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Construction of ecological security evaluation model of healing landscape based on deep learning 基于深度学习的愈合性景观生态安全评价模型构建
4区 计算机科学 Q1 Mathematics Pub Date : 2023-10-28 DOI: 10.3233/jifs-233040
Hao Wang, Yanyan Xu, Yue Han, Kejia Zhang
With the rapid growth of the global population and the increasing urbanization, the urban landscape in China is gradually enriched, and the scale of the landscape that plays a healing role is expanding. However, curing the problem of landscape ecological security is an important part of Homeland security, economic and social sustainable development. We must deal with the relationship between high-quality social development and ecological environment protection on the basis of scientific evaluation. To address this issue, research has provided better data support for feature extraction through image preprocessing. Then the Convolutional neural network in deep learning is trained through a large number of collected measured data. Finally, the pressure state response model is used to evaluate the ecological security of the healing landscape. The results show that the average error of the ground class in 2010 was 13.65%, and the fitting accuracy reached 86.35%, indicating that this method has high accuracy and can be effectively applied in evaluation. Meanwhile, in 2010 and 2019, the average landscape ecological security levels of City A were 7.27 and 6.65, both at a “safe” level, but the overall security level showed a downward trend. It is recommended to optimize the land use pattern in future urban planning and construction, improve the urban landscape ecological security index value, and maintain consistency with the actual situation of the city. This can provide reference for the evaluation model of urban landscape ecological security, and further provide scientific basis and guidance for the ecological civilization construction of urban agglomerations. In subsequent research, the evolution trend of urban landscape ecological security can be taken as the research goal, and finally, guidance on optimizing urban landscape ecological security can be provided.
随着全球人口的快速增长和城市化进程的加快,中国的城市景观逐渐丰富,具有治愈作用的景观规模不断扩大。然而,解决景观生态安全问题是国土安全和经济社会可持续发展的重要组成部分。必须在科学评价的基础上处理好社会高质量发展与生态环境保护的关系。针对这一问题,研究为通过图像预处理提取特征提供了更好的数据支持。然后通过大量采集的实测数据对深度学习中的卷积神经网络进行训练。最后,采用压力状态响应模型对修复景观的生态安全进行评价。结果表明,2010年地面分类的平均误差为13.65%,拟合精度达到86.35%,表明该方法具有较高的精度,可以有效地应用于评价。同时,2010年和2019年A市景观生态安全平均水平分别为7.27和6.65,均处于“安全”水平,但整体安全水平呈下降趋势。建议在未来城市规划建设中优化土地利用格局,提高城市景观生态安全指数值,保持与城市实际情况的一致性。这可以为城市景观生态安全评价模型提供参考,进一步为城市群生态文明建设提供科学依据和指导。在后续的研究中,可以将城市景观生态安全的演变趋势作为研究目标,最终为优化城市景观生态安全提供指导。
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引用次数: 0
Identification of wheat plant disease using hybrid model of pre-processing with CNN 预处理与CNN混合模型的小麦病害识别
4区 计算机科学 Q1 Mathematics Pub Date : 2023-10-28 DOI: 10.3233/jifs-233672
R. Rajesh Kanna, V. Ulagamuthalvi
Diagnosis is given top priority in terms of farm resource allocation, because it directly affects the GDP of the country. Crop analysis at an early stage is important for verifying the efficient crop output. Computer vision has a number of intriguing and demanding concerns, including disease detection. After China, India is the world’s second-largest creator of wheat. However, there exist algorithms that can accurately identify the most prevalent illnesses of wheat leaves. To help farmers keep track on a large area of wheat plantation, leaf image and data processing techniques have recently been deployed extensively and in pricey systems. In this study, a hybrid pre-processing practice is used to remove undesired distortions while simultaneously enhancing the images. Fuzzy C-Means (FCM) is used to segment the affected areas from the pre-processed images. The data is then incorporated into a disease classification model using a Convolutional Neural Network (CNN). It was tested using Kaggle data and several metrics to see how efficient the suggested approach was. This study demonstrates that the traditional Long-Short Term Memory (LSTM) technique achieved 91.94% accuracy on the input images, but the hybrid pre-processing model with CNN achieved 95.06 percent accuracy.
