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Assessing Animal Emotion and Behavior Using Mobile Sensors and Affective Computing 利用移动传感器和情感计算评估动物情绪和行为
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-5793-7.CH003
H. Yates, Brent C. Chamberlain, William Baldwin, W. Hsu, D. Vanlandingham
Affective computing is a very active and young field. It is driven by several promising areas that could benefit from affective intelligence such as virtual reality, smart surveillance, perceptual interfaces, and health. This chapter suggests new design for the detection of animal affect and emotion under an affective computing framework via mobile sensors and machine learning. The authors review existing literature and suggest new use cases by conceptual reevaluation of existing work done in affective computing and animal sensors.
情感计算是一个非常活跃和年轻的领域。它是由几个有前途的领域驱动的,这些领域可以从情感智能中受益,比如虚拟现实、智能监控、感知界面和健康。本章提出了在情感计算框架下通过移动传感器和机器学习检测动物情感和情绪的新设计。作者回顾了现有文献,并通过对情感计算和动物传感器中现有工作的概念重新评估提出了新的用例。
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引用次数: 1
Addressing Security Issues and Standards in Internet of Things 解决物联网安全问题和标准问题
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-5793-7.CH010
Sushruta Mishra, Soumya Sahoo, B. K. Mishra
In the IoTs era, the short-range mobile transceivers will be implanted in a variety of daily requirements. In this chapter, a detail survey in several security and privacy concerns related to internet of things (IoTs) by defining some open challenges are discussed. The privacy and security implications of such an evolution should be carefully considered to the promising technology. The protection of data and privacy of users has been identified as one of the key challenges in the IoT. In this chapter, the authors present internet of things with architecture and design goals. They survey security and privacy concerns at different layers in IoTs. In addition, they identify several open issues related to the security and privacy that need to be addressed by research community to make a secure and trusted platform for the delivery of future internet of things. The authors also discuss applications of IoTs in real life. A novel approach based on cognitive IoT is presented, and a detailed study is undertaken. In the future, research on the IoTs will remain a hot issue.
在物联网时代,短距离移动收发器将被植入各种日常需求中。在本章中,通过定义一些开放的挑战,详细调查了与物联网(iot)相关的几个安全和隐私问题。对于这种有前途的技术,应该仔细考虑这种演变的隐私和安全影响。数据和用户隐私的保护已被确定为物联网的关键挑战之一。在本章中,作者介绍了物联网的架构和设计目标。他们调查了物联网不同层面的安全和隐私问题。此外,他们还指出了几个与安全性和隐私相关的开放性问题,这些问题需要研究社区解决,以便为未来的物联网提供一个安全可信的平台。作者还讨论了物联网在现实生活中的应用。提出了一种基于认知物联网的新方法,并进行了详细的研究。未来,对物联网的研究仍将是一个热点问题。
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引用次数: 6
Software Quality Measurement 软件质量度量
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-5793-7.CH007
Dalila Amara, Latifa Ben Arfa Rabai
Software measurement helps to quantify the quality and the effectiveness of software to find areas of improvement and to provide information needed to make appropriate decisions. In the recent studies, software metrics are widely used for quality assessment. These metrics are divided into two categories: syntactic and semantic. A literature review shows that syntactic ones are widely discussed and are generally used to measure software internal attributes like complexity. It also shows a lack of studies that focus on measuring external attributes like using internal ones. This chapter presents a thorough analysis of most quality measurement concepts. Moreover, it makes a comparative study of object-oriented syntactic metrics to identify their effectiveness for quality assessment and in which phase of the development process these metrics may be used. As reliability is an external attribute, it cannot be measured directly. In this chapter, the authors discuss how reliability can be measured using its correlation with syntactic metrics.
