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Transformational Entrepreneurship and Digital Platforms: A Combination of ISM-MICMAC and Unsupervised Machine Learning Algorithms 转型创业与数字平台:ISM-MICMAC与无监督机器学习算法的结合
IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-06-13 DOI: 10.3390/bdcc7020118
P. Ebrahimi, Hakimeh Dustmohammadloo, Hosna Kabiri, Parisa Bouzari, M. Fekete-Farkas
For many years, entrepreneurs were considered the change agents of their societies. They use their initiative and innovative minds to solve problems and create value. In the aftermath of the digital transformation era, a new group of entrepreneurs have emerged who are called transformational entrepreneurs. They use various digital platforms to create value. Surprisingly, despite their importance, they have not been sufficiently investigated. Therefore, this research scrutinizes the elements affecting transformational entrepreneurship in digital platforms. To do so, the authors have considered a two-phase method. First, interpretive structural modeling (ISM) and Matrices d’Impacts Croises Multiplication Appliqué a Un Classement (MICMAC) are used to suggest a model. ISM is a qualitative method to reach a visualized hierarchical structure. Then, four unsupervised machine learning algorithms are used to ensure the accuracy of the proposed model. The findings reveal that transformational leadership could mediate the relationship between the entrepreneurial mindset and thinking and digital transformation, interdisciplinary approaches, value creation logic, and technology diffusion. The GMM in the full type, however, has the best accuracy among the various covariance types, with an accuracy of 0.895. From the practical point of view, this paper provides important insights for practitioners, entrepreneurs, and public actors to help them develop transformational entrepreneurship skills. The results could also serve as a guideline for companies regarding how to manage the consequences of a crisis such as a pandemic. The findings also provide significant insight for higher education policymakers.
多年来,企业家被认为是社会变革的推动者。他们用他们的主动性和创新思维来解决问题和创造价值。在数字化转型时代之后,出现了一群新的企业家,他们被称为转型企业家。他们使用各种数字平台来创造价值。令人惊讶的是,尽管它们很重要,却没有得到充分的研究。因此,本研究对数字平台中影响转型创业的因素进行了考察。为此,作者考虑了一种两阶段方法。首先,利用解释结构模型(ISM)和影响矩阵(matrix d’impacts Croises Multiplication appliququea Classement, MICMAC)提出模型。ISM是一种达到可视化层次结构的定性方法。然后,使用四种无监督机器学习算法来确保所提出模型的准确性。研究发现,变革型领导能够在企业家思维与数字化转型、跨学科方法、价值创造逻辑、技术扩散之间起到中介作用。而全型的GMM在各协方差类型中准确率最高,为0.895。从实践的角度来看,本文为实践者、企业家和公共行为者提供了重要的见解,以帮助他们发展转型创业技能。研究结果还可以作为企业如何管理大流行等危机后果的指导方针。研究结果也为高等教育政策制定者提供了重要的见解。
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引用次数: 0
Tactically Maximize Game Advantage by Predicting Football Substitutions Using Machine Learning 通过使用机器学习预测足球换人,在战术上最大化比赛优势
IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-06-12 DOI: 10.3390/bdcc7020117
Alex Mohandas, M. Ahsan, J. Haider
Football (also known as Soccer), boasts a staggering fan base of 3.5 billion individuals spread across 200 countries, making it the world’s most beloved sport. The widespread adoption of advanced technology in sports has become increasingly prominent, empowering players, coaches, and team management to enhance their performance and refine team strategies. Among these advancements, player substitution plays a crucial role in altering the dynamics of a match. However, due to the absence of proven methods or software capable of accurately predicting substitutions, these decisions are often based on instinct rather than concrete data. The purpose of this research is to explore the potential of employing machine learning algorithms to predict substitutions in Football, and how it could influence the outcome of a match. This study investigates the effect of timely and tactical substitutions in football matches and their influence on the match results. Machine learning techniques such as Logistic Regression (LR), Decision tree (DT), K-nearest Neighbor (KNN), Support Vector Machine (SVM), Multinomial Naïve Bayes (MNB), Random Forest (RF) classifiers were implemented and tested to develop models and to predict player substitutions. Relevant data was collected from the Kaggle dataset, which contains data of 51,738 substitutions from 9074 European league football matches in 5 leagues spanning 6 seasons. Machine learning models were trained and tested using an 80-20 data split and it was observed that RF model provided the best accuracy of over 70% and the best F1-score of 0.65 on the test set across all football leagues. SVM model achieved the best Precision of almost 0.8. However, the worst computation time of up to 2 min was consumed. LR showed some overfitting issues with 100% accuracy in the training set, but only 60% accuracy was obtained for the test set. To conclude, based on the time of substitution and match score-line, it was possible to predict the players who can be substituted, which can provide a match advantage. The achieved results provided an effective way to decide on player substitutions for both the team manager and coaches.
