ICAI 2012 - The International Conference on Artificial Intelligence
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Website www.world-academy-of-science.org |
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Category ICAI 2012
Deadline: March 12, 2012 | Date: July 16, 2012-July 19, 2012
Venue/Country: Las Vegas, U.S.A
Updated: 2011-12-08 19:54:30 (GMT+9)
Call For Papers - CFP
Topics of interest include, but are not limited to, the following:Brain models / cognitive scienceNatural language processingFuzzy logic and soft computingSoftware tools for AIExpert systemsDecision support systemsAutomated problem solvingKnowledge discoveryKnowledge representationKnowledge acquisitionKnowledge-intensive problem solving techniquesKnowledge networks and managementIntelligent information systemsIntelligent data mining and farmingIntelligent web-based businessIntelligent agentsIntelligent networksIntelligent databasesIntelligent user interfaceAI and evolutionary algorithmsIntelligent tutoring systemsReasoning strategiesDistributed AI algorithms and techniquesDistributed AI systems and architecturesNeural networks and applicationsHeuristic searching methodsLanguages and programming techniques for AIConstraint-based reasoning and constraint programmingIntelligent information fusionLearning and adaptive sensor fusionSearch and meta-heuristicsMultisensor data fusion using neural and fuzzy techniquesIntegration of AI with other technologiesEvaluation of AI toolsSocial intelligence (markets and computational societies)Social impact of AIEmerging technologiesApplications (including: computer vision, signal processing, military, surveillance, robotics, medicine, pattern recognition, face recognition, finger print recognition, finance and marketing, stock market, education, emerging applications, ...)Workshop on Machine Learning; Models, Technologies and Applications:- General Machine Learning TheoryStatistical learning theoryUnsupervised and Supervised LearningMultivariate analysisHierarchical learning modelsRelational learning modelsBayesian methodsMeta learningStochastic optimizationSimulated annealingHeuristic optimization techniquesNeural networksReinforcement learningMulti-criteria reinforcement learningGeneral Learning modelsMultiple hypothesis testingDecision makingMarkov chain Monte Carlo (MCMC) methodsNon-parametric methodsGraphical modelsGaussian graphical modelsBayesian networksParticle filterCross-Entropy methodAnt colony optimizationTime series predictionFuzzy logic and learningInductive learning and applicationsGrammatical inference- General Graph-based Machine Learning TechniquesGraph kernel and graph distance methodsGraph-based semi-supervised learningGraph clusteringGraph learning based on graph transformationsGraph learning based on graph grammarsGraph learning based on graph matchingGeneral theoretical aspects of graph learningStatistical modeling of graphsInformation-theoretical approaches to graphsMotif searchNetwork inferenceGeneral issues in graph and tree mining- Machine Learning ApplicationsAspects of knowledge structuresComputational FinanceComputational IntelligenceKnowledge acquisition and discovery techniquesInduction of document grammarsSupervised and unsupervised classification of web dataGeneral Structure-based approaches in information retrieval, web authoring, information extraction, and web content miningLatent semantic analysisAspects of natural language processingIntelligent linguisticAspects of text technologyComputational visionBioinformatics and computational biologyBiostatisticsHigh-throughput data analysisBiological network analysis: protein-protein networks, signaling networks, metabolic networks, transcriptional regulatory networksGraph-based models in biostatisticsComputational NeuroscienceComputational ChemistryComputational StatisticsSystems BiologyAlgebraic Biology
Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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