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A Multi-Criteria Strategic Evaluation Model to Determine the Suitability of Newly Rising Engineering Departments in Turkish Universities Based on the Data from the Year 2009 to 2020 Using the Econophysics Perspective 基于 2009 年至 2020 年的数据,利用经济物理学视角确定土耳其大学新崛起的工程系是否合适的多标准战略评估模型
IF 4.9 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-03-27 DOI: 10.1142/s0219622024500044
Yusuf Tansel İç

In the recent decade, engineering and technology have been developed rapidly, and new requirements are rising for engineering education. So, new and more focused departments are rising in the engineering faculty. The Turkish economy has been developed, and it is necessary to develop new technologies in industry based on the new investments. The scientific models are required to decide which engineering departments are necessary based on the socio-economic development of the economy. For this aim, we present a strategic analysis of which department can be established to meet the requirements in Turkey in light of the latest developments in the world. In the analysis stage, we listed engineering departments in the world universities and compared them with Turkish universities. We determined the selection criteria for the alternative departments, following these analyses and their related data collected from the Turkish Statistical Institute’s website. We used the new impulse and momentum principle-based weight assignment procedure integrated Technique for Order Preferences by Similarity to the Ideal Solution (IMP-TOPSIS) method to rank alternative departments using different scenarios. We concluded that Artificial Intelligence Engineering is the most suitable alternative. In addition, Aerospace Engineering has the second importance, and Materials Science and Nanotechnology Engineering have the third importance, according to the obtained results.

近十年来,工程技术发展迅速,对工程教育提出了新的要求。因此,新的和更有针对性的专业正在工程学院中兴起。土耳其经济得到了发展,有必要在新投资的基础上开发新的工业技术。根据社会经济的发展情况,我们需要科学的模式来决定哪些工科系是必要的。为此,我们根据世界最新发展情况,对土耳其可以建立哪些部门来满足需求进行了战略分析。在分析阶段,我们列出了世界各大学的工程系,并与土耳其各大学进行了比较。根据这些分析和从土耳其统计研究所网站上收集的相关数据,我们确定了备选院系的选择标准。我们使用新的基于脉冲和动量原理的权重分配程序,即通过与理想解决方案相似性排序偏好技术(IMP-TOPSIS)方法,在不同情况下对备选院系进行排序。我们得出结论,人工智能工程系是最合适的备选系。此外,根据所得结果,航空航天工程的重要性排在第二位,材料科学和纳米技术工程的重要性排在第三位。
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引用次数: 0
Discriminant Decision Making of Cardiovascular Diseases Based on Cloud-Based Convolutional Attention Network 基于云卷积注意力网络的心血管疾病判别决策
IF 4.9 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-03-27 DOI: 10.1142/s0219622024500032
Wei Liu, Congjun Rao

Cardiovascular diseases (CVDs) have become the number one killer affecting human health. In order to reduce the burden of medical workers, facilitate government screening of the population and enable patients to conduct their own health status checks, there is an urgent need for a complementary diagnostic system to predict the occurrence of CVD. In this study, a new cloud-based convolutional attention network (C-CAN) model is proposed for the discriminant decision making of CVD. In this model, the indicator data for discriminant decision making of CVD are trained using an improved one-dimensional convolutional neural network (1D CNN) model structure based on the correlation of factors influencing CVD given by decision-making trial and evaluation laboratory (DEMATEL) and cloud models. This 1D CNN model consists of a convolutional pooling module, an attention module and a fully connected module. The cloud model is used to process the original data based on the discriminating opinion of experts, so as to select the important factors that affect CVD. The attention mechanism is effective in augmenting attention to the essential elements of the data and reducing attention to the less important features. Both have similarities in that they are effective in augmenting the important features in the data and combine with each other to achieve better results. Moreover, the C-CAN is compared with decision tree (DT), K-nearest neighbors (KNN), random forests (RF) and normal CNN according to the CVD dataset from the Kaggle platform. The results show that the classification accuracy, precision, recall and F1 value of C-CAN are all higher than that of all compared models. Further, the proposed model is further externally validated using other imbalanced datasets, and the results indicate that C-CAN has good resilience for imbalanced data. Our findings suggest that C-CAN represents a promising new approach that may somehow address the challenges associated with deep learning (DL) in the medical field.

