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Prediction Models with Sports Data

Descripción

In this course the learner will be shown how to generate forecasts of game results in professional sports using Python. The main emphasis of the course is on teaching the method of logistic regression as a way of modeling game results, using data on team expenditures. The learner is taken through the process of modeling past results, and then using the model to forecast the outcome games not yet played. The course will show the learner how to evaluate the reliability of a model using data on betting odds. The analysis is applied first to the English Premier League, then the NBA and NHL. The course also provides an overview of the relationship between data analytics and gambling, its history and the social issues that arise in relation to sports betting, including the personal risks.Lee mas.

Este recurso es ofrecido por un socio afiliado. Si paga por la capacitación, podemos ganar una comisión para respaldar este sitio.

Relevancia profesional por rol de datos

Las técnicas y herramientas cubiertas en Prediction Models with Sports Data son muy similares a los requisitos que se encuentran en los anuncios de trabajo de Científico de datos.

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Secuencia de aprendizaje

Prediction Models with Sports Data is a part of uno structured learning path.

Coursera
University of Michigan

5 Courses 7 Months

Sports Performance Analytics