在农业资源配置方面,诊断是重中之重,因为它直接影响到国家的GDP。作物早期分析对于验证作物的有效产量至关重要。计算机视觉有许多有趣和苛刻的问题,包括疾病检测。印度是仅次于中国的世界第二大小麦生产国。然而,现有的算法可以准确地识别小麦叶片最常见的疾病。为了帮助农民跟踪大面积的小麦种植,叶片图像和数据处理技术最近被广泛应用于昂贵的系统中。在本研究中,混合预处理实践用于消除不希望的失真,同时增强图像。使用模糊c均值(FCM)从预处理图像中分割出受影响的区域。然后使用卷积神经网络(CNN)将数据合并到疾病分类模型中。使用Kaggle数据和几个指标对其进行了测试,以了解所建议的方法的效率。研究表明,传统的长短期记忆(LSTM)技术对输入图像的准确率达到91.94%,而与CNN混合预处理模型的准确率达到95.06%。
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引用次数: 0
An optimized fuzzy based FP-growth algorithm for mining temporal data 一种优化的基于模糊的FP-growth算法挖掘时态数据
4区 计算机科学 Q1 Mathematics Pub Date : 2023-10-28 DOI: 10.3233/jifs-223030
B. Praveen Kumar, T. Padmavathy, S.U. Muthunagai, D. Paulraj
Data mining is one of the emerging technologies used in many applications such as Market analysis and Machine learning. Temporal data mining is used to get a clear knowledge about current trend and to predict the upcoming future. The rudimentary challenge in introducing a data mining procedure is, processing time and memory consumption are highly increasing while trying to improve the accuracy, precision or recall. As well as, while trying to reduce the processing time or memory consumption, accuracy, precision and recall values are reducing significantly. So, for improving the performance of the system and to preserve the memory and processing time, Three-Dimensional Fuzzy FP-Tree (TDFFPT) is proposed for Temporal data mining. Three functional modules namely, Three-Dimensional Temporal data FP-Tree (TTDFPT), Fuzzy Logic based Temporal Data Tree Analyzer (FTDTA) and Temporal Data Frequent Itemset Miner (TDFIM) are integrated in the proposed method. This algorithm scans the database and generates frequent patterns as per the business need. Every time a client purchases a new item, it gets stored in the recent database layer instead of rescanning the entire records which are placed in the old layer. The results obtained shows that the performance of the proposed model is more efficient than that of the existing algorithm in terms of overall accuracy, processing time, reduction in the memory utilization, and the number of databases scans. In addition, the proposed model also provides improved decision making and accurate pattern prediction in the time series data.
数据挖掘是市场分析和机器学习等许多应用中使用的新兴技术之一。时态数据挖掘用于获取当前趋势的清晰知识并预测即将到来的未来。引入数据挖掘过程的基本挑战是,在试图提高准确性、精度或召回率的同时,处理时间和内存消耗正在急剧增加。此外,在试图减少处理时间或内存消耗的同时,正确率、精密度和召回值也在显著降低。因此,为了提高系统的性能,同时节省内存和处理时间,提出了三维模糊FP-Tree (TDFFPT)进行时态数据挖掘。该方法集成了三维时间数据FP-Tree (TTDFPT)、基于模糊逻辑的时间数据树分析器(FTDTA)和时间数据频繁项集挖掘器(TDFIM)三个功能模块。该算法扫描数据库并根据业务需要生成频繁的模式。每次客户端购买新项目时,它都被存储在最近的数据库层中,而不是重新扫描放置在旧层中的整个记录。结果表明,该模型在总体精度、处理时间、内存利用率降低和数据库扫描次数等方面均优于现有算法。此外,该模型还提供了改进的决策和准确的模式预测在时间序列数据。
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引用次数: 0
Intelligent fuzzy edge computing for real-time decision making in IoT-based digital twin environments 基于物联网的数字孪生环境下实时决策的智能模糊边缘计算
4区 计算机科学 Q1 Mathematics Pub Date : 2023-10-27 DOI: 10.3233/jifs-233495
N. Prasath, A. Arun, B. Saravanan, Kanagaraj Kamaraj
