Published 3/2023MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHzLanguage: English | Size: 1.02 GB | Duration: 2h 7m
#1 Meta-Analysis Course for Researchers: A Practical Approach to Synthesizing Data What you'll learn Introduction to Meta-Analysis Data Extraction and Effect Size Calculation Fixed-Effect and Random-Effects Models Heterogeneity Assessment and Moderator Analysis Reporting and Interpretation of Results Open Science Practices and Data Sharing Choosing appropriate effect sizes and measures for meta-analysis Understanding the concept of publication bias and how to assess it Using software tools for conducting and visualizing meta-analyses, such as SPSS, SAS, R and Comprehensive Meta-Analysis Requirements Basic knowledge of statistics Familiarity with research methodology Knowledge of statistical software Good analytical skills Motivation and commitment Description Meta-analysis is a powerful statistical technique that allows researchers to synthesize and integrate findings from multiple studies on a particular topic, providing a more comprehensive and accurate understanding of the research area. Whether you're a graduate student, acad researcher, or industry professional, this course will provide you with a thorough understanding of the principles and practical skills needed to conduct and interpret meta-analyses.This course, "How to Conduct a Meta-analysis: A Practical Guide," is designed to provide a thorough understanding of the principles and practical skills necessary for conducting and interpreting meta-analyses.Through a combination of video lectures, practical exercises, and real-world examples, this course will cover everything you need to know about meta-analysis, including:Understanding the fundamentals of meta-analysis, including its purpose, benefits, and limitationsConducting a systematic literature review and identifying relevant studies for inclusionExtracting data from primary studies and calculating effect sizesPerfog meta-analyses using both fixed-effect and random-effects modelsAssessing heterogeneity and conducting moderator analyses to explore sources of variationReporting meta-analytic results and interpreting their practical and theoretical implicationsIncorporating open science practices and utilizing online resources for data sharing and collaborationWhether you're looking to conduct your own meta-analysis or interpret and evaluate existing ones, this course will equip you with the knowledge and skills needed to confidently navigate the world of meta-analysis and contribute to advancing your field of study. Upon completion of the course, students will be equipped with the knowledge and skills needed to confidently navigate the world of meta-analysis, contribute to advancing their field of study, and make informed decisions based on the results of meta-analyses. Overview Section 1: Introduction Lecture 1 Instructor Introduction Lecture 2 What is Meta-analysis? Lecture 3 What is the importance of meta-analysis in Academia? Lecture 4 Disadvantages of meta-analysis Lecture 5 Steps in meta-analysis Section 2: Step-1: Defining Research Questions Lecture 6 Selecting a Research Topic for meta-analysis Lecture 7 Main types of review questions Lecture 8 Components of review questions Lecture 9 PICO - A quantitative review question Lecture 10 PEO - A qualitative review question Lecture 11 SPIDER - A quantitative review question Section 3: Step-2: Searching Relevant Literature Lecture 12 Clarifying the preliminaries Lecture 13 Search strats Lecture 14 Boolean operators Lecture 15 Inclusion-Exclusion criateria Section 4: Step-3: Choice of the effect size measure Lecture 16 Types of effect sizes Lecture 17 Conversion of effect sizes to a common measure Section 5: Step4: Choice of analytical method Lecture 18 Univariate meta-analysis Lecture 19 Meta-regression analysis Lecture 20 Meta-analysis structural equation modeling (MASEM) Lecture 21 Qualitative meta-analysis Section 6: Step-6: Choice of software Lecture 22 STATA Lecture 23 SPSS Lecture 24 SAS Lecture 25 R Section 7: Step-7: Coding of effect sizes Lecture 26 Developing a coding sheet Lecture 27 Inclusion of moderator or control variables Lecture 28 Treatment of multiple effect sizes Section 8: Step-8: Analysis of Data Lecture 29 Outlier Analysis Lecture 30 Tests for publication bias Lecture 31 Fixed and random effect Section 9: Step-9: Reporting Results Lecture 32 Reporting in the article Lecture 33 Open-science practices Graduate students,Acadians,Researchers,Industry professionals HomePage:
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