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Title
STU34508 – Statistical Inference II
Category
courses
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77640f70f53647bbb036604dde4e462f
Source URL
https://teaching.scss.tcd.ie/module/stu34508-statistical-inference-ii/
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https://www.maths.tcd.ie/undergraduate/modules/minor-stats.php
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STU34508 – Statistical Inference II

Source: https://teaching.scss.tcd.ie/module/stu34508-statistical-inference-ii/ Parent: https://www.maths.tcd.ie/undergraduate/modules/minor-stats.php

Offered in 2023/24

Module Code STU34508
Module Name Statistical Inference II
ECTS Weighting[1] 5 ECTS
Semester taught Semester 2
Module Coordinator/s Prof. Jason Wyse

Module Learning Outcomes

On successful completion of this module, students will be able to: LO1. Use moment generating functions to understand sums of iid random variables LO2. Derive method of moments and maximum likelihood estimators LO3. Describe the properties of an estimator using bias and mean square error LO4. Derive approximate sampling distributions for maximum likelihood estimators LO5. Construct confidence intervals for unknown parameters LO6. Construct tests of hypothesis of unknown parameters

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Module Content

This module provides an overview of key topics in classical statistical theory. It begins with the study of sums of independent and identically distributed random variables, proceeding to a proof of the Central Limit Theorem using moment generating functions. Estimation of the parameters of statistical models based on observed data is then dealt with. The method of moments and maximum likelihood are examined. Properties of the estimators these methods produce are defined and explored. The Central Limit Theorem proved earlier is used to derive asymptotic properties of maximum likelihood estimators. Throughout the module, the basic inferential techniques of constructing confidence intervals and conducting hypothesis tests are revisited, and then discussed formally at the end.

Teaching and learning Methods

Three classes per week. Some of these classes will be used for tutorials and code demos.

Assessment Details

Assessment Component Brief Description Learning Outcomes Addressed % of total Week set Week Due
Exam End of semester exam (2 hours) LO1-LO6 90%
Assignments Four assignments throughout semester LO1-LO6 10% 3,5,7,9 4,6,8,10

Reassessment Details

100% Examination

Contact Hours and Indicative Student Workload

Contact Hours (scheduled hours per student over full module), broken down by: 33 hours
Lecture 29 hours
Laboratory 0 hours
Tutorial or seminar 4 hours
Other 0 hours
Independent study (outside scheduled contact hours), broken down by: 82 hours
Preparation for classes and review of material (including preparation for examination, if applicable 42 hours
completion of assessments (including examination, if applicable) 40 hours
Total Hours 115 hours

Statistical Inference (second edition), George Casella and Roger Berger, Duxbury Press

Computer Age Statistical Inference, Algorithms, Evidence and Data Science, Bradley Efron and Trevor Hastie, Cambridge University Press

Introduction to the Theory of Statistics, Alexander Mood, Franklin Graybill and Duane Boes, McGraw Hill

Module Pre-requisites

Prerequisite modules: STU23501

Other/alternative non-module prerequisites: NA

Module Co-requisites

None

Module Website

Blackboard