Intelligent Fuzzy Edge Computing (IFEC) has emerged as an innovative technology to enable real-time decision-making in Internet of Things (IoT)-based Digital Twin environments. Digital Twins provide virtual models of physical systems, facilitating predictive maintenance and optimization. However, implementing real-time decision-making in these environments is challenging due to massive data volumes and need for quick response times. IFEC addresses this by offering a flexible, scalable and efficient platform for real-time decision-making. This paper presents an overview of key aspects of IFEC including fuzzy logic, edge computing and Digital Twins. The use of fuzzy logic in IFEC provides an adaptive framework for handling uncertainties in data. Edge computing enables localized processing, reducing latency. The integration of Digital Twins allows system monitoring, analysis and optimization. Potential applications of IFEC are highlighted in domains such as manufacturing, healthcare, energy management and transportation. Recent advancements in IFEC are also discussed, covering new fuzzy inference systems, edge computing architectures, Digital Twin modeling techniques and security mechanisms. Overall, IFEC shows great promise in enabling real-time decision-making in complex IoT-based Digital Twin environments across various industries. Further research on IFEC will facilitate the ongoing digital transformation of industrial systems.
智能模糊边缘计算(IFEC)已经成为一种创新技术,可以在基于物联网(IoT)的数字孪生环境中实现实时决策。数字孪生提供物理系统的虚拟模型,促进预测性维护和优化。然而,在这些环境中实现实时决策是具有挑战性的,因为数据量巨大,需要快速响应时间。IFEC通过提供一个灵活、可扩展和高效的实时决策平台来解决这一问题。本文概述了IFEC的关键方面,包括模糊逻辑、边缘计算和数字孪生。模糊逻辑在IFEC中的应用为处理数据中的不确定性提供了一个自适应框架。边缘计算支持本地化处理,减少延迟。数字孪生的集成允许系统监控,分析和优化。重点介绍了IFEC在制造业、医疗保健、能源管理和交通运输等领域的潜在应用。本文还讨论了IFEC的最新进展,包括新的模糊推理系统、边缘计算架构、数字孪生模型技术和安全机制。总体而言,IFEC在实现各行业复杂的基于物联网的数字孪生环境中的实时决策方面显示出巨大的前景。对IFEC的进一步研究将促进正在进行的工业系统数字化转型。
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引用次数: 0
Multi-criteria group decision-making based on dombi aggregation operators under p, q-quasirung orthopair fuzzy sets p, q-拟环正形模糊集下基于dombi聚集算子的多准则群决策
4区 计算机科学 Q1 Mathematics Pub Date : 2023-10-26 DOI: 10.3233/jifs-233327
Muhammad Rahim, ElSayed M. Tag Eldin, Salma Khan, Nivin A. Ghamry, Agaeb Mahal Alanzi, Hamiden Abd El-Wahed Khalifa
In this study, we introduce The p, q-quasirung orthopair fuzzy Dombi operators, including p, q-quasirung orthopair fuzzy Dombi weighted averaging (p, q-QOFDWA), p, q-quasirung orthopair fuzzy Dombi ordered weighted averaging (p, q-QOFDOWA), p, q-quasirung orthopair fuzzy Dombi weighted geometric (p, q-QOFDWG), and p, q-quasirung orthopair fuzzy Dombi ordered weighted geometric (p, q-QOFDOWG) operators. These operators effectively manage imprecise and uncertain information, outperforming other fuzzy sets like the Pythagorean fuzzy set (PFS) and q-rung orthopair fuzzy set (q-ROFS). We investigate their properties, including boundedness and monotonicity, and demonstrate their applicability in multiple criteria decision-making (MCDM) problems within a p, q-quasirung orthopair fuzzy (p, q-QOF) environment. To showcase the practicality, we present a real-world scenario involving the selection of investment alternatives as an illustrative example. Our findings highlight the significant advantage and potential of these operators for handling uncertainty in decision-making.
