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Multi-modality frequency-aware cross attention network for fake news detection 多模态频率感知交叉注意网络假新闻检测
4区 计算机科学 Q1 Mathematics Pub Date : 2023-11-10 DOI: 10.3233/jifs-233193
Wei Cui, Xuerui Zhang, Mingsheng Shang
An increasing number of fake news combining text, images and other forms of multimedia are spreading rapidly across social platforms, leading to misinformation and negative impacts. Therefore, the automatic identification of multimodal fake news has become an important research hotspot in academia and industry. The key to multimedia fake news detection is to accurately extract features of both text and visual information, as well as to mine the correlation between them. However, most of the existing methods merely fuse the features of different modal information without fully extracting intra- and inter-modal connections and complementary information. In this work, we learn physical tampered cues for images in the frequency domain to supplement information in the image space domain, and propose a novel multimodal frequency-aware cross-attention network (MFCAN) that fuses the representations of text and image by jointly modelling intra- and inter-modal relationships between text and visual information whin a unified deep framework. In addition, we devise a new cross-modal fusion block based on the cross-attention mechanism that can leverage inter-modal relationships as well as intra-modal relationships to complement and enhance the features matching of text and image for fake news detection. We evaluated our approach on two publicly available datasets and the experimental results show that our proposed model outperforms existing baseline methods.
越来越多的结合文字、图片和其他多媒体形式的假新闻在社交平台上迅速传播,导致错误信息和负面影响。因此,多模态假新闻的自动识别已成为学术界和业界的重要研究热点。多媒体假新闻检测的关键是准确提取文本信息和视觉信息的特征,并挖掘它们之间的相关性。然而,现有的方法大多只是融合了不同模态信息的特征,没有充分提取模态内、模态间的联系和互补信息。在这项工作中,我们在频域中学习图像的物理篡改线索来补充图像空间域中的信息,并提出了一种新的多模态频率感知交叉注意网络(MFCAN),该网络通过在统一的深度框架内共同建模文本和视觉信息之间的模态内和模态间关系来融合文本和图像的表示。此外,我们设计了一种新的基于交叉注意机制的跨模态融合块,可以利用模态间关系和模态内关系来补充和增强文本和图像的特征匹配,用于假新闻检测。我们在两个公开可用的数据集上评估了我们的方法,实验结果表明我们提出的模型优于现有的基线方法。
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引用次数: 0
Artificial algae optimizer with hybrid deep learning based yoga posture recognition model 基于混合深度学习的瑜伽姿势识别模型的人工藻类优化器
4区 计算机科学 Q1 Mathematics Pub Date : 2023-11-10 DOI: 10.3233/jifs-233583
Nagalakshmi Vallabhaneni, Panneer Prabhavathy
Numerous people are interested in learning yoga due to the increased tension levels in the modern lifestyle, and there are a variety of techniques or resources available. Yoga is practiced in yoga centers, by personal instructors, and through books, the Internet, recorded videos, etc. As the aforementioned resources may not always be available, a large number of people will opt for self-study in fast-paced lifestyles. Self-learning makes it impossible to recognize an incorrect posture. Incorrect poses will have a negative effect on the patient’s health, causing severe agony and long-term chronic issues. Computer vision (CV)-related techniques derive pose features and conduct pose analysis using non-invasive CV methods. The application of machine learning (ML) and artificial intelligence (AI) techniques to an inter-disciplinary field like yoga becomes quite difficult. Due to its potent feature learning ability, deep learning (DL) has recently achieved an impressive level of performance in classifying yoga poses. In this paper, an artificial algae optimizer with hybrid deep learning-based yoga pose estimation (AAOHDL-YPE) model is presented. The presented AAOHDL-YPE model analyzes yoga video clips to estimate pose. Utilizing Part Confidence Map and Part Affinity Field with bipartite equivalent and parsing, OpenPose can be employed to determine the joint location. The deep belief network (DBN) model is then used for Yoga recognition. Finally, the AAO algorithm is utilized to enhance the EfficientNet model’s recognition performance. The results of a comprehensive experimentation analysis reveal that the AAOHDL-YPE technique produces superior results in comparison to existing methods.
