Search results for "Cognition"

showing 10 items of 7054 documents

Unsupervised Eye Blink Artifact Identification in Electroencephalogram

2018

International audience; The most prominent type of artifact contaminating electroencephalogram (EEG) signals is the eye blink (EB) artifact. Hence, EB artifact detection is one of the most crucial pre-processing step in EEG signal processing before this artifact can be removed. In this work, an approach that identifies EB artifacts without human supervision and automated varying threshold setting is proposed and evaluated. The algorithm functions on the basis of correlation between two EEG electrodes, Fp1 and Fp2, followed by EB artifact threshold determination utilizing the amplitude displacement from the mean. The proposed approach is validated and evaluated in terms of accuracy and error…

Artifact (error)medicine.diagnostic_testbusiness.industryComputer science05 social sciencesFeature extractionWord error ratePattern recognitionElectroencephalography050105 experimental psychologyEB Artifacts03 medical and health sciencesIdentification (information)Electroencephalogram0302 clinical medicine[INFO.INFO-TS]Computer Science [cs]/Signal and Image Processingmedicine0501 psychology and cognitive sciences[INFO]Computer Science [cs]Artificial intelligenceAutomated ThresholdbusinessEye blink030217 neurology & neurosurgery
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An offline/real-time artifact rejection strategy to improve the classification of multi-channel evoked potentials

2008

The primary goal of this paper is to improve the classification of multi-channel evoked potentials (EPs) by introducing a temporal domain artifact detection strategy and using this strategy to (a) evaluate how the performance of classifiers is affected by artifacts and (b) show how the performance can be improved by detecting and rejecting artifacts in offline and real-time classification experiments. Using a pattern recognition approach, an artifact is defined in this study as any signal that may lead to inaccurate classifier parameter estimation and inaccurate testing. The temporal domain artifact detection tests include: a within-channel standard deviation (STD) test that can detect sign…

Artifact rejectionArtificial IntelligenceEstimation theoryComputer scienceSpeech recognitionSignal ProcessingInformation processingDetection theoryComputer Vision and Pattern RecognitionEvoked potentialClassifier (UML)SoftwareStandard deviationPattern Recognition
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User grouping and power allocation in NOMA systems: a novel semi-supervised reinforcement learning-based solution

2022

Author's accepted manuscript In this paper, we present a pioneering solution to the problem of user grouping and power allocation in non-orthogonal multiple access (NOMA) systems. The problem is highly pertinent because NOMA is a well-recognized technique for future mobile radio systems. The salient and difcult issues associated with NOMA systems involve the task of grouping users together into the prespecifed time slots, which are augmented with the question of determining how much power should be allocated to the respective users. This problem is, in and of itself, NP-hard. Our solution is the frst reported reinforcement learning (RL)-based solution, which attempts to resolve parts of thi…

Artificial IntelligenceComputer Vision and Pattern RecognitionVDP::Teknologi: 500::Informasjons- og kommunikasjonsteknologi: 550
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Towards more relevance-oriented data mining research

2008

Data mining (DM) research has successfully developed advanced DM techniques and algorithms over the last few decades, and many organisations have great expectations to take more benefit of their data warehouses in decision making. Currently, the strong focus of most DM-researchers is still only on technology-oriented topics. Commonly the DM research has several stakeholders, the major of which can be divided into internal and external ones each having their own point of view, and which are at least partly conflicting. The most important internal groups of stakeholders are the DM research community and academics in other disciplines. The most important external stakeholder groups are manager…

Artificial IntelligenceResearch communityInformation systemStakeholderRelevance (information retrieval)Computer Vision and Pattern RecognitionData miningSociologycomputer.software_genreData sciencecomputerData warehouseTheoretical Computer Science
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Complexity reduction in efficient prototype-based classification

2006

Artificial Intelligencebusiness.industryComputer scienceSignal ProcessingComputer Vision and Pattern RecognitionArtificial intelligencebusinessMachine learningcomputer.software_genrecomputerSoftwarePattern Recognition
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Corrigendum to three papers that deal with “Anti”-Bayesian Pattern Recognition [Pattern Recognition]

2014

In the papers 1 (Thomas and Oommen, 2013), 2 (Oommen and Thomas, 2014) and 3 (Thomas and Oommen, 2013), and their associated conference versions cited in those papers, we had introduced a new method of so-called "Anti"-Bayesian Pattern Recognition (PR) which achieved the classification using only a few (sometimes as few as two) points distant from the mean. While the PR strategy, in and of itself, is accurate, the claim that it was based on the Order Statistics (OS) of the distributions of the features is not. The PR and classification results are rather founded on the symmetric quantiles and not on the symmetric OSs. This brief paper corrects the flawed claim presented in those papers. Hig…

