Search results for "Machine"

showing 10 items of 2592 documents

Evaluating the performance of artificial neural networks for the classification of freshwater benthic macroinvertebrates

2014

Abstract Macroinvertebrates form an important functional component of aquatic ecosystems. Their ability to indicate various types of anthropogenic stressors is widely recognized which has made them an integral component of freshwater biomonitoring. The use of macroinvertebrates in biomonitoring is dependent on manual taxa identification which is currently a time-consuming and cost-intensive process conducted by highly trained taxonomical experts. Automated taxa identification of macroinvertebrates is a relatively recent research development. Previous studies have displayed great potential for solutions to this demanding data mining application. In this research we have a collection of 1350 …

ta113Radial basis function networkEcologyArtificial neural networkComputer sciencebusiness.industryApplied MathematicsEcological Modelingta1172PerceptronMachine learningcomputer.software_genreBackpropagationComputer Science ApplicationsProbabilistic neural networkIdentification (information)Computational Theory and MathematicsModeling and SimulationMultilayer perceptronConjugate gradient methodta1181Artificial intelligencebusinesscomputerEcology Evolution Behavior and SystematicsEcological Informatics
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Real-time recognition of personal routes using instance-based learning

2011

Predicting routes is a critical enabler for many new location-based applications and services, such as warning drivers about congestion- or accident-risky areas. Hybrid vehicles can also utilize the route prediction for optimizing their charging and discharging phases. In this paper, a new lightweight route recognition approach using instance-based learning is introduced. In this approach, the current route is compared in real-time against the route instances observed in past, and the most similar route is selected. In order to assess the similarity between the routes, a similarity measure based on the longest common subsequence (LCSS) is employed, and an algorithm for incrementally evaluat…

ta113Similarity (geometry)business.industryComputer scienceSimilarity measureMachine learningcomputer.software_genreLongest common subsequence problemGlobal Positioning SystemRoute recognitionInstance-based learningArtificial intelligencebusinesscomputer2011 IEEE Intelligent Vehicles Symposium (IV)
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Online anomaly detection using dimensionality reduction techniques for HTTP log analysis

2015

Modern web services face an increasing number of new threats. Logs are collected from almost all web servers, and for this reason analyzing them is beneficial when trying to prevent intrusions. Intrusive behavior often differs from the normal web traffic. This paper proposes a framework to find abnormal behavior from these logs. We compare random projection, principal component analysis and diffusion map for anomaly detection. In addition, the framework has online capabilities. The first two methods have intuitive extensions while diffusion map uses the Nyström extension. This fast out-of-sample extension enables real-time analysis of web server traffic. The framework is demonstrated using …

ta113Web serverComputer Networks and Communicationsbusiness.industryComputer scienceRandom projectionDimensionality reductionRandom projectionPrincipal component analysisIntrusion detection systemAnomaly detectionMachine learningcomputer.software_genreCyber securityWeb trafficPrincipal component analysisDiffusion mapAnomaly detectionIntrusion detectionArtificial intelligenceData miningWeb servicebusinesskyberturvallisuuscomputer
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Listwise Collaborative Filtering

2015

Recently, ranking-oriented collaborative filtering (CF) algorithms have achieved great success in recommender systems. They obtained state-of-the-art performances by estimating a preference ranking of items for each user rather than estimating the absolute ratings on unrated items (as conventional rating-oriented CF algorithms do). In this paper, we propose a new ranking-oriented CF algorithm, called ListCF. Following the memory-based CF framework, ListCF directly predicts a total order of items for each user based on similar users' probability distributions over permutations of the items, and thus differs from previous ranking-oriented memory-based CF algorithms that focus on predicting th…

ta113business.industryComputer scienceRecommender systemMachine learningcomputer.software_genreRankingcollaborative filteringBenchmark (computing)Collaborative filteringProbability distributionPairwise comparisonData miningArtificial intelligencerecommender systemsbusinessFocus (optics)computerranking-oriented collaborative filtering
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Turing's error-revised

2016

Many important lines of argumentation have been presented during the last decades claiming that machines cannot think like people. Yet, it has been possible to construct devices and information systems, which replace people in tasks which have previously been occupied by people as the tasks require intelligence. The long and versatile discourse over, what machine intelligence is, suggests that there is something unclear in the foundations of the discourse itself. Therefore, we critically studied the foundations of used theory languages. By looking critically some of the main arguments of machine thinking, one can find unifying factors. Most of them are based on the fact that computers canno…

ta113computationClass (set theory)modelformal language02 engineering and technologyconsciousnessArgumentation theoryEpistemologyTuring machineTuring machinesymbols.namesake020204 information systemsFormal language0202 electrical engineering electronic engineering information engineeringsymbolsSelection (linguistics)020201 artificial intelligence & image processingSociologyConstruct (philosophy)TuringcomputermindNatural languagecomputer.programming_languageInternational Journal of Philosophy Study
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Mathematical models and stability analysis of three-phase synchronous machines