足球(也被称为Soccer),拥有惊人的35亿球迷基础,分布在200个国家,使其成为世界上最受欢迎的运动。先进技术在体育运动中的广泛应用日益突出,使运动员、教练和团队管理人员能够提高他们的表现并完善团队战略。在这些进步中,球员替换在改变比赛动态方面起着至关重要的作用。然而,由于缺乏经过验证的方法或能够准确预测替代的软件,这些决策通常是基于直觉而不是具体数据。本研究的目的是探索利用机器学习算法预测足球比赛换人的潜力,以及它如何影响比赛结果。本研究旨在探讨足球比赛中适时换人与战术换人对比赛结果的影响。机器学习技术,如逻辑回归(LR),决策树(DT), k近邻(KNN),支持向量机(SVM),多项式Naïve贝叶斯(MNB),随机森林(RF)分类器被实现和测试,以开发模型并预测球员换人。相关数据来自Kaggle数据集,该数据集包含5个联赛9074场欧洲足球联赛跨越6个赛季的51738次换人数据。机器学习模型使用80-20的数据分割进行训练和测试,观察到RF模型在所有足球联赛的测试集中提供了超过70%的最佳准确率和0.65的最佳f1分数。SVM模型的精度达到了0.8左右。然而,最坏的计算时间高达2分钟。LR在训练集中显示出一些过拟合问题,准确率为100%,但测试集的准确率仅为60%。综上所述,根据换人时间和比赛比分线,可以预测哪些球员可以被换下,这可以提供比赛优势。所得结果为球队经理和教练员的换人决策提供了有效的依据。
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引用次数: 1
Sentiment Analysis and Text Analysis of the Public Discourse on Twitter about COVID-19 and MPox 关于COVID-19和MPox的Twitter公共话语的情感分析和文本分析
IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-06-09 DOI: 10.3390/bdcc7020116
Nirmalya Thakur
Mining and analysis of the big data of Twitter conversations have been of significant interest to the scientific community in the fields of healthcare, epidemiology, big data, data science, computer science, and their related areas, as can be seen from several works in the last few years that focused on sentiment analysis and other forms of text analysis of tweets related to Ebola, E-Coli, Dengue, Human Papillomavirus (HPV), Middle East Respiratory Syndrome (MERS), Measles, Zika virus, H1N1, influenza-like illness, swine flu, flu, Cholera, Listeriosis, cancer, Liver Disease, Inflammatory Bowel Disease, kidney disease, lupus, Parkinson’s, Diphtheria, and West Nile virus. The recent outbreaks of COVID-19 and MPox have served as “catalysts” for Twitter usage related to seeking and sharing information, views, opinions, and sentiments involving both of these viruses. None of the prior works in this field analyzed tweets focusing on both COVID-19 and MPox simultaneously. To address this research gap, a total of 61,862 tweets that focused on MPox and COVID-19 simultaneously, posted between 7 May 2022 and 3 March 2023, were studied. The findings and contributions of this study are manifold. First, the results of sentiment analysis using the VADER (Valence Aware Dictionary for sEntiment Reasoning) approach shows that nearly half the tweets (46.88%) had a negative sentiment. It was followed by tweets that had a positive sentiment (31.97%) and tweets that had a neutral sentiment (21.14%), respectively. Second, this paper presents the top 50 hashtags used in these tweets. Third, it presents the top 100 most frequently used words in these tweets after performing tokenization, removal of stopwords, and word frequency analysis. The findings indicate that tweets in this context included a high level of interest regarding COVID-19, MPox and other viruses, President Biden, and Ukraine. Finally, a comprehensive comparative study that compares the contributions of this paper with 49 prior works in this field is presented to further uphold the relevance and novelty of this work.