在本研究中,我们引入了p、q、q-拟隆矫形模糊东比算子,包括p、q-拟隆矫形模糊东比加权平均(p, q-QOFDWA)、p、q-拟隆矫形模糊东比有序加权平均(p, q-QOFDOWA)、p、q-拟隆矫形模糊东比加权几何(p, q-QOFDWG)和p、q-拟隆矫形模糊东比有序加权几何(p, q-QOFDOWG)算子。这些算子有效地管理不精确和不确定的信息,优于其他模糊集,如毕达哥拉斯模糊集(PFS)和q-rung正形模糊集(q-ROFS)。我们研究了它们的有界性和单调性,并证明了它们在p, q-拟环正交模糊(p, q-QOF)环境下的多准则决策(MCDM)问题中的适用性。为了展示其实用性,我们提出了一个涉及投资选择的现实场景作为说明性示例。我们的研究结果强调了这些运营商在处理决策不确定性方面的显著优势和潜力。
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引用次数: 0
EI-RNN-based text generation for the static and dynamic isolated sign language videos 基于ei - rnn的静态和动态孤立手语视频文本生成
4区 计算机科学 Q1 Mathematics Pub Date : 2023-10-26 DOI: 10.3233/jifs-233610
S. Subburaj, S. Murugavalli, B. Muthusenthil
SLR, which assists hearing-impaired people to communicate with other persons by sign language, is considered as a promising method. However, as the features of some of the static SL could be the same as the feature in a single frame of dynamic Isolated Sign Language (ISL), the generation of accurate text corresponding to the SL is necessary during the SLR. Therefore, Edge-directed Interpolation-based Recurrent Neural Network (EI-RNN)-centered text generation with varied features of the static and dynamic Isolated SL is proposed in this article. Primarily, ISL videos are converted to frames and pre-processed with key frame extraction and illumination control. After that, the foreground is separated with the Symmetric Normalised Laplacian-centered Otsu Thresholding (SLOT) technique for finding accurate key points in the human pose. The human pose’s key points are extracted with the Media Pipeline Holistic (MPH) pipeline approach and to improve the features of the face and hand sign, the resultant frame is fused with the depth image. After that, to differentiate the static and dynamic actions, the action change in the fused frames is determined with a correlation matrix. After that, to engender the output text for the respective SL, features are extracted individually as of the static and dynamic frames. It is obtained from the analysis that when analogized to the prevailing models, the proposed EI-RNN’s translation accuracy is elevated by 2.05% in INCLUDE 50 Indian SL based Dataset and Top 1 Accuracy 2.44% and Top 10 accuracy, 1.71% improved in WLASL 100 American SL.
SLR是一种帮助听障人士用手语与其他人交流的方法,被认为是一种很有前途的方法。然而,由于一些静态手语的特征可能与动态孤立手语(ISL)的单帧特征相同,因此在SLR过程中需要生成与该手语相对应的准确文本。因此,本文提出了一种基于边缘导向插值的递归神经网络(EI-RNN)中心的文本生成方法,该方法具有静态和动态孤立语言的不同特征。首先,将ISL视频转换为帧,并进行关键帧提取和光照控制等预处理。之后,使用对称归一化拉普拉斯中心大津阈值(SLOT)技术分离前景,以找到人体姿势的准确关键点。采用媒体管道整体(MPH)管道方法提取人体姿态的关键点,并将生成的帧与深度图像融合,以改善人脸和手势的特征。然后,利用相关矩阵确定融合框架中的动作变化,以区分静态和动态动作。之后,为了生成各自SL的输出文本,将分别从静态框架和动态框架中提取特征。分析结果表明,与主流模型进行类比时,所提出的EI-RNN在INCLUDE 50印度语数据集中的翻译精度提高了2.05%,在WLASL 100美国语数据集中的翻译精度提高了2.44%,前10名的翻译精度提高了1.71%。
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引用次数: 0
Opt_att-GANC: Fusion of CT and PET images using an optimal attention-based generative adversarial network with classifier for lung cancer classification opt_at - ganc:使用基于最优注意力的生成对抗网络与分类器融合CT和PET图像用于肺癌分类
4区 计算机科学 Q1 Mathematics Pub Date : 2023-10-26 DOI: 10.3233/jifs-233491
Bhagya Lakshmi Nandipati, Nagaraju Devarakonda
Lung cancer incidence and mortality continue to rise rapidly around the world. According to the American Cancer Society, the five-year survivability for individuals in the metastasis phases is significantly lower, highlighting the importance of early lung cancer diagnosis for effective therapy and improved quality of life. To achieve this, it is crucial to combine PET’s sensitivity for recognizing abnormal regions with CT’s anatomical localization for evaluating PET-CT images in computer-assisted detection implementations. Current PET-CT image evaluation methods either run each modality independently or aggregate the data