34° Simposio Internacional de estadística 2025 : inteligencia artificial

dc.contributor.corporatenameUniversidad Nacional de Colombia. Sede Bogotá. Facultad de Ciencias. Departamento de Estadística
dc.contributor.corporatenameSimposio Internacional de Estadística 34° Versión, 2025
dc.contributor.otherMessinger, Shari
dc.contributor.otherGómez, Francisco
dc.contributor.otherCabrera Jojoa, Christian
dc.contributor.otherGiraldo Henao, Ramón
dc.contributor.otherSalas, Rodrigo
dc.contributor.otherHenrik Ek, Carl
dc.contributor.otherCaicedo, Juan Carlos
dc.contributor.otherGonzález, Edwin Fernando
dc.contributor.otherJiménez Moscoso, José Alfredo
dc.contributor.otherFonseca Gómez, Lida Rubiela
dc.contributor.otherMestre Carrillo, Gelys Igreth
dc.contributor.otherPalacios Abril, César Andrés
dc.contributor.otherAbdón García, Hernán
dc.contributor.researcherSosa, Juan
dc.contributor.researcherCalderón Rodríguez, Cristhian Fernando
dc.contributor.researcherPolo González, Mayo Luz
dc.contributor.researcherGuevara Gonzales, Rubén Darío
dc.contributor.researcherVanegas P., Luis Hernando
dc.contributor.researcherJaimes, María Isabel
dc.contributor.researcherJiménez Valderrama, Martha Tatiana Pamela
dc.contributor.researcherOspina Usaquén, Yuri Tatiana
dc.contributor.researcherA, Collazos, Julian A.
dc.contributor.researcherMedeiros, Marcelo C.
dc.contributor.researcherMolina, Nilson E.
dc.contributor.researcherLopez, Jorge H.
dc.contributor.researcherPuentes Soler, Angie Yurani
dc.contributor.researcherValle, Marcos Eduardo
dc.contributor.researcherLeal Mesa, Pedro Jose
dc.contributor.researcherArrieta Prieto, Mario Enrique
dc.contributor.researcherMartínez Simbaqueva, Diego Alberto
dc.contributor.researcherCésar-A., Palacios-Abril
dc.contributor.researcherRangel, Jhonier
dc.contributor.researcherToloza, Jurgen Daniel
dc.contributor.researcherMelo, Oscar Orlando
dc.contributor.researcherCruz, Nelson Alirio
dc.contributor.researcherMartínez-Florez, Guillermo
dc.contributor.researcherTovar-Falón, Roger
dc.contributor.researcherMantilla Sanabria, Luis Enrique
dc.contributor.researcherCortés Duque, Nathalia
dc.contributor.researcherRamirez Montoya, Javier
dc.contributor.researcherMartínez Riaño, Darwin Eduardo
dc.contributor.researcherTerraza Sequea, Andrea Carolina
dc.contributor.researcherMillan Cortés, Carlos Alberto
dc.contributor.researcherAgudelo R., Maria A.
dc.contributor.researcherChaves P., Luisa F.
dc.contributor.researcherHidalgo G., Jose G.
dc.contributor.researcherPardo Vargas, Laura Estefany
dc.contributor.researcherLeon Puentes, Jose Miguel
dc.contributor.researcherMorales Rivera, Mario Alfonso
dc.contributor.researcherMartínez Arrieta, Noemyz Yamyth
dc.contributor.researcherPuerto Pinzón, John Edisson
dc.contributor.researcherMelo Martínez, Sandra Esperanza
dc.contributor.researcherMelo Martínez, Carlos Eduardo
dc.contributor.researcherQuintero Rada, Paule Nicol
dc.contributor.researcherBecerra Becerra, Diego Alejandro
dc.contributor.researcherArunachalam, Viswanathan
dc.contributor.researcherMoreno-Carmona, Gustavo A.
dc.contributor.researcherRamírez-Guevara, Isabel Cristina
dc.contributor.researcherCardona-Jiménez, Johnatan
dc.contributor.researcherJaramillo Gómez, María Fernanda
dc.contributor.researcherJaramillo Gómez, Samuel
dc.contributor.researcherJaramillo Elorza, Mario César
dc.contributor.researcherRodriguez Moreno, Michael Smith
dc.contributor.researcherTorres Vargas, María Isabel
dc.contributor.researcherBautista Rincon, Ana Paula
dc.contributor.researcherVergara-Cardozo, Sandra
dc.contributor.researcherGonzález-García, Luz M.
