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About Digital Avatars for Control Systems Using Big Data and Knowledge Sharing in Virtual Industries 基于大数据和虚拟工业知识共享的控制系统数字化身研究
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-7519-1.CH004
V. Mkrttchian, I. Palatkin, L. Gamidullaeva, S. Panasenko
The authors in this chapter show the essence, dignity, current state, and development prospects of avatar-based management using blockchain technology for improving implementation of economic solutions in the digital economy of Russia. The purpose of this chapter is not to review the existing published work on avatar-based models for policy advice but to try an assessment of the merits and problems of avatar-based models as a solid basis for economic policy advice that is mainly based on the work and experience within the recently finished projects Triple H Avatar, an avatar-based software platform for HHH University, Sydney, Australia. The agenda of this project was to develop an avatar-based closed model with strong empirical grounding and micro-foundations that provides a uniform platform to address issues in different areas of digital economic and creating new tools to improve blockchain technology using the intelligent visualization techniques for big data analytics.
本章的作者展示了利用区块链技术改善俄罗斯数字经济中经济解决方案实施的基于化身的管理的本质、尊严、现状和发展前景。本章的目的不是回顾现有的基于头像的政策建议模型的出版工作,而是试图评估基于头像的模型作为经济政策建议的坚实基础的优点和问题,主要基于最近完成的项目Triple H Avatar的工作和经验,这是澳大利亚悉尼HHH大学的一个基于头像的软件平台。该项目的议程是开发一个基于虚拟形象的封闭模型,具有强大的经验基础和微观基础,为解决数字经济不同领域的问题提供统一的平台,并使用大数据分析的智能可视化技术创建新工具来改进区块链技术。
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引用次数: 5
Knowledge Management and Business Analytics 知识管理和商业分析
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-7519-1.CH001
N. Honest, Atul Patel
Knowledge management (KM) is a systematic way of managing the organization's assets for creating valuable knowledge that can be used across the organization to achieve the organization's success. A broad category of technologies that allows for gathering, storing, accessing, and analyzing data to help business users make better decisions, business intelligence (BI) allows analyzing business performance through data-driven insight. Business analytics applies different methods to gain insight about the business operations and make better fact-based decisions. Big data is data with a huge size. In the chapter, the authors have tried to emphasize the significance of knowledge management, business intelligence, business analytics, and big data to justify the role of them in the existence and development of an organization and handling big data for a virtual organization.
知识管理(KM)是一种管理组织资产的系统方法,用于创造可在整个组织中使用的有价值的知识,以实现组织的成功。商业智能(BI)是一大类允许收集、存储、访问和分析数据以帮助业务用户做出更好决策的技术,它允许通过数据驱动的洞察力分析业务性能。业务分析应用不同的方法来洞察业务操作,并做出更好的基于事实的决策。大数据是规模巨大的数据。在本章中,作者试图强调知识管理、商业智能、商业分析和大数据的重要性,以证明它们在组织的存在和发展以及为虚拟组织处理大数据中的作用。
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引用次数: 0
Data Imputation Methods for Missing Values in the Context of Clustering 聚类环境下缺失值的数据输入方法
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-7519-1.CH011
M. Aktaş, Sinan Kaplan, H. Abaci, O. Kalipsiz, U. Ketenci, Umut Orçun Turgut
Missing data is a common problem for data clustering quality. Most real-life datasets have missing data, which in turn has some effect on clustering tasks. This chapter investigates the appropriate data treatment methods for varying missing data scarcity distributions including gamma, Gaussian, and beta distributions. The analyzed data imputation methods include mean, hot-deck, regression, k-nearest neighbor, expectation maximization, and multiple imputation. To reveal the proper methods to deal with missing data, data mining tasks such as clustering is utilized for evaluation. With the experimental studies, this chapter identifies the correlation between missing data imputation methods and missing data distributions for clustering tasks. The results of the experiments indicated that expectation maximization and k-nearest neighbor methods provide best results for varying missing data scarcity distributions.
数据缺失是影响数据聚类质量的常见问题。大多数现实生活中的数据集都有缺失的数据,这反过来又会对聚类任务产生一些影响。本章研究了不同缺失数据稀缺性分布(包括伽马分布、高斯分布和beta分布)的适当数据处理方法。分析的数据归算方法包括均值、热甲板、回归、k近邻、期望最大化和多重归算。为了揭示处理缺失数据的正确方法,利用聚类等数据挖掘任务进行评估。通过实验研究,本章确定了缺失数据输入方法与聚类任务缺失数据分布之间的相关性。实验结果表明,期望最大化和k近邻方法对不同缺失数据稀缺性分布提供了最好的结果。
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引用次数: 6
What Are Basketball Fans Saying on Twitter? 篮球迷在推特上都说了些什么?
