Results for 'artificial system'

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  1. Mitchell Berman, University of Pennsylvania.Of law & Other Artificial Normative Systems - 2019 - In Toh Kevin, Plunkett David & Shapiro Scott (eds.), Dimensions of Normativity: New Essays on Metaethics and Jurisprudence. New York: Oxford University Press.
     
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  2. Intelligent capacities in artificial systems.Atoosa Kasirzadeh & Victoria McGeer - 2023 - In William A. Bauer & Anna Marmodoro (eds.), Artificial Dispositions: Investigating Ethical and Metaphysical Issues. Bloomsbury.
    This paper investigates the nature of dispositional properties in the context of artificial intelligence systems. We start by examining the distinctive features of natural dispositions according to criteria introduced by McGeer (2018) for distinguishing between object-centered dispositions (i.e., properties like ‘fragility’) and agent-based abilities, including both ‘habits’ and ‘skills’ (a.k.a. ‘intelligent capacities’, Ryle 1949). We then explore to what extent the distinction applies to artificial dispositions in the context of two very different kinds of artificial systems, one (...)
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  3.  57
    Artificial systems with moral capacities? A research design and its implementation in a geriatric care system.Catrin Misselhorn - 2020 - Artificial Intelligence 278 (C):103179.
    The development of increasingly intelligent and autonomous technologies will eventually lead to these systems having to face morally problematic situations. This gave rise to the development of artificial morality, an emerging field in artificial intelligence which explores whether and how artificial systems can be furnished with moral capacities. This will have a deep impact on our lives. Yet, the methodological foundations of artificial morality are still sketchy and often far off from possible applications. One important area (...)
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  4. Can Artificial Systems Be Part of a Collective Action?Anna Strasser - 1st ed. 2015 - In Catrin Misselhorn (ed.), Collective Agency and Cooperation in Natural and Artificial Systems. Springer Verlag. pp. 205-218.
    To answer the question of whether artificial systems may count as agents in a collective action, I will argue that a collective action is a special kind of an action and show that the sufficient conditions for playing an active part in a collective action differ from those required for being an individual intentional agent.
     
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  5.  42
    Artificial systems as models in biological cybernetics.Titus R. Neumann, Susanne Huber & Heinrich H. Bülthoff - 2001 - Behavioral and Brain Sciences 24 (6):1071-1072.
    From the perspective of biological cybernetics, “real world” robots have no fundamental advantage over computer simulations when used as models for biological behavior. They can even weaken biological relevance. From an engineering point of view, however, robots can benefit from solutions found in biological systems. We emphasize the importance of this distinction and give examples for artificial systems based on insect biology.
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  6. Intelligent artificial systems.Salvatore Gaglio - 2007 - In Antonio Chella & Riccardo Manzotti (eds.), Artificial Consciousness. Imprint Academic. pp. 97-115.
     
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  7.  90
    The potential for consciousness of artificial systems.David Gamez - 2009 - International Journal of Machine Consciousness 1 (2):213-223.
    The question about the potential for consciousness of artificial systems has often been addressed using thought experiments, which are often problematic in the philosophy of mind. A more promising approach is to use real experiments to gather data about the correlates of consciousness in humans, and develop this data into theories that make predictions about human and artificial consciousness. A key issue with an experimental approach is that consciousness can only be measured using behavior, which places fundamental limits (...)
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  8.  8
    Collective Agency and Cooperation in Natural and Artificial Systems: Explanation, Implementation and Simulation.Catrin Misselhorn (ed.) - 2015 - Cham: Imprint: Springer.
    This book brings together philosophical approaches to cooperation and collective agency with research into human-machine interaction and cooperation from engineering, robotics, computer science and AI. Bringing these so far largely unrelated fields of study together leads to a better understanding of collective agency in natural and artificial systems and will help to improve the design and performance of hybrid systems involving human and artificial agents. Modeling collective agency with the help of computer simulations promises also philosophical insights into (...)
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  9.  34
    Deep teleology in artificial systems.Philip Van Loocke - 2002 - Minds and Machines 12 (1):87-104.
    Teleological variations of non-deterministic processes are defined. The immediate past of a system defines the state from which the ordinary (non-teleological) dynamical law governing the system derives different possible present states. For every possible present state, again a number of possible states for the next time step can be defined, and so on. After k time steps, a selection criterion is applied. The present state leading to the selected state after k time steps is taken to be the (...)
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  10. Moral Agents or Mindless Machines? A Critical Appraisal of Agency in Artificial Systems.Fabio Tollon - 2019 - Hungarian Philosophical Review 4 (63):9-23.
