Search results for "Linear classifier"

showing 10 items of 14 documents

Adjusted bat algorithm for tuning of support vector machine parameters

2016

Support vector machines are powerful and often used technique of supervised learning applied to classification. Quality of the constructed classifier can be improved by appropriate selection of the learning parameters. These parameters are often tuned using grid search with relatively large step. This optimization process can be done computationally more efficiently and more precisely using stochastic search metaheuristics. In this paper we propose adjusted bat algorithm for support vector machines parameter optimization and show that compared to the grid search it leads to a better classifier. We tested our approach on standard set of benchmark data sets from UCI machine learning repositor…

0209 industrial biotechnologyWake-sleep algorithmActive learning (machine learning)Computer scienceStability (learning theory)Linear classifier02 engineering and technologySemi-supervised learningcomputer.software_genreCross-validationRelevance vector machineKernel (linear algebra)020901 industrial engineering & automationLeast squares support vector machine0202 electrical engineering electronic engineering information engineeringMetaheuristicBat algorithmStructured support vector machinebusiness.industrySupervised learningOnline machine learningParticle swarm optimizationPattern recognitionPerceptronGeneralization errorSupport vector machineKernel methodComputational learning theoryMargin classifierHyperparameter optimization020201 artificial intelligence & image processingData miningArtificial intelligenceHyper-heuristicbusinesscomputer2016 IEEE Congress on Evolutionary Computation (CEC)
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Dynamic Functional Connectivity Captures Individuals’ Unique Brain Signatures

2020

Recent neuroimaging evidence suggest that there exists a unique individual-specific functional connectivity (FC) pattern consistent across tasks. The objective of our study is to utilize FC patterns to identify an individual using a supervised machine learning approach. To this end, we use two previously published data sets that comprises resting-state and task-based fMRI responses. We use static FC measures as input to a linear classifier to evaluate its performance. We additionally extend this analysis to capture dynamic FC using two approaches: the common sliding window approach and the more recent phase synchrony-based measure. We found that the classification models using dynamic FC pa…

050101 languages & linguisticsComputer scienceLinear classifier02 engineering and technologyReduction (complexity)yksilötoiminnallinen magneettikuvausNeuroimagingMargin (machine learning)0202 electrical engineering electronic engineering information engineeringFeature (machine learning)0501 psychology and cognitive sciencesindividual differencestunnistaminenDynamic functional connectivitybusiness.industryFunctional connectivity05 social sciencesfMRIfunctional connectivityPattern recognitionData setkoneoppiminenclassificationvariance inflation factor020201 artificial intelligence & image processingArtificial intelligencebusiness
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Biodegradability Prediction of Fragrant Molecules by Molecular Topology

2016

Biodegradability is a key property in the development of safer fragrances. In this work we present a green methodology for its preliminary assessment. The structure of various fragrant molecules is characterized by computing a large set of topological indices. Those relevant to biodegradability are selected by means of a hybrid stepwise selection method to build a linear classifier. This model is compared with a more complex artificial neural network trained with the indices previously found. After validation, the models show promise for time and cost reduction in the development of new, safer fragrances. The methodology presented could easily be adapted to many quasi-big data problems in R…

Artificial neural network010405 organic chemistryRenewable Energy Sustainability and the EnvironmentComputer scienceStatistical learningGeneral Chemical EngineeringNanotechnologyLinear classifierGeneral Chemistry01 natural sciences0104 chemical sciencesCost reduction010404 medicinal & biomolecular chemistryDevelopment (topology)SAFEREnvironmental ChemistryBiodegradability predictionBiochemical engineeringMolecular topologyACS Sustainable Chemistry & Engineering
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Classification Boundary Approximation by Using Combination of Training Steps for Real-Time Image Segmentation

2007

We propose a method of real-time implementation of an approximation of the support vector machine decision rule. The method uses an improvement of a supervised classification method based on hyperrectangles, which is useful for real-time image segmentation. We increase the classification and speed performances using a combination of classification methods: a support vector machine is used during a pre-processing step. We recall the principles of the classification methods and we evaluate the hardware implementation cost of each method. We present our learning step combination algorithm and results obtained using Gaussian distributions and an example of image segmentation coming from a part …

Computer sciencebusiness.industryGaussianScale-space segmentationPattern recognitionImage processingLinear classifierImage segmentationDecision ruleMachine learningcomputer.software_genreSupport vector machinesymbols.namesakesymbolsOne-class classificationArtificial intelligencebusinesscomputerGaussian process
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Analyse des Visuellen Klassifikationssystems Durch Detektionsexperimente

1977

Summary Experiments on recognizing statistically distorted patterns show that the human visual system operates as a linear classifier. The spatial frequency range, within which features are extracted, is determined by the coupling in the area of sharpest vision (2°). The relevant features for classifying patterns are not produced by isotropic filtering

Computer sciencebusiness.industrySpeech recognitionHuman visual system modelPattern recognitionLinear classifierSpatial frequencyArtificial intelligencebusinessIFAC Proceedings Volumes
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Multi-Temporal Image Classification with Kernels

