Search results for "parameter"

showing 10 items of 14056 documents

TBSSvis: Visual Analytics for Temporal Blind Source Separation

2020

Temporal Blind Source Separation (TBSS) is used to obtain the true underlying processes from noisy temporal multivariate data, such as electrocardiograms. TBSS has similarities to Principal Component Analysis (PCA) as it separates the input data into univariate components and is applicable to suitable datasets from various domains, such as medicine, finance, or civil engineering. Despite TBSS’s broad applicability, the involved tasks are not well supported in current tools, which offer only text-based interactions and single static images. Analysts are limited in analyzing and comparing obtained results, which consist of diverse data such as matrices and sets of time series. Additionally, p…

Human-Computer InteractionFOS: Computer and information sciencesparameter space explorationsignaalinkäsittelyaikasarjatblind source separationComputer Science - Human-Computer Interactionensemble visualizationvisual analyticsComputer Graphics and Computer-Aided DesignSoftwareHuman-Computer Interaction (cs.HC)aikasarja-analyysi
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Uncertainty and Equifinality in Calibrating Distributed Roughness Coefficients in a Flood Propagation Model with Limited Data

1998

Monte-Carlo simulations of a two-dimensional finite element model of a flood in the southern part of Sicily were used to explore the parameter space of distributed bed-roughness coefficients. For many real-world events specific data are extremely limited so that there is not only fuzziness in the information available to calibrate the model, but fuzziness in the degree of acceptability of model predictions based upon the different parameter values, owing to model structural errors. Here the GLUE procedure is used to compare model predictions and observations for a certain event, coupled with both a fuzzy-rule-based calibration, and a calibration technique based upon normal and heteroscedast…

HydrologyHeteroscedasticityComputer scienceRange (statistics)A priori and a posterioriEquifinalityParameter spaceGLUEAlgorithmFuzzy logicWater Science and TechnologyEvent (probability theory)
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Use of the preliminary Jedlice Reservoir for water protection in the Turawa Reservoir on the Mała Panew River

2009

Abstract Physico-chemical variables of water quality and benthic community structure were assessed in order to evaluate the need for reinstating the use of the preliminary Jedlice Reservoir. The waters of the Mała Panew River carry a significant load of nutrient compounds, particularly nitrates and phosphates. Deteriorating water quality results in permanent algal blooms and changes in the macrofauna structure. It was confirmed that the use of a preliminary reservoir could contribute to the protection of the Turawa Dam Reservoir against pollutants transported by the waters of the Mała Panew River.

HydrologyPollutantmacroinvertebratesphysico-chemical parameterspreliminary reservoirOceanographywater qualityAlgal bloomNutrientBenthosBenthic zoneEnvironmental scienceWater qualityWater pollutionEutrophicationOceanological and Hydrobiological Studies
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Multi-year drought frequency analysis at multiple sites by operational hydrology - A comparison of methods

2006

Abstract This paper compares two generators of yearly water availabilities from sources located at multiple sites with regard to their ability to reproduce the characteristics of historical critical periods and to provide reliable results in terms of the return period of critical sequences of different length. The two models are a novel multi-site Markov mixture model explicitly accounting for drought occurrences and a multivariate ARMA. In the case of the multisite Markov mixture model parameter estimation is limited to a search in the parameter space guided by the value of parameter λ to show the sensitivity of the model to this parameter. Application to two of the longest time series of …

HydrologyReturn periodMultivariate statisticsScale (ratio)Markov chainParameter spaceMixture modelGeophysicsGeochemistry and PetrologyStatisticsdrought frequency analysis multiple sitesEconometricsAutoregressive–moving-average modelMarginal distributionMathematics
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Water quality modelling for ephemeral rivers: Model development and parameter assessment

2010

Summary River water quality models can be valuable tools for the assessment and management of receiving water body quality. However, such water quality models require accurate model calibration in order to specify model parameters. Reliable model calibration requires an extensive array of water quality data that are generally rare and resource-intensive, both economically and in terms of human resources, to collect. In the case of small rivers, such data are scarce due to the fact that these rivers are generally considered too insignificant, from a practical and economic viewpoint, to justify the investment of such considerable time and resources. As a consequence, the literature contains v…

