Results for 'concept, computer assisted conceptual analysis of texts, CACAT, word2vec, doc2vec, support vector machine, svm, artificial neural network'

967 found
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  1.  20
    Approche computationnelle de l’analyse conceptuelle : présentation opérationnelle et approfondissement méthodologique de la détection d’un concept dans des extraits textuels.Francis Lareau - 2022 - Philosophiques 49 (2):413-431.
    Francis Lareau Une tâche importante en philosophie est la lecture et l’analyse de textes pour en dégager les concepts. L’objectif de la présente étude est d’explorer la possibilité d’une assistance computationnelle pour effectuer cette tâche. Une méthode classique est le concordancier, mais celle-ci ne permet pas de distinguer les extraits où le concept n’est pas exprimé de manière canonique. Nous proposons une méthode permettant de reconnaître ces extraits, que nous appliquons à un corpus d’articles de la revue Philosophiques. Nous déterminons (...)
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  2.  98
    Exploratory analysis of concept and document spaces with connectionist networks.Dieter Merkl, Erich Schweighoffer & Werner Winiwarter - 1999 - Artificial Intelligence and Law 7 (2-3):185-209.
    Exploratory analysis is an area of increasing interest in the computational linguistics arena. Pragmatically speaking, exploratory analysis may be paraphrased as natural language processing by means of analyzing large corpora of text. Concerning the analysis, appropriate means are statistics, on the one hand, and artificial neural networks, on the other hand. As a challenging application area for exploratory analysis of text corpora we may certainly identify text databases, be it information retrieval or information filtering (...)
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  3.  41
    Control of a prosthetic leg based on walking intentions for gait rehabilitation: an fNIRS study.Rayyan Khan, Noman Naseer, Hammad Nazeer & Malik Nasir Khan - 2018 - Frontiers in Human Neuroscience 12.
    This abstract presents a novel brain-computer interface (BCI) framework to control a prosthetic leg, for the rehabilitation of patients suffering from locomotive disorders, using functional near-infrared spectroscopy (fNIRS). fNIRS signals corresponding to walking intention and rest are used to initiate and stop the gait cycle and a nonlinear proportional derivative computed torque controller (PD-CTC) with gravity compensation is used to control torques of hip and knee joints for minimization of position error. The brain signals of walking intention and rest (...)
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  4.  31
    Exploring What Is Encoded in Distributional Word Vectors: A Neurobiologically Motivated Analysis.Akira Utsumi - 2020 - Cognitive Science 44 (6):e12844.
    The pervasive use of distributional semantic models or word embeddings for both cognitive modeling and practical application is because of their remarkable ability to represent the meanings of words. However, relatively little effort has been made to explore what types of information are encoded in distributional word vectors. Knowing the internal knowledge embedded in word vectors is important for cognitive modeling using distributional semantic models. Therefore, in this paper, we attempt to identify the knowledge encoded in word vectors by conducting (...)
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  5. Why Can Computers Understand Natural Language?Juan Luis Gastaldi - 2020 - Philosophy and Technology 34 (1):149-214.
    The present paper intends to draw the conception of language implied in the technique of word embeddings that supported the recent development of deep neural network models in computational linguistics. After a preliminary presentation of the basic functioning of elementary artificial neural networks, we introduce the motivations and capabilities of word embeddings through one of its pioneering models, word2vec. To assess the remarkable results of the latter, we inspect the nature of its underlying mechanisms, which have (...)
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  6.  9
    Research on Quantitative Model of Brand Recognition Based on Sentiment Analysis of Big Data.Lichun Zhou - 2022 - Frontiers in Psychology 13.
    This paper takes laptops as an example to carry out research on quantitative model of brand recognition based on sentiment analysis of big data. The basic idea is to use web crawler technology to obtain the most authentic and direct information of different laptop brands from first-line consumers from public spaces such as buyer reviews of major e-commerce platforms, including review time, text reviews, satisfaction ratings and relevant user information, etc., and then analyzes consumers’ sentimental tendencies and recognition status (...)
