Exploratory data analysis in the context of data mining and resampling



Título del documento: Exploratory data analysis in the context of data mining and resampling
Revista: International journal of psychological research
Base de datos: CLASE
Número de sistema: 000355288
ISSN: 2011-2084
Autores: 1
Instituciones: 1Arizona State University, Tempe, Arizona. Estados Unidos de América
Año:
Periodo: Ene-Jun
Volumen: 3
Número: 1
Paginación: 9-22
País: Colombia
Idioma: Inglés
Tipo de documento: Artículo
Enfoque: Analítico
Resumen en inglés Today there are quite a few widespread misconceptions of exploratory data analysis (EDA). One of these misperceptions is that EDA is said to be opposed to statistical modeling. Actually, the essence of EDA is not about putting aside all modeling and preconceptions; rather, researchers are urged not to start the analysis with a strong preconception only, and thus modeling is still legitimate in EDA. In addition, the nature of EDA has been changing due to the emergence of new methods and convergence between EDA and other methodologies, such as data mining and resampling. Therefore, conventional conceptual frameworks of EDA might no longer be capable of coping with this trend. In this article, EDA is introduced in the context of data mining and resampling with an emphasis on three goals: cluster detection, variable selection, and pattern recognition. TwoStep clustering, classification trees, and neural networks, which are powerful techniques to accomplish the preceding goals, respectively, are illustrated with concrete examples
Disciplinas: Psicología
Palabras clave: Psicología experimental,
Análisis de datos,
Minería de datos,
Muestreo,
Validación,
Redes neuronales
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