    In this paper I provide an exposition and critique of Johnson and Noorman’s (2014) three conceptualizations of the agential roles artificial systems can play. I argue that two of these conceptions are unproblematic: that of causally efficacious agency and “acting for” or surrogate agency. Their third conception, that of “autonomous agency,” however, is one I have reservations about. The authors point out that there are two ways in which the term “autonomy” can be used: there is, firstly, the engineering (...)
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  11. Natural or artificial systems? The eighteenth-century controversy on classification of animals and plants and its philosophical contexts.Wolfgang Lefevre - 2001 - Boston Studies in the Philosophy of Science 220:191-209.
     
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  12. On a Possible Basis for Metaphysical Self-development in Natural and Artificial Systems.Jeffrey White - 2022 - Filozofia i Nauka. Studia Filozoficzne I Interdyscyplinarne 10:71-100.
    Recent research into the nature of self in artificial and biological systems raises interest in a uniquely determining immutable sense of self, a “metaphysical ‘I’” associated with inviolable personal values and moral convictions that remain constant in the face of environmental change, distinguished from an object “me” that changes with its environment. Complementary research portrays processes associated with self as multimodal routines selectively enacted on the basis of contextual cues informing predictive self or world models, with the notion of (...)
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  13.  53
    Creative Agents: Rethinking Agency and Creativity in Human and Artificial Systems.Caterina Moruzzi - 2023 - Journal of Aesthetics and Phenomenology 9 (2):245-268.
    1. In the last decade, technological systems based on Artificial Intelligence (AI) architectures entered our lives at an increasingly fast pace. Virtual assistants facilitate our daily tasks, recom...
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  14.  49
    Collective Agency and Cooperation in Natural and Artificial Systems.Catrin Misselhorn - 1st ed. 2015 - In Collective Agency and Cooperation in Natural and Artificial Systems. Springer Verlag.
    Novel varieties of interplay between humans, robots and software agents are on the rise. Computer-based artefacts are no longer mere tools but have become interaction partners. Distributed problem solving and social agency may be modelled by social computing systems based on multi-agent systems. MAS and agent-based modelling approaches focus on the simulation of complex interactions and relationships of human and/or non-human agents. MAS may be deployed both in virtual environments and cyber-physical systems. With regard to their impact on the physical (...)
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  15. Heterogeneous Proxytypes as a Unifying Cognitive Framework for Conceptual Representation and Reasoning in Artificial Systems.Antonio Lieto - 2021 - In CARLA @FOIS Proceeding. Amsterdam, Netherlands: IOS Press.
    The paper presents the heterogeneous proxytypes hypothesis as a cognitively-inspired computational framework able to reconcile, in both natural and artificial systems, different theories of typicality about conceptual representation and reasoning that have been traditionally seen as incompatible. In particular, through the Dual PECCS system and its evolution, it shows how prototypes, exemplars and theory-theory like conceptual representations can be integrated in a cognitive artificial agent (thus extending its categorization capabilities) and, in addition, can provide useful insights in (...)
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  16. The Minimal Cognitive Grid: A Tool to Rank the Explanatory Status of Cognitive Artificial Systems.Antonio Lieto - 2022 - Proceedings of AISC 2022.
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  17.  54
    Evolutionary psychology, learning, and belief signaling: design for natural and artificial systems.Eric Funkhouser - 2021 - Synthese 199 (5-6):14097-14119.
    Recent work in the cognitive sciences has argued that beliefs sometimes acquire signaling functions in virtue of their ability to reveal information that manipulates “mindreaders.” This paper sketches some of the evolutionary and design considerations that could take agents from solipsistic goal pursuit to beliefs that serve as social signals. Such beliefs will be governed by norms besides just the traditional norms of epistemology. As agents become better at detecting the agency of others, either through evolutionary history or individual learning, (...)
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  18.  7
    Perspectives on Adaptation in Natural and Artificial Systems: Proceedings Volume in the Santa Fe Institute Studies in the Sciences of Complexity.Lashon Booker, Stephanie Forrest, Melanie Mitchell & Rick Riolo (eds.) - 2004 - Oxford University Press USA.
    This book is a collection of essays exploring adaptive systems from many perspectives, ranging from computational applications to models of adaptation in living and social systems. The essays on computation discuss history, theory, applications, and possible threats of adaptive and evolving computations systems. The modeling chapters cover topics such as evolution in microbial populations, the evolution of cooperation, and how ideas about evolution relate to economics. The title Perspectives on Adaptation in Natural and Artificial Systems honors John Holland, whose (...)