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  7.  10
    Recognition of Consumer Preference by Analysis and Classification EEG Signals.Mashael Aldayel, Mourad Ykhlef & Abeer Al-Nafjan - 2021 - Frontiers in Human Neuroscience 14.
    Neuromarketing has gained attention to bridge the gap between conventional marketing studies and electroencephalography -based brain-computer interface research. It determines what customers actually want through preference prediction. The performance of EEG-based preference detection systems depends on a suitable selection of feature extraction techniques and machine learning algorithms. In this study, We examined preference detection of neuromarketing dataset using different feature combinations of EEG indices and different algorithms for feature extraction and classification. For EEG feature extraction, we employed discrete wavelet (...)
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  8.  23
    Assisted Diagnosis of Alzheimer’s Disease Based on Deep Learning and Multimodal Feature Fusion.Yu Wang, Xi Liu & Chongchong Yu - 2021 - Complexity 2021:1-10.
    With the development of artificial intelligence technologies, it is possible to use computer to read digital medical images. Because Alzheimer’s disease has the characteristics of high incidence and high disability, it has attracted the attention of many scholars, and its diagnosis and treatment have gradually become a hot topic. In this paper, a multimodal diagnosis method for AD based on three-dimensional shufflenet and principal component analysis network is proposed. First, the data on structural magnetic resonance imaging (...)
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  9.  16
    Research on the emotional tendency of web texts based on long short-term memory network.Xiaojie Li - 2021 - Journal of Intelligent Systems 30 (1):988-997.
    Through the analysis of emotional tendency in online public opinion, governments and enterprises can stabilize people’s emotion more effectively and maintain social stability. The problem studied in this paper is how to analyze the emotional tendency of online public opinion efficiently, and finally, this paper chooses deep learning algorithm to perform fast analysis of emotional tendency of online public opinion. This paper briefly introduced the structure of the basic model used for emotional tendency analysis of online public (...)
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  10. One Novel Class of Bézier Smooth Semi-Supervised Support Vector Machines for Classification.En Wang, Ziyang Wang & Q. Wu - 2021 - Neural Computing and Applications 3 (1):1-17.
    This article puts forward a novel class of Bézier smooth semi-supervised support vector machines(BS4VMs) for classification. As is well known, semi-supervised support vector machine is introduced for dealing with quantities of unlabeled data in the real world. Labeled data is utilized to train the algorithm and then adapting it to classify the unlabeled data. However, the objective semi-supervised function is not differentiable globally. It is required to endure heavy burden in solving two quadratic programming problems with (...)
     
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  11.  17
    Forecast Model of TV Show Rating Based on Convolutional Neural Network.Lingfeng Wang - 2021 - Complexity 2021:1-10.
    The TV show rating analysis and prediction system can collect and transmit information more quickly and quickly upload the information to the database. The convolutional neural network is a multilayer neural network structure that simulates the operating mechanism of biological vision systems. It is a neural network composed of multiple convolutional layers and downsampling layers sequentially connected. It can obtain useful feature descriptions from original data and is an effective method to extract features (...)
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  12.  16
    Experimental and Computational Approaches for the Classification and Correlation of Temperament (Mizaj) and Uterine Dystemperament (Su’-I-Mizaj Al-Rahim) in Abnormal Vaginal Discharge (Sayalan Al-Rahim) Based on Clinical Analysis Using Support Vector Machine.Arshiya Sultana, Wajeeha Begum, Rushda Saeedi, Khaleequr Rahman, Md Belal Bin Heyat, Faijan Akhtar, Ngo Tung Son & Hadaate Ullah - 2022 - Complexity 2022:1-16.
    The temperament of the body is an essential constituent for health conservancy and diagnosis of several diseases. Hence, general body temperament and uterine dystemperament with abnormal vaginal discharge need evaluation. In addition, we also applied a computational intelligence technique for enhancing scientific validity to classify the warm-cold and wet-dry temperaments. This trial included a total of 66 participants with a vaginal discharge of reproductive age. Data included demographic characteristics of the participants, symptoms associated with vaginal discharge, women’s general temperament, and (...)
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  13.  87
    A moral analysis of intelligent decision-support systems in diagnostics through the lens of Luciano Floridi’s information ethics.Dmytro Mykhailov - 2021 - Human Affairs 31 (2):149-164.
