Search results for "Data model"

showing 10 items of 162 documents

Knowledge Acquisition Based on Semantic Balance of Internal and External Knowledge

1999

This paper presents a strategy to handle incomplete knowledge during acquisition process. The goal of this research is to develop formal tools that benefit the law of semantic balance. The assumption is used that a situation inside the object’s boundary in some world should be in balance with a situation outside it. It means that continuous cognition of an object aspires to a complete knowledge about it and knowledge about internal structure of the object will be in balance with knowledge about relationships of the object with other objects in its environment. It is supposed that one way to discover incompleteness of knowledge about some object is to measure and compare knowledge about its …

Computer sciencebusiness.industryOpen Knowledge Base ConnectivityCognitionSemantic data modelProcedural knowledgeSemanticsKnowledge acquisitionSemantic networkBody of knowledgeKnowledge-based systemsKnowledge extractionKnowledge baseHuman–computer interactionSemantics of logicDomain knowledgeArtificial intelligencebusiness
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Context-Awareness in Ensemble Recommender System Framework

2021

Recommender systems that provide recommendations based uniquely on information over users and items may not be very accurate in some situations. Therefore, adding contextual information to recommendations may be a good choice resulting in a system with increased precision. In an early work, we proposed an Ensemble Variational Autoencoders (EnsVAE) framework for recommendation. EnsVAE is adjusted to output interest probabilities by learning the distribution of each item's ratings and attempts to provide diverse novel items that are pertinent to users. In this paper, we propose and investigate a context awareness framework based on the Ensemblist Variational Autoencoders model with integratin…

Computer sciencebusiness.industryRecommender systemMachine learningcomputer.software_genreTest (assessment)Data modelingFilter (video)Task analysisContextual informationContext awarenessArtificial intelligenceBaseline (configuration management)businesscomputer2021 International Conference on Electrical, Communication, and Computer Engineering (ICECCE)
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Predictive models for energy saving in Wireless Sensor Networks

2011

ICT devices nowadays cannot disregard optimizations toward energy sustainability. Wireless Sensor Networks, in particular, are a representative class of a technology where special care must be given to energy saving, due to the typical scarcity and non-renewability of their energy sources, in order to enhance network lifetime. In our work we propose a novel approach that aims to adaptively control the sampling rate of wireless sensor nodes using prediction models, so that environmental phenomena can be consistently modeled while reducing the required amount of transmissions; the approach is tested on data available from a public dataset.

Computer sciencebusiness.industryReliability (computer networking)Distributed computingData modelingKey distribution in wireless sensor networksPredictive ModelWirelessEnergy sourcebusinessWireless sensor networkWireless Sensor NetworkEnergy (signal processing)Predictive modellingEnergy Saving.Computer network2011 IEEE International Symposium on a World of Wireless, Mobile and Multimedia Networks
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Dimension Estimation in Two-Dimensional PCA

2021

We propose an automated way of determining the optimal number of low-rank components in dimension reduction of image data. The method is based on the combination of two-dimensional principal component analysis and an augmentation estimator proposed recently in the literature. Intuitively, the main idea is to combine a scree plot with information extracted from the eigenvectors of a variation matrix. Simulation studies show that the method provides accurate estimates and a demonstration with a finger data set showcases its performance in practice. peerReviewed

Computer sciencebusiness.industrydimension reductionDimensionality reductionimage dataEstimatorPattern recognitiondimension estimation16. Peace & justiceImage (mathematics)Data modelingData setMatrix (mathematics)scree plotPrincipal component analysisaugmentationArtificial intelligencebusinessEigenvalues and eigenvectors
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Machine Learning for Modeling the Biomechanical Behavior of Human Soft Tissue

2016

An accurate modeling of the biomechanical properties of human soft tissue is crucial in many clinical applications, such as, radiotherapy administration or surgery. The finite element method (FEM) is the usual choice to carry out such modeling due to its high accuracy. However, FEM is computationally very costly, and hence, its application in real-time or even off-line with short delays are still challenges to overcome. This paper proposes a framework based on Machine Learning to learn FEM modeling, thus having a tool able to yield results that may be sufficiently fast for clinical applications. In particular, the use of ensembles of Decision Trees has shown its suitability in modeling the …

Computer sciencebusiness.industrymedicine.medical_treatmentDecision treeSoft tissue02 engineering and technologyMachine learningcomputer.software_genre01 natural sciencesFinite element methodData modeling010101 applied mathematicsRadiation therapy0202 electrical engineering electronic engineering information engineeringmedicine020201 artificial intelligence & image processingArtificial intelligence0101 mathematicsbusinesscomputer2016 IEEE 16th International Conference on Data Mining Workshops (ICDMW)
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Publication Data Integration as a Tool for Excellence-Based Research Analysis at the University of Latvia