dc.contributor.researcherFranco-Soto, Diana C.
dc.contributor.researcherRivera Aguilar, Fredy Alexander
dc.contributor.researcherDuque-Grajales, Jon E.
dc.contributor.researcherMoreno Rodriguez, Juan Felipe
dc.contributor.researcherMurcia Ochoa, Paula Natalia
dc.contributor.researcherCubides, Brayan Srick
dc.contributor.researcherHernandez Sarmiento, Johan Andres
dc.contributor.researcherOchoa Ruiz, Juan Camilo
dc.contributor.researcherMatallana Díaz, Juan David
dc.contributor.researcherVejar Barajas, Julieth Karina
dc.contributor.researcherSuárez-Gutiérrez, Nicolás
dc.contributor.researcherArévalo Fuentes, María Paula
dc.contributor.researcherMendez Ramos, Maria Clareth
dc.contributor.researcherVertel Morinson, Melba Liliana
dc.contributor.researcherAlvarado Rosario, Selene
dc.contributor.researcherMorales Aldana, Diego Phelipe
dc.contributor.researcherRozo Rubio, Brad Dereck
dc.contributor.researcherBeltrán Gomez, Juan Angel
dc.contributor.researcherFigueroa, Andrea
dc.contributor.researcherJerónimo, Juan David
dc.contributor.researcherMonroy, Juan David
dc.contributor.researcherRamos, Jesús David
dc.contributor.researcherBarrera Moreno, Miguel Angel
dc.contributor.researcherRamirez Herrera, Nokolle
dc.contributor.researcherLombo Beltran, Julian Hernando
dc.contributor.researcherCruz Reyes, Danna Lesley
dc.contributor.researcherRivadeneria Zarza, Lucas Mateo
dc.contributor.researcherArroyo Cantero, Jose Carlos
dc.contributor.researcherSamur Martínez, Enoc David
dc.contributor.researcherTrespalacios Balmaceda, Paula Andrea
dc.contributor.researcherCastaño Suaza, Carlos Mario
dc.contributor.researcherValderrama Molano, Tomás
dc.contributor.researcherRomero Pinilla, Ingrid Johana
dc.contributor.researcherVahos Blanco, Maria Alejandra
dc.contributor.researcherRamos Montaña, Juesus David
dc.contributor.researcherMendoza Buelvas, Neszly Cecilia
dc.contributor.researcherVanegas Vitola, Carlos Fernando
dc.contributor.researcherMuslaco Bohorquez, Nohelis
dc.contributor.researcherZhang Gao, Cindy
dc.contributor.researcherCardona Jiménez, Johnatan
dc.contributor.researcherCarrillo Florez, Maria Jose
dc.contributor.researcherFonseca Gonzales, Lida
dc.contributor.researcherBonilla Leon, David
dc.contributor.researcherMosquera Hernadez, Andres
dc.contributor.researcherParra Cuellar, Natalia
dc.contributor.researcherVargas-Contreras, Rosmer M.
dc.contributor.researcherPerez Jorge, Laury Vanessa
dc.contributor.researcherPerez Jorge, Genesy
dc.contributor.researcherVillota Burgos, Harold Hernán
dc.contributor.researcherMartínez Corso, Ruth Cecilia
dc.contributor.researcherMartín-Vásquez, Miguel Angel
dc.contributor.researcherNiño-Rodriguez, Laura Juliana
dc.contributor.researcherGalarza-Pedraza, Maria Fernanda
dc.contributor.researcherSarmiento Cabarcas, Emma Carolina
dc.contributor.researcherGómez Piedrahita, Julián Andrés
dc.contributor.researcherVargas Franco, Viviana
dc.contributor.researcherLopera-Gómez, Carlos Mario
dc.contributor.researcherAldana -Mejia, Juan F.
