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Locality sensitive hashing-driven multifactorial evolutionary algorithms for multitask optimization 多任务优化的局部敏感哈希驱动多因子进化算法
Pub Date : 2022-11-01 DOI: 10.2139/ssrn.4123154
Tuo-Bin Yu, Yu-Hui Zhang, Yue-jiao Gong, Yuan Li
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引用次数: 0
Time-Leveled Hypersoft Matrix, Level Cuts, Operators, and COVID-19 Collective Patient Health State Ranking Model 时间级超软矩阵、级别切割、操作符和COVID-19集体患者健康状态排序模型
Pub Date : 2022-11-01 DOI: 10.1155/2022/2388284
Shazia Rana, M. Saeed, Badria Almaz Ali Yousif, F. Smarandache, H. A. Khalifa
This article is the first step to formulate such higher dimensional mathematical structures in the extended fuzzy set theory that includes time as a fundamental source of variation. To deal with such higher dimensional information, some modern data processing structures had to be built. Classical matrices (connecting equations and variables through rows and columns) are a limited approach to organizing higher dimensional data, composed of scattered information in numerous forms and vague appearances that differ on time levels. To extend the approach of organizing and classifying the higher dimensional information in terms of specific time levels, this unique plithogenic crisp time-leveled hypersoft-matrix (PCTLHS matrix) model is introduced. This hypersoft matrix has multiple parallel layers that describe parallel universes/realities/information on some specific time levels as a combined view of events. Furthermore, a specific kind of view of the matrix is described as a top view. According to this view, i-level cuts, sublevel cuts, and sub-sublevel cuts are introduced. These level cuts sort the clusters of information initially, subject-wise then attribute-wise, and finally time-wise. These level cuts are such matrix layers that focus on one required piece of information while allowing the variation of others, which is like viewing higher dimensional images in lower dimensions as a single layer of the PCTLHS matrix. In addition, some local aggregation operators are designed to unify i-level cuts. These local operators serve the purpose of unifying the material bodies of the universe. This means that all elements of the universe are fused and represented as a single body of matter, reflecting multiple attributes on different time planes. This is how the concept of a unified global matter (something like dark matter) is visualized. Finally, to describe the model in detail, a numerical example is constructed to organize and classify the states of patients with COVID-19.
本文是在包括时间作为变化的基本来源的扩展模糊集理论中制定这种高维数学结构的第一步。为了处理这种高维信息,必须建立一些现代数据处理结构。经典矩阵(通过行和列连接方程和变量)是组织高维数据的一种有限方法,这些高维数据由多种形式的分散信息和在时间级别上不同的模糊外观组成。为了扩展高维信息在特定时间层次上的组织和分类方法,提出了一种独特的多生脆时间层次超软矩阵(PCTLHS)模型。这个超软矩阵有多个平行层,它们以事件的组合视图的形式描述某些特定时间层面上的平行宇宙/现实/信息。此外,矩阵的一种特定视图被描述为顶视图。根据这一观点,引入了一级切割、次级切割和次级切割。这些层次切割首先对信息簇进行分类,然后是主题分类,最后是属性分类,最后是时间分类。这些级别切割是这样的矩阵层,它专注于一个所需的信息片段,同时允许其他信息的变化,这就像在较低维度中将高维图像视为PCTLHS矩阵的单层。此外,还设计了一些局部聚合算子来统一i级切割。这些局部操作者服务于统一宇宙物质体的目的。这意味着宇宙的所有元素被融合并表现为一个单一的物质体,在不同的时间平面上反映出多种属性。这就是统一的全球物质(类似暗物质)的概念是如何可视化的。最后,为了更详细地描述模型,构造了一个数值例子来组织和分类COVID-19患者的状态。
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引用次数: 0
A personalized classification model using similarity learning via supervised autoencoder 基于监督式自编码器的相似性学习个性化分类模型
Pub Date : 2022-11-01 DOI: 10.2139/ssrn.4117247
H. Jo, C. Jun
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引用次数: 1
Variable neighborhood search for the discounted {0-1} knapsack problem 折现{0-1}背包问题的变邻域搜索
Pub Date : 2022-11-01 DOI: 10.2139/ssrn.4062902
C. Wilbaut, R. Todosijević, S. Hanafi, A. Fréville
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引用次数: 0
Multi-objective scheduling of a single mobile robot based on the grey wolf optimization algorithm 基于灰狼优化算法的单移动机器人多目标调度
Pub Date : 2022-11-01 DOI: 10.2139/ssrn.4058009
Milica Petrović, Aleksandar Jokic, Z. Miljković, Z. Kulesza
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引用次数: 7
Optimal forecast combination based on PSO-CS approach for daily agricultural future prices forecasting 基于PSO-CS方法的农产品期货日价最优预测组合
Pub Date : 2022-11-01 DOI: 10.2139/ssrn.4089138
Liling Zeng, Liwen Ling, Dabin Zhang, Wentao Jiang
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引用次数: 5
Compressing convolutional neural networks with hierarchical Tucker-2 decomposition 基于分层Tucker-2分解的卷积神经网络压缩
Pub Date : 2022-11-01 DOI: 10.2139/ssrn.4031519
M. Gábor, R. Zdunek
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引用次数: 5
Cognitive Wireless Networks Based Spectrum Sensing Strategies: A Comparative Analysis 基于认知无线网络的频谱感知策略比较分析
Pub Date : 2022-10-30 DOI: 10.1155/2022/6988847
A. Haldorai, Jeevanandham Sivaraj, M. Nagabushanam, M. Roberts
Because of numerous dormant application fields, wireless sensor networks (WSNs) have emerged as an important and novel area in radio and mobile computing research. These applications range from enclosed system configurations in the home and office to alfresco enlistment in an opponent’s landmass in a strategic flashpoint. Cognitive radio networks (CRNs) can be created by integrating radio link capabilities with network layer operations utilizing cognitive radios. The goal of CRN design is to optimize the general system operations to meet customer requirements at any location worldwide by much more efficiently addressing CRNs instead of simply connecting spectrum utilization. When compared to conventional radio networks, CRNs are more versatile and susceptible to wireless connections. Recent advancements in wireless communication have resulted in increasing spectrum scarcity. As a modern innovation, cognitive radio aims to tackle this challenge by proactively utilizing the spectrum. Because cognitive radio (CR) technology gives assailants additional possibilities than a normal wireless network, privacy in a CRN becomes a difficult challenge. We concentrate on examining the surveillance system at a societal level, in which both defense and monitoring are critical components in assuring the channel’s privacy. The current state of investigation into spectrum sensing and potential risks in cognitive radios is reviewed in this study.