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-7519-1.CH008
Burçin Güçlü, M. Garza, C. Kennett
Social media receives growing interest from sports executives. Yet, very little is known about how to make use of such user-generated, unstructured data. By exploring tweets generated during Turkish Airlines Euroleague's Final Four event, which broadcasted the four tournaments of championship among four finalist teams, the authors studied how fans respond to gains and losses and how engaged they were during games through the course of the event. The authors found that favorable reactions were received when teams won, but the magnitude of unfavorable reaction was larger when teams lost. When it came to the organizer rather than the teams, the organizer of the event received most of the positive feedback. The authors also found that main source of tweets was smartphones while tablets were not among real-time feedback devices.
体育高管对社交媒体越来越感兴趣。然而,人们对如何利用这种用户生成的非结构化数据知之甚少。通过研究土耳其航空欧洲联赛四强赛期间产生的推文,作者研究了球迷如何对输赢做出反应,以及他们在整个比赛过程中的参与度。土耳其航空欧洲联赛四强赛在四支进入决赛的球队中播出了四场锦标赛。研究人员发现,当球队获胜时,人们会得到积极的反应,但当球队输球时,负面反应的幅度更大。当涉及到组织者而不是团队时,活动的组织者收到了大多数积极的反馈。作者还发现,推文的主要来源是智能手机,而平板电脑并不在实时反馈设备之列。
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引用次数: 1
Analysis of the 5Vs of Big Data in Virtual Travel Organizations 虚拟旅游组织大数据的5v分析
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-7519-1.CH002
Serkan Polat, Fevzi Esen, Emrah Bilgiç
Virtual travel organizations, one of the most effective actors of tourism marketing, use information technology-based systems in parallel with the increasing use of information technologies. The competition in the tourism industries pushes virtual travel organizations to remain dynamic. Thus, customers can demand affordable and qualified tourism products. For this reason, it is inevitable for virtual travel organizations to use information technologies, in order to meet customers' demands efficiently and cost-effectively. Due to its nature, tourism products cannot be experienced before the sale. In order to analyze the expectations of the tourism customers, big-data-related technologies are valuable assets to the virtual travel organizations. From this point of view, managing massive data generated by tourism consumers is vital for the tourism supply chain. To the best of the authors' knowledge, there is no study relating big data and virtual travel organizations. In this chapter, the importance of five key concepts of big data have been discussed in terms of virtual travel organizations.
虚拟旅游组织是旅游营销中最有效的参与者之一,随着信息技术的日益普及,虚拟旅游组织也在使用基于信息技术的系统。旅游业的竞争促使虚拟旅游组织保持活力。因此,顾客可以要求负担得起和合格的旅游产品。因此,虚拟旅游组织不可避免地要使用信息技术,以高效、经济地满足客户的需求。由于旅游产品的性质,它在销售之前是无法体验的。为了分析旅游客户的期望,与大数据相关的技术是虚拟旅游组织的宝贵资产。从这个角度来看,管理旅游消费者产生的海量数据对旅游供应链至关重要。据作者所知,目前还没有关于大数据和虚拟旅游组织的研究。在本章中,从虚拟旅游组织的角度讨论了大数据的五个关键概念的重要性。
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引用次数: 1
Integrating Heterogeneous Enterprise Data Using Ontology in Supply Chain Management 基于本体的供应链管理异构企业数据集成
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-7519-1.CH003
Kamalendu Pal
Many industries prefer worldwide business operations due to the economic advantage of globalization on product design and development. These industries increasingly operate globalized multi-tier supply chains and deliver products and services all over the world. This global approach produces huge amounts of heterogeneous data residing at various business operations, and the integration of these data plays an important role. Integrating data from multiple heterogeneous sources need to deal with different data models, database schema, and query languages. This chapter presents a semantic web technology-based data integration framework that uses relational databases and XML data with the help of ontology. To model different source schemas, this chapter proposes a method based on the resource description framework (RDF) graph patterns and query rewriting techniques. The semantic translation between the source schema and RDF ontology is described using query and transformational language SPARQL.