dc.contributor.researcherTobón-Viana, Davinson
dc.contributor.researcherAcosta Ruiz, Jhon Deivid
dc.contributor.researcherRodriguez Agudelo, Tomas David
dc.contributor.researcherHiguera Castro, Alejandro
dc.contributor.researcherTovio Gutiérrez, Yenifer Ángel
dc.contributor.researcherOrtiz Ortiz, Rubén Darío
dc.contributor.researcherMarín Ramírez, Ana Magnolia
dc.contributor.researcherOrtiz Marín, Miguel Ángel
dc.coverage.countryColombia
dc.coverage.regionAmérica Latina
dc.coverage.temporal2025
dc.date.accessioned2026-02-16T19:44:16Z
dc.date.available2026-02-16T19:44:16Z
dc.date.issued2025
dc.descriptionilustraciones a color, diagramas, fotografías, mapasspa
dc.description.abstractEl Simposio Internacional de Estadística (SIE) de la Universidad Nacional de Colombia constituye, desde su primera edición en 1990, un escenario de encuentro académico, científico y humano para la comunidad estadística del país y de América Latina. Aquella primera versión, centrada en el tema “Análisis de Regresión”, marcó el inicio de una tradición de diálogo, actua lización y divulgación del conocimiento estadístico que, con el paso de los años, ha incorporado nuevas metodologías, campos de aplicación y perspectivas interdisciplinarias. Treinta y cinco años después, el simposio se consolida como un referente regional en el intercambio de ideas, la formación de nuevas generaciones de estadísticos y la promoción de la investigación de frontera. En esta trigésima cuarta edición, celebrada en la ciudad de Pasto, Nariño, entre el 29 de julio y el 1 de agosto de 2025, se ratifica el compromiso con la excelencia académica y la integración del conocimiento, en un entorno donde los desafíos sociales, ambientales y tecnológicos demandan soluciones informadas por el análisis estadístico riguroso. El evento reunió a investigadores, docentes, estudiantes y profesionales provenientes de diversas universidades e instituciones nacionales e internacionales. Durante cuatro días, se desarrollaron cursos especializados, conferencias magistrales, ponencias orales y sesiones de pósteres, en torno a temas de vanguardia como Estadística Bayesiana, Ciencia de Datos, Aprendizaje Automático, Modelos Espaciales y Espaciotemporales, Inferencia Funcional y Métodos No Paramétricos. La versión 2025 destacó por su ambiente de colaboración interdisciplinaria y por la integración entre enfoques teóricos, computacionales y aplicados. Las actividades científicas fueron acompañadas de espacios culturales y académicos que reflejaron la riqueza y diversidad de la región sur del país, consolidando el propósito del simposio de descentralizar la producción y la enseñanza de la estadística. Agradecemos especialmente a los conferencistas invitados internacionales y nacionales, cuyas contribuciones fortalecieron el carácter global de esta versión, así como a los autores de comunicaciones orales y pósteres, que con su entusiasmo y rigor científico hacen posible la continuidad de este espacio. El compromiso de los comités organizador, científico y logístico, junto con el apoyo institucional de la Universidad Nacional de Colombia y las entidades colaboradoras, permitió que este encuentro se llevara a cabo con éxito. El SIE 2025 reafirma que la estadística es una ciencia esencial para comprender los fenómenos de nuestro tiempo y un lenguaje común que permite conectar la evidencia con la acción. La edición de Pasto constituye un nuevo hito en la historia del simposio, uniendo tradición, innovación y comunidad. Con gratitud y esperanza, invitamos desde ya a todos los colegas a participar en la próxima edición de este encuentro que sigue escribiendo la historia de la estadística en Colombia y América Latina. (Prefacio--Texto tomado de la fuente)spa