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  19.  8
    Perspectives on Adaptation in Natural and Artificial Systems: Proceedings Volume in the Santa Fe Institute Studies.Lashon Booker, Stephanie Forrest, Melanie Mitchell & Rick Riolo (eds.) - 2004 - Oxford University Press USA.
    This book is a collection of essays exploring adaptive systems from many perspectives, ranging from computational applications to models of adaptation in living and social systems. The essays on computation discuss history, theory, applications, and possible threats of adaptive and evolving computations systems. The modeling chapters cover topics such as evolution in microbial populations, the evolution of cooperation, and how ideas about evolution relate to economics. The title Perspectives on Adaptation in Natural and Artificial Systems honors John Holland, whose (...)
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  20. Designing for Emergent Ultrastable Behaviour in Complex Artificial Systems – The Quest for Minimizing Heteronomous Constraints.R. Lowe - 2013 - Constructivist Foundations 9 (1):105-107.
    Open peer commentary on the article “Homeostats for the 21st Century? Simulating Ashby Simulating the Brain” by Stefano Franchi. Upshot: The target article has addressed core concepts of Ashby’s generalized homeostasis thesis as well as its relevance to building complex artificial systems. In this commentary, I discuss Ashby-inspired approaches to designing for ultrastable behaviour in robots and the extent to which complex adaptive behaviour can be underdetermined by heteronomous constraints.
     
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  21. Embedding Values in Artificial Intelligence (AI) Systems.Ibo van de Poel - 2020 - Minds and Machines 30 (3):385-409.
    Organizations such as the EU High-Level Expert Group on AI and the IEEE have recently formulated ethical principles and (moral) values that should be adhered to in the design and deployment of artificial intelligence (AI). These include respect for autonomy, non-maleficence, fairness, transparency, explainability, and accountability. But how can we ensure and verify that an AI system actually respects these values? To help answer this question, I propose an account for determining when an AI system can be (...)
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  22.  24
    Engineering Design Principles in Natural and Artificial Systems: Generative Entrenchment and Modularity.William C. Wimsatt - 2021 - In Zachary Pirtle, David Tomblin & Guru Madhavan (eds.), Engineering and Philosophy: Reimagining Technology and Social Progress. Springer Verlag. pp. 25-52.
    I see in the nature of our minds and the character of our problem-solving methodologies a search for simplifying tools that will let us model a complex world and get away with it far more often than we might suppose. As it turns out, this broad a reach to mind and world is possible because both turn on common properties of evolved complex adaptive systems. These are in effect “design principles” for the architecture of nature—all of it, from biological systems (...)
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  23. Social Behaviour and Communication in Biological and Artificial Systems.James R. Hurford - 2007 - Interaction Studies 8 (3):501-517.
  24. The role of e-Trust in distributed artificial systems.Mariarosaria Taddeo - 2011 - In Charles Ess & May Thorseth (eds.), Trust and Virtual Worlds. Peter Lang.
  25. Artificial Intelligence Systems, Responsibility and Agential Self-Awareness.Lydia Farina - 2022 - In Vincent C. Müller (ed.), Philosophy and Theory of Artificial Intelligence 2021. Berlin, Germany: pp. 15-25.
    This paper investigates the claim that artificial Intelligence Systems cannot be held morally responsible because they do not have an ability for agential self-awareness e.g. they cannot be aware that they are the agents of an action. The main suggestion is that if agential self-awareness and related first person representations presuppose an awareness of a self, the possibility of responsible artificial intelligence systems cannot be evaluated independently of research conducted on the nature of the self. Focusing on a (...)
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  26. Artificial Qualia, Intentional Systems and Machine Consciousness.Robert James M. Boyles - 2012 - In Proceedings of the Research@DLSU Congress 2012: Science and Technology Conference. pp. 110a–110c.
    In the field of machine consciousness, it has been argued that in order to build human-like conscious machines, we must first have a computational model of qualia. To this end, some have proposed a framework that supports qualia in machines by implementing a model with three computational areas (i.e., the subconceptual, conceptual, and linguistic areas). These abstract mechanisms purportedly enable the assessment of artificial qualia. However, several critics of the machine consciousness project dispute this possibility. For instance, Searle, in (...)
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  27.  2
    General Systems Theory and Creative Artificial Intelligence.Andrei Armovich Gribkov & Aleksandr Aleksandrovich Zelenskii - forthcoming - Philosophy and Culture (Russian Journal).