心血管疾病(CVD)已成为影响人类健康的头号杀手。为了减轻医务工作者的负担,方便政府对人群进行筛查,并使患者能够自己进行健康状况检查,迫切需要一种辅助诊断系统来预测心血管疾病的发生。本研究提出了一种新的基于云的卷积注意力网络(C-CAN)模型,用于心血管疾病的判别决策。在该模型中,根据决策试验与评估实验室(DEMATEL)和云模型给出的心血管疾病影响因素的相关性,使用改进的一维卷积神经网络(1D CNN)模型结构训练心血管疾病判别决策的指标数据。该一维 CNN 模型由卷积池模块、注意力模块和全连接模块组成。云模型用于根据专家的鉴别意见处理原始数据,从而筛选出影响心血管疾病的重要因素。注意力机制能有效增强对数据基本要素的注意力,减少对不太重要特征的注意力。两者的相似之处在于都能有效地增强数据中的重要特征,并相互结合以达到更好的效果。此外,根据 Kaggle 平台上的 CVD 数据集,将 C-CAN 与决策树(DT)、K-近邻(KNN)、随机森林(RF)和普通 CNN 进行了比较。结果表明,C-CAN 的分类准确率、精确度、召回率和 F1 值均高于所有比较模型。此外,我们还使用其他不平衡数据集对所提出的模型进行了进一步的外部验证,结果表明 C-CAN 对不平衡数据具有良好的适应能力。我们的研究结果表明,C-CAN 是一种很有前途的新方法,可以在某种程度上解决深度学习(DL)在医疗领域面临的挑战。
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引用次数: 0
Reliability Evaluation of Binary Group Decision-Making Mechanism 二元小组决策机制的可靠性评估
IF 4.9 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-03-26 DOI: 10.1142/s021962202450007x
Qiang Liu, Xinyu Peng, Qingmiao Liu, Qiao Li

Decision-making is an important management activity. This study evaluates the reliability of group decision-making (GDM) and multi-attribute GDM (MAGDM) mechanisms for a class of 0–1 binary decision-making problem. We define the reliability of GDM and MAGDM, use the weighted voting system to model the GDM and MAGDM mechanisms, and propose two algorithms to evaluate the reliability of GDM and MAGDM considering the participation of general or professional decision makers. Additionally, the influence of some system parameters, such as the number of decision makers or attributes, cognitive accuracy of decision makers, and threshold of weighted majority voting rule, on the reliability of GDM and MAGDM was analyzed using random simulation experiments. The results of the random experiment show that: increasing the number of decision makers or attributes could improve the decision accuracy; the reduction in the individual subjective accuracy reduces the overall decision accuracy, which was difficult to compensate for by increasing the number of DMs; guiding DMs to reach consensus through group discussion decreased the decision accuracy of GDM and MAGDM.

决策是一项重要的管理活动。本研究针对一类 0-1 二元决策问题,评估了群体决策(GDM)和多属性 GDM(MAGDM)机制的可靠性。我们定义了 GDM 和 MAGDM 的可靠性,使用加权投票系统对 GDM 和 MAGDM 机制进行建模,并提出了两种算法来评估考虑一般决策者或专业决策者参与的 GDM 和 MAGDM 的可靠性。此外,还利用随机模拟实验分析了一些系统参数对 GDM 和 MAGDM 可靠性的影响,如决策者或属性的数量、决策者的认知准确性、加权多数表决规则的阈值等。随机实验的结果表明:增加决策者或属性的数量可以提高决策的准确性;个体主观准确性的降低会降低整体决策的准确性,这一点很难通过增加 DM 的数量来弥补;通过小组讨论引导 DM 达成共识会降低 GDM 和 MAGDM 的决策准确性。
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引用次数: 0
Basic Statistical Methods in Determining Criteria Weights 确定标准权重的基本统计方法
IF 4.9 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-03-20 DOI: 10.1142/s0219622024500093
Üzeyir Fidan

