94 research outputs found
Multidisciplinary perspectives on Artificial Intelligence and the law
This open access book presents an interdisciplinary, multi-authored, edited collection of chapters on Artificial Intelligence (‘AI’) and the Law. AI technology has come to play a central role in the modern data economy. Through a combination of increased computing power, the growing availability of data and the advancement of algorithms, AI has now become an umbrella term for some of the most transformational technological breakthroughs of this age. The importance of AI stems from both the opportunities that it offers and the challenges that it entails. While AI applications hold the promise of economic growth and efficiency gains, they also create significant risks and uncertainty. The potential and perils of AI have thus come to dominate modern discussions of technology and ethics – and although AI was initially allowed to largely develop without guidelines or rules, few would deny that the law is set to play a fundamental role in shaping the future of AI. As the debate over AI is far from over, the need for rigorous analysis has never been greater. This book thus brings together contributors from different fields and backgrounds to explore how the law might provide answers to some of the most pressing questions raised by AI. An outcome of the Católica Research Centre for the Future of Law and its interdisciplinary working group on Law and Artificial Intelligence, it includes contributions by leading scholars in the fields of technology, ethics and the law.info:eu-repo/semantics/publishedVersio
A Modified EM Algorithm for Shrinkage Estimation in Multivariate Hidden Markov Models
Τα κρυμμένα Μαρκοβιανά μοντέλα χρησιμοποιούνται σε ένα ευρύ πεδίο εφαρμογών, λόγω της κατασκευής
τους που τα καθιστά μαθηματικώς διαχειρίσιμα και επιτρέπει τη χρήση αποτελεσματικών υπολογιστικών
τεχνικών. ́Εχουν αναπτυχθεί μέθοδοι για την εκτίμηση των παραμέτρων του μοντέλου, όπως ο αλγόριθμος
EM, αλλά και για την εύρεση των κρυμμένων καταστάσεων της Μαρκοβιανής αλυσίδας, όπως ο αλγόριθμος
Viterbi.
Σε εφαρμογές στις οποίες η διάσταση των δεδομένων είναι συγκρίσιμη με το μέγεθος του δέιγματος,
είναι γνωστό πως ο δειγματικός πίνακας συνδιακύμανσης είναι αριθμητικά ασταθής, γεγονός που επηρεάζει
άμεσα το βήμα μεγιστοποίησης (M-step) του αλγορίθμου EM, στο οποίο εμπλέκεται ο υπολογισμός του
αντιστρόφου του. Το πρόβλημα αυτό μπορεί να ενταθεί λόγω ενδεχόμενης ύπαρξης καταστάσεων οι οποίες
εμφανίζονται σπάνια, με αποτέλεσμα το μέγεθος δείγματος για την εκτίμηση των αντίστοιχων παραμέτρων
να είναι μικρό. Επομένως, η άμεση χρήση αυτών των μεθόδων είναι πιθανό να οδηγήσει σε αριθμητικά προβ-
λήματα, όσον αφορά στην εκτίμηση του πίνακα συνδιακύμανσης και του αντιστρόφου του, επηρεάζοντας
επιπλέον την εκτίμηση του πίνακα πιθανοτήτων μετάβασης και την ανακατασκευή της κρυμμένης Μαρκο-
βιανής αλυσίδας.
Στη συγκεκριμένη εργασία μελετάται θεωρητικά και αλγοριθμικά μία τροποποίηση του αλγορίθμου EM,
έτσι ώστε ο εκτιμήτης που προκύπτει για τον πίνακα συνδιακύμανσης, κατά το βήμα μεγιστοποίησης, να
είναι αυτός που απορρέει από τη χρήση της μεθόδου συρρίκνωσης (shrinkage). Για τον σκοπό αυτό, στη
συνάρτηση της λογαριθμικής πιθανοφάνειας ενσωματώνονται κάποιες ποινές, ώστε να κανονικοποιηθεί το
αντίστοιχο πρόβλημα μεγιστοποίησης. Η συνάρτηση αυτή, χρησιμοποιείται και στο βήμα εκτίμησης (E-step).
Επίσης, μελετάται αλγοριθμικά και μία παραλλαγή αυτής της μεθόδου, στην οποία η συνάρτηση με τις ποινές
χρησιμοποιείται μόνο κατά το βήμα μεγιστοποίησης (M-step).Hidden Markov models are used in a wide range of applications due to their construction that
renders them mathematically tractable and allows for the use of efficient computational techniques.
There are methods for the estimation of the model’s parameters, such as the EM algorithm, but also
for the estimation of the hidden states of the underlying Markov chain, such as the Viterbi algorithm.
In applications where the dimension of the data is comparable to the sample size, the sample
covariance matrix is known to be ill-conditioned, which directly affects the maximisation step (M-
step) of the EM algorithm, where its inverse is involved in the computations. This problem might be
amplified if there are rarely visited states resulting in a small sample size for the estimation of the
corresponding parameters. Therefore, the direct implementation of these methods can be proved to
be troublesome, as many computational problems might occur in the estimation of the covariance
matrix and its inverse, further affecting the estimation of the one-step transition probability matrix
and the reconstruction of the hidden Markov chain.