挖掘和分析推特对话的大数据一直是医疗保健、流行病学、大数据、数据科学、计算机科学及其相关领域的科学界关注的焦点,这可以从过去几年的几项工作中看出,这些工作侧重于情绪分析和其他形式的文本分析,人类乳头瘤病毒(HPV)、中东呼吸综合征(MERS)、麻疹、寨卡病毒、H1N1、流感样疾病、猪流感、流感、霍乱、李斯特菌病、癌症、肝病、炎症性肠病、肾病、狼疮、帕金森病、白喉和西尼罗河病毒。最近爆发的新冠肺炎和猴痘成为推特使用的“催化剂”,用于寻求和分享涉及这两种病毒的信息、观点、意见和情感。该领域先前的工作都没有分析同时关注新冠肺炎和猴痘的推文。为了解决这一研究差距,研究了2022年5月7日至2023年3月3日期间发布的61862条同时关注猴痘和新冠肺炎的推文。这项研究的发现和贡献是多方面的。首先,使用VADER(Valence Aware Dictionary for sEntitment Reasoning)方法进行情绪分析的结果显示,近一半的推文(46.88%)具有负面情绪。紧随其后的是积极情绪的推文(31.97%)和中立情绪的推特(21.14%)。其次,本文介绍了这些推文中使用的前50个标签。第三,在进行标记化、删除停止语和词频分析后,它列出了这些推文中最常用的前100个单词。调查结果表明,在这种情况下,推文中包括对新冠肺炎、猴痘和其他病毒、拜登总统和乌克兰的高度关注。最后,将本文的贡献与该领域已有的49部作品进行了全面的比较研究,以进一步证明本文的相关性和新颖性。
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引用次数: 14
Twi Machine Translation Twi机器翻译
IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-06-08 DOI: 10.3390/bdcc7020114
Frederick Gyasi, Tim Schlippe
French is a strategically and economically important language in the regions where the African language Twi is spoken. However, only a very small proportion of Twi speakers in Ghana speak French. The development of a Twi–French parallel corpus and corresponding machine translation applications would provide various advantages, including stimulating trade and job creation, supporting the Ghanaian diaspora in French-speaking nations, assisting French-speaking tourists and immigrants seeking medical care in Ghana, and facilitating numerous downstream natural language processing tasks. Since there are hardly any machine translation systems or parallel corpora between Twi and French that cover a modern and versatile vocabulary, our goal was to extend a modern Twi–English corpus with French and develop machine translation systems between Twi and French: Consequently, in this paper, we present our Twi–French corpus of 10,708 parallel sentences. Furthermore, we describe our machine translation experiments with this corpus. We investigated direct machine translation and cascading systems that use English as a pivot language. Our best Twi–French system is a direct state-of-the-art transformer-based machine translation system that achieves a BLEU score of 0.76. Our best French–Twi system, which is a cascading system that uses English as a pivot language, results in a BLEU score of 0.81. Both systems are fine tuned with our corpus, and our French–Twi system even slightly outperforms Google Translate on our test set by 7% relative.
在使用非洲语Twi的地区,法语是一种具有重要战略意义和经济意义的语言。然而,在加纳讲Twi的人中,只有极少数人说法语。Twi-French平行语料库和相应的机器翻译应用程序的开发将提供各种优势,包括刺激贸易和创造就业机会,支持法语国家的加纳侨民,帮助在加纳寻求医疗服务的法语游客和移民,以及促进许多下游自然语言处理任务。由于Twi和法语之间几乎没有任何机器翻译系统或平行语料库覆盖现代通用词汇,我们的目标是用法语扩展现代Twi-英语语料库,并开发Twi和法国之间的机器翻译系统:因此,在本文中,我们展示了10708个平行句子的Twi-法语语料库。此外,我们还用这个语料库描述了我们的机器翻译实验。我们研究了使用英语作为中枢语言的直接机器翻译和级联系统。我们最好的Twi-Franch系统是一个最先进的基于变压器的机器翻译系统,其BLEU得分为0.76。我们最好的法语-Twi系统是一个以英语为核心语言的级联系统,其BLEU得分为0.81。这两个系统都与我们的语料库进行了微调,我们的French–Twi系统在我们的测试集上甚至略优于Google Translate 7%。
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引用次数: 1
Molecular Structure-Based Prediction of Absorption Maxima of Dyes Using ANN Model 基于分子结构的染料吸收最大值的ANN模型预测
Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-06-08 DOI: 10.3390/bdcc7020115
Neeraj Tomar, Geeta Rani, Vijaypal Singh Dhaka, Praveen K. Surolia, Kalpit Gupta, Eugenio Vocaturo, Ester Zumpano
