The "Multiple Linear Regression, Logistic Regression, and Survival Analysis" webinar has been added to ResearchAndMarkets.com's offering.
In this comprehensive 5-hour seminar, participants will delve into the core principles and applications of multiple regression, logistic regression, and Cox regression.
Designed for professionals across various industries, this training provides a deep understanding of how to model and interpret complex data sets. Learn to apply multiple regression techniques to predict continuous outcomes, use logistic regression for binary outcomes, and employ Cox regression for survival analysis. Through practical examples and interactive sessions, gain the skills necessary to make data-driven decisions and enhance your analytical capabilities. Join us to transform your data analysis approach and unlock powerful insights from your data.
Why Should You Attend
- Enhance Your Analytical Skills: This seminar provides in-depth training on multiple regression, logistic regression, and Cox regression, equipping you with the essential tools to analyze complex data sets accurately and efficiently.
- Practical Application: Through real-world examples and hands-on exercises, you'll learn to apply these regression techniques to solve practical problems in your field, making the training highly relevant and immediately useful.
- Career Advancement: Gaining proficiency in advanced statistical methods can significantly boost your professional profile, opening up opportunities for career growth and advancement in data-driven roles across various industries.
- Expert Guidance: Learn from an experienced instructor who will provide clear explanations, answer your questions, and offer insights into best practices and common pitfalls in regression analysis.
- Stay Competitive: In today's data-centric world, having advanced data analysis skills is crucial. This training will help you stay ahead of the curve by mastering techniques that are highly valued in the job market.
Learning Objectives
- Understand the Fundamentals: Gain a solid understanding of multiple regression, logistic regression, and Cox regression, including their underlying assumptions and applications.
- Data Preparation: Learn how to properly prepare and clean data for regression analysis, ensuring accurate and reliable results.
- Model Building: Develop the skills to build and fit regression models using statistical software, including the interpretation of coefficients and other key metrics.
- Results Interpretation: Master the interpretation of regression results, including understanding p-values, confidence intervals, odds ratios, and hazard ratios.
- Diagnostics and Validation: Learn to perform diagnostic checks and validation techniques to assess the goodness-of-fit and robustness of your regression models.
- Communicating Results: Enhance your ability to effectively communicate the results of your regression analyses to non-statistical audiences, including visualizing data and presenting findings clearly.
- These learning objectives will ensure that participants leave the seminar with a comprehensive skill set in regression analysis, ready to tackle complex data challenges in their professional roles.
Who Should Attend:
- Healthcare and Medical Research
- Pharmaceutical Industry
- Academia and Research
- Finance and Economics
- Marketing and Market Research
- Public Health and Policy Making
- Engineering and Technology
- Environmental Science
- Government and Nonprofit Organizations
Key Topics Covered:
Introduction and Overview
Introduction to the seminar
- Welcome and objectives
- Brief overview of topics to be covered
- Housekeeping and seminar logistics
Session 1: Multiple Regression
Basics of Multiple Regression
- Definition and applications
- Assumptions of multiple regression
Conducting Multiple Regression Analysis
- Data preparation and exploration
- Running the analysis in statistical software
Interpreting Results
- Coefficients, significance, and goodness of fit
- Practical examples
Q&A
Session 2: Logistic Regression
Introduction to Logistic Regression
- When and why to use logistic regression
- Differences from multiple regression
Conducting Logistic Regression Analysis
- Data requirements and preparation
- Running logistic regression in statistical software
Interpreting Results
- Odds ratios, coefficients, and model fit
- Case studies and examples
Q&A
Session 3: Cox Regression
Understanding Cox Regression
- Introduction to survival analysis
- Kaplan-Meier curves and log-rank test
- Basics of Cox proportional hazards model
Conducting Cox Regression Analysis
- Data preparation for survival analysis
- Running Cox regression in statistical software
Interpreting Results
- Hazard ratios and model diagnostics
- Practical examples and case studies
Q&A
Conclusion and Wrap-up
Summary of Key Points
- Recap of major topics covered
- Final thoughts and additional resources
Feedback and Next Steps
- How to apply what was learned
- Further learning opportunities
- Thank you and closing remarks
For more information about this webinar visit https://www.researchandmarkets.com/r/7wbwnp
About ResearchAndMarkets.com
ResearchAndMarkets.com is the world's leading source for international market research reports and market data. We provide you with the latest data on international and regional markets, key industries, the top companies, new products and the latest trends.
View source version on businesswire.com: https://www.businesswire.com/news/home/20241119880579/en/
Contacts
ResearchAndMarkets.com
Laura Wood, Senior Press Manager
press@researchandmarkets.com
For E.S.T Office Hours Call 1-917-300-0470
For U.S./ CAN Toll Free Call 1-800-526-8630
For GMT Office Hours Call +353-1-416-8900