由于许多应用领域处于休眠状态,无线传感器网络(WSNs)已成为无线电和移动计算研究的一个重要而新颖的领域。这些应用范围从家庭和办公室的封闭系统配置到在战略爆发点的对手陆地上的露天征兵。认知无线电网络(crn)可以通过集成无线电链路能力和利用认知无线电的网络层操作来创建。CRN设计的目标是通过更有效地处理CRN,而不是简单地连接频谱利用率,来优化一般系统操作,以满足全球任何地点的客户需求。与传统的无线网络相比,crn更通用,更容易受到无线连接的影响。无线通信的最新进展导致频谱日益稀缺。作为一项现代创新,认知无线电旨在通过主动利用频谱来应对这一挑战。由于认知无线电(CR)技术为攻击者提供了比普通无线网络更多的可能性,因此CRN中的隐私成为一项艰巨的挑战。我们专注于在社会层面检查监控系统,其中防御和监控都是确保渠道隐私的关键组成部分。本文综述了认知无线电中频谱感知及其潜在风险的研究现状。
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引用次数: 1
Prime ℒ-ideal spaces in hoop algebras 环代数中的质数-理想空间
Pub Date : 2022-10-25 DOI: 10.1007/s00500-022-07599-3
M. Bakhshi
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引用次数: 0
Predictive Model for Diagnosis of Gestational Diabetes in the Kurdistan Region by a Combination of Clustering and Classification Algorithms: An Ensemble Approach 基于聚类和分类算法的库尔德斯坦地区妊娠期糖尿病诊断预测模型:一种集成方法
Pub Date : 2022-10-22 DOI: 10.1155/2022/9749579
Rasool F. Jader, S. Aminifar
Gestational diabetes is a type of high blood sugar that develops during pregnancy. It can occur at any stage of pregnancy and cause problems for both the mother and the baby, during and after birth. The risks can be reduced if they are early detected and managed, especially in areas where only periodic tests of pregnant women are available. Intelligent systems designed by machine learning algorithms are remodelling all fields of our lives, including the healthcare system. This study proposes a combined prediction model to diagnose gestational diabetes. The dataset was obtained from the Kurdistan region laboratories, which collected information from pregnant women with and without diabetes. The suggested model uses the clustering KMeans technique for data reduction and the elbow method to find the optimal k value and the Mahalanobis distance method to find more related cluster to new samples, and the classification methods such as decision tree, random forest, SVM, KNN, logistic regression, and Naïve Bayes are used for prediction. The results showed that using a mix of KMeans clustering, elbow method, Mahalanobis distance, and ensemble technique significantly improves prediction accuracy.
妊娠糖尿病是一种在怀孕期间发生的高血糖。它可以发生在怀孕的任何阶段,并在分娩期间和分娩后对母亲和婴儿造成问题。如果及早发现和管理这些风险,特别是在只能对孕妇进行定期检查的地区,就可以减少这些风险。由机器学习算法设计的智能系统正在重塑我们生活的各个领域,包括医疗保健系统。本研究提出一种诊断妊娠期糖尿病的联合预测模型。该数据集是从库尔德斯坦地区的实验室获得的,该实验室收集了患有和不患有糖尿病的孕妇的信息。该模型使用聚类KMeans技术进行数据约简,使用肘部法寻找最优k值,使用马氏距离法寻找与新样本更相关的聚类,并使用决策树、随机森林、支持向量机、KNN、逻辑回归和Naïve贝叶斯等分类方法进行预测。结果表明,混合使用KMeans聚类、肘部法、马氏距离和集合技术可显著提高预测精度。
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引用次数: 6
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Appl. Comput. Intell. Soft Comput.
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