由于现代生活方式中紧张程度的增加,许多人对学习瑜伽感兴趣,并且有各种各样的技术或资源可用。瑜伽可以在瑜伽中心,由私人教练,通过书籍,互联网,录制视频等方式练习。由于上述资源可能并不总是可用的,许多人将在快节奏的生活方式中选择自学。自学使人无法识别不正确的姿势。不正确的姿势会对病人的健康产生负面影响,造成严重的痛苦和长期的慢性问题。计算机视觉(CV)相关技术利用非侵入性的CV方法推导姿态特征并进行姿态分析。机器学习(ML)和人工智能(AI)技术在瑜伽等跨学科领域的应用变得相当困难。由于其强大的特征学习能力,深度学习(DL)最近在瑜伽姿势分类方面取得了令人印象深刻的表现。提出了一种基于混合深度学习的瑜伽姿态估计(AAOHDL-YPE)模型的人工藻类优化器。提出的AAOHDL-YPE模型通过分析瑜伽视频片段来估计姿势。利用零件置信度图和零件关联域,结合二部等价和解析,OpenPose可以确定关节的位置。然后将深度信念网络(DBN)模型用于瑜伽识别。最后,利用AAO算法增强了effentnet模型的识别性能。综合实验分析结果表明,与现有方法相比,AAOHDL-YPE技术产生了优越的结果。
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引用次数: 0
A novel ensemble model of multi-class credit assessment based on multi-source fusion theory 基于多源融合理论的多类信用评估集成模型
4区 计算机科学 Q1 Mathematics Pub Date : 2023-11-10 DOI: 10.3233/jifs-233141
Tianhui Wang, Renjing Liu, Jiaohui Liu, Guohua Qi
With the development of artificial intelligence technology, the assessment method based on machine learning, especially the ensemble learning method, has attracted more and more attention in the field of credit assessment. However, most of the ensemble assessment models are complex in structure and costly in time for parameter tuning, few of them break through the limitations of lightweight, universal and efficient. This paper present a new ensemble model for personal credit assessment. First, considering the conflicts and differences among multiple sources of information, a new method is proposed to correct the category prior information by using the difference measure. Then, the revised prior information is fused with the current sample information with the help of Bayesian data fusion theory. The model can integrate the advantages of multiple benchmark classifiers to reduce the interference of uncertain information. To verify the effectiveness of the proposed model, several typical ensemble classification models are selected and empirically studied using real customer credit data from a commercial bank in China, and the results show that among various assessment criteria: the proposed model not only effectively improves the multi-class classification performance, but also outperforms other advanced multi-class classification credit assessment models in terms of parameter tuning and generalizability. This paper supports commercial banks and other financial institutions examination and approval work.
随着人工智能技术的发展,基于机器学习的评估方法,特别是集成学习方法在信用评估领域受到越来越多的关注。然而,大多数集成评估模型结构复杂,参数整定耗时长,很少突破轻量化、通用性和高效性的限制。本文提出了一种新的个人信用评估集成模型。首先,考虑到多信息源之间的冲突和差异,提出了一种利用差异度量对类别先验信息进行校正的新方法。然后,利用贝叶斯数据融合理论将修正后的先验信息与当前样本信息进行融合。该模型可以综合多个基准分类器的优点,减少不确定信息的干扰。为了验证该模型的有效性,选取了几个典型的集成分类模型,并利用中国某商业银行的真实客户信用数据进行了实证研究,结果表明:在多个评估标准中,该模型不仅有效地提高了多类分类性能,而且在参数调整和泛化方面优于其他先进的多类分类信用评估模型。本文支持商业银行等金融机构的审批工作。
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引用次数: 0
Deep convolutional neural networks with Bee Collecting Pollen Algorithm (BCPA)-based landslide data balancing and spatial prediction 基于蜜蜂采集花粉算法(BCPA)的深度卷积神经网络滑坡数据平衡与空间预测
4区 计算机科学 Q1 Mathematics Pub Date : 2023-11-10 DOI: 10.3233/jifs-234924
J. Aruna Jasmine, C. Heltin Genitha
Predicting the landslide-prone area is critical for various applications, including emergency response, land planning, and disaster mitigation. There needs to be a thorough landslide inventory in current studies and appropriate sampling uncertainty issues. Landslide risk mapping has expanded significantly as machine learning techniques have developed. However, one of the primary issues in Landslide Prediction is data imbalance (DI). This is problematic since it is challenging or expensive to generate an accurate inventory map of landslides based on previous data. This study proposes a novel landslide prediction method using Generative Adversarial Networks (GAN) for generating the synthetic data, Synthetic Minority Oversampling Technique (SMOTE) for overcoming the data imbalance problem, and Bee Collecting Pollen Algorithm (BCPA) for feature extraction. Combining 184 landslides and ten criteria, including topographic wetness index (TWI), aspect, distance from the road, total curvature, sediment transport index (STI), height, slope, stream, lithology, and slope length, a geographical database was produced. The data was generated using GAN, a Deep Convolutional Neural Network (DCNN) technique to populate the dataset. The proposed DCNN-BCPA approach findings were merged with current machine learning methods such as Random Forests (RF), Artificial Neural Networks (ANN), k-Nearest Neighbours (k-NN), Decision Trees (DT), Support Vector Machine (SVM), logistic regression (LR). The model’s accuracy, precision, recall, f-score, and RMSE were measured using the following metrics: 92.675%, 96.298%, 90.536%, 96.637%, and 45.623%. This study suggests that harmonizing landslide data may have a substantial impact on the predictive capabilities of machine learning models.