from both, but they often overlook the fact that different visual features encode different types of data from different modalities. For instance, high atypical PET uptake within the lungs is more crucial for identifying tumors compared to physical PET uptake in the heart. To address the challenges of fine-grained issues during feature extraction and fusion, we propose an interpretable deep learning-based solution for lung cancer diagnosis using CT and PET images. This involves building an Optimal Adversarial Network for merging and an Optimal Attention-based Generative Adversarial Network with Classifier (Opt_att-GANC) to augment the classification of the existence and nonexistence of lung cancer based on extracted features. The performance of the Opt_att-GANC is compared with existing methodologies like global-feature encoding U-Net (GEU-Net), 3D Dense-Net, and 3D Convolutional Neural Network Technique (3D-CNN). Results show that the proposed Opt_att-GANC achieves an F1-score of 67.08%, 93.74% accuracy, 92% precision, 92.1% recall, and 93.74% recall. The prospective study aims to enhance the precision degree with reduced duration by incorporating an ensemble neural network paradigm for feature extraction.
肺癌的发病率和死亡率在世界各地继续迅速上升。根据美国癌症协会(American Cancer Society)的数据,处于转移期的个体的5年生存率明显较低,这突出了早期肺癌诊断对有效治疗和改善生活质量的重要性。为了实现这一目标,将PET识别异常区域的敏感性与CT的解剖定位相结合,以评估计算机辅助检测实现中的PET-CT图像,这一点至关重要。目前的PET-CT图像评估方法要么独立运行每种模态,要么将两者的数据聚合在一起,但它们往往忽略了不同的视觉特征对不同模态的不同类型数据进行编码的事实。例如,与心脏的物理PET摄取相比,肺内高非典型PET摄取对识别肿瘤更重要。为了解决特征提取和融合过程中细粒度问题的挑战,我们提出了一种基于可解释的深度学习的解决方案,用于使用CT和PET图像进行肺癌诊断。这包括构建一个用于合并的最优对抗网络和一个基于最优注意力的带有分类器的生成对抗网络(Opt_att-GANC),以增强基于提取特征的肺癌存在和不存在的分类。opt_at - ganc的性能与现有的全局特征编码U-Net (GEU-Net)、3D Dense-Net和3D卷积神经网络技术(3D- cnn)等方法进行了比较。结果表明,该算法的准确率为67.08%,准确率为93.74%,精密度为92%,召回率为92.1%,召回率为93.74%。前瞻性研究的目的是通过集成神经网络模式来提高特征提取的精度和缩短时间。
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引用次数: 0
Enhanced EDAS technique for colleges business English teaching quality evaluation based on Euclid distance and cosine similarity measure 基于欧几里得距离和余弦相似度测度的高校商务英语教学质量评价改进EDAS技术
4区 计算机科学 Q1 Mathematics Pub Date : 2023-10-25 DOI: 10.3233/jifs-233786
Yuan Yuan
With the development of national economy and the increase of foreign trade, Business English has become one of the most popular majors in universities. In order to cultivate business English talents for the national society and adapt to the requirements of the times, the innovation of English teaching concepts and the reform of teaching techniques are the only way for business English majors teaching in universities. The colleges business English teaching quality evaluation is considered as a multi-attribute group decision making (MAGDM). In this paper, the EDAS technique is expanded to the single-valued neutrosophic sets (SVNSs) and the single-valued neutrosophic number EDAS (SVNN-EDAS) technique based on Euclid distance and cosine similarity measure (CSM) is constructed to manage MAGDM. The CRITIC technique is employed to achieve the weight information based on Euclid distance and CSM technique under SVNSs. Finally, the colleges business English teaching quality evaluation is employed to demonstrate the SVNN-EDAS technique and some comparative analysis is employed to demonstrate the SVNN-EDAS. Thus, the main research contribution of this work is then constructed: (1) the CRITIC technique is built to get the attribute’s weight based on Euclid distance and CSM technique; (2) the SVNN-EDAS technique is constructed under SVNNs based on Euclid distance and CSM technique; (3) an example for colleges business English teaching quality evaluation is employed to verify SVNN-EDAS technique and several decision comparative analysis are employed to verify the SVNN-EDAS.
