Book Volume 3
Preface
Page: i-ii (2)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030001
Big Data Introduction
Page: 1-34 (34)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030002
PDF Price: $15
Abstract
Big Data is a new social and economic development engine worldwide. The
accumulation of data globally is approaching a critical threshold due to recent
innovations in health, education, and other sectors. Data complexity depends on data
volumes, diversity, speed, and truthfulness. These also affect the capacity to find big
data analytics and associated tools.
Big Data Analytics is a significant challenge in developing highly scalable data and
data integration algorithms. New algorithms, methods, systems, and applications in Big
Data Analytics are potential discoveries that will effectively identify valuable and
hidden information in Big Data. This chapter discusses big data, and its history; Big
Data drives the world's modern organizations. There is a need to convert Big Data into
Business Intelligence that enterprises can readily deploy. Better data leads to better
decision-making and improved strategies for organizations.
Human-Computer Interface Introduction
Page: 35-68 (34)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030003
PDF Price: $15
Abstract
HCI is creating and developing interactive computer systems in which users
can communicate with each other. It covers both laptops and embedded systems in
various devices. The success of technology comes simply from the user's ease of
interacting with it. The customer will automatically disregard the product or technology
when the interface is wrong or difficult to use. A convenient and easy way of using a
device does not mean that behind such a system is simple technology; a very
sophisticated technology is required to construct it. Functionality and accessibility are
the main principles of HCI. Systems services are customarily called functions.
Functions are commonly referred to as services delivered by a device. Usefulness is
where users simply, correctly, and explicitly use the device's features. Features and
usability could differ between systems. This chapter, “Human-Computer Interface
(HCI)”, deals with man-machine studies or man-machine interaction design, execution
and assessment of computer systems and related phenomena for human use.
HCI Learning From Cognitive Web
Page: 69-121 (53)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030004
PDF Price: $15
Abstract
A cognitive framework is suggested in this article to monitor learning
processes based on the combination of human-computer interaction. The observation is
founded on the interaction of elements between humans and the computer. The
adaptive architecture of cognitive learning is introduced for interaction between
humans and machines. The authors have also chosen a topology tree as the hierarchical
model of a low-dimensional educational space to perform online observations. In
addition, the methodology for the BSM (coupling-manifold brain human cognitive
scenario) is provided for the coupling morphism. It proposes that things be observed in
a mental or learning diverse way. Finally, this chapter suggests developing new tools
and implementing different functionalities integrating intelligent data analysis
techniques. An area that still needs further work is the cognitive area, particularly
towards helping build more accurate mental model.
Thinking Tool Based HCI
Page: 122-149 (28)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030005
PDF Price: $15
Abstract
This chapter provides methods to systematically and efficiently examine
massive complex systems to describe the conduct of a realistic CRT exercise in larger
companies. Situations are explored to capture complicated probable futures, and
suggestions for creating CRT exercises are provided. Complexity is organizations. As a
result, a part discusses the intricacy of the interactions and interconnection between the
four fields: physical, technological, cognitive, and social. This debate introduces two
approaches to managing this degree of complexity. One of the offered approaches has
been intended to separate this complexity into chunks in which huge organizations can
generate impacts. This chapter presents the different operations that can be conducted
on networks in which it is possible to capture a complex system such as a social system
in a network form.
Big Data Decision Computations To HCI
Page: 150-191 (42)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030006
PDF Price: $15
Abstract
This chapter deals with CRT calculations. The idea of experimenting,
optimization, simulation, data mining, and large data is explained in plain language
before introducing the intelligent architectures, which turn data into CRT system
judgments. Most of the architecture may be employed in any circumstance outside the
CRT. However, increasing this architecture to the ability of CRT provides unparalleled
computing skills for both offline and real-time decision-making. In this chapter,
augmenting these architectures with CRT capabilities offers unprecedented
computational capabilities for offline and real-time decision-making situations equally.
