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Linear Algebra for Data Science with examples in R

Descripción

This course is meant to instill a working knowledge of linear algebra terminology and to lay the foundations of advanced data mining techniques like Principal Component Analysis, Factor Analysis, Collaborative Filtering, Correspondence Analysis, Network Analysis, Support Vector Machines and many more. In order to fully comprehend these important tools and techniques, we will need to understand the language in which they are presented: Linear Algebra. This is NOT a rigorous proof-based mathematics course. It is an intuitive introduction to the most important definitions and concepts that are needed to understand and effectively implement these important data mining methodologies. So that we know how to stir the pile…Lee mas.

Relevancia profesional por rol de datos

Las técnicas y herramientas cubiertas en Linear Algebra for Data Science with examples in R son muy similares a los requisitos que se encuentran en los anuncios de trabajo de Analista de negocios.

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