dc.description.abstractThe International Symposium on Statistics of the National University of Colombia has, sin ce its first edition in 1990, served as an academic, scientific, and human meeting ground for the statistical community in Colombia and Latin America. That first edition, focused on Regression Analysis, marked the beginning of a tradition of dialogue, renewal, and dissemination of statistical knowledge that, over the years, has incorporated new methodologies, fields of application, and interdisciplinary perspectives. Thirty-five years later, the symposium stands as a regional benchmark for the exchange of ideas, the training of new generations of statisticians, and the promotion of cutting-edge research. In this thirty-fourth edition, held in Pasto, Nariño, from July 29 to August 1, 2025, the commitment to academic excellence and knowledge integration is reaffirmed in a context where social, environmental, and technological challenges demand solutions informed by rigorous statistical analysis. The event brought together researchers, professors, students, and professionals from various national and international universities and institutions. Over four days, specialized courses, key note lectures, oral presentations, and poster sessions were held, addressing cutting-edge topics such as Bayesian statistics, data science, machine learning, spatial and spatio-temporal models, functional inference, and nonparametric methods. The 2025 edition stood out for its spirit of interdisciplinary collaboration and for integrating theoretical, computational, and applied approaches. The scientific activities were accompanied by cultural and academic events that reflected the richness and diversity of Colombia’s southern region, consolidating the symposium’s purpose of decentralizing the production and teaching of statistics. We extend special thanks to the invited international and national keynote speakers, who se contributions strengthened the global character of this edition, as well as to the authors of oral and poster communications, whose enthusiasm and scientific rigor make the continuity of this event possible. The dedication of the organizing, scientific, and logistics committees, along with the institutional support of the Universidad Nacional de Colombia and collaborating entities, made this meeting a success. The SIE 2025 reaffirms that statistics is an essential science for understanding the phenome na of our time and a common language that connects evidence with action. The Pasto edition marks a new milestone in the symposium’s history, uniting tradition, innovation, and community. With gratitude and optimism, we invite all colleagues to take part in the next edition of this event, which continues to write the history of statistics in Colombia and Latin America.eng