The exponentially growing energy requirements and, in turn, extensive depletion of non-restorable sources of energy are a major cause of concern. Restorable energy sources such as solar cells can be used as an alternative. However, their low efficiency is a barrier to their practical use. This provokes the research community to design efficient solar cells. Based on the study of efficacy, design feasibility, and cost of fabrication, DSSC shows supremacy over other photovoltaic solar cells. However, fabricating DSSC in a laboratory and then assessing their characteristics is a costly affair. The researchers applied techniques of computational chemistry such as Time-Dependent Density Functional Theory, and an ab initio method for defining the structure and electronic properties of dyes without synthesizing them. However, the inability of descriptors to provide an intuitive physical depiction of the effect of all parameters is a limitation of the proposed approaches. The proven potential of neural network models in data analysis, pattern recognition, and object detection motivated researchers to extend their applicability for predicting the absorption maxima (λmax) of dye. The objective of this research is to develop an ANN-based QSPR model for correctly predicting the value of λmax for inorganic ruthenium complex dyes used in DSSC. Furthermore, it demonstrates the impact of different activation functions, optimizers, and loss functions on the prediction accuracy of λmax. Moreover, this research showcases the impact of atomic weight, types of bonds between constituents of the dye molecule, and the molecular weight of the dye molecule on the value of λmax. The experimental results proved that the value of λmax varies with changes in constituent atoms and types of bonds in a dye molecule. In addition, the model minimizes the difference in the experimental and calculated values of absorption maxima. The comparison with the existing models proved the dominance of the proposed model.
能源需求呈指数级增长,而不可恢复的能源又大量耗竭,这是令人关切的主要原因。可再生能源,如太阳能电池,可以作为一种替代品。然而,它们的低效率阻碍了它们的实际应用。这促使研究界设计出高效的太阳能电池。基于效能、设计可行性和制造成本的研究,DSSC显示出优于其他光伏太阳能电池的优势。然而,在实验室中制造DSSC,然后评估它们的特性是一件昂贵的事情。研究人员应用了计算化学技术,如时间依赖密度泛函理论,以及一种从头算方法来定义染料的结构和电子性质,而不需要合成它们。然而,描述符无法提供所有参数影响的直观物理描述是所提出方法的一个限制。神经网络模型在数据分析、模式识别和目标检测方面的潜力已被证明,这促使研究人员将其应用于预测染料的吸收最大值(λmax)。本研究的目的是建立一个基于人工神经网络的QSPR模型,以正确预测用于DSSC的无机钌络合染料的λmax值。进一步证明了不同的激活函数、优化器和损失函数对λmax预测精度的影响。此外,本研究还展示了染料分子的原子量、各组分之间的键类型以及染料分子的分子量对λmax值的影响。实验结果表明,λmax值随染料分子组成原子和化学键类型的变化而变化。此外,该模型将吸收最大值的实验值与计算值之间的差异最小化。通过与已有模型的比较,证明了该模型的优越性。
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引用次数: 0
Exploring Machine Learning Models for Soil Nutrient Properties Prediction: A Systematic Review 探索土壤养分特性预测的机器学习模型:系统综述
IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-06-08 DOI: 10.3390/bdcc7020113
O. Folorunso, O. Ojo, M. Busari, Muftau Adebayo, Adejumobi Joshua, Daniel Folorunso, C. Ugwunna, O. Olabanjo, O. Olabanjo
Agriculture is essential to a flourishing economy. Although soil is essential for sustainable food production, its quality can decline as cultivation becomes more intensive and demand increases. The importance of healthy soil cannot be overstated, as a lack of nutrients can significantly lower crop yield. Smart soil prediction and digital soil mapping offer accurate data on soil nutrient distribution needed for precision agriculture. Machine learning techniques are now driving intelligent soil prediction systems. This article provides a comprehensive analysis of the use of machine learning in predicting soil qualities. The components and qualities of soil, the prediction of soil parameters, the existing soil dataset, the soil map, the effect of soil nutrients on crop growth, as well as the soil information system, are the key subjects under inquiry. Smart agriculture, as exemplified by this study, can improve food quality and productivity.