    The article analyzes the possibilities and limitations of artificial intelligence. The article considers the subjectivity of artificial intelligence, determines its necessity for solving intellectual problems depending on the possibility of representing the real world as a deterministic system. Methodological limitations of artificial intelligence, which is based on the use of big data technologies, are stated. These limitations cause the impossibility of forming a holistic representation of the objects of cognition and the world as a whole. As (...)
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  28.  35
    Artificial Immune System–Negative Selection Classification Algorithm (NSCA) for Four Class Electroencephalogram (EEG) Signals.Nasir Rashid, Javaid Iqbal, Fahad Mahmood, Anam Abid, Umar S. Khan & Mohsin I. Tiwana - 2018 - Frontiers in Human Neuroscience 12:424534.
    Artificial Immune Systems (AIS) are intelligent algorithms derived on the principles inspired by human immune system. In this research work, electroencephalography (EEG) signals for four distinct motor movement of human limbs are detected and classified using Negative Selection Classification Algorithm (NSCA). For this study, a widely studied open source EEG signal database (BCI IV - Graz dataset 2a, comprising 9 subjects) has been used. Mel Frequency Cepstral Coefficients (MFCCs) are extracted as selected feature from recorded EEG signals. Dimensionality (...)
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  29.  26
    Artificial Intelligent Systems and Ethical Agency.Reena Cheruvalath - 2023 - Journal of Human Values 29 (1):33-47.
    The article examines the challenges involved in the process of developing artificial ethical agents. The process involves the creators or designing professionals, the procedures to develop an ethical agent and the artificial systems. There are two possibilities available to create artificial ethical agents: (a) programming ethical guidance in the artificial Intelligence (AI)-equipped machines and/or (b) allowing AI-equipped machines to learn ethical decision-making by observing humans. However, it is difficult to fulfil these possibilities due to the subjective (...)
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  30.  21
    Artificial Intelligent Systems and Ethical Agency.Reena Cheruvalath - 2023 - Journal of Human Values 29 (1):33-47.
    The article examines the challenges involved in the process of developing artificial ethical agents. The process involves the creators or designing professionals, the procedures to develop an ethical agent and the artificial systems. There are two possibilities available to create artificial ethical agents: (a) programming ethical guidance in the artificial Intelligence (AI)-equipped machines and/or (b) allowing AI-equipped machines to learn ethical decision-making by observing humans. However, it is difficult to fulfil these possibilities due to the subjective (...)
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  31.  20
    The system of autono‑mobility: computer vision and urban complexity—reflections on artificial intelligence at urban scale.Fabio Iapaolo - 2023 - AI and Society 38 (3):1111-1122.
    Focused on city-scale automation, and using self-driving cars (SDCs) as a case study, this article reflects on the role of AI—and in particular, computer vision systems used for mapping and navigation—as a catalyst for urban transformation. Urban research commonly presents AI and cities as having a one-way cause-and-effect relationship, giving undue weight to AI’s impact on cities and overlooking the role of cities in shaping AI. Working at the intersection of data science and social research, this paper aims to counter (...)
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  32.  8
    Systems Theory and Scientific Philosophy: An Application of the Cybernetics of W. Ross Ashby to Personal and Social Philosophy, the Philosophy of Mind, and the Problems of Artificial Intelligence.John Bryant - 1991 - Upa.
    Systems Theory and Scientific Philosophy constitutes a totally new approach to philosophy, the philosophy of mind and the problems of artificial intelligence, and is based upon the pioneering work in cybernetics of W. Ross Ashby. While science is humanity's attempt to know how the world works and philosophy its attempt to know why, scientific philosophy is the application of scientific techniques to questions of philosophy.
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  33.  21
    Enactive artificial intelligence: Investigating the systemic organization of life and mind.Tom Froese & Tom Ziemke - 2009 - Artificial Intelligence 173 (3-4):466-500.
  34.  31
    Artificial intelligence and global power structure: understanding through Luhmann's systems theory.Arun Teja Polcumpally - 2022 - AI and Society 37 (4):1487-1503.
    This research attempts to construct a second order observation model in understanding the significance of Artificial intelligence (AI) in changing the global power structure. Because of the inevitable ubiquity of AI in the world societies’ near future, it impacts all the sections of society triggering socio-technical iterative developments. Its horizontal impact and states’ race to become leader in the AI world asks for a vivid understanding of its impact on the international system. To understand the latter, Triple Helix (...)
