开发基于科学家和研究人员分类模型 (SRCM) 的机器学习和数据挖掘方法:一种 ISM-MICMAC 方法

IF 15.6 1区 管理学 Q1 BUSINESS Journal of Innovation & Knowledge Pub Date : 2024-07-01 DOI:10.1016/j.jik.2024.100516
Amin Y. Noaman , Ahmed A.A. Gad-Elrab , Abdullah M. Baabdullah
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引用次数: 0

摘要

本研究介绍了一种创新的自动化模型--科学家和研究人员分类模型(SRCM),该模型采用数据挖掘和机器学习技术对大学环境中的科学家和研究人员进行分类、排序和评估。SRCM 旨在营造一个有利于创造、创新和学术合作的环境,以增强大学的研究能力和竞争力。该模式的发展路线图如图 1 所示,包括四个关键阶段:准备、授权战略、大学认可的研究 ID 以及评估和再提升。SRCM 的实施分为三个层次:输入、数据挖掘和排序以及建议和评估。通过广泛的文献综述,确定了由专家进一步评估的十个主要程序。本研究利用解释性结构建模(ISM)分析了这些程序的相互作用和层次关系,揭示了 SRCM 框架内高度的相互依存性和复杂性。影响重大的关键程序包括确定输入数据源和收集大学科学家和研究人员的综合名单。尽管 SRCM 采用了创新方法,但它仍面临着一些挑战,如数据质量、伦理考虑以及对不同学术环境的适应性。数据收集方法的未来发展以及隐私问题的解决将提高 SRCM 在学术环境中的长期有效性。本研究有助于从理论上理解学术评价系统,并为旨在实施以数据为中心的复杂分类模型的大学提供实用见解。例如,通过实施以数据为中心的模型,大学可以客观地评估教师在晋升或终身教职方面的表现。这些模型可以根据发表记录、引用次数和教学评价进行综合评估,从而培养卓越文化并指导教师发展计划。尽管有其局限性,但 SRCM 已成为改变高等教育机构学术管理和评估流程的一种有前途的工具。
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Towards Scientists and Researchers Classification Model (SRCM)-based machine learning and data mining methods: An ISM-MICMAC approach

This study introduces an innovative automated model, the Scientists and Researchers Classification Model (SRCM), which employs data mining and machine-learning techniques to classify, rank, and evaluate scientists and researchers in university settings. The SRCM is designed to foster an environment conducive to creativity, innovation, and collaboration among academics to augment universities’ research capabilities and competitiveness. The model's development roadmap, depicted in Figure 1, comprises four pivotal stages: preparation, empowerment strategies, university-recognised research ID, and evaluation and re-enhancement. The SRCM implementation is structured across three layers: input, data mining and ranking, and recommendations and assessments. An extensive literature review identifies ten principal procedures further evaluated by experts. This study utilises Interpretive Structural Modelling (ISM) to analyse these procedures’ interactions and hierarchical relationships, revealing a high degree of interdependence and complexity within the SRCM framework. Key procedures with significant influence include determining the input data sources and collecting comprehensive lists of university scientists and researchers. Despite its innovative approach, SRCM faces challenges, such as data quality, ethical considerations, and adaptability to diverse academic contexts. Future developments in data collection methodologies, and addressing privacy issues, will enhance the long-term effectiveness of SRCM in academic environments. This study contributes to the theoretical understanding of academic evaluation systems and offers practical insights for universities that aim to implement sophisticated data-centric classification models. For example, by implementing data-centric models, universities can objectively assess faculty performance for promotion or tenure. These models enable comprehensive evaluations based on publication records, citation counts, and teaching evaluations, fostering a culture of excellence and guiding faculty development initiatives. Despite its limitations, SRCM has emerged as a promising tool for transforming higher education institutions’ academic management and evaluation processes.

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来源期刊
CiteScore
16.10
自引率
12.70%
发文量
118
审稿时长
37 days
期刊介绍: The Journal of Innovation and Knowledge (JIK) explores how innovation drives knowledge creation and vice versa, emphasizing that not all innovation leads to knowledge, but enduring innovation across diverse fields fosters theory and knowledge. JIK invites papers on innovations enhancing or generating knowledge, covering innovation processes, structures, outcomes, and behaviors at various levels. Articles in JIK examine knowledge-related changes promoting innovation for societal best practices. JIK serves as a platform for high-quality studies undergoing double-blind peer review, ensuring global dissemination to scholars, practitioners, and policymakers who recognize innovation and knowledge as economic drivers. It publishes theoretical articles, empirical studies, case studies, reviews, and other content, addressing current trends and emerging topics in innovation and knowledge. The journal welcomes suggestions for special issues and encourages articles to showcase contextual differences and lessons for a broad audience. In essence, JIK is an interdisciplinary journal dedicated to advancing theoretical and practical innovations and knowledge across multiple fields, including Economics, Business and Management, Engineering, Science, and Education.
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