预测滑坡易发地区对各种应用至关重要,包括应急响应、土地规划和减灾。在目前的研究中,需要有一个彻底的滑坡清单和适当的抽样不确定性问题。随着机器学习技术的发展,滑坡风险测绘已经大大扩展。然而,滑坡预测的主要问题之一是数据不平衡。这是有问题的,因为根据以前的数据生成准确的滑坡库存地图是具有挑战性的或昂贵的。本研究提出了一种新的滑坡预测方法,使用生成对抗网络(GAN)生成合成数据,使用合成少数过采样技术(SMOTE)克服数据不平衡问题,使用蜜蜂采集花粉算法(BCPA)进行特征提取。结合184个滑坡和10项指标,包括地形湿度指数(TWI)、坡向、距道路距离、总曲率、输沙指数(STI)、高度、坡度、河流、岩性和坡度长度,建立了一个地理数据库。数据是使用深度卷积神经网络(DCNN)技术来填充数据集的GAN生成的。提出的DCNN-BCPA方法的发现与当前的机器学习方法合并,如随机森林(RF),人工神经网络(ANN), k-近邻(k-NN),决策树(DT),支持向量机(SVM),逻辑回归(LR)。采用92.675%、96.298%、90.536%、96.637%和45.623%的指标对模型的准确率、精密度、召回率、f得分和RMSE进行了测量。这项研究表明,协调滑坡数据可能对机器学习模型的预测能力产生重大影响。
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引用次数: 0
An enhanced affective computing-based framework using machine learning & medical IoT for the efficient pre-emptive decision-making of mental health problems 一种基于机器学习的增强情感计算框架医疗物联网用于心理健康问题的高效先发制人决策
4区 计算机科学 Q1 Mathematics Pub Date : 2023-11-10 DOI: 10.3233/jifs-235503
Aurobind Ganesh, R. Ramachandiran
Globally, the two main causes of young people dying are mental health issues and suicide. A mental health issue is a condition of physiological disorder that inhibits with the vital process of the brain. The amount of individuals with psychiatric illnesses has considerably increased during the past several years. The majority of individuals with mental disorders reside in India. The mental illness can have an impact on a person’s health, thoughts, behaviour, or feelings. The capacity of controlling one’s thoughts, emotions, and behaviour might help an individual to deal with challenging circumstances, build relationships with others, and navigate life’s problems. With a primary focus on the healthcare domain and human-computer interaction, the capacity to recognize human emotions via physiological and facial expressions opens up important research ideas as well as application-oriented potential. Affective computing has recently become one of the areas of study that has received the greatest interest from professionals and academics in a variety of sectors. Nevertheless, despite the rise in articles published, the reviews of a particular aspect of affective computing in mental health still are limited and have certain inadequacies. As a result, a literature survey on the use of affective computing in India to make decisions about mental health issues is discussed. As a result, the paper focuses on how traditional techniques used to monitor and assess physiological data from humans by utilizing deep learning and machine learning approaches for humans’ affect recognition (AR) using Affective computing (AfC) which is a combination of computer science, AI, and cognitive science subjects (such as psychology and psychosocial).
