Mathematical Statistics for Data Science
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This course teaches the foundations of mathematical statistics, focusing on methods of estimation such as the method of moments and maximum likelihood estimators (MLEs), evaluating estimators by their bias, variance, and efficiency, and explore asymptotic statistics, including the central limit theorem and confidence intervals.
Course Highlights:
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57 engaging video lectures, featuring innovative lightboard technology for an interactive learning experience
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In-depth lecture notes accompanying each lesson, highlighting key vocabulary, examples, and explanations from the video sessions
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End-of-chapter practice problems to solidify your understanding and refine your skills from the course
Key Topics Covered:
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Fundamental probability distributions: Bernoulli, uniform, and normal distributions
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Expected value and its connection to sample mean
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Method of moments for developing estimators
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Expected value of estimators and unbiased estimators
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Variance of random variables and estimators
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Fisher information and the Cramer-Rao Lower Bound
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Central limit theorem
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Confidence intervals
Who This Course Is For:
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Students with prior introductory statistics experience, looking to delve deeper into mathematical foundations
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Data science professionals seeking to refresh or enhance their statistics knowledge for job interviews
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Anyone interested in developing a statistical mindset and strengthening their analytical skills
Pre-requisites:
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This course requires a solid understanding of high school algebra and equation manipulation with variables.
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Some chapters utilize introductory calculus concepts, such as differentiation and integration. However, even without prior calculus knowledge, those with strong math skills can follow along and only miss a few minor mathematical details.
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27VarianceVídeo Aula
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28Bernoulli Distribution VarianceVídeo Aula
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29Uniform Distribution VarianceVídeo Aula
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30Normal Distribution VarianceVídeo Aula
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31Variance of Estimators and Properties of VarianceVídeo Aula
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32Bernoulli MOM VarianceVídeo Aula
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33Uniform MOM VarianceVídeo Aula
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34Normal MOM VarianceVídeo Aula
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35Variance RecapVídeo Aula
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36Variance Practice and SolutionsTexto
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37Likelihood Function and Maximum Likelihood Estimation - MotivationVídeo Aula
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38Joint pdf, joint likelihoodVídeo Aula
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39Log-likelihood and finding the MLEVídeo Aula
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40Properties of logarithmsVídeo Aula
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41Bernoulli MLEVídeo Aula
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42Uniform MLEVídeo Aula
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43Mean Squared ErrorVídeo Aula
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44Normal MLEVídeo Aula
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45MLE RecapVídeo Aula
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46MLE Practice and SolutionsTexto
