给评审员。背景为提案指派评审员的过程往往是一项复杂的任务,因为它涉及到根据不同的标准检查给定提案和评审员之间的匹配情况。如果一个人试图自动化这个过程,情况会变得更糟,尤其是如果审稿人与手头的论文领域部分匹配。因此,需要一种新的受控方法来促进匹配过程。方法论提案和评审员被组织成分类轨道,由与大学学院和系对应的层次研究领域树定义。此外,评审员在注册时创建他们的研究兴趣(关键词)档案。初始分配基于提案和评审人分类子轨道的匹配。如果提案和评审员属于不同的类别(子轨道),则根据提案内容与评审员的研究兴趣的部分匹配进行分配。Jaccard相似系数得分是根据提案关键词和评审员的研究兴趣档案计算的,并选择得分最高的评审员。评估2017-2018年资助周期,该系统用于实现乌姆库拉大学提案审查员分配流程的自动化。系统生成的提案审查员分配名单已发送给人类专家进行投票,随后进行相应的最终分配。以专家投票和最终决定作为评估标准,通过统计PRATO:自动审查人提案分配系统384频率并计算拒绝/接受率来评估系统性能,收集和分析数据系统专家协议(以“接受”或“拒绝”为术语)。贡献这项工作帮助乌姆库拉大学的资助机构科学研究院(DSR)管理审查提交资助的提案的过程。我们相信,这项工作也有利于任何组织或会议将论文自动分配给最合适的审稿人。调查结果我们开发的原型PRATO对DSR审查提案的整个过程产生了相当大的影响。它自动将提案分配给评审员,总体正确分配率为56.7%。这表明PRATO在其发展的早期阶段表现相当不错。对从业者的建议对于资助机构和出版商来说,自动化审查过程以及时获得更好的审查质量是很重要的。对研究人员的建议这项工作强调了一种新的方法,以自动的方式处理提案审查员的任务。可能需要对不同类别进行更多的评估,特别是对部分匹配的候选人。对社会的影响关于影响自动提案审查系统实施的因素的新方法和知识将有助于资助机构和出版商提高其内部流程的质量。未来研究在未来,我们计划检查PRATO在不同分类方案上的性能,其中专业领域可以用图而不是树来表示。通过图形表示,评审员的选择范围可以扩大到包括更通用的专业领域。此外,我们将尝试记录拒绝的原因,以准确识别拒绝是由于分配不当还是其他原因。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PRATO: An Automated Taxonomy-Based Reviewer-Proposal Assignment System
Aim/Purpose This paper reports our implementation of a prototype system, namely PRATO (Proposals Reviewers Automated Taxonomy-based Organization), for automatic assignment of proposals to reviewers based on categorized tracks and partial matching of reviewers’ profiles of research interests against proposal keywords. Background The process of assigning reviewers to proposals tends to be a complicated task as it involves inspecting the matching between a given proposal and a reviewer based on different criteria. The situation becomes worse if one tries to automate this process, especially if a reviewer partially matches the domain of the paper at hand. Hence, a new controlled approach is required to facilitate the matching process. Methodology Proposals and reviewers are organized into categorized tracks as defined by a tree of hierarchical research domains which correspond to the university’s colleges and departments. In addition, reviewers create their profiles of research interests (keywords) at the time of registration. Initial assignment is based on the matching of categorized sub-tracks of proposal and reviewer. Where the proposal and a reviewer fall under different categories (sub-tracks), assignment is done based on partial matching of proposal content against reviewers’ research interests. Jaccard similarity coefficient scores are calculated of proposal keywords and reviewers’ profiles of research interest, and the reviewer with highest score is chosen. Evaluation The system was used to automate the process of proposal-reviewer assignment at the Umm Al-Qura University during the 2017-2018 funding cycle. The list of proposal-reviewer assignments generated by the system was sent to human experts for voting and subsequently to make final assignments accordingly. With expert votes and final decisions as evaluation criteria, data system-expert agreements (in terms of “accept” or “reject”) were collected and analyzed by tallying PRATO: An Automated Reviewers-Proposals Assignment System 384 frequencies and calculating rejection/acceptance ratios to assess the system’s performance. Contribution This work helped the Deanship of Scientific Research (DSR), a funding agency at Umm Al-Qura University, in managing the process of reviewing proposals submitted for funding. We believe the work can also benefit any organizations or conferences to automate the assignment of papers to the most appropriate reviewers. Findings Our developed prototype, PRATO, showed a considerable impact on the entire process of reviewing proposals at DSR. It automated the assignment of proposals to reviewers and resulted in 56.7% correct assignments overall. This indicates that PRATO performed considerably well at this early stage of its development. Recommendation for Practitioners It is important for funding agencies and publishers to automate reviewing process to obtain better reviewing quality in a timely manner. Recommendations for Researchers This work highlighted a new methodology to tackle the proposal-reviewer assignment task in an automated manner. More evaluation might be needed with consideration of different categories, especially for partially matched candidates. Impact on Society The new methodology and knowledge about factors influencing the implementation of automated proposal-reviewing systems will help funding agencies and publishers to improve the quality of their internal processes. Future Research In the future, we plan to examine PRATO’s performance on different classification schemes where specialty areas can be represented in graphs rather than trees. With graph representation, the scope for reviewer selection can be widened to include more general fields of specialty. Moreover, we will try to record the reasons for rejection to identify accurately whether the rejection was due to improper assignment or other reasons.
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
14
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