农业对繁荣的经济至关重要。尽管土壤对可持续粮食生产至关重要,但随着种植的集约化和需求的增加,土壤质量可能会下降。健康土壤的重要性怎么强调都不为过,因为缺乏营养会显著降低作物产量。智能土壤预测和数字土壤测绘提供了精准农业所需的土壤养分分布的准确数据。机器学习技术正在推动智能土壤预测系统的发展。本文对机器学习在土壤质量预测中的应用进行了全面分析。土壤的成分和质量、土壤参数的预测、现有的土壤数据集、土壤地图、土壤养分对作物生长的影响以及土壤信息系统是研究的重点。如本研究所示,智慧农业可以提高食品质量和生产力。
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引用次数: 0
Expanding the Horizons of Situated Visualization: The Extended SV Model 扩展位置可视化的视野:扩展的SV模型
IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-06-07 DOI: 10.3390/bdcc7020112
Nuno Cid Martins, Bernardo Marques, Paulo Dias, B. Sousa Santos
To fully leverage the benefits of augmented and mixed reality (AR/MR) in supporting users, it is crucial to establish a consistent and well-defined situated visualization (SV) model. SV encompasses visualizations that adapt based on context, considering the relevant visualizations within their physical display environment. Recognizing the potential of SV in various domains such as collaborative tasks, situational awareness, decision-making, assistance, training, and maintenance, AR/MR is well-suited to facilitate these scenarios by providing additional data and context-driven visualization techniques. While some perspectives on the SV model have been proposed, such as space, time, place, activity, and community, a comprehensive and up-to-date systematization of the entire SV model is yet to be established. Therefore, there is a pressing need for a more comprehensive and updated description of the SV model within the AR/MR framework to foster research discussions.
为了充分利用增强和混合现实(AR/MR)在支持用户方面的优势,建立一致且定义良好的位置可视化(SV)模型至关重要。SV包含基于上下文的可视化,考虑到物理显示环境中的相关可视化。认识到SV在各种领域的潜力,如协作任务、态势感知、决策、援助、培训和维护,AR/MR非常适合通过提供额外的数据和上下文驱动的可视化技术来促进这些场景。虽然对SV模型提出了空间、时间、地点、活动和社区等观点,但尚未建立一个全面的、最新的系统的整个SV模型。因此,迫切需要在AR/MR框架内对SV模型进行更全面和更新的描述,以促进研究讨论。
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引用次数: 0
Is My Pruned Model Trustworthy? PE-Score: A New CAM-Based Evaluation Metric 我的修剪模型值得信赖吗?pe评分:一种新的基于cam的评价指标
IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-06-06 DOI: 10.3390/bdcc7020111
César G. Pachón, D. Renza, D. Ballesteros
One of the strategies adopted to compress CNN models for image classification tasks is pruning, where some elements, channels or filters of the network are discarded. Typically, pruning methods present results in terms of model performance before and after pruning (assessed by accuracy or a related parameter such as the F1-score), assuming that if the difference is less than a certain value (e.g., 2%), the pruned model is trustworthy. However, state-of-the-art models are not concerned with measuring the actual impact of pruning on the network by evaluating the pixels used by the model to make the decision, or the confidence of the class itself. Consequently, this paper presents a new metric, called the Pruning Efficiency score (PE-score), which allows us to identify whether a pruned model preserves the behavior (i.e., the extracted patterns) of the unpruned model, through visualization and interpretation with CAM-based methods. With the proposed metric, it will be possible to better compare pruning methods for CNN-based image classification models, as well as to verify whether the pruned model is efficient by focusing on the same patterns (pixels) as those of the original model, even if it has reduced the number of parameters and FLOPs.
压缩CNN模型用于图像分类任务的策略之一是剪枝,即丢弃网络中的一些元素、通道或滤波器。通常,修剪方法根据修剪前后的模型性能(通过准确性或f1分数等相关参数评估)来呈现结果,假设如果差异小于某一值(例如2%),则修剪后的模型是可信的。然而,最先进的模型并不关心通过评估模型用于做出决策的像素或类本身的置信度来测量修剪对网络的实际影响。因此,本文提出了一个新的度量,称为修剪效率评分(PE-score),它允许我们通过基于cam的可视化和解释方法来识别修剪后的模型是否保留了未修剪模型的行为(即提取的模式)。使用提出的度量,可以更好地比较基于cnn的图像分类模型的修剪方法,以及通过关注与原始模型相同的模式(像素)来验证修剪模型是否有效,即使它减少了参数和FLOPs的数量。
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引用次数: 1
Comparing Reservoir Artificial and Spiking Neural Networks in Machine Fault Detection Tasks 水库人工神经网络与峰值神经网络在机械故障检测任务中的比较
Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-06-05 DOI: 10.3390/bdcc7020110
Vladislav Kholkin, Olga Druzhina, Valerii Vatnik, Maksim Kulagin, Timur Karimov, Denis Butusov
For the last two decades, artificial neural networks (ANNs) of the third generation, also known as spiking neural networks (SNN), have remained a subject of interest for researchers. A significant difficulty for the practical application of SNNs is their poor suitability for von Neumann computer architecture, so many researchers are currently focusing on the development of alternative hardware. Nevertheless, today several experimental libraries implementing SNNs for conventional computers are available. In this paper, using the RCNet library, we compare the performance of reservoir computing architectures based on artificial and spiking neural networks. We explicitly show that, despite the higher execution time, SNNs can demonstrate outstanding classification accuracy in the case of complicated datasets, such as data from industrial sensors used for the fault detection of bearings and gears. For one of the test problems, namely, ball bearing diagnosis using an accelerometer, the accuracy of the classification using reservoir SNN almost reached 100%, while the reservoir ANN was able to achieve recognition accuracy up to only 61%. The results of the study clearly demonstrate the superiority and benefits of SNN classificators.