Relationship Between Big Data, NLP, And Cognitive Computing
Page: 192-219 (28)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030007
PDF Price: $15
Abstract
The capacity to get insights and operations from data has not significantly
altered with tremendous technological advances over the previous 30 years.
Applications are generally built to fulfill default responsibilities or automate tasks;
thus, the designer must prepare and write the logic for every situation. Computers are
quicker and less expensive but not significantly more intelligent. Naturally, people are
not more brilliant than they were 30 years before. For people and robots, this is going
to change. A new generation of information technology emerges, starting with the
automation technology from the previous computer model to offer a collaborative
discovery platform. These technologies' initial wave has already increased human
knowledge in several disciplines. These computers may draw meaning from volumes
of natural language text as collaborators or collaborators for their human users and
create and assess hypotheses in minutes based on analysing more significant facts than
a person would absorb in a lifetime. That's the potentil of artificial intelligence. This
chapter discusses a relationship between big data, NLP, and Cognitive Systems, voice
in NLP component and performing the related tasks. This chapter contrasts
unstructured data in written material, video, and images, designed for human
consumption and interpretation and also explains big data's role in creating cognitive
computing systems.
Electronic Automation of Smart Computing
Page: 220-235 (16)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030008
PDF Price: $15
Abstract
Automation is not a new phenomenon, and it automates the mechanization
that helps us learn, develop, decide and act in a context, like a human being in the new
paradigm change as a result of emerging technologies. Recent improvements in
processing capacity, historical data availability, low-cost sensors, and systems for
transmitting high-speed data give rise to the possibility of imitating and automating a
mature human brain function. Businesses increasingly rely on software robot systems
that mimic how people perform a repetitive activity and eliminate the need for human
involvement. However, these systems cannot judge or learn from past actions and
consequences, thus confining the automation process to basic repeating process
automation. Integrating cognitive characteristics in robotic software systems, which
makes the business digital, can address this challenge. This chapter discusses the
developments and the problems faced in using cognitive systems, architecture,
applications, and cognitive models for electronics manufacturing. This chapter also
discusses the cognitive computing principle to improve the knowledge base and the
dependencies between these components.
Representation of Knowledge in Taxonomies and Ontologies and their Application in Advance Analysis to Cognitive Computing
Page: 236-265 (30)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030009
PDF Price: $15
Abstract
This chapter focuses on how ontologies and semantic web technology can be
used in artificial intelligence or systems engineering. Technological trends imply that
future digital technology approaches and tools will use AI and ML technology. Logicbased reasoning and semantic modeling assist in classification, customization, and
relationship detection but struggle to describe how decisions are made. Knowledge
acquisition plays a vital role in using this form of AI. Ontologies are methods for mode
modeling of reasoning domains required for digital fields instantiated in Digital System
Models (DSM). They grow as digital twins and evolve with the physical instantiations
of a DSM over time. Semantic innovations and ontologies codify knowledge of
systems engineering as a prerequisite for reasoning using interoperable ontologies. This
chapter explores the technologies behind advanced analytics and how they can be
leveraged in a knowledge-driven cognitive environment. Advanced analytics help
gaining deeper insights and predict outcomes more accurately and insightfully.
Innovation HCI Knowledge
Page: 266-300 (35)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030010
PDF Price: $15
Abstract
Design thinking has a significant influence on innovation in business,
education, health, and other vital fields. This involves human-centered approaches lijke
fast prototyping, and abductive reasoning. There are many parallels and contrasts
between design visualized and a path to the innovative design of Human-Computer
Interaction (HCI). In this chapter, we will discuss the method of Hasse diagrams for
structured learning domains visualizing the progress of a learner through this domain
and reducing attrition through early risk identification, improving learning performance
and achievement levels, enabling more effective use of teaching time, and enhancing
performance learning design/instructional design.