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  35.  27
    Explainable Artificial Intelligence (XAI) to Enhance Trust Management in Intrusion Detection Systems Using Decision Tree Model.Basim Mahbooba, Mohan Timilsina, Radhya Sahal & Martin Serrano - 2021 - Complexity 2021:1-11.
    Despite the growing popularity of machine learning models in the cyber-security applications ), most of these models are perceived as a black-box. The eXplainable Artificial Intelligence has become increasingly important to interpret the machine learning models to enhance trust management by allowing human experts to understand the underlying data evidence and causal reasoning. According to IDS, the critical role of trust management is to understand the impact of the malicious data to detect any intrusion in the system. The (...)
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  36.  51
    Artificial Intelligence and Autonomy: On the Ethical Dimension of Recommender Systems.Sofia Bonicalzi, Mario De Caro & Benedetta Giovanola - 2023 - Topoi 42 (3):819-832.
    Feasting on a plethora of social media platforms, news aggregators, and online marketplaces, recommender systems (RSs) are spreading pervasively throughout our daily online activities. Over the years, a host of ethical issues have been associated with the diffusion of RSs and the tracking and monitoring of users’ data. Here, we focus on the impact RSs may have on personal autonomy as the most elusive among the often-cited sources of grievance and public outcry. On the grounds of a philosophically nuanced notion (...)
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  37.  5
    Showing the way: a review of the second edition of Holland's adaptation in natural and artificial systems. [REVIEW]Jim Levenick - 1998 - Artificial Intelligence 100 (1-2):331-338.
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  38.  4
    Connectionism, Artificial Life, and Dynamical Systems.Jeffrey L. Elman - 2017 - In William Bechtel & George Graham (eds.), A Companion to Cognitive Science. Oxford, UK: Blackwell. pp. 488–505.
    Periodically in science there arrive on the scene what appear to be dramatically new theoretical frameworks (what the philosopher of science Thomas Kuhn has called paradigm shifts). Characteristic of such changes in perspective is the recasting of old problems in new terms. By altering the conceptual vocabulary we use to think about problems, we may discover solutions which were obscured by prior ways of thinking about things. Connectionism, artificial life, and dynamical systems are all approaches to cognition which are (...)
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  39. Algorithmic Political Bias in Artificial Intelligence Systems.Uwe Peters - 2022 - Philosophy and Technology 35 (2):1-23.
    Some artificial intelligence systems can display algorithmic bias, i.e. they may produce outputs that unfairly discriminate against people based on their social identity. Much research on this topic focuses on algorithmic bias that disadvantages people based on their gender or racial identity. The related ethical problems are significant and well known. Algorithmic bias against other aspects of people’s social identity, for instance, their political orientation, remains largely unexplored. This paper argues that algorithmic bias against people’s political orientation can arise (...)
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  40.  20
    Artificial intelligence in cyber physical systems.Petar Radanliev, David De Roure, Max Van Kleek, Omar Santos & Uchenna Ani - forthcoming - AI and Society:1-14.
    This article conducts a literature review of current and future challenges in the use of artificial intelligence in cyber physical systems. The literature review is focused on identifying a conceptual framework for increasing resilience with AI through automation supporting both, a technical and human level. The methodology applied resembled a literature review and taxonomic analysis of complex internet of things interconnected and coupled cyber physical systems. There is an increased attention on propositions on models, infrastructures and frameworks of IoT (...)
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  41.  9
    Artificial Intelligence Teaching System and Data Processing Method Based on Big Data.Bo Xu - 2021 - Complexity 2021:1-11.
    With the rapid development of big data, artificial intelligence teaching systems have gradually been developed extensively. The powerful artificial intelligence teaching systems have become a tool for teachers and students to learn independently in various universities. The characteristic of artificial intelligence teaching system is to get rid of the constraints of traditional teaching time and space and build a brand-new learning environment, which is the mainstream trend of future learning. As the carrier of students’ autonomous learning, (...)
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  42.  18
    Artificial Intelligence-Based Family Health Education Public Service System.Jingyi Zhao & Guifang Fu - 2022 - Frontiers in Psychology 13.
    Family health education is a must for every family, so that children can be taught how to protect their own health. However, in this era of artificial intelligence, many technical operations based on artificial intelligence are born, so the purpose of this study is to apply artificial intelligence technology to family health education. This paper proposes a fusion of artificial intelligence and IoT technologies. Based on the characteristics of artificial intelligence technology, it combines ZigBee technology (...)