The proliferation of technology has facilitated data accessibility, leading to an expansion in the range of criteria employed in decision problem design. This situation offers an advantage for making precise and rational decisions, but when it comes to managing spending, it becomes a disadvantage. Specifically, the expense of acquiring expert views utilized in the computation of criteria weights by subjective approaches experiences a substantial rise. Hence, decision-makers may employ objective methodologies to determine criterion weights. Nevertheless, objective methods provide a more limited range of choices compared to subjective methods. The study aims to utilize two widely recognized fundamental statistical approaches in order to enhance the capabilities of objective methods. One of the suggested approaches is the dissimilarity-based weighting method, which calculates the differentiation of values within the criteria. Another approach is the weighting method, which relies on the interquartile range. The methods were adapted as means of weighting criteria. Explanatory examples were provided, simulation-based comparisons were conducted, and ultimately applied to an actual data set. The data from each scenario were compared using the factorial analysis of variance method. The findings produced demonstrate that the proposed methods align with other objective methodologies. Furthermore, the proposed approaches were observed to take more time to finish the procedure compared to the Entropy and Standard Deviation methods, but less time compared to the Critic and Merec methods. Consequently, the suggested techniques are introduced as alternative approaches derived from established fundamental statistical procedures, which are straightforward to comprehend and valuable for professionals.

技术的普及促进了数据的获取,从而扩大了决策问题设计所采用的标准范围。这种情况为做出精确、合理的决策提供了有利条件,但在支出管理方面却成了不利因素。具体来说,主观方法在计算标准权重时所使用的专家意见的获取成本大幅上升。因此,决策者可以采用客观方法来确定标准权重。不过,与主观方法相比,客观方法提供的选择范围更为有限。本研究旨在利用两种广受认可的基本统计方法来提高客观方法的能力。建议采用的方法之一是基于差异的加权法,该方法可计算标准内的差异值。另一种方法是基于四分位数区间的加权法。对这些方法进行了调整,作为标准加权的手段。提供了解释性示例,进行了模拟比较,并最终应用于实际数据集。使用因子方差分析方法对每个方案的数据进行了比较。研究结果表明,建议的方法与其他客观方法一致。此外,与熵法和标准偏差法相比,建议的方法完成程序所需的时间更长,但与 Critic 法和 Merec 法相比,所需的时间更短。因此,建议采用的技术是从已确立的基本统计程序中衍生出来的替代方法,对专业人员来说简单易懂且极具价值。
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引用次数: 0
A Flexible Cross-Efficiency Model with Partial Preference for Efficiency Evaluation of Clean Transportation Energy 用于清洁交通能源效率评估的部分偏好交叉效率灵活模型
IF 4.9 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-03-19 DOI: 10.1142/s021962202450010x
Meiling Li, Ying-Ming Wang, Jian Lin

The rapid development of the transportation industry benefits from the consumption of energy, but the excessive dependence on petroleum fuels makes it a major source of air pollution. In order to achieve green and high-quality development of the transportation industry, many countries are committed to scientifically evaluating the utilization efficiency of clean energy, which has attracted wide attention from the whole society. Significantly, without considering the diversity and complexity of pollutants, indicators used in previous studies were unable to cover all pollutants when establishing the evaluation index system. Meanwhile, as an efficient tool, data envelopment analysis (DEA) is extensively used when it comes to efficiency evaluation. However, the absolute preference of existing benevolent and aggressive cross-efficiency models limits its application scenarios. To address the challenges above, an improved flexible cross-efficiency DEA model is proposed considering both same and different benevolence coefficients of decision-making units (DMUs) on the basis of pointing out the inadequacy of the previous model. The concepts of consensus coefficient and group preference are introduced in the aggregation of cross-efficiency. Besides, based on the theory of undesirable output, the consumption of nonclean energy is taken into account as the input indicator to characterize the degree of pollution. The results show that the obtained cross-efficiency value and efficiency ranking of clean transportation energy change sensitively under various benevolent coefficients. There is an important practical significance to consider the independent preference information of DMUs for the evaluation and ranking of cross-efficiency.

交通运输业的快速发展得益于能源的消耗,但对石油燃料的过度依赖使其成为大气污染的主要来源。为了实现交通运输业的绿色、高质量发展,许多国家都致力于科学评价清洁能源的利用效率,这引起了全社会的广泛关注。值得注意的是,在建立评价指标体系时,由于没有考虑污染物的多样性和复杂性,以往研究中使用的指标无法涵盖所有污染物。同时,数据包络分析法(DEA)作为一种高效的工具,在效率评价中被广泛应用。然而,现有的仁慈型和激进型交叉效率模型的绝对偏好限制了其应用场景。针对上述挑战,在指出以往模型不足的基础上,提出了一种改进的灵活交叉效率 DEA 模型,该模型考虑了决策单元(DMU)相同和不同的仁慈系数。在交叉效率的聚合中引入了共识系数和群体偏好的概念。此外,基于不良产出理论,将非清洁能源消耗作为表征污染程度的输入指标。结果表明,所得到的清洁交通能源交叉效率值和效率排序在不同的仁系数下会发生敏感变化。考虑 DMU 的独立偏好信息进行交叉效率的评价和排序具有重要的现实意义。
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引用次数: 0
Multidimensional Analysis of Investment Priorities for Circular Economy with Quantum Spherical Fuzzy Hybrid Modeling 利用量子球形模糊混合建模对循环经济投资优先级进行多维分析
IF 4.9 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-01-31 DOI: 10.1142/s021962202350075x
Hasan Dinçer, Serhat Yüksel, Umit Hacıoglu, Babek Erdebilli