随着国民经济的发展和对外贸易的增加,商务英语已成为高校最热门的专业之一。为国家社会培养商务英语人才,适应时代的要求,创新英语教学理念,改革教学方法是高校商务英语专业教学的必由之路。高校商务英语教学质量评价是一个多属性群体决策(MAGDM)。本文将EDAS技术扩展到单值嗜中性集(SVNSs),构建了基于欧几里得距离和余弦相似度量(CSM)的单值嗜中性数EDAS (SVNN-EDAS)技术来管理MAGDM。在SVNSs下,采用CRITIC技术实现基于欧几里得距离和CSM技术的权重信息。最后,通过高校商务英语教学质量评价对SVNN-EDAS技术进行论证,并通过对比分析对SVNN-EDAS技术进行论证。因此,本文的主要研究贡献如下:(1)建立了基于欧几里得距离和CSM技术的critical技术来获得属性的权重;(2)基于欧几里得距离和CSM技术,在svnn下构建SVNN-EDAS技术;(3)以高校商务英语教学质量评价为例,对SVNN-EDAS技术进行验证,并采用几种决策对比分析对SVNN-EDAS进行验证。
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引用次数: 0
Integrated triangular fuzzy KE-GRA-TOPSIS method for dynamic ranking of products of customers’ fuzzy Kansei preferences 基于模糊感性偏好的产品动态排序集成三角模糊KE-GRA-TOPSIS方法
4区 计算机科学 Q1 Mathematics Pub Date : 2023-10-25 DOI: 10.3233/jifs-234549
Dashuai Liu, Jie Zhang, Chenlu Wang, Weilin Ci, Baoxia Wu, Huafeng Quan
As society evolves, companies produce more homogeneous products, shifting customers’ needs from functionality to emotions. Therefore, how quickly customers select products that meet their Kansei preferences has become a key concern. However, customer Kansei preferences vary from person to person and are ambiguous and uncertain, posing a challenge. To address this problem, this paper proposes a TF-KE-GRA-TOPSIS method that integrates triangular fuzzy Kansei engineering (TF-KE) with Grey Relational Analysis (GRA) and Technique for Order Preference by Similarity to an Ideal Solution (TOPSIS). Firstly, a Kansei evaluation system is constructed based on KE and fuzzy theory. A dynamic triangular fuzzy Kansei preference similarity decision matrix (TF-KPSDM) is defined to quantify customer satisfaction with fuzzy Kansei preferences. Secondly, dynamic objective weights are derived using Criteria Importance Though Intercrieria Correlation (CRITIC) and entropy, optimized through game theory to achieve superior combined weights. Thirdly, the GRA-TOPSIS method utilizes the TF-KPSDM and combined weights to rank products. Finally, taking the case of Kansei preference selection for electric bicycles, results indicate that the proposed method robustly avoids rank reversal and achieves greater accuracy than comparative models. This study can help companies dynamically recommend products to customers based on their Kansei preferences, increasing customer satisfaction and sales.