In this paper, a modified version of the EM algorithm is studied, both theoretically and computa-
tionally, in order to obtain the shrinkage estimator of the covariance matrix during the maximisation
step. This is achieved by maximising a penalised log-likelihood function, which is also used in the
estimation step (E-step). A variant of this modified version, where the penalised log-likelihood func-
tion is only used in the maximisation step (M-step), is also studied computationally
Systematic Approaches for Telemedicine and Data Coordination for COVID-19 in Baja California, Mexico
Conference proceedings info:
ICICT 2023: 2023 The 6th International Conference on Information and Computer Technologies
Raleigh, HI, United States, March 24-26, 2023
Pages 529-542We provide a model for systematic implementation of telemedicine within a large evaluation center for COVID-19 in the area of Baja California, Mexico. Our model is based on human-centric design factors and cross disciplinary collaborations for scalable data-driven enablement of smartphone, cellular, and video Teleconsul-tation technologies to link hospitals, clinics, and emergency medical services for point-of-care assessments of COVID testing, and for subsequent treatment and quar-antine decisions. A multidisciplinary team was rapidly created, in cooperation with different institutions, including: the Autonomous University of Baja California, the Ministry of Health, the Command, Communication and Computer Control Center
of the Ministry of the State of Baja California (C4), Colleges of Medicine, and the College of Psychologists. Our objective is to provide information to the public and to evaluate COVID-19 in real time and to track, regional, municipal, and state-wide data in real time that informs supply chains and resource allocation with the anticipation of a surge in COVID-19 cases. RESUMEN Proporcionamos un modelo para la implementación sistemática de la telemedicina dentro de un gran centro de evaluación de COVID-19 en el área de Baja California, México. Nuestro modelo se basa en factores de diseño centrados en el ser humano y colaboraciones interdisciplinarias para la habilitación escalable basada en datos de tecnologías de teleconsulta de teléfonos inteligentes, celulares y video para vincular hospitales, clínicas y servicios médicos de emergencia para evaluaciones de COVID en el punto de atención. pruebas, y para el tratamiento posterior y decisiones de cuarentena. Rápidamente se creó un equipo multidisciplinario, en cooperación con diferentes instituciones, entre ellas: la Universidad Autónoma de Baja California, la Secretaría de Salud, el Centro de Comando, Comunicaciones y Control Informático.
de la Secretaría del Estado de Baja California (C4), Facultades de Medicina y Colegio de Psicólogos. Nuestro objetivo es proporcionar información al público y evaluar COVID-19 en tiempo real y rastrear datos regionales, municipales y estatales en tiempo real que informan las cadenas de suministro y la asignación de recursos con la anticipación de un aumento de COVID-19. 19 casos.ICICT 2023: 2023 The 6th International Conference on Information and Computer Technologieshttps://doi.org/10.1007/978-981-99-3236-
Future Transportation
Greenhouse gas (GHG) emissions associated with transportation activities account for approximately 20 percent of all carbon dioxide (co2) emissions globally, making the transportation sector a major contributor to the current global warming. This book focuses on the latest advances in technologies aiming at the sustainable future transportation of people and goods. A reduction in burning fossil fuel and technological transitions are the main approaches toward sustainable future transportation. Particular attention is given to automobile technological transitions, bike sharing systems, supply chain digitalization, and transport performance monitoring and optimization, among others
A Comprehensive Review of Digital Twin -- Part 1: Modeling and Twinning Enabling Technologies
As an emerging technology in the era of Industry 4.0, digital twin is gaining
unprecedented attention because of its promise to further optimize process
design, quality control, health monitoring, decision and policy making, and
more, by comprehensively modeling the physical world as a group of
interconnected digital models. In a two-part series of papers, we examine the
fundamental role of different modeling techniques, twinning enabling
technologies, and uncertainty quantification and optimization methods commonly
used in digital twins. This first paper presents a thorough literature review
of digital twin trends across many disciplines currently pursuing this area of
research. Then, digital twin modeling and twinning enabling technologies are
further analyzed by classifying them into two main categories:
physical-to-virtual, and virtual-to-physical, based on the direction in which
data flows. Finally, this paper provides perspectives on the trajectory of
digital twin technology over the next decade, and introduces a few emerging
areas of research which will likely be of great use in future digital twin
research. In part two of this review, the role of uncertainty quantification
and optimization are discussed, a battery digital twin is demonstrated, and
more perspectives on the future of digital twin are shared
Proceedings of the 36th International Workshop Statistical Modelling July 18-22, 2022 - Trieste, Italy
The 36th International Workshop on Statistical Modelling (IWSM) is the first one held in presence after a two year hiatus due to the COVID-19 pandemic.
This edition was quite lively, with 60 oral presentations and 53 posters, covering a vast variety of topics.