dc.description.editionPrimera edición, 2025
dc.description.notesTextos y resúmenes en español e inglésspa
dc.description.tableofcontentsÍndice -- COMUNICACIÓN ORAL -- UN ENFOQUE BAYESIANO DE POSICIÓN LATENTE PARA LA DETECCIÓN DE COMUNIDADES EN REDES DE UNA O VARIAS CAPAS CON ATRIBUTOS CONTINUOS -- MODELOS BAYESIANOS DE SOCIALIDAD: UNA ALTERNATIVA ESCALABLE Y FLEXIBLE PARA EL ANALISIS DE REDES -- PARAPOLITICA Y VOTACIÓN NOMINAL EN COLOMBIA: UN ANALISIS ESPACIAL BAYESIANO EUCLIDIANO Y ESFÉRICO -- ESTIMADOR DE LA MEDIA AJUSTADO EN ENCUESTAS CON NO RESPUESTA: MÉTODOS PARAMÉTRICOS Y NO PARAMÉTRICOS APLICADOS A UN ESTUDIO DE SALUD BUCAL EN COLOMBIA -- MONITOREO FASE I USANDO UN MODELO DE REGRESIÓN GENERALIZADO ENTRE VARIABLES ESCALARES Y FUNCIONALES -- SECUENCIA FORMATIVA DEL ESPACIO ACADÉMICO DE MÉTODOS ESTADÍSTICOS -- CONSTRUYENDO LA VERDAD: MINERÍA DE TEXTO Y REDES LINGÜÍSTICAS EN AUDIENCIAS PÚBLICAS DEL CASO 03 DE LA JURISDUICCIÓN ESPECIAL PARA LA PAZ (JEP) -- MODELOS DE REGRESIÓN FUNCIONAL PARA CURVAS DE DATOS DE PROPORCIÓN APLICADOS A ENFERMEDADES INFECCIOSAS -- SOLUCIÓN DE ECUACIONES DIFERENCIALES MEDIANTE REDES NEURONALES -- KERNEL METHODS FOR PROGNOSIS OF B-CELL ACUTE LYMPHOBLASTIC LLEUKEMIA -- PRONÓSTICO PROBABILÍSTICO BASADO EN PREDICCIÓN CONFORMAL PARASERIES TEMPORALES: COMPARACIÓN CON BOOTSTRAPPING Y DEEPAR -- MONITOREO DE PROCESOS MEDIANTE IMÁGENES: UNA PROPUESTA ROBUSTA BASADA EN DESCOMPOSICIÓN MACROPARAFAC -- ADAPTACIÓN DE TÉCNICAS DE VISUALIZACIÓN ESTADÍSTICA APLICADA A DATOS DE BIODIVERSIDAD: UN PILOTO CON LEPIDÓPTEROS DEL MUSEO DE LA SALLE -- PUENTE BROWNIANO MULTIVARIADO -- MODELOS DE ERROR ESPACIAL CON PERTURBACIONES NORMALES HETEROCEDASTICAS Y MODELAMIENTO CONJUNTO DE MEDIA Y VARIANZA -- EXTENSIONES DE LA DISTRIBUCIÓN NORMAL PARA EL AJUSTE DE DATOS MULTIMODALES: APLICACIONES A DATOS REALES -- MODELO DE REGRESIÓN CUANTÍLICA CON DISTRIBUCIÓN HAZARD PROPORCIONAL UNITARIA PARA DATOS ACOTADOS EN (0,1): METODOLOGÍA Y APLICACIÓN -- EXPLORACIÓN DE RELACIONES EN DATOS REGULATORIOS DEL INVIMA MEDIANTE ANALISIS DE REDES SOCIALES -- MODELOS DE SOBREVIVENCIA CON EFECTO ALEATORIO SURVIVAL MODELS WITH RANDOM EFFECTS -- VIDEO FRAMES CLASSIFICATION FOR RADICAL CHOLECYSTECTOMY USING CONVOLUTIONAL NETWORKS AND TRANSFER LEARNING -- ANALISIS DE MOVILIDAD URBANA EN BOGOTA: CARACTERIZACIÓN Y DESAFIOS -- ESTRUCTURAS LATENTES DE LA ECONOMÍA DEL CUIDADO EN COLOMBIA: UNA APROXIMACIÓN CON MODELOS DE MEZCLA, MODELOS ECONOMÉTRICOS Y APRENDIZAJE ESTADISTICO -- ANÁLISIS EPIDEMIOLÓGICO DE LA CONDUCTA SUICIDA EN COLOMBIA -- DETERMINANTES SOCIALES EN LOS HOMICIDIOS DE LIDERES SOCIALES EN COLOMBIA 2020-2022, MEDIANTE UN MODELO ESPACIAL -- ANÁLISIS ESPACIAL DE LAS VIOLENCIAS BASADAS EN GÉNERO Y SUS DETERMINANTES EN BOGOTÁ PARA EL AÑO 2019. -- MODELO ESTOCÁSTICO PARA LA PROPAGACIÓN DEL DENGUE: UNA SIMULACIÓN DEL BROTE DE LA ENFERMEDAD EN EL VALLE DEL CAUCA – POSTERES -- MODELO DE EDAD-PERIODO-COHORTE (APC): UNA APLICACIÓN CON UN ENFOQUE BAYESIANO -- APLICACIÓN WEB PARA VISUALIZAR LA CONSISTENCIA DE LA MEDIA Y LA VARIANZA MUESTRALES -- IMPLEMENTACIÓN DE R-STUDIO EN CURSOS DE ESTADÍSTICA: UN ENFOQUE PRÁCTICO PARA INGENIEROS -- ÁRBOLES DE CLASIFICACIÓN Y REGRESIÓN PARA LA PREDICCIÓN DEL DIAGNÓSTICO DE DIABETES -- COMPARACIÓN