Search results for "algoritmit"

showing 10 items of 118 documents

Quantitative Analysis of Dynamic Association in Live Biological Fluorescent Samples

2014

Determining vesicle localization and association in live microscopy may be challenging due to non-simultaneous imaging of rapidly moving objects with two excitation channels. Besides errors due to movement of objects, imaging may also introduce shifting between the image channels, and traditional colocalization methods cannot handle such situations. Our approach to quantifying the association between tagged proteins is to use an object-based method where the exact match of object locations is not assumed. Point-pattern matching provides a measure of correspondence between two point-sets under various changes between the sets. Thus, it can be used for robust quantitative analysis of vesicle …

Computer and Information SciencesFluorescence-lifetime imaging microscopyMatching (graph theory)Cell SurvivalImage ProcessingAssociation (object-oriented programming)SciencerakkulatBioinformaticsTime-Lapse ImagingFluorescenceImage (mathematics)cellular structuresfluorescence imagingCell Line TumorMolecular Cell BiologyalgoritmitHumansComputer SimulationkuvantamismenetelmätPhysicsta113MicroscopyvesiclesMultidisciplinarySoftware Toolsbusiness.industryCytoplasmic VesiclesQRta1182Biology and Life SciencesSoftware EngineeringColocalizationExperimental dataPattern recognitionCell BiologyObject (computer science)imaging techniquesMolecular ImagingfluoresenssimikroskopiaSignal ProcessingEngineering and TechnologyMedicineArtificial intelligenceCellular Structures and OrganellesbusinessVesicle localizationResearch ArticlePLoS ONE
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How does serendipity affect diversity in recommender systems? A serendipity-oriented greedy algorithm

2018

Most recommender systems suggest items that are popular among all users and similar to items a user usually consumes. As a result, the user receives recommendations that she/he is already familiar with or would find anyway, leading to low satisfaction. To overcome this problem, a recommender system should suggest novel, relevant and unexpected i.e., serendipitous items. In this paper, we propose a serendipity-oriented, reranking algorithm called a serendipity-oriented greedy (SOG) algorithm, which improves serendipity of recommendations through feature diversification and helps overcome the overspecialization problem. To evaluate our algorithm, we employed the only publicly available datase…

Computer science02 engineering and technologyRecommender systemDiversification (marketing strategy)Machine learningcomputer.software_genreTheoretical Computer SciencenoveltySingular value decompositionalgoritmit0202 electrical engineering electronic engineering information engineeringFeature (machine learning)serendipity-2018Greedy algorithmlearning to rankNumerical AnalysisSerendipitybusiness.industrysuosittelujärjestelmät020206 networking & telecommunicationsserendipityPopularityunexpectednessComputer Science ApplicationsComputational MathematicsComputational Theory and MathematicsRanking020201 artificial intelligence & image processingArtificial intelligencebusinesscomputerarviointiSoftware
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Listwise Recommendation Approach with Non-negative Matrix Factorization

2018

Matrix factorization (MF) is one of the most effective categories of recommendation algorithms, which makes predictions based on the user-item rating matrix. Nowadays many studies reveal that the ultimate goal of recommendations is to predict correct rankings of these unrated items. However, most of the pioneering efforts on ranking-oriented MF predict users’ item ranking based on the original rating matrix, which fails to explicitly present users’ preference ranking on items and thus might result in some accuracy loss. In this paper, we formulate a novel listwise user-ranking probability prediction problem for recommendations, that aims to utilize a user-ranking probability matrix to predi…

Computer sciencebusiness.industrysuosittelujärjestelmätStochastic matrixRecommender systemMissing dataMachine learningcomputer.software_genreMatrix decompositionNon-negative matrix factorizationMatrix (mathematics)rankingRankingcollaborative filteringalgoritmitProbability distributionArtificial intelligencebusinesscomputer
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On the Extension of the DIRECT Algorithm to Multiple Objectives

2020

AbstractDeterministic global optimization algorithms like Piyavskii–Shubert, direct, ego and many more, have a recognized standing, for problems with many local optima. Although many single objective optimization algorithms have been extended to multiple objectives, completely deterministic algorithms for nonlinear problems with guarantees of convergence to global Pareto optimality are still missing. For instance, deterministic algorithms usually make use of some form of scalarization, which may lead to incomplete representations of the Pareto optimal set. Thus, all global Pareto optima may not be obtained, especially in nonconvex cases. On the other hand, algorithms attempting to produce r…

Control and Optimization0211 other engineering and technologies02 engineering and technologyManagement Science and Operations ResearchMulti-objective optimizationSet (abstract data type)Local optimumoptimointialgoritmitConvergence (routing)0202 electrical engineering electronic engineering information engineeringmultiobjective optimizationmultiple criteria optimizationMathematics021103 operations researchApplied MathematicsPareto principleDIRECT algorithmmonitavoiteoptimointiComputer Science Applicationsglobal convergenceNonlinear systemdeterminantitHausdorff distancemonimuuttujamenetelmät020201 artificial intelligence & image processingHeuristicsdeterministic optimization algorithmsAlgorithmJournal of Global Optimization
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LR-NIMBUS : an interactive algorithm for uncertain multiobjective optimization with lightly robust efficient solutions

2022

In this paper, we develop an interactive algorithm to support a decision maker to find a most preferred lightly robust efficient solution when solving uncertain multiobjective optimization problems. It extends the interactive NIMBUS method. The main idea underlying the designed algorithm, called LR-NIMBUS, is to ask the decision maker for a most acceptable (typical) scenario, find an efficient solution for this scenario satisfying the decision maker, and then apply the derived efficient solution to generate a lightly robust efficient solution. The preferences of the decision maker are incorporated through classifying the objective functions. A lightly robust efficient solution is generated …