软件度量有助于量化软件的质量和有效性,从而找到需要改进的地方,并提供做出适当决策所需的信息。在最近的研究中,软件度量被广泛地用于质量评估。这些度量分为两类:语法和语义。一篇文献综述表明,语法度量被广泛讨论,通常用于度量软件的内部属性,如复杂性。它还表明,缺乏专注于测量外部属性(如使用内部属性)的研究。本章对大多数质量测量概念进行了全面的分析。此外,它还对面向对象的语法度量进行了比较研究,以确定它们对质量评估的有效性,以及在开发过程的哪个阶段可以使用这些度量。由于可靠性是一种外部属性,不能直接测量。在本章中,作者讨论了如何使用可靠性与句法度量的相关性来测量可靠性。
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引用次数: 0
Clustering Techniques 集群技术
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-5793-7.CH009
H. Kumar
Clustering is a process of grouping a set of data points in such a way that data points in the same group (called cluster) are more similar to each other than to data points lying in other groups (clusters). Clustering is a main task of exploratory data mining, and it has been widely used in many areas such as pattern recognition, image analysis, machine learning, bioinformatics, information retrieval, and so on. Clusters are always identified by similarity measures. These similarity measures include intensity, distance, and connectivity. Based on the applications of the data, different similarity measures may be chosen. The purpose of this chapter is to produce an overview of much (certainly not all) of clustering algorithms. The chapter covers valuable surveys, the types of clusters, and methods used for constructing the clusters.
聚类是对一组数据点进行分组的过程,其方式是同一组(称为集群)中的数据点彼此之间的相似性比位于其他组(集群)中的数据点更相似。聚类是探索性数据挖掘的一项主要任务,在模式识别、图像分析、机器学习、生物信息学、信息检索等领域得到了广泛的应用。聚类总是通过相似性度量来识别。这些相似性度量包括强度、距离和连通性。根据数据的应用,可以选择不同的相似性度量。本章的目的是对大部分(当然不是全部)聚类算法进行概述。本章涵盖了有价值的调查,集群的类型,以及用于构建集群的方法。
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引用次数: 1
Design of Cognitive Healthcare System for Coronary Cardiac Disease Detection 冠心病检测认知保健系统的设计
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-5793-7.CH001
M. Mohanty
This chapter focuses on clinical decision system (CDS) uses in healthcare units. In this chapter, cognitive approaches are taken using soft computing techniques to design clinical decision systems (CDS) for modern healthcare units. Cognitive computing-based approach is considered. It focuses on cardiac disease detection exclusively by considering its surrounding factors. Fuzzy logic is utilized as one part. The other part includes diabetic detection using deep neural network (DNN) for the automatic identification of the disease. The experiment was done with the Pima Indian dataset. The classification result has been presented in the result section. The decision system in the healthcare unit is a suitable example of a multi-agent system.
本章着重于临床决策系统(CDS)在医疗保健单位的使用。在本章中,认知方法采用软计算技术来设计临床决策系统(CDS)为现代医疗保健单位。考虑了基于认知计算的方法。它专注于通过考虑其周围因素来检测心脏病。模糊逻辑是其中的一部分。另一部分是利用深度神经网络(DNN)对糖尿病进行自动识别。实验是用皮马印第安人的数据集完成的。在结果部分给出了分类结果。医疗保健单位中的决策系统是多智能体系统的一个合适示例。
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引用次数: 2
A Cognitive Information Retrieval Using POP Inference Engine Approaches 基于POP推理引擎方法的认知信息检索
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-5793-7.CH002
Parul Kalra, D. Mehrotra, Abdul Wahid
The focus of this chapter is to design a cognitive information retrieval (CIR) framework using inference engine (IE). IE permits one to analyze the central concepts of information retrieval: information, information needs, and relevance. The aim is to propose an inference engine in which adequate user preferences are considered. As the cognitive inference engine (CIE) approach is involved, the complex inquiries are required to return more important outcomes as opposed to customary database questions which get irrelevant and unsolicited responses or results. The chapter highlights the framework of a cognitive rule-based engine in which preference queries are dealt with while keeping in mind the intention of the user, their performance, and optimization.