在全球范围内,年轻人死亡的两个主要原因是心理健康问题和自杀。心理健康问题是一种生理紊乱,它抑制了大脑的重要活动。在过去的几年中,患有精神疾病的人的数量大大增加。大多数精神障碍患者居住在印度。精神疾病会对一个人的健康、思想、行为或感觉产生影响。控制一个人的思想、情绪和行为的能力可能有助于一个人处理具有挑战性的环境,与他人建立关系,并解决生活中的问题。主要关注医疗保健领域和人机交互,通过生理和面部表情识别人类情绪的能力开辟了重要的研究思路以及面向应用的潜力。情感计算最近已经成为各个领域的专业人士和学者最感兴趣的研究领域之一。然而,尽管发表的文章有所增加,但对心理健康中情感计算的特定方面的评论仍然有限,并且存在一定的不足。因此,对印度使用情感计算来做出有关心理健康问题的决定的文献调查进行了讨论。因此,本文重点研究了传统技术如何通过利用深度学习和机器学习方法来监测和评估人类的生理数据,从而利用情感计算(AfC)来进行人类的情感识别(AR),情感计算(AfC)是计算机科学、人工智能和认知科学学科(如心理学和社会心理)的结合。
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引用次数: 0
A novel ensemble learning approach for fault detection of sensor data in cyber-physical system 网络物理系统中传感器数据故障检测的集成学习方法
4区 计算机科学 Q1 Mathematics Pub Date : 2023-11-07 DOI: 10.3233/jifs-235809
Ramesh Sneka Nandhini, Ramanathan Lakshmanan
Cyber-physical systems (CPS) play a pivotal role in various critical applications, ranging from industrial automation to healthcare monitoring. Ensuring the reliability and accuracy of sensor data within these systems is of paramount importance. This research paper presents a novel approach for enhancing fault detection in sensor data within a cyber-physical system through the integration of machine learning algorithms. Specifically, a hybrid ensemble methodology is proposed, combining the strengths of AdaBoost and Random Forest with Rocchio’s algorithm, to achieve robust and accurate fault detection. The proposed approach operates in two phases. In the first phase, AdaBoost and Random Forest classifiers are trained on a diverse dataset containing normal and faulty sensor data to develop individual base models. AdaBoost emphasizes misclassified instances, while Random Forest focuses on capturing complex interactions within the data. In the second phase, the outputs of these base models are fused using Rocchio’s algorithm, which exploits the similarities between faulty instances to improve fault detection accuracy. Comparative analyses are conducted against individual classifiers and other ensemble methods to validate the effectiveness of the hybrid approach. The results demonstrate that the proposed approach achieves superior fault detection rates. Additionally, the integration of Rocchio’s algorithm significantly contributes to the refinement of the fault detection process, effectively leveraging the strengths of AdaBoost and Random Forest. In conclusion, this research offers a comprehensive solution to enhance fault detection capabilities in cyber-physical systems by introducing a novel ensemble framework. By synergistically combining AdaBoost, Random Forest, and Rocchio’s algorithm, the proposed methodology provides a robust mechanism for accurately identifying sensor data anomalies, thus bolstering the reliability and performance of cyber-physical systems across a multitude of critical applications.
信息物理系统(CPS)在从工业自动化到医疗监控等各种关键应用中发挥着关键作用。确保这些系统中传感器数据的可靠性和准确性至关重要。本文提出了一种通过集成机器学习算法来增强网络物理系统中传感器数据故障检测的新方法。具体而言,提出了一种混合集成方法,将AdaBoost和Random Forest的优点与Rocchio算法相结合,以实现鲁棒性和准确性的故障检测。拟议的方法分两个阶段进行。在第一阶段,AdaBoost和Random Forest分类器在包含正常和故障传感器数据的不同数据集上进行训练,以开发单独的基本模型。AdaBoost强调错误分类的实例,而Random Forest侧重于捕获数据中的复杂交互。在第二阶段,使用Rocchio算法融合这些基本模型的输出,该算法利用故障实例之间的相似性来提高故障检测的准确性。通过与个体分类器和其他集成方法的对比分析,验证了混合方法的有效性。结果表明,该方法具有较高的故障检测率。此外,Rocchio算法的集成显著有助于改进故障检测过程,有效地利用AdaBoost和随机森林的优势。总之,本研究通过引入一种新颖的集成框架,为增强网络物理系统的故障检测能力提供了一种全面的解决方案。通过将AdaBoost、Random Forest和Rocchio算法协同结合,所提出的方法为准确识别传感器数据异常提供了强大的机制,从而提高了网络物理系统在众多关键应用中的可靠性和性能。
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引用次数: 0
Sine function similarity-based multi-attribute decision making technique of type-2 neutrosophic number sets and application to computer software quality evaluation 基于正弦函数相似度的2型中性数集多属性决策技术及其在计算机软件质量评价中的应用
4区 计算机科学 Q1 Mathematics Pub Date : 2023-11-07 DOI: 10.3233/jifs-233407
Jialin He