在过去的二十年里,第三代人工神经网络(ANNs),也被称为峰值神经网络(SNN),一直是研究人员感兴趣的课题。snn在实际应用中的一个重大困难是其对von Neumann计算机体系结构的适用性较差,因此目前许多研究人员都在关注替代硬件的开发。尽管如此,目前已有几个在传统计算机上实现snn的实验库。在本文中,我们使用RCNet库,比较了基于人工和峰值神经网络的油藏计算架构的性能。我们明确地表明,尽管执行时间更长,snn在复杂数据集的情况下可以表现出出色的分类精度,例如用于轴承和齿轮故障检测的工业传感器的数据。对于其中一个测试问题,即使用加速度计诊断滚珠轴承,使用储层SNN的分类准确率几乎达到100%,而储层ANN的识别准确率仅为61%。研究结果清楚地证明了SNN分类器的优越性和优势。
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引用次数: 1
DSpamOnto: An Ontology Modelling for Domain-Specific Social Spammers in Microblogging DSpamOnto:微博中特定领域社交垃圾邮件发送者的本体建模
IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2023-06-02 DOI: 10.3390/bdcc7020109
Malak Al-hassan, Bilal Abu-Salih, Ahmad K. Al Hwaitat
The lack of regulations and oversight on Online Social Networks (OSNs) has resulted in the rise of social spam, which is the dissemination of unsolicited and low-quality content that aims to deceive and manipulate users. Social spam can cause a range of negative consequences for individuals and businesses, such as the spread of malware, phishing scams, and reputational damage. While machine learning techniques can be used to detect social spammers by analysing patterns in data, they have limitations such as the potential for false positives and false negatives. In contrast, ontologies allow for the explicit modelling and representation of domain knowledge, which can be used to create a set of rules for identifying social spammers. However, the literature exposes a deficiency of ontologies that conceptualize domain-based social spam. This paper aims to address this gap by designing a domain-specific ontology called DSpamOnto to detect social spammers in microblogging that targes a specific domain. DSpamOnto can identify social spammers based on their domain-specific behaviour, such as posting repetitive or irrelevant content and using misleading information. The proposed model is compared and benchmarked against well-proven ML models using various evaluation metrics to verify and validate its utility in capturing social spammers.
由于缺乏对在线社交网络(OSN)的监管和监督,社交垃圾邮件的兴起,即传播旨在欺骗和操纵用户的未经请求的低质量内容。社交垃圾邮件可能会给个人和企业带来一系列负面后果,如恶意软件的传播、网络钓鱼诈骗和声誉损害。虽然机器学习技术可以通过分析数据中的模式来检测社交垃圾邮件发送者,但它们也有局限性,例如潜在的假阳性和假阴性。相反,本体允许对领域知识进行显式建模和表示,这可以用来创建一组用于识别社交垃圾邮件发送者的规则。然而,文献暴露了对基于领域的社交垃圾邮件进行概念化的本体论的不足。本文旨在通过设计一个名为DSpamOnto的特定领域本体来检测微博中的社交垃圾邮件发送者,从而解决这一差距。DSpamOnto可以根据特定领域的行为识别社交垃圾邮件发送者,例如发布重复或无关的内容以及使用误导性信息。将所提出的模型与经过充分验证的ML模型进行比较和基准测试,使用各种评估指标来验证和验证其在捕获社交垃圾邮件发送者方面的效用。
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引用次数: 0
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Big Data and Cognitive Computing
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