随着社会的发展,公司生产出更多同质化的产品,将客户的需求从功能转向情感。因此,顾客如何快速地选择符合他们感性偏好的产品已成为一个关键问题。然而,顾客的感性偏好因人而异,而且是模糊和不确定的,这构成了挑战。为了解决这一问题,本文提出了一种将三角模糊感性工程(TF-KE)与灰色关联分析(GRA)和理想解相似性排序偏好技术(TOPSIS)相结合的TF-KE-GRA-TOPSIS方法。首先,基于KE和模糊理论构建感性评价体系。定义了一个动态三角模糊感性偏好相似度决策矩阵(TF-KPSDM),以模糊感性偏好量化顾客满意度。其次,利用critical (Criteria Importance through intercriterion Correlation)和熵导出动态目标权重,并通过博弈论进行优化,得到更优的组合权重;第三,GRA-TOPSIS方法利用TF-KPSDM和组合权重对产品进行排序。最后,以电动自行车的感性偏好选择为例,结果表明,该方法稳健地避免了秩反转,取得了比比较模型更高的精度。本研究可以帮助企业根据顾客的感性偏好,动态地向顾客推荐产品,提高顾客满意度和销售额。
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引用次数: 0
Intuitionistic fuzzy geometric aggregation operators based on Yager’s triangular norms and its application in multi-criteria decision making 基于Yager三角范数的直觉模糊几何聚集算子及其在多准则决策中的应用
4区 计算机科学 Q1 Mathematics Pub Date : 2023-10-25 DOI: 10.3233/jifs-234906
Weize Wang, Yurui Feng
Intuitionistic fuzzy (IF) information aggregation in multi-criteria decision making (MCDM) is a substantial stream that has attracted significant research attention. There are various IF aggregation operators have been suggested for extracting more informative data from imprecise and redundant raw information. However, some of the aggregation techniques that are currently being applied in IF environments are non-monotonic with respect to the total order, and suffer from high computational complexity and inflexibility. It is necessary to develop some novel IF aggregation operators that can surpass these imperfections. This paper aims to construct some IF aggregation operators based on Yager’s triangular norms to shed light on decision-making issues. At first, we present some novel IF operations such as Yager sum, Yager product and Yager scalar multiplication on IF sets. Based on these new operations, we propose the IF Yaeger weighted geometric operator and the IF Yaeger ordered weighted geometric operator, and prove that they are monotone with respect to the total order. Then, the focus on IF MCDM have motivated the creation of a new MCDM model that relies on suggested operators. We show the applicability and validity of the model by using it to select the most influential worldwide supplier for a manufacturing company and evaluate the most efficient method of health-care disposal. In addition, we discuss the sensitivity of the proposed operator to decision findings and criterion weights, and also analyze it in comparison with some existing aggregation operators. The final results show that the proposed operator is suitable for aggregating both IF information on “non-empty lattice" and IF data on total orders.
多准则决策中的直觉模糊信息聚合是一个重要的研究方向。已经提出了各种IF聚合操作符,用于从不精确和冗余的原始信息中提取更有信息的数据。然而,目前在中频环境中应用的一些聚合技术就总顺序而言是非单调的,并且具有很高的计算复杂性和不灵活性。有必要开发一些新的中频聚合算子来克服这些缺陷。本文旨在构造基于Yager三角规范的IF聚合算子,以揭示决策问题。首先给出了中频集上的Yager和、Yager积和Yager标量乘法等中频运算。在此基础上,提出了IF Yaeger加权几何算子和IF Yaeger有序加权几何算子,并证明了它们在全阶上是单调的。然后,对中频MCDM的关注推动了一种新的MCDM模型的创建,该模型依赖于建议的操作符。我们通过为制造企业选择全球最具影响力的供应商和评估最有效的卫生保健处置方法来证明该模型的适用性和有效性。此外,我们讨论了该算子对决策结果和准则权重的敏感性,并将其与现有的一些聚合算子进行了比较分析。最后的结果表明,所提出的算子既适用于聚合“非空格”上的中频信息,也适用于聚合总阶上的中频数据。
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引用次数: 0
期刊
Journal of Intelligent & Fuzzy Systems
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