    Contemporary medical diagnostics has a dynamic moral landscape, which includes a variety of agents, factors, and components. A significant part of this landscape is composed of information technologies that play a vital role in doctors’ decision-making. This paper focuses on the so-called Intelligent Decision-Support System that is widely implemented in the domain of contemporary medical diagnosis. The purpose of this article is twofold. First, I will show that the IDSS may be considered a moral agent in the practice of (...)
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  14.  21
    Design and analysis of quantum powered support vector machines for malignant breast cancer diagnosis.Garima Aggarwal, Ishika Dhall & Shubham Vashisth - 2021 - Journal of Intelligent Systems 30 (1):998-1013.
    The rapid pace of development over the last few decades in the domain of machine learning mirrors the advances made in the field of quantum computing. It is natural to ask whether the conventional machine learning algorithms could be optimized using the present-day noisy intermediate-scale quantum technology. There are certain computational limitations while training a machine learning model on a classical computer. Using quantum computation, it is possible to surpass these limitations and carry out such calculations in an optimized (...)
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  15.  77
    Moral agency without responsibility? Analysis of three ethical models of human-computer interaction in times of artificial intelligence (AI).Alexis Fritz, Wiebke Brandt, Henner Gimpel & Sarah Bayer - 2020 - De Ethica 6 (1):3-22.
    Philosophical and sociological approaches in technology have increasingly shifted toward describing AI (artificial intelligence) systems as ‘(moral) agents,’ while also attributing ‘agency’ to them. It is only in this way – so their principal argument goes – that the effects of technological components in a complex human-computer interaction can be understood sufficiently in phenomenological-descriptive and ethical-normative respects. By contrast, this article aims to demonstrate that an explanatory model only achieves a descriptively and normatively satisfactory result if the concepts (...)
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  16.  22
    MindLink-Eumpy: An Open-Source Python Toolbox for Multimodal Emotion Recognition.Ruixin Li, Yan Liang, Xiaojian Liu, Bingbing Wang, Wenxin Huang, Zhaoxin Cai, Yaoguang Ye, Lina Qiu & Jiahui Pan - 2021 - Frontiers in Human Neuroscience 15.
    Emotion recognition plays an important role in intelligent human–computer interaction, but the related research still faces the problems of low accuracy and subject dependence. In this paper, an open-source software toolbox called MindLink-Eumpy is developed to recognize emotions by integrating electroencephalogram and facial expression information. MindLink-Eumpy first applies a series of tools to automatically obtain physiological data from subjects and then analyzes the obtained facial expression data and EEG data, respectively, and finally fuses the two different signals at a (...)
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  17.  65
    Grounding the Vector Space of an Octopus: Word Meaning from Raw Text.Anders Søgaard - 2021 - Minds and Machines 33 (1):33-54.
    Most, if not all, philosophers agree that computers cannot learn what words refers to from raw text alone. While many attacked Searle’s Chinese Room thought experiment, no one seemed to question this most basic assumption. For how can computers learn something that is not in the data? Emily Bender and Alexander Koller ( 2020 ) recently presented a related thought experiment—the so-called Octopus thought experiment, which replaces the rule-based interlocutor of Searle’s thought experiment with a neural language model. The (...)
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  18. Rotated hyperbola model for smooth support vector machine for classification.En Wang - 2018 - Journal of China Universities of Posts and Telecommunications 25 (4).
    This article puts forward a novel smooth rotated hyperbola model for support vector machine (RHSSVM) for classification. As is well known, the Support vector machine (SVM) is based on Statistical Learning Theory and performs its high precision on data classification. However, the objective function is non-differentiable at the zero point. Therefore the fast algorithms cannot be used to train and test the SVM. To deal with it, the proposed method is based on the approximation property of (...)
     
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  19.  96
    Moving beyond content‐specific computation in artificial neural networks.Nicholas Shea - 2021 - Mind and Language 38 (1):156-177.