本章的重点是设计一个基于推理引擎的认知信息检索框架。IE允许人们分析信息检索的中心概念:信息、信息需求和相关性。目的是提出一个充分考虑用户偏好的推理引擎。由于认知推理引擎(CIE)方法的参与,复杂的查询需要返回更重要的结果,而不是传统的数据库问题得到无关的和未经请求的响应或结果。本章重点介绍了一个基于认知规则的引擎框架,在处理偏好查询的同时,要牢记用户的意图、性能和优化。
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引用次数: 0
Neuro-Fuzzy Models and Applications 神经模糊模型及其应用
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-5793-7.CH004
Sushruta Mishra, Soumya Sahoo, B. K. Mishra
The modern techniques of artificial intelligence have found application in almost all the fields of human knowledge. Among them, two important techniques of artificial intelligence, fuzzy systems (FS) and artificial neural networks (ANNs), have found many applications in various fields such as production, control systems, diagnostic, supervision, etc. They evolved and improved throughout the years to adapt arising needs and technological advancements. However, a great emphasis is given in the engineering field. The techniques of artificial intelligence based on fuzzy logic and neural networks are frequently applied together for solving engineering problems where the classic techniques do not supply an easy and accurate solution. Separately, each one of these techniques possesses advantages and disadvantages that, when mixed together, provide better results than the ones achieved with the use of each isolated technique. As ANNs and fuzzy systems have often been applied together, the concept of a fusion between them started to take shape. Neuro-fuzzy systems were born which utilize the advantages of both techniques. Such systems show two distinct ways of behavior. In a first phase, called learning phase, it behaves like neural networks that learn internal parameters off-line. Later, in the execution phase, it behaves like a fuzzy logic system. A neuro-fuzzy system is a fuzzy system that uses a learning algorithm derived from or inspired by neural network theory to determine its parameters (fuzzy sets and fuzzy rules) by processing data samples. Neural networks and fuzzy systems can be combined to join its advantages and to cure its individual illness. Neural networks introduce its computational characteristics of learning in the fuzzy systems and receive from them the interpretation and clarity of systems representation. Thus, the disadvantages of the fuzzy systems are compensated by the capacities of the neural networks. These techniques are complementary, which justifies its use together. This chapter deals with an analysis of neuro-fuzzy systems. Benefits of these systems are studied with its limitations too. Comparative analyses of various categories of neuro-fuzzy systems are discussed in detail. Apart from these, real-time applications of such systems are also presented.
人工智能的现代技术几乎应用于人类知识的所有领域。其中,人工智能的两大重要技术——模糊系统(FS)和人工神经网络(ann)在生产、控制系统、诊断、监督等各个领域都有广泛的应用。它们多年来不断发展和改进,以适应日益增长的需求和技术进步。然而,在工程领域给予了很大的重视。基于模糊逻辑和神经网络的人工智能技术经常被用于解决经典技术无法提供简单和准确解的工程问题。单独地说,这些技术中的每一种都有优点和缺点,当它们混合在一起时,比使用单独的技术所获得的结果更好。由于人工神经网络和模糊系统经常一起应用,它们之间融合的概念开始形成。利用这两种技术优点的神经模糊系统诞生了。这类系统表现出两种截然不同的行为方式。在第一个阶段,称为学习阶段,它的行为就像离线学习内部参数的神经网络。随后,在执行阶段,它表现得像一个模糊逻辑系统。神经模糊系统是一种模糊系统,它使用源自或受神经网络理论启发的学习算法,通过处理数据样本来确定其参数(模糊集和模糊规则)。神经网络和模糊系统可以结合起来,结合它的优点,治疗它的个体疾病。神经网络在模糊系统中引入其学习的计算特性,并从中获得系统表示的解释和清晰度。因此,模糊系统的缺点被神经网络的能力所弥补。这些技术是互补的,因此可以一起使用。本章讨论神经模糊系统的分析。研究了这些系统的优点及其局限性。对不同类型的神经模糊系统进行了比较分析。此外,还介绍了该系统的实时应用。
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引用次数: 2
A Study on Risk Management in Financial Market 金融市场风险管理研究
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-5793-7.CH008
S. Das, Kuhoo, Debahuti Mishra, P. Mallick
The basic aim of risk management is to recognize, assess, and prioritize risk in order to assure that the uncertainty should not deviate from the intended purpose of the business goals. Risk can take place from various sources, which includes uncertainty in financial markets, recessions, inflation, interest rates, currency fluctuations, etc. Various methods used for this management of risk are faced with various decisions such as the market price, historical data, statistical methodologies, etc. For stock prices, the information derives from the historical data where the next price depends only upon the current price and some of the outside factors. Financial market is very risky to invest money, but the proper prediction with handling the risk will benefit a lot. Various types of risk in the financial market and the appropriate solutions to overcome the risk are analyzed in this study.