Control and OptimizationApplied Mathematicspäätöksentekolight robust efficiencyrobust optimizationmatemaattiset menetelmätportfoliotManagement Science and Operations Researchinteractive methodsarvopaperisalkutskenaariotepävarmuusmonitavoiteoptimointiComputer Science Applicationsuncertain multiple criteria optimizationmenetelmätoptimointialgoritmitinteraktiivisuusBusiness Management and Accounting (miscellaneous)portfolio selection
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Feature selection for distance-based regression: An umbrella review and a one-shot wrapper

2023

Feature selection (FS) may improve the performance, cost-efficiency, and understandability of supervised machine learning models. In this paper, FS for the recently introduced distance-based supervised machine learning model is considered for regression problems. The study is contextualized by first providing an umbrella review (review of reviews) of recent development in the research field. We then propose a saliency-based one-shot wrapper algorithm for FS, which is called MAS-FS. The algorithm is compared with a set of other popular FS algorithms, using a versatile set of simulated and benchmark datasets. Finally, experimental results underline the usefulness of FS for regression, confirm…

EMLMfeature selectionkoneoppiminenArtificial IntelligenceCognitive Neurosciencealgoritmitparantaminen (paremmaksi muuttaminen)tekoälydistance-based methodwrapper algorithmfeature saliencyComputer Science ApplicationsNeurocomputing
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Compression Methods for Microclimate Data Based on Linear Approximation of Sensor Data

2019

Edge computing is currently one of the main research topics in the field of Internet of Things. Edge computing requires lightweight and computationally simple algorithms for sensor data analytics. Sensing edge devices are often battery powered and have a wireless connection. In designing edge devices the energy efficiency needs to be taken into account. Pre-processing the data locally in the edge device reduces the amount of data and thus decreases the energy consumption of wireless data transmission. Sensor data compression algorithms presented in this paper are mainly based on data linearity. Microclimate data is near linear in short time window and thus simple linear approximation based …

Edge deviceenergiatehokkuusWireless networkComputer sciencesensoriverkot020206 networking & telecommunications02 engineering and technologyEnergy consumptioninternet of thingscompression algorithmedge computingalgoritmit0202 electrical engineering electronic engineering information engineeringElectronic engineeringesineiden internet020201 artificial intelligence & image processingLinear approximationEdge computingEfficient energy useData compression
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Evolutionary design optimization with Nash games and hybridized mesh/meshless methods in computational fluid dynamics

2012

Eulerin virtausmallihybridized mesh/meshless methodsvirtauslaskentageneettiset algoritmitevoluutioalgoritmitposition reconstructionevoluutiolaskentahierarchical genetic algorithmsdynamic cloudsuunnitteluoptimointishape optimizationalgoritmitpeliteoriaadaptive meshless methodevolutionary algorithmsNash games
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On the use of approximate Bayesian computation Markov chain Monte Carlo with inflated tolerance and post-correction

2020

Approximate Bayesian computation allows for inference of complicated probabilistic models with intractable likelihoods using model simulations. The Markov chain Monte Carlo implementation of approximate Bayesian computation is often sensitive to the tolerance parameter: low tolerance leads to poor mixing and large tolerance entails excess bias. We consider an approach using a relatively large tolerance for the Markov chain Monte Carlo sampler to ensure its sufficient mixing, and post-processing the output leading to estimators for a range of finer tolerances. We introduce an approximate confidence interval for the related post-corrected estimators, and propose an adaptive approximate Bayesi…

FOS: Computer and information sciences0301 basic medicineStatistics and Probabilitytolerance choiceGeneral MathematicsMarkovin ketjutInference01 natural sciencesStatistics - Computationapproximate Bayesian computation010104 statistics & probability03 medical and health sciencessymbols.namesakeMixing (mathematics)adaptive algorithmalgoritmit0101 mathematicsComputation (stat.CO)MathematicsAdaptive algorithmMarkov chainbayesilainen menetelmäApplied MathematicsProbabilistic logicEstimatorMarkov chain Monte CarloAgricultural and Biological Sciences (miscellaneous)Markov chain Monte CarloMonte Carlo -menetelmätimportance sampling030104 developmental biologyconfidence intervalsymbolsStatistics Probability and UncertaintyApproximate Bayesian computationGeneral Agricultural and Biological SciencesAlgorithm
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Causal Effect Identification from Multiple Incomplete Data Sources: A General Search-Based Approach

2021

Causal effect identification considers whether an interventional probability distribution can be uniquely determined without parametric assumptions from measured source distributions and structural knowledge on the generating system. While complete graphical criteria and procedures exist for many identification problems, there are still challenging but important extensions that have not been considered in the literature. To tackle these new settings, we present a search algorithm directly over the rules of do-calculus. Due to generality of do-calculus, the search is capable of taking more advanced data-generating mechanisms into account along with an arbitrary type of both observational and…

FOS: Computer and information sciencesStatistics and ProbabilityComputer Science - Machine LearningcausalityComputer Science - Artificial IntelligenceHeuristic (computer science)Computer scienceeducationMachine Learning (stat.ML)transportabilitycomputer.software_genre01 natural sciencesMachine Learning (cs.LG)R-kielimissing dataQA76.75-76.765; QA273-280010104 statistics & probabilitydo-calculuscausality; do-calculus; selection bias; transportability; missing data; case-control design; meta-analysisStatistics - Machine LearningSearch algorithmselection bias0101 mathematicsParametric statisticspäättelymeta-analyysicase-control designhakualgoritmit113 Computer and information sciencesMissing datameta-analysisIdentification (information)Artificial Intelligence (cs.AI)Causal inferencekausaliteettiIdentifiabilityProbability distributionData miningStatistics Probability and UncertaintycomputerSoftwareJournal of Statistical Software
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