    A basic deep neural network (DNN) is trained to exhibit a large set of input–output dispositions. While being a good model of the way humans perform some tasks automatically, without deliberative reasoning, more is needed to approach human‐like artificial intelligence. Analysing recent additions brings to light a distinction between two fundamentally different styles of computation: content‐specific and non‐content‐specific computation (as first defined here). For example, deep episodic RL networks draw on both. So does human conceptual reasoning. (...)
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  20.  25
    Concepts and Definitions of Artificial and Natural Intelligence: A Methodological Analysis.Вадим Маркович Розин - 2024 - Russian Journal of Philosophical Sciences 66 (4):7-25.
    The article delves into the conceptual frameworks surrounding artificial intelligence (AI) by juxtaposing it with natural intelligence and delineating the correlated notions. It enumerates the issues propelling the discourse on the explored topics. The author proposes a bifurcation between two polar concepts of artificial intelligence. The first is dubbed “imitative,” where AI is perceived in relation to natural intelligence as its technical recreation, capable of not only emulating but significantly outstripping its natural counterpart. A prerequisite for embodying (...)
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  21.  20
    Using attention methods to predict judicial outcomes.Vithor Gomes Ferreira Bertalan & Evandro Eduardo Seron Ruiz - 2022 - Artificial Intelligence and Law 32 (1):87-115.
    The prediction of legal judgments is one of the most recognized fields in Natural Language Processing, Artificial Intelligence, and Law combined. By legal prediction, we mean intelligent systems capable of predicting specific judicial characteristics such as the judicial outcome, the judicial class, and the prediction of a particular case. In this study, we used an artificial intelligence classifier to predict the decisions of Brazilian courts. To this end, we developed a text crawler to extract data from official Brazilian (...)
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  22.  14
    Lightweight Cryptographic Algorithms for Guessing Attack Protection in Complex Internet of Things Applications.Mohammad Kamrul Hasan, Muhammad Shafiq, Shayla Islam, Bishwajeet Pandey, Yousef A. Baker El-Ebiary, Nazmus Shaker Nafi, R. Ciro Rodriguez & Doris Esenarro Vargas - 2021 - Complexity 2021:1-13.
    As the world keeps advancing, the need for automated interconnected devices has started to gain significance; to cater to the condition, a new concept Internet of Things has been introduced that revolves around smart devicesʼ conception. These smart devices using IoT can communicate with each other through a network to attain particular objectives, i.e., automation and intelligent decision making. IoT has enabled the users to divide their household burden with machines as these complex machines look after the environment variables (...)
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  23. Theorem proving in artificial neural networks: new frontiers in mathematical AI.Markus Pantsar - 2024 - European Journal for Philosophy of Science 14 (1):1-22.
    Computer assisted theorem proving is an increasingly important part of mathematical methodology, as well as a long-standing topic in artificial intelligence (AI) research. However, the current generation of theorem proving software have limited functioning in terms of providing new proofs. Importantly, they are not able to discriminate interesting theorems and proofs from trivial ones. In order for computers to develop further in theorem proving, there would need to be a radical change in how the software functions. Recently, (...)
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  24.  25
    Automating petition classification in Brazil’s legal system: a two-step deep learning approach.Yuri D. R. Costa, Hugo Oliveira, Valério Nogueira, Lucas Massa, Xu Yang, Adriano Barbosa, Krerley Oliveira & Thales Vieira - forthcoming - Artificial Intelligence and Law.
    Automated classification of legal documents has been the subject of extensive research in recent years. However, this is still a challenging task for long documents, since it is difficult for a model to identify the most relevant information for classification. In this paper, we propose a two-stage supervised learning approach for the classification of petitions, a type of legal document that requests a court order. The proposed approach is based on a word-level encoder–decoder Seq2Seq deep neural network, such (...)
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  25.  83
    Using machine learning to create a repository of judgments concerning a new practice area: a case study in animal protection law.Joe Watson, Guy Aglionby & Samuel March - 2023 - Artificial Intelligence and Law 31 (2):293-324.
    Judgments concerning animals have arisen across a variety of established practice areas. There is, however, no publicly available repository of judgments concerning the emerging practice area of animal protection law. This has hindered the identification of individual animal protection law judgments and comprehension of the scale of animal protection law made by courts. Thus, we detail the creation of an initial animal protection law repository using natural language processing and machine learning techniques. This involved domain expert classification of 500 judgments (...)