由于全球化在产品设计和开发方面的经济优势,许多行业更喜欢全球业务运营。这些行业越来越多地运营全球化的多层供应链,并在全球范围内提供产品和服务。这种全局方法产生了驻留在各种业务操作中的大量异构数据,这些数据的集成起着重要作用。集成来自多个异构源的数据需要处理不同的数据模型、数据库模式和查询语言。本章提出了一个基于语义web技术的数据集成框架,该框架使用关系数据库和XML数据,并借助于本体。为了对不同的源模式建模,本章提出了一种基于资源描述框架(RDF)图模式和查询重写技术的方法。源模式和RDF本体之间的语义转换使用查询和转换语言SPARQL进行描述。
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引用次数: 4
Generating Big Data 生成大数据
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-7519-1.CH006
E. Yeboah-Boateng
Big data is characterized as huge datasets generated at a fast rate, in unstructured, semi-structured, and structured data formats, with inconsistencies and disparate data types and sources. The challenge is having the right tools to process large datasets in an acceptable timeframe and within reasonable cost range. So, how can social media big datasets be harnessed for best value decision making? The approach adopted was site scraping to collect online data from social media and other websites. The datasets have been harnessed to provide better understanding of customers' needs and preferences. It's applied to design targeted campaigns, to optimize business processes, and to improve performance. Using the social media facts and rules, a multivariate value creation decision model was built to assist executives to create value based on improved “knowledge” in a hindsight-foresight-insight continuum about their operations and initiatives and to make informed decisions. The authors also demonstrated use cases of insights computed as equations that could be leveraged to create sustainable value.
大数据的特点是快速生成的庞大数据集,数据格式有非结构化、半结构化和结构化,数据类型和来源不一致。面临的挑战是,在可接受的时间范围内,在合理的成本范围内,找到合适的工具来处理大型数据集。那么,如何利用社交媒体大数据集来做出最有价值的决策呢?采用的方法是网站抓取,从社交媒体和其他网站收集在线数据。这些数据集已被用来更好地了解客户的需求和偏好。它被应用于设计有针对性的活动、优化业务流程和提高性能。利用社交媒体的事实和规则,构建了一个多元价值创造决策模型,以帮助高管在对其运营和计划的事后-预见-洞察连续体中基于改进的“知识”创造价值,并做出明智的决策。作者还展示了用公式计算洞察力的用例,这些公式可以用来创造可持续的价值。
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引用次数: 0
Clustering Earthquake Data 地震数据聚类
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-7519-1.CH010
Cihan Savaş, M. Yıldız, S. Eken, Cevat Ikibas, A. Sayar
Seismology, which is a sub-branch of geophysics, is one of the fields in which data mining methods can be effectively applied. In this chapter, employing data mining techniques on multivariate seismic data, decomposition of non-spatial variable is done. Then k-means clustering, density-based spatial clustering of applications with noise (DBSCAN), and hierarchical tree clustering algorithms are applied on decomposed data, and then pattern analysis is conducted using spatial data on the resulted clusters. The conducted analysis suggests that the clustering results with spatial data is compatible with the reality and characteristic features of regions related to earthquakes can be determined as a result of modeling seismic data using clustering algorithms. The baseline metric reported is clustering times for varying size of inputs.
地震学是地球物理学的一个分支,是数据挖掘方法可以有效应用的领域之一。本章采用数据挖掘技术对多变量地震数据进行非空间变量的分解。然后对分解后的数据采用k-means聚类、基于密度的带噪声应用空间聚类(DBSCAN)和层次树聚类算法,并对聚类结果进行空间数据模式分析。分析表明,利用聚类算法对地震数据进行建模,得到的空间数据聚类结果符合实际情况,可以确定地震相关区域的特征特征。报告的基线度量是不同大小输入的聚类时间。
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引用次数: 2
Developing a Big-Data-Based Model to Study and Analyze Network Traffic 发展基于大数据的网络流量研究与分析模型
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-7519-1.CH009
Mahesh Pawar, A. Panday, Ratish Agrawal, Sachin Goyal
Network is a connection of devices in either a wired or wireless manner. Networking has become a part and parcel of computing in the present world. They form the backbone of the modern-day computing business. Hence, it is important for networks to remain alive, up, and reliable all the time. A way to ensure that is network traffic analysis. Network traffic analysis mainly deals with a study of bandwidth utilization, transmission and reception rates, error rates, etc., which is important to keep the network smooth and improve economic efficiency. The proposed model approaches network traffic analysis in a way to collect network information and then deal with it using technologies available for big data analysis. The model aims to analyze the collected information to calculate a factor called reliability factor, which can guide in effective network management. The model also aims to assist the network administrator by informing him whether network traffic is high or low, and the administrator can then take targeted steps to prevent network failure.
网络是以有线或无线方式连接设备的一种方式。网络已经成为当今世界计算的重要组成部分。它们构成了现代计算机行业的支柱。因此,网络始终保持活跃、正常和可靠是非常重要的。确保这一点的一种方法是网络流量分析。网络流量分析主要研究带宽利用率、收发率、错误率等,对保持网络畅通、提高经济效益具有重要意义。该模型通过收集网络信息,然后使用可用的大数据分析技术来处理网络流量分析。该模型旨在对收集到的信息进行分析,计算出一个称为可靠性因子的因子,从而指导有效的网络管理。该模型还旨在通过通知网络流量是高还是低来帮助网络管理员,然后管理员可以采取有针对性的措施来防止网络故障。
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引用次数: 1
期刊
Big Data and Knowledge Sharing in Virtual Organizations
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