Circular economy aims recycling in the production process instead of destroying the products. With the help of this situation, waste can be considered in the remanufacturing process so that the rate of consumption of natural resources can be decreased. It is necessary to focus on certain investment issues to achieve a circular economy, but all investments have some risks. Hence, the economies should make priority analysis to take efficient actions. Investment priorities are identified to have circular economy. A novel fuzzy decision-making model has been created for this purpose. In the first stage, balanced scorecard criteria are evaluated with the help of multi stepwise weight assessment ratio analysis (M-SWARA). Later, the multidimensional investment priorities of circular economy are ranked. In this context, elimination and choice translating reality (ELECTRE) approach is taken into consideration. The main contribution of the paper is that a new methodology is created by the name of M-SWARA. Owing to these new improvements, cause and effect relationship among the items can be analyzed. It is identified that financial issues play the most crucial role for investments to improve circular economy. On the other side, it is also concluded that remanufacturing is the most significant investment alternative to develop circular economy. For the sustainability of the investment to improve circular economy, necessary financial analysis should be performed. With the help of this situation, these substances can be reintroduced into the production process in the form of raw materials. With the increase of remanufacturing, it will be possible to reduce waste and save scarce material resources.

循环经济的目的是在生产过程中进行回收利用,而不是销毁产品。在这种情况下,可以在再制造过程中考虑废弃物,从而降低自然资源的消耗率。要实现循环经济,必须重视某些投资问题,但所有投资都有一定的风险。因此,各经济体应进行优先分析,以采取有效行动。要实现循环经济,就要确定投资重点。为此,我们创建了一个新颖的模糊决策模型。在第一阶段,利用多步骤权重评估比率分析法(M-SWARA)对平衡计分卡标准进行评估。随后,对循环经济的多维投资重点进行排序。在此背景下,考虑了消除和选择转化现实(ELECTRE)方法。本文的主要贡献在于创建了一种名为 M-SWARA 的新方法。由于这些新的改进,可以分析项目之间的因果关系。结果表明,金融问题对改善循环经济的投资起着至关重要的作用。另一方面,还得出结论认为,再制造是发展循环经济最重要的投资选择。为确保改善循环经济投资的可持续性,应进行必要的财务分析。在这种情况下,这些物质可以以原材料的形式重新进入生产流程。随着再制造的增加,将有可能减少浪费,节约稀缺的物质资源。
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引用次数: 0
Addressing Societal Challenges Through Analytics: A Framework for Building a Foreclosure Prediction Model Using Publicly-Available Demographic Data, GIS, and Machine Learning 通过分析解决社会挑战:利用公开可用的人口统计数据、GIS和机器学习构建止赎预测模型的框架
IF 4.9 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-07-12 DOI: 10.1142/s021962202350061x
Dinko Bačić

Information systems (IS) and data analytics-focused academic disciplines remained surprisingly silent in attempting to contribute to a public understanding of critical societal challenges such as foreclosures. This paper tackles the gap by presenting a framework for building foreclosure prediction models by integrating publicly-available census-tract demographic data and readily-available technology (geographic IS (GIS) and machine learning (ML)). The framework is tested and validated using over 19,000 foreclosures from Cuyahoga County (OH) using J48 decision tree, artificial neural network, and Naive Bayes algorithms. The framework’s empirical test identifies nine critical demographic attributes to successfully predict foreclosures, confirming the findings of prior studies while offering several new, highly predictive variables that were missed by prior research. This research is a call to broader IS, CS, and data science communities to assist society in understanding critical societal issues that may need deploying and integrating more advanced technologies.