With the rapid development of information technology, software products are playing an increasingly important role in people’s production and life, and have penetrated into many industries. Software quality is the degree to which the software meets the specified requirements, and is an important indicator to evaluate the quality of the products used. At present, the scale of software is increasing, and the complexity is increasing. It is an urgent problem to reasonably grasp and ensure the product quality. The measurement and evaluation of Software quality characteristics is an effective means to improve Software quality. Faced with the complex system of software, there are many factors that affect product quality. Current research mainly measures software product quality from a qualitative perspective. The computer software quality evaluation is a classical multi-attribute group decision making (MAGDM). Type-2 Neutrosophic Numbers (T2NNs) is a popular set in the field of MAGDM and many scholars have expanded the traditional MAGDM to this T2NNs in recent years. In this paper, two new similarity measures based on sine function for T2NN is proposed under T2NNs. These two new methods are built for MAGDM based on the sine similarity measures for T2NN (SST) and sine similarity weighted measures for T2NN (SSWT). At the end of this paper, Finally, a practical case study for computer software quality evaluation is constructed to validate the proposed method and some comparative studies are constructed to verify the applicability. Thus, the main research contribution of this work is constructed: (1) two new similarity measures based on sine function for T2NN is proposed under T2NNs; (2) These two new methods are built for MAGDM based on the sine similarity measures for T2NN (SST) and sine similarity weighted measures for T2NN (SSWT); (3) an example for computer software quality evaluation is employed to verify the constructed techniques and several decision comparative analysis are employed to verify the constructed techniques.
随着信息技术的飞速发展,软件产品在人们的生产和生活中发挥着越来越重要的作用,已经渗透到许多行业。软件质量是指软件满足规定要求的程度,是评价所使用产品质量的重要指标。目前,软件的规模越来越大,复杂性也越来越高。合理把握和保证产品质量是一个迫切需要解决的问题。软件质量特征的度量与评价是提高软件质量的有效手段。面对复杂的软件系统,影响产品质量的因素很多。目前的研究主要是从定性的角度来度量软件产品质量。计算机软件质量评价是一个典型的多属性群体决策问题。Type-2 Neutrosophic Numbers (T2NNs)是MAGDM领域的一个热门集合,近年来许多学者将传统的MAGDM扩展到T2NNs。在T2NN下,提出了两种基于正弦函数的T2NN相似度度量方法。基于T2NN的正弦相似度度量(SST)和T2NN的正弦相似度加权度量(SSWT),建立了两种新的MAGDM方法。最后,以计算机软件质量评价为例,对本文提出的方法进行了验证,并进行了对比研究,验证了本文提出的方法的适用性。因此,本文的主要研究贡献如下:(1)在T2NN下,提出了两个新的基于正弦函数的T2NN相似度度量;(2)基于T2NN的正弦相似度度量(SST)和T2NN的正弦相似度加权度量(SSWT),构建了两种新的MAGDM方法;(3)以计算机软件质量评价为例对所构建的技术进行了验证,并采用几种决策对比分析对所构建的技术进行了验证。
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引用次数: 0
Multi-feature fusion sonar image target detection evaluation based on particle swarm optimization algorithm 基于粒子群优化算法的多特征融合声纳图像目标检测评价
4区 计算机科学 Q1 Mathematics Pub Date : 2023-11-07 DOI: 10.3233/jifs-234876
Hongquan Lei, Diquan Li, Haidong Jiang
Traditional sonar image target detection analysis has problems such as long detection time, low detection accuracy and slow detection speed. To solve these problems, this paper will use the multi-feature fusion sonar image target detection algorithm based on the particle swarm optimization algorithm to analyze the sonar image. This algorithm uses the particle swarm algorithm to optimize the combination of multiple feature vectors and realizes the adaptive selection and combination of features, thus improving the accuracy and efficiency of sonar image target detection. The results show that: when other conditions are the same, under the particle group optimization algorithm, the sonar image multiple feature detection algorithm for three sonar image detection time between 4s-9.9s, and the sonar image single feature detection algorithm of three sonar image detection time between 12s-20.9s, shows that the PSO in multiple feature fusion sonar image target detection with better performance and practicability, can be effectively applied to the sonar image target detection field.