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  43.  10
    Artificial intelligence as cognitive enhancement? From Decision Support Systems (DSSs) to Reflection machines.Zaida Espinosa Zárate - 2023 - Veritas: Revista de Filosofía y Teología 55:93-115.
    Resumen: El presente trabajo analiza si los Sistemas de apoyo a la decisión (DSSs) y otros asistentes para su uso, como las Reflection machines o los Personal Assistants that Learn (PAL), contribuyen de hecho a una mejora cognitiva, como habitualmente se tiende a asumir. Es decir, se examina si su potencial para expandir e impulsar la acción de las facultades cognoscitivas se ve efectivamente actualizado y, en consecuencia, si sirven para reafirmar el sentido capacitante de la IA y la extensión (...)
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  44.  26
    Artificial cognitive systems: Where does argumentation fit in?John Fox - 2011 - Behavioral and Brain Sciences 34 (2):78-79.
    Mercier and Sperber (M&S) suggest that human reasoning is reflective and has evolved to support social interaction. Cognitive agents benefit from being able to reflect on their beliefs whether they are acting alone or socially. A formal framework for argumentation that has emerged from research on artificial cognitive systems that parallels M&S's proposals may shed light on mental processes that underpin social interactions.
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  45.  12
    Artificial immune systems can find arbitrarily good approximations for the NP-hard number partitioning problem.Dogan Corus, Pietro S. Oliveto & Donya Yazdani - 2019 - Artificial Intelligence 274 (C):180-196.
  46.  99
    The potential of an artificial intelligence (AI) application for the tax administration system’s modernization: the case of Indonesia.Arfah Habib Saragih, Qaumy Reyhani, Milla Sepliana Setyowati & Adang Hendrawan - 2022 - Artificial Intelligence and Law 31 (3):491-514.
    From 2010 to 2020, Indonesia’s tax-to-gross domestic product (GDP) ratio has been declining. A tax-to-GDP ratio trend of this magnitude indicates that the tax authority lacks the capacity to collect taxes. The tax administration system’s modernization utilizing information technology is thus deemed necessary. Artificial intelligence (AI) technology may serve as a solution to this issue. Using the theoretical frameworks of innovations in tax compliance, the cost of taxation, success factors for information technology governance (SFITG), and AI readiness, this (...)
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  47.  11
    Intelligence system of artificial vision for unmanned aerial vehicle.Shkuropat O. A., Shelehov I. V. & Myronenko M. A. - 2020 - Artificial Intelligence Scientific Journal 25 (4):53-58.
    The article considers the method of factor cluster analysis which allows automatically retrain the onboard recognition system of an unmanned aerial system. The task of informational synthesis of an on-board system for identifying frames is solved within the information-extreme intellectual technology of data analysis, based on maxi- mizing the informational ability of the system during machine learning. Based on the functional approach to modeling cognitive processes inherent to humans during forming and making classification decisions, it was (...)
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  48. Challenges for artificial cognitive systems.Antoni Gomila & Vincent C. Müller - 2012 - Journal of Cognitive Science 13 (4):452-469.
    The declared goal of this paper is to fill this gap: “... cognitive systems research needs questions or challenges that define progress. The challenges are not (yet more) predictions of the future, but a guideline to what are the aims and what would constitute progress.” – the quotation being from the project description of EUCogII, the project for the European Network for Cognitive Systems within which this formulation of the ‘challenges’ was originally developed (http://www.eucognition.org). So, we stick out our neck (...)
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  49.  6
    SYSTEM UNDERSTANDING OF TRUTH AND PROBLEM OF ARTIFICIAL INTELLIGENCE.Artyom Ukhov - 2010 - RUDN Journal of Philosophy 2:93-96.
    The purpose of the article is to research the unseparable connection between objective aspects of cognition linked with metodology and logic and subjective ones which are covered to the subject’s mind and world outlook. According to psychology such a connection directly influences on understanding of truth and can be considered in the problem of artificial intelligence.
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  50.  43
    Using artificial neural networks for the analysis of social-ecological systems.Ulrich J. Frey & Hannes Rusch - 2013 - Ecology and Society 18 (2).
    The literature on common pool resource (CPR) governance lists numerous factors that influence whether a given CPR system achieves ecological long-term sustainability. Up to now there is no comprehensive model to integrate these factors or to explain success within or across cases and sectors. Difficulties include the absence of large-N-studies (Poteete 2008), the incomparability of single case studies, and the interdependence of factors (Agrawal and Chhatre 2006). We propose (1) a synthesis of 24 success factors based on the current (...)
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