DE MICT-TIMING Y MICT VERSUS ESTIMACIÓN USANDO PRODUCTO DE MULTINOMIALES, PARA ANÁLISIS DE DATOS CATEGÓRICOS CON DATOS FALTANTES EN LA RESPUESTA -- ESTIMACIÓN DE LA MATRIZ DE VARIANZA-COVARIANZA DE LOS ERRORES EN MODELOS DE REGRESIÓN SIN SUPUESTOS DE CORRELACIÓN A PRIORI -- ARMONIZACION EN NEUROIMAGENES DESDE UN ENFOQUE BAYESIANO: CORRIGIENDO EL EFECTOS DE SITIO Y LA HETEROGENEIDAD POBLACIONAL -- CRISIS PREVISIBLE DE ESCASEZ DE AGUA EN BOGOTÁ ?: REVISIÓN DEL IMPACTO DE LOS FACTORES CLIMATOLÓGICOS Y DE CONSUMO EN EL VOLUMEN DE LOS EMBALSES Y ANÁLISIS DE LOS PRONÓSTICOS -- COMPARACIÓN DE MODELOS PREDICTIVOS PARA ESTADÍSTICAS DEPORTIVAS DE GOLES TOTALES EN FÚTBOL -- FACTORES QUE INFLUYEN EN LA DEPRESIÓN ESTUDIANTIL, EN SUS ACTIVIDADES COTIDIANAS, A TRAVÉS DE K-MEANS -- PROCESAMIENTO DE LENGUAJE NATURAL APLICADO A TEXTOS LITERARIOS COLOMBIANOS DE DIFERENTES CONTEXTOS SOCIALES -- FACTORES DETERMINANTES EN EL PRECIO DE ALOJAMIENTOS EN PLATAFORMAS DE ECONOMIA COLABORATIVA: UN ANALISIS ESPACIAL DEL CASO DE AIRBNB EN SANTA MARTA (COLOMBIA). -- ANÁLISIS DEL ALZHEIMER Y FACTORES ASOCIADOS A LA PROGRESIÓN EN PACIENTES DE ESTADOS UNIDOS, DATOS DEL NATIONAL ALZHEIMER'S COORDINATING CENTER (NACC). -- IDENTIFICACIÓN DE FACTORES ASOCIADOS AL ESTRÉS ACADÉMICO EN ESTUDIANTES DEL DEPARTAMENTO DE MATEMÁTICAS DE LA UNIVERSIDAD EL BOSQUE -- MODELADO ESTADÍSTICO DEL RENDIMIENTO FUTBOLÍSTICO: UN ENFOQUE BAYESIANO APLICADO A MILLLONARIOS F.C. EN LA TEMPORADA 2023-1 DE LA LIGA BETPLAY -- SISTEMA DE TIENDA INTELIGENTE CON PEREILAMIENTO DE USUARIOS Y DETECCIÓN DE AMENAZAS MEDIANTE VISIÓN ARTIFICIAL -- DESARROLLO, APLICACIÓN Y UTILIDAD DE UN ENFOQUE DE APRENDIZAJE AUTOMÁTICO NO SUPERVISADO PARA DATOS DE CONTEO (RESULTADOS JUEGOS OLÍMPICOS 2020 – 2024) -- EVALUACIÓN DE MODELOS ESTRUCTURALES DE SERIES DE TIEMPO BAYESIANOS PARA LA PREDICCIÓN DE LA DEMANDA DE ENERGÍA ELÉCTRICA Y GAS NATURAL EN COLOMBIA -- MODELADO DE UPLIET PARA EVALUAR EL IMPACTO DE TRATAMIENTOS EN LA SUPERVIVENCIA DE PACIENTES CON CANCER DE COLON -- APLICACIÓN DE MODELOS DE DATOS DE CONTEO EN RNA-SEQ A BASES DE DATOS ESPECIALIZADAS DE PATOGENOS (HEPATITIS A,ESCHERICHIA COLI Y ENTAMOEBA HISTOLYTICA) MEDIANTE TECNICAS TRANSCRIPTOMICAS Y APRENDIZAJE AUTOMÁTICO -- FACTORES DE RIESGOS EPIDEMIOLÓGICOS DEL CÁNCER INEANTIL EN COLOMBIA (2013-2023) CON TECNICAS COMPUTACIONALES BASADAS EN APRENDIZAJE AUTOMÁTICO CLÁSICO -- PRUEBAS DE HIPÓTESIS EMPLEANDO EL FULL BAYESIAN SIGNIFICANCE TEST (FBST) EN UN ANOVA BAYESIANO -- DETERMINANTES DE LA BRECHA DE GENERO EN EL MERCADO LABORAL DEL DEPARTAMENTO DE SUCRE -- DETERMINANTES Y EVOLUCIÓN DE LA INFORMALIDAD EN MERCADO LABORAL DEL DEPARTAMENTO DE SUCRE: UN ANALISIS DE DATOS DE PANEL -- MEJORANDO EL ANÁLISIS DE SENTIMIENTO FINANCIERO MEDIANTE MODELOS DE LENGUAJE DE CÓDIGO ABIERTO CON RECUPERACIÓN AUMENTADA -- PREDICCIÓN DE LA DESERCIÓN ESTUDIANTIL EN LOS PROGRAMAS DE PREGRADO DE LA FCE DE LA UNIVERSIDAD NACIONAL DE COLOMBIA, SEDE BOGOTÁ, UTILIZANDO RANDOM FOREST -- PLANTAS PARA LA PAZ: EXPLORACIÓN DE PLANTAS MEDICINALES DE TIERRALTA CORDOBA PARA COMBATIR LA RESISTENCIA BACTERIANA EN UNA ZONA POSCONELICTO -- CONSTRUCCIÓN Y VALIDACIÓN DE UN MODELO PARA LA RELACIÓN DEL CADMIO Y LAS PROPIEDADES FISICOQUÍMICAS DEL SUELO Y SU ACOPLAMIENTO AL GRANO DE CACAO