Search results for "ComputingMethodologies_PATTERNRECOGNITION"

showing 10 items of 296 documents

A New SOM Initialization Algorithm for Nonvectorial Data

2008

Self Organizing Maps (SOMs) are widely used mapping and clustering algorithms family. It is also well known that the performances of the maps in terms of quality of result and learning speed are strongly dependent from the neuron weights initialization. This drawback is common to all the SOM algorithms, and critical for a new SOM algorithm, the Median SOM (M-SOM), developed in order to map datasets characterized by a dissimilarity matrix. In this paper an initialization technique of M-SOM is proposed and compared to the initialization techniques proposed in the original paper. The results show that the proposed initialization technique assures faster learning and better performance in terms…

Self-organizing mapComputer sciencebusiness.industryQuantization (signal processing)ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONInitializationMedian SOM initialization pairwise dataPattern recognitionMatrix (mathematics)ComputingMethodologies_PATTERNRECOGNITIONArtificial intelligenceCluster analysisbusinessAlgorithm
researchProduct

Analysis of Multi-Choice Questionnaires through Self-Organizing Maps

1998

This paper describes how Self-Organizing Maps can be used to analyse multi-choice gallups. In this method, the use of a single SOM for all available data is replaced with the use of multiple SOMs trained with subsets of gallup questions. The subgroupings located from these maps are then used to train a new concluding SOM that is more readable than any single SOM analysis would be.

Self-organizing mapComputingMethodologies_PATTERNRECOGNITIONInformation retrievalComputer scienceComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION
researchProduct

Current bioinformatics tools in genomic biomedical research (Review).

2006

On the advent of a completely assembled human genome, modern biology and molecular medicine stepped into an era of increasingly rich sequence database information and high-throughput genomic analysis. However, as sequence entries in the major genomic databases currently rise exponentially, the gap between available, deposited sequence data and analysis by means of conventional molecular biology is rapidly widening, making new approaches of high-throughput genomic analysis necessary. At present, the only effective way to keep abreast of the dramatic increase in sequence and related information is to apply biocomputational approaches. Thus, over recent years, the field of bioinformatics has r…

Sequence databaseGenome HumanGene predictionGene Expression ProfilingComputational BiologyGenomicsSequence alignmentGeneral MedicineGenomicsOncogenomicsBiologyBioinformaticsGenomePolymorphism Single NucleotideComputingMethodologies_PATTERNRECOGNITIONDatabases GeneticHuman Genome ProjectGeneticsHumansHuman genomePromoter Regions GeneticSequence AlignmentSoftwareSequence (medicine)International journal of molecular medicine
researchProduct

Extraction of ERP from EEG data

2007

In this article, a simple but novel technique for extracting a linear subspace related to event related potentials (ERPs) from ElectroEncephaloGraphy (EEG) data is introduced. The technique consists of a sequence of basic linear operations applied to multidimensional EEG data in a problem-specific manner. The derivation of the proposed technique is given and results with real data are described together with overall conclusions.

SequenceQuantitative Biology::Neurons and Cognitionmedicine.diagnostic_testComputer sciencebusiness.industrySpeech recognitionPattern recognitionElectroencephalographyIndependent component analysisLinear subspaceComputingMethodologies_PATTERNRECOGNITIONSignal-to-noise ratioEeg dataEvent-related potentialmedicineArtificial intelligenceNoise (video)business2007 9th International Symposium on Signal Processing and Its Applications
researchProduct

Integration of a structural features-based preclassifier and a man-machine interactive classifier for a fast multi-stroke character recognition

2003

A transputer-based parallel machine for handwritten character recognition is proposed. An algorithm based on structural features and on a tree classifier was used to accomplish the pre-classification of the unknown sample in order to speed up the recognition process. The algorithm for the final classification is based on the description of the strokes through Fourier descriptors. The learning phase is accomplished through a man-machine interactive process. The proposed system can expand its knowledge base. A special representation of this knowledge base is proposed in order to record a great amount of data in a suitable way. A fast multistroke handwritten isolated character recognition syst…

Settore INF/01 - InformaticaComputer scienceIntelligent character recognitionbusiness.industrySketch recognitionPattern recognitionDocument processingIntelligent word recognitionComputingMethodologies_PATTERNRECOGNITIONFeature (machine learning)Artificial intelligencebusinessClassifier (UML)Man machine systems Character recognition Humans Handwriting recognition Pattern recognition Parallel machines System testing Performance evaluation Prototypes Energy management
researchProduct

A Fuzzy One Class Classifier for Multi Layer Model

2009

The paper describes an application of a fuzzy one-class classifier (FOC ) for the identification of different signal patterns embedded in a noise structured background. The classification phase is applied after a preprocessing phase based on a Multi Layer Model (MLM ) that provides a preliminary signal segmentation in an interval feature space. The FOC has been tested on synthetic and real microarray data in the specific problem of DNA nucleosome and linker regions identification. Results have shown, in both cases, a good recognition rate.