As usual, the extended abstracts of the papers are collected in the IWSM proceedings, but unlike the previous workshops, this year the proceedings will be not printed on paper, but it is only online.
The workshop proudly maintains its almost unique feature of scheduling one plenary session for the whole week. This choice has always contributed to the stimulating atmosphere of the conference, combined with its informal character, encouraging the exchange of ideas and cross-fertilization among different areas as a distinguished tradition of the workshop, student participation has been strongly encouraged. This IWSM edition is particularly successful in this respect, as testified by the large number of students included in the program
SIS 2017. Statistics and Data Science: new challenges, new generations
The 2017 SIS Conference aims to highlight the crucial role of the Statistics in Data Science. In this new domain of ‘meaning’ extracted from the data, the increasing amount of produced and available data in databases, nowadays, has brought new challenges. That involves different fields of statistics, machine learning, information and computer science, optimization, pattern recognition. These afford together a considerable contribute in the analysis of ‘Big data’, open data, relational and complex data, structured and no-structured. The interest is to collect the contributes which provide from the different domains of Statistics, in the high dimensional data quality validation, sampling extraction, dimensional reduction, pattern selection, data modelling, testing hypotheses and confirming conclusions drawn from the data
Artificial intelligence for decision making in energy demand-side response
This thesis examines the role and application of data-driven Artificial Intelligence
(AI) approaches for the energy demand-side response (DR). It follows the point of
view of a service provider company/aggregator looking to support its decision-making
and operation. Overall, the study identifies data-driven AI methods as an essential
tool and a key enabler for DR. The thesis is organised into two parts. It first provides
an overview of AI methods utilised for DR applications based on a systematic review
of over 160 papers, 40 commercial initiatives, and 21 large-scale projects. The reviewed work is categorised based on the type of AI algorithm(s) employed and the DR
application area of the AI methods. The end of the first part of the thesis discusses
the advantages and potential limitations of the reviewed AI techniques for different
DR tasks and how they compare to traditional approaches. The second part of the
thesis centres around designing machine learning algorithms for DR. The undertaken
empirical work highlights the importance of data quality for providing fair, robust,
and safe AI systems in DR — a high-stakes domain. It furthers the state of the art
by providing a structured approach for data preparation and data augmentation in
DR to minimise propagating effects in the modelling process. The empirical findings
on residential response behaviour show better response behaviour in households with
internet access, air-conditioning systems, power-intensive appliances, and lower gas
usage. However, some insights raise questions about whether the reported levels of
consumers’ engagement in DR schemes translate to actual curtailment behaviour and
the individual rationale of customer response to DR signals. The presented approach
also proposes a reinforcement learning framework for the decision problem of an aggregator selecting a set of consumers for DR events. This approach can support an
aggregator in leveraging small-scale flexibility resources by providing an automated
end-to-end framework to select the set of consumers for demand curtailment during
Demand-Side Response (DR) signals in a dynamic environment while considering a
long-term view of their selection process
Smart Urban Water Networks
This book presents the paper form of the Special Issue (SI) on Smart Urban Water Networks. The number and topics of the papers in the SI confirm the growing interest of operators and researchers for the new paradigm of smart networks, as part of the more general smart city. The SI showed that digital information and communication technology (ICT), with the implementation of smart meters and other digital devices, can significantly improve the modelling and the management of urban water networks, contributing to a radical transformation of the traditional paradigm of water utilities. The paper collection in this SI includes different crucial topics such as the reliability, resilience, and performance of water networks, innovative demand management, and the novel challenge of real-time control and operation, along with their implications for cyber-security. The SI collected fourteen papers that provide a wide perspective of solutions, trends, and challenges in the contest of smart urban water networks. Some solutions have already been implemented in pilot sites (i.e., for water network partitioning, cyber-security, and water demand disaggregation and forecasting), while further investigations are required for other methods, e.g., the data-driven approaches for real time control. In all cases, a new deal between academia, industry, and governments must be embraced to start the new era of smart urban water systems
Cone Penetration Testing 2022
This volume contains the proceedings of the 5th International Symposium on Cone Penetration Testing (CPT’22), held in Bologna, Italy, 8-10 June 2022. More than 500 authors - academics, researchers, practitioners and manufacturers – contributed to the peer-reviewed papers included in this book, which includes three keynote lectures, four invited lectures and 169 technical papers. The contributions provide a full picture of the current knowledge and major trends in CPT research and development, with respect to innovations in instrumentation, latest advances in data interpretation, and emerging fields of CPT application. The paper topics encompass three well-established topic categories typically addressed in CPT events: - Equipment and Procedures - Data Interpretation - Applications. Emphasis is placed on the use of statistical approaches and innovative numerical strategies for CPT data interpretation, liquefaction studies, application of CPT to offshore engineering, comparative studies between CPT and other in-situ tests. Cone Penetration Testing 2022 contains a wealth of information that could be useful for researchers, practitioners and all those working in the broad and dynamic field of cone penetration testing
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