EN SUELOS DE TUMACO, NARIÑO – COLOMBIA -- ANÁLISIS DEL DESEMPLEO POR GÉNERO EN PAÍSES AMERICANOS -- HACIA UN ANÁLISIS ESTADÍSTICO MULTIVARIADO DE LA CALIDAD DEL AGUA SUPERFICIAL EN LA CUENCA ALTA DEL RÍO CAUCA -- UNA APLICACIÓN PARA EL GRÁFICO DE EVENTOS PARA DATOS RECURRENTES -- USO DE SHINY PARA MOSTRAR EL AJUSTE NO PARAMÉTRICO DE LA MCF -- APLICATIVO PARA LA COMPARACION DE LA MCF EN DOS MUESTRAS -- HACIA UNA REVISIÓN DE LITERATURA DE MÉTODOS BASADOS EN INTELIGENCIA ARTIFICIAL PARA LA EVALUACIÓN DE LA CALIDAD DEL AGUA SUPERFICIAL -- DETECCIÓN DE ANOMALIAS EN TRANSACCIONES FINANCIERAS MEDIANTE TÉCNICAS DE APRENDIZAJE AUTOMÁTICOL -- APLICACIÓN DE TÉCNICAS ESTADISTICAS MULTIVARIADAS PARA EL ANÁLISIS DE LA INFLUENCIA DE LAS HABILIDADES SOCIOEMOCIONALES EN LOS RESULTADOS DE LAS PRUEBAS SABER 5° Y 7' EN COLOMBIA -- REDES NEURONALES INFORMADAS POR LA FÍSICA Y MÉTODOS DE FOURIER PARA LA ECUACIÓN GENERALIZADA DE KORTEWEG-DE VRIES.spa
dc.format.extent497 páginas
dc.format.mimetypeapplication/pdf
dc.identifier.issn-l2463-0861
dc.identifier.urihttps://repositorio.unal.edu.co/handle/unal/89569
dc.language.isospa
dc.language.isoeng
dc.publisherUniversidad Nacional de Colombia, Sede Bogotá, Facultad de Ciencias, Departamento de Estadística
dc.publisher.placeBogotá, Colombia
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dc.rights.accessrightsinfo:eu-repo/semantics/openAccess
dc.rights.licenseAtribución-CompartirIgual 4.0 Internacional
dc.rights.urihttp://creativecommons.org/licenses/by-sa/4.0/
dc.subject.ddc000 - Ciencias de la computación, información y obras generales::004 - Procesamiento de datos Ciencia de los computadores
dc.subject.ddc510 - Matemáticas::519 - Probabilidades y matemáticas aplicadas
dc.subject.ddc000 - Ciencias de la computación, información y obras generales::006 - Métodos especiales de computación
dc.subject.ddc519.5
dc.subject.lembAPRENDIZAJE AUTOMATICO (INTELIGENCIA ARTIFICIAL)spa
dc.subject.lembMachine learningeng
dc.subject.lembPROCESAMIENTO ELECTRONICO DE DATOS-TECNICAS ESTRUCTURADASspa
dc.subject.lembElectronic data processing - Structured techniqueseng
dc.subject.lembANALISIS NUMERICO-PROCESAMIENTO DE DATOS-CONGRESOS,CONFERENCIAS,ETC.spa
dc.subject.lembNumerical analysis - data processing congresseseng
dc.subject.lembANALISIS DE VARIANZAspa
dc.subject.lembAnalysis of varianceeng
dc.subject.lembANALISIS MULTIVARIANTEspa
dc.subject.lembMultivariate analysiseng
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dc.subject.lembANALISIS POR COMPONENTES PRINCIPALESspa
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dc.subject.lembCUADROS DE INSUMO-PRODUCTOspa
dc.subject.lembInput-output tableseng
dc.subject.lembDISTRIBUCION (TEORIA DE PROBABILIDADES)spa
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dc.subject.lembDISTRIBUCION DE GAUSSspa
dc.subject.lembGauss distributioneng
dc.subject.proposalRedes multiplexspa
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dc.subject.proposalEcuación no lineal de Schrodingerspa
dc.subject.proposalNon linear Schrodinger Equationeng
dc.subject.proposalPredicción Conformalspa
dc.subject.proposalConformal Predictioneng
dc.subject.proposalDescomposición tensorialspa
dc.subject.proposalTensor decompositioneng
dc.subject.proposalDatos de Biodiversidadspa