风险管理的基本目的是识别、评估和确定风险的优先级,以确保不确定性不会偏离业务目标的预期目的。风险的来源多种多样,包括金融市场的不确定性、经济衰退、通货膨胀、利率、货币波动等。用于这种风险管理的各种方法面临着各种决策,如市场价格、历史数据、统计方法等。对于股票价格,信息来源于历史数据,下一个价格只取决于当前价格和一些外部因素。金融市场的投资风险很大,但正确的预测和处理风险会带来很大的收益。本研究分析了金融市场中各种类型的风险以及克服风险的适当解决方案。
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引用次数: 0
Green Computing 绿色计算
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-5793-7.CH006
S. K. Mohapatra, Priyadarshini Nayak, Sushruta Mishra, S. Bisoy
With the increase in the number of computers, the amount of energy consumed by them is on a significant rise, which in turn is increasing carbon content in atmosphere. With the realization of this problem, measures are being taken to minimize the power usage of computers. The solution is green computing. It is the efficient utilization of computing resources while minimizing environmental impact and ensuring both economic and social benefits. Green computing is a balanced and sustainable approach towards achieving a healthier and safer environment without compromising the technological needs of the current and future generations. This chapter studies the architectural aspects, the scope, and the applications of green computing. The emphasis of this study is on current trends in green computing, challenges in the field of green computing, and the future trends of green computing.
随着计算机数量的增加,它们消耗的能量正在显著增加,这反过来又增加了大气中的碳含量。随着这一问题的认识,人们正在采取措施尽量减少计算机的耗电量。解决方案是绿色计算。它是有效地利用计算资源,同时最大限度地减少对环境的影响,并确保经济效益和社会效益。绿色计算是一种平衡和可持续的方法,旨在实现更健康和更安全的环境,而不会损害当前和后代的技术需求。本章研究绿色计算的架构方面、范围和应用。本研究的重点是绿色计算的当前趋势、绿色计算领域面临的挑战以及绿色计算的未来趋势。
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引用次数: 1
Human Health Risk Assessment via Amalgamation of Probability and Fuzzy Numbers 基于概率与模糊数融合的人类健康风险评价
Pub Date : 1900-01-01 DOI: 10.4018/978-1-5225-5793-7.CH005
P. Dutta
This chapter presents an approach to combine probability distributions with imprecise (fuzzy numbers) parameters (mean and standard deviation) as well as fuzzy numbers (FNs) of various types and shapes within the same framework. The amalgamation of probability distribution and fuzzy numbers are done by generating three algorithms. Human health risk assessment is performed through the proposed algorithms. It is found that the chapter provides an exertion to perform human health risk assessment in a specific manner that has more efficacies because of its capacity to exemplify uncertainties of risk assessment model in its own fashion. It affords assistance to scientists, environmentalists, and experts to perform human health risk assessment providing better efficiency to the output.
本章提出了一种在同一框架内将概率分布与不精确(模糊数)参数(均值和标准差)以及各种类型和形状的模糊数(FNs)结合起来的方法。通过生成三种算法实现了概率分布与模糊数的合并。通过提出的算法进行人类健康风险评估。发现本章提供了一种以特定方式进行人类健康风险评估的努力,由于它能够以自己的方式举例说明风险评估模型的不确定性,因此更有效。它帮助科学家、环保主义者和专家进行人类健康风险评估,从而提高产出效率。
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引用次数: 0
期刊
Emerging Trends and Applications in Cognitive Computing
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