Hydrologygeographygeography.geographical_feature_categorySettore ICAR/03 - Ingegneria Sanitaria-AmbientaleModel parameter assessmentEphemeral keymedia_common.quotation_subjectSettore ICAR/02 - Costruzioni Idrauliche E Marittime E IdrologiaDrainage basinWater quality modellingRiver water qualityWater resourcesField campaignHydrology (agriculture)Data qualityEnvironmental scienceQuality (business)Water qualitySensitivity analysisWater Science and Technologymedia_commonJournal of Hydrology
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CCDC 832999: Experimental Crystal Structure Determination

2012

Related Article: E.Matczk-Jon, B.Kurzak, W.Sawka-Dobrowolska|2012|Polyhedron|31|176|doi:10.1016/j.poly.2011.09.007

Hydronium hydrogen (phosphono(thiomorpholin-4-ium-4-yl)methyl)phosphonateSpace GroupCrystallographyCrystal SystemCrystal StructureCell ParametersExperimental 3D Coordinates
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Towards Model-Based Reinforcement Learning for Industry-Near Environments

2019

Deep reinforcement learning has over the past few years shown great potential in learning near-optimal control in complex simulated environments with little visible information. Rainbow (Q-Learning) and PPO (Policy Optimisation) have shown outstanding performance in a variety of tasks, including Atari 2600, MuJoCo, and Roboschool test suite. Although these algorithms are fundamentally different, both suffer from high variance, low sample efficiency, and hyperparameter sensitivity that, in practice, make these algorithms a no-go for critical operations in the industry.

HyperparameterArtificial neural networkComputer sciencebusiness.industrySample (statistics)Variance (accounting)Machine learningcomputer.software_genreVariety (cybernetics)Test suiteReinforcement learningArtificial intelligenceMarkov decision processbusinesscomputer
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Online Hyperparameter Search Interleaved with Proximal Parameter Updates

2021

There is a clear need for efficient hyperparameter optimization (HO) algorithms for statistical learning, since commonly applied search methods (such as grid search with N-fold cross-validation) are inefficient and/or approximate. Previously existing gradient-based HO algorithms that rely on the smoothness of the cost function cannot be applied in problems such as Lasso regression. In this contribution, we develop a HO method that relies on the structure of proximal gradient methods and does not require a smooth cost function. Such a method is applied to Leave-one-out (LOO)-validated Lasso and Group Lasso, and an online variant is proposed. Numerical experiments corroborate the convergence …

HyperparameterComputer scienceStability (learning theory)Approximation algorithm020206 networking & telecommunications02 engineering and technologyStationary pointLasso (statistics)Hyperparameter optimization0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingProximal Gradient MethodsOnline algorithmAlgorithm2020 28th European Signal Processing Conference (EUSIPCO)
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Passive millimeter wave image classification with large scale Gaussian processes

2017

Passive Millimeter Wave Images (PMMWIs) are being increasingly used to identify and localize objects concealed under clothing. Taking into account the quality of these images and the unknown position, shape, and size of the hidden objects, large data sets are required to build successful classification/detection systems. Kernel methods, in particular Gaussian Processes (GPs), are sound, flexible, and popular techniques to address supervised learning problems. Unfortunately, their computational cost is known to be prohibitive for large scale applications. In this work, we present a novel approach to PMMWI classification based on the use of Gaussian Processes for large data sets. The proposed…

HyperparameterContextual image classificationbusiness.industryComputer scienceSupervised learning0211 other engineering and technologiesInferencePattern recognition02 engineering and technologysymbols.namesakeBayes' theoremKernel (linear algebra)Kernel methodKernel (statistics)0202 electrical engineering electronic engineering information engineeringsymbols020201 artificial intelligence & image processingArtificial intelligencebusinessGaussian process021101 geological & geomatics engineering2017 IEEE International Conference on Image Processing (ICIP)
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A Tsetlin Machine with Multigranular Clauses

2019

The recently introduced Tsetlin Machine (TM) has provided competitive pattern recognition accuracy in several benchmarks, however, requires a 3-dimensional hyperparameter search. In this paper, we introduce the Multigranular Tsetlin Machine (MTM). The MTM eliminates the specificity hyperparameter, used by the TM to control the granularity of the conjunctive clauses that it produces for recognizing patterns. Instead of using a fixed global specificity, we encode varying specificity as part of the clauses, rendering the clauses multigranular. This makes it easier to configure the TM because the dimensionality of the hyperparameter search space is reduced to only two dimensions. Indeed, it tur…

HyperparameterLearning automataComputer sciencebusiness.industrySupervised learningPattern recognitionGranularityArtificial intelligenceENCODEPropositional calculusbusinessRendering (computer graphics)Curse of dimensionality
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