2013

tahtikoneetthe limit load problemlimit cycles of the second kindkuormitussähkökoneetstabilitytransient processessähkögeneraattoritcircular solutionssynchronous machinesvakavuusroottoritmatemaattiset mallitthe non-local reduction methodsähkömoottoritdynamiikkafour-pole rotor
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CCTVCV: Computer Vision model/dataset supporting CCTV forensics and privacy applications

2022

The increased, widespread, unwarranted, and unaccountable use of Closed-Circuit TeleVision (CCTV) cameras globally has raised concerns about privacy risks for the last several decades. Recent technological advances implemented in CCTV cameras, such as Artificial Intelligence (AI)-based facial recognition and Internet of Things (IoT) connectivity, fuel further concerns among privacy advocates. Machine learning and computer vision automated solutions may prove necessary and efficient to assist CCTV forensics of various types. In this paper, we introduce and release the first and only computer vision models are compatible with Microsoft common object in context (MS COCO) and capable of accurately…

tekninen rikostutkintasovellukset (soveltaminen)datasetsobject detectiontekoälyprivacykameratcomputer visiontietosuojamachine learningkoneoppiminencamerasyksityisyyskameravalvontavideo surveillancekonenäköCCTVmappingkasvontunnistus (tietotekniikka)2022 IEEE International Conference on Trust, Security and Privacy in Computing and Communications (TrustCom)
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CCTV-FullyAware: toward end-to-end feasible privacy-enhancing and CCTV forensics applications

2022

It is estimated that over 1 billion Closed-Circuit Television (CCTV) cameras are operational worldwide. The advertised main benefits of CCTV cameras have always been the same; physical security, safety, and crime deterrence. The current scale and rate of deployment of CCTV cameras bring additional research and technical challenges for CCTV forensics as well, as for privacy enhancements. This paper presents the first end-to-end system for CCTV forensics and feasible privacy-enhancing applications such as exposure measurement, CCTV route recovery, CCTV-aware routing/navigation, and crowd-sourcing. For this, we developed and evaluated four complex and distinct modules (CCTVCV [1], OSRM-CCTV [2],…

tekninen rikostutkintatietosuojamachine learningkoneoppiminenyksityisyyskameravalvontaobject detectionvideo surveillancekonenäkönavigationsovellusohjelmatyksilönsuojaprivacy-enhancing technologies2022 IEEE International Conference on Trust, Security and Privacy in Computing and Communications (TrustCom)
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Toward modernizing the systematic review pipeline in genetics: efficient updating via data mining

2012

Purpose: The aim of this study was to demonstrate that modern data mining tools can be used as one step in reducing the labor necessary to produce and maintain systematic reviews. Methods: We used four continuously updated, manually curated resources that summarize MEDLINE-indexed articles in entire fields using systematic review methods (PDGene, AlzGene, and SzGene for genetic determinants of Parkinson disease, Alzheimer disease, and schizophrenia, respectively; and the Tufts Cost-Effectiveness Analysis (CEA) Registry for cost-effectiveness analyses). In each data set, we trained a classification model on citations screened up until 2009. We then evaluated the ability of the model to class…

text classificationTechnology Assessment BiomedicalDatabases FactualComputer scienceCost-Benefit AnalysisReview Literature as TopicHardware_PERFORMANCEANDRELIABILITYEmpirical Researchcomputer.software_genre03 medical and health sciences0302 clinical medicineMeta-Analysis as TopicAlzheimer DiseaseHardware_INTEGRATEDCIRCUITSData MiningHumanssupport vector machineOriginal Research Article030212 general & internal medicineGenetics (clinical)030304 developmental biologyGenetics0303 health sciencesParkinson DiseasePipeline (software)3. Good healthmeta-analysisReview Literature as Topicmachine learningSchizophreniaData miningPeriodicals as Topiccomputercitation screeningSoftwareGenetics in Medicine
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Problem Transformation Methods with Distance-Based Learning for Multi-Target Regression

2020

Multi-target regression is a special subset of supervised machine learning problems. Problem transformation methods are used in the field to improve the performance of basic methods. The purpose of this article is to test the use of recently popularized distance-based methods, the minimal learning machine (MLM) and the extreme minimal learning machine (EMLM), in problem transformation. The main advantage of the full data variants of these methods is the lack of any meta-parameter. The experimental results for the MLM and EMLM show promising potential, emphasizing the utility of the problem transformation especially with the EMLM. peerReviewed

the minimal learning machine (MLM) and the extreme minimal learning machine (EMLM)koneoppiminenemphasizing the utility of the problem transformation especially with the EMLM.Multi-target regression is a special subset of supervised machine learning problems. Problem transformation methods are used in the field to improve the performance of basic methods. The purpose of this article is to test the use of recently popularized distance-based methodsin problem transformation. The main advantage of the full data variants of these methods is the lack of any meta-parameter. The experimental results for the MLM and EMLM show promising potential
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