SCCI Digital Library and Forum

Statistics for Applications (Fall 2016) (M-I-T)

S# Lecture Course Institute Instructor Discipline
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Lecture 11: Parametric Hypothesis Testing (cont.) and Testing Goodness of Fit (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 12: Testing Goodness of Fit (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 13: Regression (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 14: Regression (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 15: Regression (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 17: Bayesian Statistics (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 18: Bayesian Statistics (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 19: Principal Component Analysis (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 1: Introduction to Statistics (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 20: Principal Component Analysis (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 21: Generalized Linear Models (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 22: Generalized Linear Models (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 23: Generalized Linear Models (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 24: Generalized Linear Models (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 2: Introduction to Statistics (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 3: Parametric Inference (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 4: Parametric Inference (cont.) and Maximum Likelihood Estimation (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 5: Maximum Likelihood Estimation (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 6: Maximum Likelihood Estimation (cont.) and the Method of Moments (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 7: Parametric Hypothesis Testing (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 8: Parametric Hypothesis Testing (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences
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Lecture 9: Parametric Hypothesis Testing (cont.) (M-I-T)
Statistics for Applications (Fall 2016) (M-I-T) MIT Prof. Philippe Rigollet Basic and Health Sciences