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  26.  10
    Machine overstrain prediction for early detection and effective maintenance: A machine learning algorithm comparison.Bruno Mota, Pedro Faria & Carlos Ramos - forthcoming - Logic Journal of the IGPL.
    Machine stability and energy efficiency have become major issues in the manufacturing industry, primarily during the COVID-19 pandemic where fluctuations in supply and demand were common. As a result, Predictive Maintenance (PdM) has become more desirable, since predicting failures ahead of time allows to avoid downtime and improves stability and energy efficiency in machines. One type of machine failure stands out due to its impact, machine overstrain, which can occur when machines are used beyond their tolerable limit. From the current (...)
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  27.  55
    Context Matters: Recovering Human Semantic Structure from Machine Learning Analysis of Large‐Scale Text Corpora.Marius Cătălin Iordan, Tyler Giallanza, Cameron T. Ellis, Nicole M. Beckage & Jonathan D. Cohen - 2022 - Cognitive Science 46 (2):e13085.
    Applying machine learning algorithms to automatically infer relationships between concepts from large-scale collections of documents presents a unique opportunity to investigate at scale how human semantic knowledge is organized, how people use it to make fundamental judgments (“How similar are cats and bears?”), and how these judgments depend on the features that describe concepts (e.g., size, furriness). However, efforts to date have exhibited a substantial discrepancy between algorithm predictions and human empirical judgments. Here, we introduce a novel approach to generating (...)
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  28. Face recognition method based on multi-class classification of smooth support vector machine.Wang En Wu Qing, Liang Bo, Wang Wan & En Wang - 2015 - Journal of Computer Applications 35 (s1).
    A new three-order piecewise function was used to smoothen the model of Support Vector Machine( SVM) and a Third-order Piecewise Smooth SVM( TPSSVM) was proposed. By theory analyzing, approximation accuracy of the smooth function to the plus function is higher than that of the available. When dealing with the multi-class problem, a coding method of multi-class classification based on one-against-rest was proposed. Principal Component Analysis( PCA) was employed to extract the main features of face image set, and (...)
     
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  29.  17
    Performance Analysis of an Optimized ANN Model to Predict the Stability of Smart Grid.Ayushi Chahal, Preeti Gulia, Nasib Singh Gill & Jyotir Moy Chatterjee - 2022 - Complexity 2022:1-13.
    The stability of the power grid is concernment due to the high demand and supply to smart cities, homes, factories, and so on. Different machine learning and deep learning models can be used to tackle the problem of stability prediction for the energy grid. This study elaborates on the necessity of IoT technology to make energy grid networks smart. Different prediction models, namely, logistic regression, naïve Bayes, decision tree, support vector machine, random forest, XGBoost, k-nearest neighbor, and optimized (...)
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  30.  18
    MRI Texture-Based Recognition of Dystrophy Phase in Golden Retriever Muscular Dystrophy Dogs. Elimination of Features that Evolve along with the Individual’s Growth.Dorota Duda - 2018 - Studies in Logic, Grammar and Rhetoric 56 (1):121-142.
    The study investigates the possibility of applying texture analysis (TA) for testing Duchenne Muscular Dystrophy (DMD) therapies. The work is based on the Golden Retriever Muscular Dystrophy (GRMD) canine model, in which 3 phases of canine growth and/or dystrophy development are identified: the first phase (0–4 months of age), the second phase (from over 4 to 6 months), and the third phase (from over 6 months to death). Two differentiation problems are posed: (i) the first phase vs. the second (...)
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  31.  12
    Computational Analysis Problem of Aesthetic Content in Fine-Art Paintings.Ольга Алексеевна Журавлева, Наталья Борисовна Савхалова, Андрей Владимирович Комаров, Денис Алексеевич Жердев, Анна Ивановна Демина, Эккарт Михаэльсен, Артем Владимирович Никоноров & Александр Юрьевич Нестеров - 2022 - Russian Journal of Philosophical Sciences 65 (2):120-140.