Settore INF/01 - InformaticaComputer sciencebusiness.industryFeature vectorPattern recognitionHide markov modelcomputer.software_genreFuzzy logicComputingMethodologies_PATTERNRECOGNITIONMulti Layer Method Nucleosome Positioning BioinformaticsPreprocessorSegmentationData miningArtificial intelligencebusinesscomputerClassifier (UML)Multi layer
researchProduct

Speeding up the Consensus Clustering methodology for microarray data analysis

2010

Abstract Background The inference of the number of clusters in a dataset, a fundamental problem in Statistics, Data Analysis and Classification, is usually addressed via internal validation measures. The stated problem is quite difficult, in particular for microarrays, since the inferred prediction must be sensible enough to capture the inherent biological structure in a dataset, e.g., functionally related genes. Despite the rich literature present in that area, the identification of an internal validation measure that is both fast and precise has proved to be elusive. In order to partially fill this gap, we propose a speed-up of Consensus (Consensus Clustering), a methodology whose purpose…

Settore INF/01 - Informaticalcsh:QH426-470Computer scienceResearchApplied MathematicsStability (learning theory)InferenceApproximation algorithmcomputer.software_genreNon-negative matrix factorizationIdentification (information)lcsh:GeneticsComputingMethodologies_PATTERNRECOGNITIONComputational Theory and Mathematicslcsh:Biology (General)Structural BiologyConsensus clusteringBenchmark (computing)Data mininginternal validation measures data mining microarray data NMFCluster analysiscomputerMolecular Biologylcsh:QH301-705.5Algorithms for Molecular Biology
researchProduct

METABOLIC NETWORKS ROBUSTNESS: THEORY, SIMULATIONS AND RESULTS

2011

Metabolic networks are composed of several functional modules, reproducing metabolic pathways and describing the entire cellular metabolism of an organism. In the last decade, an enormous interest has grown for the study of tolerance to errors and attacks in metabolic networks. Studies on their robustness have suggested that metabolic networks are tolerant to errors, but very vulnerable to targeted attacks against highly connected nodes. However, many findings on metabolic networks suggest that the above classification is too simple and imprecise, since hub node attacks can be by-passed if alternative metabolic paths can be exploited. On the contrary, non-hub nodes attacks can affect cell …

Settore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniCellular metabolismTheoretical computer scienceComputer Networks and Communicationsnetwork robustness and fault tolerance propertietopological analysiRobustness (evolution)Metabolic networkComputational biologyfunctional analysisComputingMethodologies_PATTERNRECOGNITIONstatistical analysiStatistical analysisOrganismMathematics
researchProduct

Simulated Annealing Technique for Fast Learning of SOM Networks

2011

The Self-Organizing Map (SOM) is a popular unsupervised neural network able to provide effective clustering and data visualization for multidimensional input datasets. In this paper, we present an application of the simulated annealing procedure to the SOM learning algorithm with the aim to obtain a fast learning and better performances in terms of quantization error. The proposed learning algorithm is called Fast Learning Self-Organized Map, and it does not affect the easiness of the basic learning algorithm of the standard SOM. The proposed learning algorithm also improves the quality of resulting maps by providing better clustering quality and topology preservation of input multi-dimensi…

Settore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniComputer Science::Machine LearningArtificial IntelligenceSOM Simulated annealing Clustering Fast learningArtificial neural networkWake-sleep algorithmbusiness.industryComputer scienceTopology (electrical circuits)computer.software_genreAdaptive simulated annealingGeneralization errorData visualizationComputingMethodologies_PATTERNRECOGNITIONArtificial IntelligenceSimulated annealingUnsupervised learningData miningbusinessCluster analysisSelf Organizing map simulated annealingcomputerSoftware
researchProduct

Bayesian Network Based Classification of Mammography Structured Reports

2013

In modern medical domain, documents are created directly in electronic form and stored on huge databases containing documents, text in integral form and images. Retrieving right informations from these servers is challenging and, sometimes, this is very time consuming. Current medical technology do not provide a smart methodology classification of such documents based on their content. In this work the radiological structured reports are analysed classified and assigning an appropriate label. The text classifier is used to label a mammographic structured report. The experimental data are real clinical report coming from a hospital server. Analysing the structured report content, the classif…

Settore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniInformation retrievalmedicine.diagnostic_testStructured support vector machineComputer scienceExperimental dataBayesian networkReport ClassificationBayes' theoremComputingMethodologies_PATTERNRECOGNITIONRobustness (computer science)ServerBayesian NetworkmedicineMammographyClassifier (UML)Mammography
researchProduct