Artificial Intelligencebusiness.industryComputer scienceSignal ProcessingPattern recognition (psychology)Order statisticBayesian probabilityPattern recognitionComputer Vision and Pattern RecognitionArtificial intelligencebusinessSoftwareQuantilePattern Recognition
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An ontology for cognitive mimetics

2018

AI and autonomous systems are intended to replace people in several jobs. People have worked in these jobs being able to execute the required information processing. This implies that new technical artefacts must be able to perform equitably effective information processing. Thus, it makes sense to develop the analysis of human information processing in designing intelligent systems. This approach has been termed cognitive mimetics. This paper studies how it would be practical to gain knowledge about human information processing and organize this knowledge using ontologies.

Artificial intelligenceComputer science05 social sciencesIntelligent decision support systemInformation processingExpert studiesCognitionCognitive mimetics02 engineering and technologyOntology (information science)Design methodsHuman–computer interactionAI0202 electrical engineering electronic engineering information engineeringOntology020201 artificial intelligence & image processing0501 psychology and cognitive sciencesProtocol analysis050107 human factors
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Questions in Cognitive Mimetics

2021

Human thinking advances through questions and answers. Any field of human endeavor is permeated by the presence of questions, answers and presuppositions. Questions have a kind of universality, whereby one can place the question marks on anything, including questions themselves. The process of asking the right questions about the right things and in the right way are key for the explication of an approach. Recently, we have begun thinking about an approach to the design of intelligent technology: Cognitive mimetics. In brief, the idea is to take inspiration of empirical human thinking in specific contexts to develop AI solutions. The purpose of this article is to question this approach from…

Artificial intelligenceComputer scienceProcess (engineering)Field (Bourdieu)Universality (philosophy)CognitionCognitive mimeticstekoälyDesign methodsPresuppositionKey (music)EpistemologyExplicationmimesissuunnittelumenetelmätAI designjäljittelyDesign methods
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Multi-layer intrusion detection system with ExtraTrees feature selection, extreme learning machine ensemble, and softmax aggregation

2019

Abstract Recent advances in intrusion detection systems based on machine learning have indeed outperformed other techniques, but struggle with detecting multiple classes of attacks with high accuracy. We propose a method that works in three stages. First, the ExtraTrees classifier is used to select relevant features for each type of attack individually for each (ELM). Then, an ensemble of ELMs is used to detect each type of attack separately. Finally, the results of all ELMs are combined using a softmax layer to refine the results and increase the accuracy further. The intuition behind our system is that multi-class classification is quite difficult compared to binary classification. So, we…

Artificial intelligencelcsh:Computer engineering. Computer hardwareExtreme learning machineEnsemble methodsComputer scienceBinary numberlcsh:TK7885-7895Feature selection02 engineering and technologyIntrusion detection systemlcsh:QA75.5-76.95Machine learning0202 electrical engineering electronic engineering information engineeringVDP::Teknologi: 500::Informasjons- og kommunikasjonsteknologi: 550Multi layerExtreme learning machinebusiness.industryIntrusion detection system020206 networking & telecommunicationsPattern recognitionComputer Science ApplicationsBinary classificationFeature selectionSignal ProcessingSoftmax function020201 artificial intelligence & image processinglcsh:Electronic computers. Computer scienceArtificial intelligencebusinessClassifier (UML)EURASIP Journal on Information Security
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Digital liquid-scintillation counting and effective pulse-shape discrimination with artificial neural networks

2014

Abstract A typical problem in low-level liquid scintillation (LS) counting is the identification of α particles in the presence of a high background of β and γ particles. Especially the occurrence of β-β and β-γ pile-ups may prevent the unambiguous identification of an α signal by commonly used analog electronics. In this case, pulse-shape discrimination (PSD) and pile-up rejection (PUR) units show an insufficient performance. This problem was also observed in own earlier experiments on the chemical behaviour of transactinide elements using the liquid-liquid extraction system SISAK in combination with LS counting. α-particle signals from the decay of the transactinides could not be unambigu…

Artificial neural networkAnalogue electronicsChemistrybusiness.industryLiquid scintillation countingPattern recognitionSignalPulse (physics)Artificial intelligenceTransient (oscillation)Physical and Theoretical ChemistryOscilloscopebusinessDigital recordingRadiochimica Acta
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