2017

The evaluation of research results can be carried out with different purposes aligned with strategic goals of an institution, for example, to decide upon distribution of research funding or to recruit or promote employees of an institution involved in research. Whereas quantitative measures such as number of scientific papers or number of scientific staff are commonly used for such evaluation, the strategy of the institution can be set to achieve ambitious scientific goals. Therefore, a question arises as to how more quality oriented aspects of the research outcomes should be measured. To supply an appropriate dataset for evaluation of both types of metrics, a suitable framework should be p…

Computer sciencemedia_common.quotation_subject05 social sciences050905 science studiescomputer.software_genreData scienceSet (abstract data type)Data modelExcellenceData qualityInformation systemQuality (business)Metric (unit)0509 other social sciences050904 information & library sciencescomputermedia_commonData integration
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A Metamodeling Approach to Evolution

2001

With the increasing complexity of systems being modeled, analysis & design move towards more and more abstract methodologies. Most of them rely on metamodeling tools that employ multi-view models and the four-layer metamodeling architecture. Our idea is to use the metamodeling approach to classify and to constraint the possible evolutions of an information system with the effect to improve both detection of evolution conflicts and disciplined reuse. Within the domain of UML metamodeling, a refinement of the metamodel-level classification is proposed that includes bases for defining a metric of the evolution (in terms of distance between metamodels).

ComputingMethodologies_SIMULATIONANDMODELINGComputer sciencebusiness.industryConstraint (computer-aided design)ReuseMetadata modelingcomputer.software_genreMetamodelingDomain (software engineering)Unified Modeling LanguageSoftware_SOFTWAREENGINEERINGMetric (mathematics)Information systemData miningSoftware_PROGRAMMINGLANGUAGESSoftware engineeringbusinesscomputercomputer.programming_language
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UML-Based Reliability Modeling of Network Services, a UDP Echo Service Case Study

2009

In the paper, we discuss state space reliability modeling formalism of distributed systems and services compliant with UML metamodel. Behavior of modeled application system we describe in terms of states. Service generation process we represent as a sequence of application system states. State space approach allows us to define dependence between application system components via dependence between components states and states input, output parameters. Reliability of application system component we define for each simply action state. Reliability of a service we express by components reliability in states determined by service generation process. As an example, we analyze reliability of cli…

Connectionless communicationObject-oriented programmingUnified Modeling LanguageData exchangeSoftware deploymentComputer scienceNetwork servicecomputerSoftware qualitycomputer.programming_languageReliability engineeringData modeling2009 Fourth International Conference on Dependability of Computer Systems
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Domestic demand predictions considering influence of external environmental parameters

2015

A precise prediction of domestic demand is very important for establishing home energy management system and preventing the damage caused by overloading. In this work, active and reactive power consumption prediction model based on historical power usage data and external environment parameter data (temperature and solar radiation) is presented for a typical Southern Norwegian house. In the presented model, a neural network is adopted as a main prediction technique and historical domestic load data of around 2 years are utilized for training and testing purpose. Temperature and global irradiation (which illustrates the solar radiation level quantitatively) are employed as external parameter…

Consumption (economics)Energy management systemEngineeringWork (thermodynamics)Artificial neural networkbusiness.industryDistribution management systemAC powerbusinessSimulationReliability engineeringPower (physics)Data modeling2015 IEEE 13th International Conference on Industrial Informatics (INDIN)
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Incorporating in vivo and ex vivo NMR sources of information for modeling robust brain tumor classifiers

2010

The purpose of this paper is to investigate the potential and limitations of using multimodal sources of information coming from in vivo NMR and ex vivo NMR data for detecting brain tumors. Supervised pattern recognition methods, whose performance directly depends on the prior available observations used in building them, are proposed. We show that high resolution magic angle spinning (HR-MAS) data act as complementary information for classifying magnetic resonance spectroscopic imaging (MRSI) data. In particularly, when considering rare brain tumors, since it is unlikely to acquire sufficient cases to define their metabolite profiles using only in vivo NMR information, HR-MAS can support t…

Contextual image classificationmedicine.diagnostic_testComputer sciencebusiness.industryMagnetic resonance spectroscopic imagingPattern recognitionMagnetic resonance imagingData modelingNuclear magnetic resonanceIn vivoPattern recognition (psychology)Magic angle spinningmedicineArtificial intelligencebusinessEx vivo2010 IEEE International Conference on Imaging Systems and Techniques
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