科学众筹项目的默认识别:一种犹豫模糊深度学习方法

IF 4.6 3区 管理学 Q1 BUSINESS IEEE Transactions on Engineering Management Pub Date : 2024-11-11 DOI:10.1109/TEM.2024.3495496
Wei Zhou;Shuke Wang;Jin Chen
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引用次数: 0

摘要

为了促进和实现创新,众筹项目已经成为吸引科研资金支持的一种新工具。然而,在众筹项目启动之前,只能披露项目的介绍和合同条款,然后进行合理的判断和评估,对于众筹项目做出明智的投资决策至关重要。为此,本文将概率犹豫模糊集(PHFS)引入到评价过程中,提出了概率犹豫递归神经网络(PH-RNN)。PH-RNN代表了犹豫深度学习领域的一种创新方法,使用PHFS全面阐明主观认知见解。随后,在违约识别过程中可以细致地考虑多种描述,从而有利于科学众筹项目对潜在违约的准确识别。在建模过程中,开发了PH-RNN的数据处理层,可以有效地整合概率犹豫模糊信息。此外,进一步设计了一个默认识别算法来解决深度学习与PHFS结合的复杂性。最后,通过科学众筹平台“实验”的实证研究,对所提出的模型和流程进行了验证。
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Default Identification of Scientific Crowdfunding Projects: A Hesitant Fuzzy Deep Learning Approach
To promote and achieve innovations, crowdfunding projects have emerged as a novel tool for attracting financial support for scientific research. However, before initiating a crowdfunding campaign, only the project's presentation and contractual terms can be disclosed, and then reasonable judgment and evaluation are important to make an informed investment decision regarding the crowdfunding project. To do this, this article introduces the probabilistic hesitant fuzzy set (PHFS) into the evaluation process and proposes the probabilistic hesitant recursive neural network (PH-RNN). The PH-RNN represents an innovative approach within the realm of hesitant deep learning, employing PHFS to comprehensively articulate subjective cognitive insights. Subsequently, diverse descriptions can be meticulously considered in the default identification process, thereby facilitating the precise identification of potential defaults for scientific crowdfunding projects. In this modeling process, a data processing layer for the PH-RNN is developed, which can effectively integrate the probabilistic hesitant fuzzy information. Moreover, a default recognition algorithm is further designed to address the complexities of deep learning in conjunction with the PHFS. Conclusively, an empirical study conducted on the scientific crowdfunding platform “Experiment” is presented to demonstrate the proposed models and process.
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来源期刊
IEEE Transactions on Engineering Management
IEEE Transactions on Engineering Management 管理科学-工程:工业
CiteScore
10.30
自引率
19.00%
发文量
604
审稿时长
5.3 months
期刊介绍: Management of technical functions such as research, development, and engineering in industry, government, university, and other settings. Emphasis is on studies carried on within an organization to help in decision making or policy formation for RD&E.
期刊最新文献
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