    The article discusses the possibilities of the formal analysis of the fine-art painting composition on the basis of the classical definitions of beauty and computational aesthetics’ approaches of the second half of the 20th century he authors define the problem and consider solutions for the formalization of aesthetic perception in the context of aesthetic text, i.e., as part of the fine arts composition – a formal sequence of signs simply ordered in accordance with the syntactic rules’ system. The methodology (...)
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  32.  7
    Introduction to Deep Learning: From Logical Calculus to Artificial Intelligence.Sandro Skansi - 2018 - Springer Verlag.
    This textbook presents a concise, accessible and engaging first introduction to deep learning, offering a wide range of connectionist models which represent the current state-of-the-art. The text explores the most popular algorithms and architectures in a simple and intuitive style, explaining the mathematical derivations in a step-by-step manner. The content coverage includes convolutional networks, LSTMs, Word2vec, RBMs, DBNs, neural Turing machines, memory networks and autoencoders. Numerous examples in working Python code are provided throughout the book, and the code is (...)
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  33.  17
    Estimation of Suspended Sediment Load Using Artificial Intelligence-Based Ensemble Model.Vahid Nourani, Huseyin Gokcekus & Gebre Gelete - 2021 - Complexity 2021:1-19.
    Suspended sediment modeling is an important subject for decision-makers at the catchment level. Accurate and reliable modeling of suspended sediment load is important for planning, managing, and designing of water resource structures and river systems. The objective of this study was to develop artificial intelligence- based ensemble methods for modeling SSL in Katar catchment, Ethiopia. In this paper, three single AI-based models, that is, support vector machine, adaptive neurofuzzy inference system, feed-forward neural network, and one (...)
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  34.  30
    Embodiments of Mind.Warren S. McCulloch - 1963 - MIT Press.
    Writings by a thinker—a psychiatrist, a philosopher, a cybernetician, and a poet—whose ideas about mind and brain were far ahead of his time. Warren S. McCulloch was an original thinker, in many respects far ahead of his time. McCulloch, who was a psychiatrist, a philosopher, a teacher, a mathematician, and a poet, termed his work “experimental epistemology.” He said, “There is one answer, only one, toward which I've groped for thirty years: to find out how brains work.” Embodiments of Mind, (...)
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  35.  37
    The Epistemological Consequences of Artificial Intelligence, Precision Medicine, and Implantable Brain-Computer Interfaces.Ian Stevens - 2024 - Voices in Bioethics 10.
    ABSTRACT I argue that this examination and appreciation for the shift to abductive reasoning should be extended to the intersection of neuroscience and novel brain-computer interfaces too. This paper highlights the implications of applying abductive reasoning to personalized implantable neurotechnologies. Then, it explores whether abductive reasoning is sufficient to justify insurance coverage for devices absent widespread clinical trials, which are better applied to one-size-fits-all treatments. INTRODUCTION In contrast to the classic model of randomized-control trials, often with a large number (...)
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  36.  30
    Privacy and surveillance concerns in machine learning fall prediction models: implications for geriatric care and the internet of medical things.Russell Yang - forthcoming - AI and Society:1-5.
    Fall prediction using machine learning has become one of the most fruitful and socially relevant applications of computer vision in gerontological research. Since its inception in the early 2000s, this subfield has proliferated into a robust body of research underpinned by various machine learning algorithms (including neural networks, support vector machines, and decision trees) as well as statistical modeling approaches (Markov chains, Gaussian mixture models, and hidden Markov models). Furthermore, some advancements have been translated into commercial (...)
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  37.  48
    Toward a Unified Sub-symbolic Computational Theory of Cognition.Martin V. Butz - 2016 - Frontiers in Psychology 7:171252.
    This paper proposes how various disciplinary theories of cognition may be combined into a unifying, sub-symbolic, computational theory of cognition. The following theories are considered for integration: psychological theories, including the theory of event coding, event segmentation theory, the theory of anticipatory behavioral control, and concept development; artificial intelligence and machine learning theories, including reinforcement learning and generative artificial neural networks; and theories from theoretical and computational neuroscience, including predictive coding and free energy-based inference. In the light (...)