以信息系统(IS)和数据分析为重点的学术学科在试图帮助公众理解诸如止赎等关键社会挑战方面保持着令人惊讶的沉默。本文通过整合公开可用的人口普查数据和现成的技术(地理信息系统(GIS)和机器学习(ML)),提出了一个构建止赎预测模型的框架,从而解决了这一差距。该框架使用J48决策树、人工神经网络和朴素贝叶斯算法对来自凯霍加县(OH)的19,000多起止赎案进行了测试和验证。该框架的实证测试确定了成功预测止赎的九个关键人口统计属性,证实了先前研究的发现,同时提供了先前研究遗漏的几个新的、高度预测的变量。这项研究是对更广泛的is、CS和数据科学社区的呼吁,以帮助社会理解可能需要部署和集成更先进技术的关键社会问题。
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引用次数: 0
Deep Learning and Machine Learning for Malaria Detection: Overview, Challenges and Future Directions 深度学习和机器学习用于疟疾检测:概述,挑战和未来方向
IF 4.9 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-07-05 DOI: 10.1142/s0219622023300045
Imen Jdey, hazala Hcini, Hela Ltifi

Public health initiatives must be made using evidence-based decision-making to have the greatest impact. Machine learning algorithms are created to gather, store, process, and analyze data to provide knowledge and guide decisions. A crucial part of any surveillance system is image analysis. The communities of computer vision and machine learning have become curious about it as of late. This study uses a variety of machine learning, and image processing approaches to detect and forecast malarial illness. In our research, we discovered the potential of deep learning techniques as innovative tools with a broader applicability for malaria detection, which benefits physicians by assisting in the diagnosis of the condition. We investigate the common confinements of deep learning for computer frameworks and organizing, including the requirement for data preparation, preparation overhead, real-time execution, and explaining ability, and uncover future inquiries about bearings focusing on these constraints.

公共卫生举措必须采用循证决策,才能产生最大影响。创建机器学习算法是为了收集、存储、处理和分析数据,以提供知识和指导决策。任何监控系统的关键部分都是图像分析。计算机视觉和机器学习社区最近对它很好奇。本研究使用各种机器学习和图像处理方法来检测和预测疟疾疾病。在我们的研究中,我们发现了深度学习技术作为一种创新工具的潜力,它在疟疾检测方面具有更广泛的适用性,通过协助诊断疾病,使医生受益。我们研究了计算机框架和组织中深度学习的常见限制,包括对数据准备、准备开销、实时执行和解释能力的要求,并揭示了未来关于这些限制的查询。
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引用次数: 0
Pattern Recognition of Longitudinal Trial Data with Nonignorable Missingness: An Empirical Case Study. 具有不可忽略遗漏性的纵向试验数据的模式识别:实证案例研究
IF 4.9 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2009-09-01 DOI: 10.1142/S0219622009003508
Hua Fang, Kimberly Andrews Espy, Maria L Rizzo, Christian Stopp, Sandra A Wiebe, Walter W Stroup

Methods for identifying meaningful growth patterns of longitudinal trial data with both nonignorable intermittent and drop-out missingness are rare. In this study, a combined approach with statistical and data mining techniques is utilized to address the nonignorable missing data issue in growth pattern recognition. First, a parallel mixture model is proposed to model the nonignorable missing information from a real-world patient-oriented study and concurrently to estimate the growth trajectories of participants. Then, based on individual growth parameter estimates and their auxiliary feature attributes, a fuzzy clustering method is incorporated to identify the growth patterns. This case study demonstrates that the combined multi-step approach can achieve both statistical gener ality and computational efficiency for growth pattern recognition in longitudinal studies with nonignorable missing data.

在纵向试验数据中同时存在不可忽略的间断缺失和辍学缺失的情况下,识别有意义的增长模式的方法并不多见。本研究采用统计和数据挖掘技术相结合的方法来解决生长模式识别中的不可忽略的缺失数据问题。首先,我们提出了一个并行混合模型来模拟真实世界中以患者为导向的研究中不可忽略的缺失信息,并同时估计参与者的生长轨迹。然后,基于单个生长参数估计及其辅助特征属性,采用模糊聚类方法来识别生长模式。该案例研究表明,在具有不可忽略的缺失数据的纵向研究中,多步骤组合方法可以实现生长模式识别的统计通用性和计算效率。
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引用次数: 0
期刊
International Journal of Information Technology & Decision Making
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