dc.subject.proposalBiodiversity Dataeng
dc.subject.proposalModelos Multivariantesspa
dc.subject.proposalMultivariate Modelseng
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dc.subject.proposalStandardized rateeng
dc.subject.proposalÍndice de Moranspa
dc.subject.proposalMoran indexeng
dc.subject.proposalEstadística espacialspa
dc.subject.proposalSpatial Statisticseng
dc.subject.proposalSimulación por Euler-Maruyamaspa
dc.subject.proposalEuler-Maruyama simulationeng
dc.subject.proposalRegresión Binomial Negativaspa
dc.subject.proposalNegative Binomial Regressioneng
dc.subject.proposalConvergencia en probabilidadspa
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dc.subject.proposalDidactics of statisticseng
dc.subject.proposalÁrboles de clasificaciónspa
dc.subject.proposalClassification treeseng
dc.subject.proposalProducto de Multinomialesspa
dc.subject.proposalMultinomial Producteng
dc.subject.proposalMatriz de varianzas-covarianzasspa
dc.subject.proposalVariance Covariance Matrixeng
dc.subject.proposalRegresiones Harmonicasspa
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dc.subject.proposalModelos predictivosspa
dc.subject.proposalPredictive modelseng
dc.subject.proposalDistancias euclidianasspa
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dc.subject.proposalNatural Language Processingeng
dc.subject.proposalEconomía colaborativaspa
dc.subject.proposalSharing economyeng
dc.subject.proposalGráfico de rosaspa
dc.subject.proposalRose charteng
dc.subject.proposalAnálisis Factorial Confirmatoriospa
dc.subject.proposalConfirmatory Factor Analysiseng
dc.subject.proposalRegresión de Poissonspa
dc.subject.proposalPoisson regressioneng
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dc.subject.proposalObject Detectioneng
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dc.subject.proposalCausal Inferenceeng
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dc.subject.proposalBiostatisticseng
dc.subject.proposalMapas de calorspa
dc.subject.proposalHeat mapseng
dc.subject.proposalDatos de panelspa
dc.subject.proposalPanel dataeng
dc.subject.proposalAnálisis de sentimiento financierospa
dc.subject.proposalFinancial sentiment analysiseng
dc.subject.proposalBalanceo de Datosspa
dc.subject.proposalData Balancingeng
dc.subject.proposalInteligencia artificialspa
dc.subject.proposalArtificial intelligenceeng
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dc.subject.proposalComparison of two sampleseng
dc.subject.proposalDetección de anomalíasspa
dc.subject.proposalAnomaly detectioneng
dc.subject.proposalRedes neuronales infor madas por la física (PINNs)spa
dc.subject.proposalPhysics-informedneuralnetworks(PINNs)eng
dc.title34° Simposio Internacional de estadística 2025 : inteligencia artificialspa
dc.typeLibro
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dc.type.coarversionhttp://purl.org/coar/version/c_970fb48d4fbd8a85
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dcterms.audience.professionaldevelopmentMaestros
dcterms.audience.professionaldevelopmentMedios de comunicación
dcterms.audience.professionaldevelopmentPúblico general
dcterms.audience.professionaldevelopmentProveedores de ayuda financiera para estudiantes
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