2,071 research outputs found
Knowledge Modelling and Learning through Cognitive Networks
One of the most promising developments in modelling knowledge is cognitive network science, which aims to investigate cognitive phenomena driven by the networked, associative organization of knowledge. For example, investigating the structure of semantic memory via semantic networks has illuminated how memory recall patterns influence phenomena such as creativity, memory search, learning, and more generally, knowledge acquisition, exploration, and exploitation. In parallel, neural network models for artificial intelligence (AI) are also becoming more widespread as inferential models for understanding which features drive language-related phenomena such as meaning reconstruction, stance detection, and emotional profiling. Whereas cognitive networks map explicitly which entities engage in associative relationships, neural networks perform an implicit mapping of correlations in cognitive data as weights, obtained after training over labelled data and whose interpretation is not immediately evident to the experimenter. This book aims to bring together quantitative, innovative research that focuses on modelling knowledge through cognitive and neural networks to gain insight into mechanisms driving cognitive processes related to knowledge structuring, exploration, and learning. The book comprises a variety of publication types, including reviews and theoretical papers, empirical research, computational modelling, and big data analysis. All papers here share a commonality: they demonstrate how the application of network science and AI can extend and broaden cognitive science in ways that traditional approaches cannot
Alternative Datasets for Identification of Earth Science Events and Data
Alternative, or non-traditional, data sources can be used to generate datasets which can in turn be analyzed for temporal, spatial and climatological patterns. Events and case studies inferred from the analysis of these patterns can be used by the remote sensing community to more effectively search for Earth observation data. In this paper, we present a new alternative Earth science dataset created from the National Weather Services Area Forecast Discussion (AFD) documents. We then present an exploratory methodology for identifying interesting climatological patterns within the AFD data and a corresponding motivating example as to how these data and patterns can be used to search for relevant events or case studies
Movement Analytics: Current Status, Application to Manufacturing, and Future Prospects from an AI Perspective
Data-driven decision making is becoming an integral part of manufacturing
companies. Data is collected and commonly used to improve efficiency and
produce high quality items for the customers. IoT-based and other forms of
object tracking are an emerging tool for collecting movement data of
objects/entities (e.g. human workers, moving vehicles, trolleys etc.) over
space and time. Movement data can provide valuable insights like process
bottlenecks, resource utilization, effective working time etc. that can be used
for decision making and improving efficiency.
Turning movement data into valuable information for industrial management and
decision making requires analysis methods. We refer to this process as movement
analytics. The purpose of this document is to review the current state of work
for movement analytics both in manufacturing and more broadly.
We survey relevant work from both a theoretical perspective and an
application perspective. From the theoretical perspective, we put an emphasis
on useful methods from two research areas: machine learning, and logic-based
knowledge representation. We also review their combinations in view of movement
analytics, and we discuss promising areas for future development and
application. Furthermore, we touch on constraint optimization.
From an application perspective, we review applications of these methods to
movement analytics in a general sense and across various industries. We also
describe currently available commercial off-the-shelf products for tracking in
manufacturing, and we overview main concepts of digital twins and their
applications
Text mining and natural language processing for the early stages of space mission design
Final thesis submitted December 2021 - degree awarded in 2022A considerable amount of data related to space mission design has been accumulated
since artificial satellites started to venture into space in the 1950s. This data has today
become an overwhelming volume of information, triggering a significant knowledge
reuse bottleneck at the early stages of space mission design. Meanwhile, virtual assistants,
text mining and Natural Language Processing techniques have become pervasive
to our daily life.
The work presented in this thesis is one of the first attempts to bridge the gap
between the worlds of space systems engineering and text mining. Several novel models
are thus developed and implemented here, targeting the structuring of accumulated
data through an ontology, but also tasks commonly performed by systems engineers
such as requirement management and heritage analysis. A first collection of documents
related to space systems is gathered for the training of these methods. Eventually, this
work aims to pave the way towards the development of a Design Engineering Assistant
(DEA) for the early stages of space mission design. It is also hoped that this work will
actively contribute to the integration of text mining and Natural Language Processing
methods in the field of space mission design, enhancing current design processes.A considerable amount of data related to space mission design has been accumulated
since artificial satellites started to venture into space in the 1950s. This data has today
become an overwhelming volume of information, triggering a significant knowledge
reuse bottleneck at the early stages of space mission design. Meanwhile, virtual assistants,
text mining and Natural Language Processing techniques have become pervasive
to our daily life.
The work presented in this thesis is one of the first attempts to bridge the gap
between the worlds of space systems engineering and text mining. Several novel models
are thus developed and implemented here, targeting the structuring of accumulated
data through an ontology, but also tasks commonly performed by systems engineers
such as requirement management and heritage analysis. A first collection of documents
related to space systems is gathered for the training of these methods. Eventually, this
work aims to pave the way towards the development of a Design Engineering Assistant
(DEA) for the early stages of space mission design. It is also hoped that this work will
actively contribute to the integration of text mining and Natural Language Processing
methods in the field of space mission design, enhancing current design processes
Technologies and Applications for Big Data Value
This open access book explores cutting-edge solutions and best practices for big data and data-driven AI applications for the data-driven economy. It provides the reader with a basis for understanding how technical issues can be overcome to offer real-world solutions to major industrial areas. The book starts with an introductory chapter that provides an overview of the book by positioning the following chapters in terms of their contributions to technology frameworks which are key elements of the Big Data Value Public-Private Partnership and the upcoming Partnership on AI, Data and Robotics. The remainder of the book is then arranged in two parts. The first part āTechnologies and Methodsā contains horizontal contributions of technologies and methods that enable data value chains to be applied in any sector. The second part āProcesses and Applicationsā details experience reports and lessons from using big data and data-driven approaches in processes and applications. Its chapters are co-authored with industry experts and cover domains including health, law, finance, retail, manufacturing, mobility, and smart cities. Contributions emanate from the Big Data Value Public-Private Partnership and the Big Data Value Association, which have acted as the European data community's nucleus to bring together businesses with leading researchers to harness the value of data to benefit society, business, science, and industry. The book is of interest to two primary audiences, first, undergraduate and postgraduate students and researchers in various fields, including big data, data science, data engineering, and machine learning and AI. Second, practitioners and industry experts engaged in data-driven systems, software design and deployment projects who are interested in employing these advanced methods to address real-world problems
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