2009

Contextual image classificationStructured support vector machinebusiness.industryLinear classifierPattern recognitionArtificial intelligenceQuadratic classifierbusinessMachine learningcomputer.software_genrecomputerMathematics
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The impact of feature extraction on the performance of a classifier : kNN, Naïve Bayes and C4.5

2005

"The curse of dimensionality" is pertinent to many learning algorithms, and it denotes the drastic raise of computational complexity and the classification error in high dimensions. In this paper, different feature extraction techniques as means of (1) dimensionality reduction, and (2) constructive induction are analyzed with respect to the performance of a classifier. Three commonly used classifiers are taken for the analysis: kNN, Naïve Bayes and C4.5 decision tree. One of the main goals of this paper is to show the importance of the use of class information in feature extraction for classification and (in)appropriateness of random projection or conventional PCA to feature extraction for …

Covariance matrixComputer sciencebusiness.industryRandom projectionDimensionality reductionFeature extractionLinear classifierPattern recognitionMachine learningcomputer.software_genreNaive Bayes classifierComputingMethodologies_PATTERNRECOGNITIONPrincipal component analysisArtificial intelligencebusinesscomputerCurse of dimensionalityAdvances in artificial intelligence : 18th conference of the canadian society for computational Studies of Intelligence, Canadian AI 2005, Victoria, Canada, May 9-11, 2005 : proceedings
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Combining feature extraction and expansion to improve classification based similarity learning

2017

Abstract Metric learning has been shown to outperform standard classification based similarity learning in a number of different contexts. In this paper, we show that the performance of classification similarity learning strongly depends on the data format used to learn the model. We then present an Enriched Classification Similarity Learning method that follows a hybrid approach that combines both feature extraction and feature expansion. In particular, we propose a data transformation and the use of a set of standard distances to supplement the information provided by the feature vectors of the training samples. The method is compared to state-of-the-art feature extraction and metric lear…

Feature extractionLinear classifier02 engineering and technologySemi-supervised learning010501 environmental sciencesMachine learningcomputer.software_genre01 natural sciencesk-nearest neighbors algorithmArtificial Intelligence0202 electrical engineering electronic engineering information engineering0105 earth and related environmental sciencesMathematicsbusiness.industryDimensionality reductionPattern recognitionStatistical classificationSignal Processing020201 artificial intelligence & image processingComputer Vision and Pattern RecognitionArtificial intelligencebusinessFeature learningcomputerSoftwareSimilarity learningPattern Recognition Letters
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Hyperspectral LCTF-based system for classification of decay in mandarins caused by Penicillium digitatum and Penicillium italicum using the most rele…

2013

[EN] Green mold (Penicillium digitatum) and blue mold (Penicillium italicum) are important sources of postharvest decay affecting the commercialization of mandarins. These fungi infections produce enormous economic losses in mandarin production if early detection is not carried out. Nowadays, this detection is performed manually in dark chambers, where the fruit is illuminated by ultraviolet light to produce fluorescence, which is potentially dangerous for humans. This paper documents a new methodology based on hyperspectral imaging and advanced machine-learning techniques (artificial neural networks and classification and regression trees) for the segmentation and classification of images …

Hyperspectral imagingEXPRESION GRAFICA EN LA INGENIERIAEarly detectionFeature selectionHorticultureMachine visionPenicillium italicumImage analysisBotanymedicineUltraviolet lightFruit inspectionPenicillium digitatumbiologybusiness.industryBlue moldHyperspectral imagingPattern recognitionDecaybiology.organism_classificationmedicine.drug_formulation_ingredientMandarinsFeature selectionArtificial intelligenceNon-linear classifiersbusinessAgronomy and Crop ScienceFood Science
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Antiprotozoan lead discovery by aligning dry and wet screening: Prediction, synthesis, and biological assay of novel quinoxalinones

2014

Protozoan parasites have been one of the most significant public health problems for centuries and several human infections caused by them have massive global impact. Most of the current drugs used to treat these illnesses have been used for decades and have many limitations such as the emergence of drug resistance, severe side-effects, low-to-medium drug efficacy, administration routes, cost, etc. These drugs have been largely neglected as models for drug development because they are majorly used in countries with limited resources and as a consequence with scarce marketing possibilities. Nowadays, there is a pressing need to identify and develop new drug-based antiprotozoan therapies. In …

Quantitative structure–activity relationshipClinical BiochemistryAntiprotozoal AgentsQuantitative Structure-Activity RelationshipPharmaceutical ScienceLinear classifierBioinformaticsMachine learningcomputer.software_genreBiochemistryQuinoxalinesMolecular descriptorDrug DiscoveryBioassayMolecular BiologyVirtual screeningMolecular Structurebusiness.industryChemistryOrganic ChemistryBenchmark databaseDrug developmentCyclizationMolecular MedicineIn silico StudyArtificial intelligenceTOMOCOMD-CARDD SoftwarebusinessClassifier (UML)computer
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