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  38.  27
    Support Vector Machines and Affective Science.Chris H. Miller, Matthew D. Sacchet & Ian H. Gotlib - 2020 - Emotion Review 12 (4):297-308.
    Support vector machines (SVMs) are being used increasingly in affective science as a data-driven classification method and feature reduction technique. Whereas traditional statistical methods typically compare group averages on selected variables, SVMs use a predictive algorithm to learn multivariate patterns that optimally discriminate between groups. In this review, we provide a framework for understanding the methods of SVM-based analyses and summarize the findings of seminal studies that use SVMs for classification or data reduction in the behavioral and (...) study of emotion and affective disorders. We conclude by discussing promising directions and potential applications of SVMs in future research in affective science. (shrink)
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  39.  31
    Are AI systems biased against the poor? A machine learning analysis using Word2Vec and GloVe embeddings.Georgina Curto, Mario Fernando Jojoa Acosta, Flavio Comim & Begoña Garcia-Zapirain - forthcoming - AI and Society:1-16.
    Among the myriad of technical approaches and abstract guidelines proposed to the topic of AI bias, there has been an urgent call to translate the principle of fairness into the operational AI reality with the involvement of social sciences specialists to analyse the context of specific types of bias, since there is not a generalizable solution. This article offers an interdisciplinary contribution to the topic of AI and societal bias, in particular against the poor, providing a conceptual framework of (...)
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  40.  14
    Facial Expression Recognition Using Kernel Entropy Component Analysis Network and DAGSVM.Xiangmin Chen, Li Ke, Qiang Du, Jinghui Li & Xiaodi Ding - 2021 - Complexity 2021:1-12.
    Facial expression recognition plays a significant part in artificial intelligence and computer vision. However, most of facial expression recognition methods have not obtained satisfactory results based on low-level features. The existed methods used in facial expression recognition encountered the major issues of linear inseparability, large computational burden, and data redundancy. To obtain satisfactory results, we propose an innovative deep learning model using the kernel entropy component analysis network and directed acyclic graph support vector machine. (...)
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  41.  15
    Image Recognition and Simulation Based on Distributed Artificial Intelligence.Tao Fan - 2021 - Complexity 2021:1-11.
    This paper studies the traditional target classification and recognition algorithm based on Histogram of Oriented Gradients feature extraction and Support Vector Machine classification and applies this algorithm to distributed artificial intelligence image recognition. Due to the huge number of images, the general detection speed cannot meet the requirements. We have improved the HOG feature extraction algorithm. Using principal component analysis to perform dimensionality reduction operations on HOG features and doing distributed artificial intelligence image recognition experiments, (...)
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  42.  10
    Research on reform and breakthrough of news, film, and television media based on artificial intelligence.Xiaojing Li - 2022 - Journal of Intelligent Systems 31 (1):992-1001.
    With the development of technology, news media and film and television media are spreading faster and faster, and at the same time, the spread of rumors is also accelerated. This article briefly describes the application of artificial intelligence in news media and film and television media using a back-propagation neural network algorithm to reform refutation of rumors in news media and film and television media, and compared it with K-means and support vector machine algorithms in (...)
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  43.  23
    Towards a Framework for Acquisition and Analysis of Speeches to Identify Suspicious Contents through Machine Learning.Md Rashadur Rahman, Mohammad Shamsul Arefin, Md Billal Hossain, Mohammad Ashfak Habib & A. S. M. Kayes - 2020 - Complexity 2020:1-14.
    The most prominent form of human communication and interaction is speech. It plays an indispensable role for expressing emotions, motivating, guiding, and cheering. An ill-intentioned speech can mislead people, societies, and even a nation. A misguided speech can trigger social controversy and can result in violent activities. Every day, there are a lot of speeches being delivered around the world, which are quite impractical to inspect manually. In order to prevent any vicious action resulting from any misguided speech, the development (...)
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  44.  38
    (1 other version)Handbook of Brain Theory and Neural Networks.Michael A. Arbib (ed.) - 1995 - MIT Press.