传统的声纳图像目标检测分析存在检测时间长、检测精度低、检测速度慢等问题。针对这些问题,本文将采用基于粒子群优化算法的多特征融合声纳图像目标检测算法对声纳图像进行分析。该算法利用粒子群算法对多个特征向量的组合进行优化,实现特征的自适应选择和组合,从而提高了声纳图像目标检测的精度和效率。结果表明:在其他条件相同的情况下,在粒子群优化算法下,声纳图像多特征检测算法对三幅声纳图像的检测时间在4s-9.9s之间,而声纳图像单特征检测算法对三幅声纳图像的检测时间在12s-20.9s之间,表明PSO在多特征融合声纳图像目标检测中具有更好的性能和实用性,可以有效地应用于声纳图像目标检测领域。
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引用次数: 0
Horizoning recent trends in the security of smart cities: Exploratory analysis using latent semantic analysis 展望智慧城市安全的最新趋势:使用潜在语义分析的探索性分析
4区 计算机科学 Q1 Mathematics Pub Date : 2023-11-07 DOI: 10.3233/jifs-235210
Shamneesh Sharma, Nidhi Mishra
The expeditious advancement and widespread implementation of intelligent urban infrastructure have yielded manifold advantages, albeit concurrently engendering novel security predicaments. Examining current patterns in the security of smart cities is paramount in comprehending nascent risks and formulating efficacious preventative measures. The present study suggests the utilization of Latent Semantic Analysis (LSA) as a means to scrutinize and reveal implicit semantic associations within a collection of textual materials pertaining to the security of smart cities. Through the process of gathering and pre-processing pertinent textual data, constructing a matrix that represents the frequency of terms within documents, and utilizing techniques that reduce the number of dimensions, Latent Semantic Analysis (LSA) has the ability to uncover concealed patterns and associations among concepts related to security. This study proposes five recommendations for future research that employ a topic modeling technique to investigate the often-explored subjects related to smart city security. This discovery provides additional evidence in favor of the proposition that a robust blockchain-driven framework is vital for the advancement of smart cities. Latent Semantic Analysis (LSA) offers important insights into the dynamic landscape of smart city security by employing several techniques such as pattern recognition, document or phrase clustering, and result visualization. Through the examination of patterns and developments, individuals in positions of political authority, urban planning, and security knowledge possess the ability to uphold their proficiency, render judicious choices substantiated by empirical data, and establish proactive strategies aimed at preserving the security, privacy, and sustainability of intelligent urban environments.
智能城市基础设施的快速发展和广泛实施带来了多方面的优势,但同时也带来了新的安全困境。研究智慧城市安全的当前模式对于理解新出现的风险并制定有效的预防措施至关重要。本研究建议利用潜在语义分析(LSA)作为一种手段,仔细检查和揭示与智慧城市安全有关的文本材料集合中的隐含语义关联。通过收集和预处理相关文本数据,构建表示文档中术语频率的矩阵,以及利用减少维数的技术,潜在语义分析(LSA)能够揭示与安全相关的概念之间隐藏的模式和关联。本研究为未来的研究提出了五个建议,这些研究采用主题建模技术来调查与智慧城市安全相关的经常探索的主题。这一发现为支持强大的区块链驱动框架对智慧城市的发展至关重要的命题提供了额外的证据。潜在语义分析(LSA)通过采用模式识别、文档或短语聚类以及结果可视化等多种技术,为智能城市安全的动态景观提供了重要的见解。通过对模式和发展的考察,拥有政治权威、城市规划和安全知识的个人有能力保持他们的熟练程度,根据经验数据做出明智的选择,并建立旨在保护智能城市环境的安全、隐私和可持续性的主动战略。
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引用次数: 0
Retraction notice 撤销通知
4区 计算机科学 Q1 Mathematics Pub Date : 2023-11-07 DOI: 10.3233/jifs-219330
L. Nalini Joseph, R. Anand
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引用次数: 0
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Journal of Intelligent & Fuzzy Systems
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