HCI: An Intelligent Learning Environment
Page: 301-326 (26)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030011
PDF Price: $15
Abstract
Society has evolved quickly, and individuals are continually forced to
acquire new abilities viatraining. This means that education/training resources are
substantially restricted; therefore, methods must be developed to tackle this problem.
Intelligent Tutoring Systems (ITS) deployment is being proposed as a solution to
address this problem. In addition, ITS makes it possible for users to learn and improve
their abilities in a particular area. ITS adopts user actions and requirements in a non-intrusive and transparent manner to achieve this aim. The tastes and habits of the users
must be known to deliver a tailored and adaptable solution. Therefore, the capacity to
learn behavioural patterns becomes a crucial component for an ITS to succeed. In this
article, we offer an ITS student model, which monitors the biometric conduct and style
of the user throughout e-learning activities. A classification model supervises the
student’s work throughout this session. This chapter also emphasises the principles of
intelligent learning differences for each activity. Information extraction techniques can
automatically extract knowledge from the text by converting unstructured text into
relational structures. To achieve this aim, traditional information extraction systems
must rely on significant human involvement.
Data Visualisation and Data Analytics in HCI
Page: 327-346 (20)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030012
PDF Price: $15
Abstract
This chapter uses Light Detection and Ranging (LIDAR) technology field
data to assess efficient terrain visualization. There are two algorithms for detailed
computer rendering. The test results for the productivity of the two these algorithms or
techniques are presented in the subsequent sections. In visual-spatial perception, the
assessment of the results is ultimately examined. In this chapter, the model then uses
the information to select the optimal level of details (LOD) to prevent visible changes
in representation. The relationship between computer processing power and mental
representation is critical for understanding these cognitive processes.
HCI with Big Data Analytics
Page: 347-358 (12)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030013
PDF Price: $15
Abstract
In healthcare, education, large companies, and scientific research, extensive
data have played a critical role. Big data analytics demand modern tools and
technologies to store, process, and analyse large data volumes. Big data comprise
extensive unstructured data, which needs to be examined in real-time before making
use of it. Many academics are interested in advanced technologies and methods to
tackle the problems in comprehensive data management. The business enterprises,
public sector, and academic institutions have received considerable attention due to
their Big Data. This chapter summarises the latest algorithms involved in Big Data
processing and the associated features, applications, possibilities, and problems. This
chapter also provides an overview of the state-of-the-art algorithms for processing big
data and challenges in human-computer interaction with big data analytics.
References
Page: 359-368 (10)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030014
Subject Index
Page: 369-374 (6)
Author: Kuldeep Singh Kaswan*, Anupam Baliyan*, Jagjit Singh Dhatterwal* and Om Prakash Kaiwartya*
DOI: 10.2174/9789815079937123030015
Introduction
Big Data is playing a vital role in HCI projects across a range of industries: healthcare, cybersecurity, forensics, education, business organizations, and scientific research. Big data analytics requires advanced tools and techniques to store, process and analyze the huge volume of data. Working on HCI projects requires specific skill sets to implement IT solutions. Big Data Analytics for Human-Computer Interactions: A New Era of Computation is a comprehensive guide that discusses the evolution of Big Data in Human Computer Interaction from promise to reality. This book provides an introduction to Big Data and HCI, followed by an overview of the state-of-the-art algorithms for processing big data, Subsequent chapters also explain the characteristics, applications, opportunities and challenges of big data systems, by describing theoretical, practical, and simulation concepts of computational intelligence and big data analytics used in designing HIC systems. The book also presents solutions for analyzing complex patterns in user data and improving productivity. Readers will be able to understand the technology that drives big data solutions in HCI projects and understand its capacity in transforming an organization.The book also helps the reader to understand HCI system design and explains how to evaluate an application portfolio that can be used when selecting pilot projects. This book is a resource for researchers, students, and professionals interested in the fields of HCI, artificial intelligence, data analytics, and computer engineering.