    Choice Outstanding Academic Title, 1996. In hundreds of articles by experts from around the world, and in overviews and "road maps" prepared by the editor, The Handbook of Brain Theory and Neural Networkscharts the immense progress made in recent years in many specific areas related to two great questions: How does the brain work? and How can we build intelligent machines? While many books have appeared on limited aspects of one subfield or another of brain theory and neural (...)
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  45.  46
    Analysis of artificial neural networks training models for airfare price prediction.Kuptsova E. A. & Ramazanov S. K. - 2020 - Artificial Intelligence Scientific Journal 25 (3):45-50.
    Air transport is playing an increasing role in the world economy every year. This is facilitated by technological development and the latest developments in the aviation industry, globalization. This paper provides an overview of artificial neural network training methods for airfare predicting. The articles for 2017-2019 were analyzed in order to determine the model with the most accurate prediction. The researchers conducted research on open data collected by themselves and set themselves the goal of creating a model (...)
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    Aberrant brain functional networks in type 2 diabetes mellitus: A graph theoretical and support-vector machine approach.Lin Lin, Jindi Zhang, Yutong Liu, Xinyu Hao, Jing Shen, Yang Yu, Huashuai Xu, Fengyu Cong, Huanjie Li & Jianlin Wu - 2022 - Frontiers in Human Neuroscience 16:974094.
    ObjectiveType 2 diabetes mellitus (T2DM) is a high risk of cognitive decline and dementia, but the underlying mechanisms are not yet clearly understood. This study aimed to explore the functional connectivity (FC) and topological properties among whole brain networks and correlations with impaired cognition and distinguish T2DM from healthy controls (HC) to identify potential biomarkers for cognition abnormalities.MethodsA total of 80 T2DM and 55 well-matched HC were recruited in this study. Subjects’ clinical data, neuropsychological tests and resting-state functional magnetic resonance (...)
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    Interperforming in AI: question of ‘natural’ in machine learning and recurrent neural networks.Tolga Yalur - 2020 - AI and Society 35 (3):737-745.
    This article offers a critical inquiry of contemporary neural network models as an instance of machine learning, from an interdisciplinary perspective of AI studies and performativity. It shows the limits on the architecture of these network systems due to the misemployment of ‘natural’ performance, and it offers ‘context’ as a variable from a performative approach, instead of a constant. The article begins with a brief review of machine learning-based natural language processing systems and continues with a concentration (...)
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  48.  79
    The State Space of Artificial Intelligence.Holger Lyre - 2020 - Minds and Machines 30 (3):325-347.
    The goal of the paper is to develop and propose a general model of the state space of AI. Given the breathtaking progress in AI research and technologies in recent years, such conceptual work is of substantial theoretical interest. The present AI hype is mainly driven by the triumph of deep learning neural networks. As the distinguishing feature of such networks is the ability to self-learn, self-learning is identified as one important dimension of the AI state space. Another (...)
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  49.  73
    Where the Smart Things Are: Social Machines and the Internet of Things.Paul Smart, Aastha Madaan & Wendy Hall - 2019 - Phenomenology and the Cognitive Sciences 18 (3):551-575.
    The emergence of large-scale social media systems, such as Wikipedia, Facebook, and Twitter, has given rise to a new multi-disciplinary effort based around the concept of social machines. For the most part, this research effort has limited its attention to the study of Web-based systems. It has also, perhaps unsurprisingly, tended to highlight the social scientific relevance of such systems. The present paper seeks to expand the scope of the social machine research effort to encompass the Internet of Things. One (...)
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  50.  39
    Comparison of Artificial Neural Networks and Logistic Regression Analysis in Pregnancy Prediction Using the In Vitro Fertilization Treatment.Robert Milewski, Anna Justyna Milewska, Teresa Więsak & Allen Morgan - 2013 - Studies in Logic, Grammar and Rhetoric 35 (1):39-48.
    Infertility is recognized as a major problem of modern society. Assisted Reproductive Technology is the one of many available treatment options to cure infertility. However, the efficiency of the ART treatment is still inadequate. Therefore, the procedure’s quality is constantly improving and there is a need to determine statistical predictors as well as contributing factors to the successful treatment. There is a concern over the application of adequate statistical analysis to clinical data: should classic statistical methods be used (...)
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