Mastering Regression Techniques and Data Analysis with SPSS
Published 12/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: All | Genre: eLearning | Language: English | Duration: 88 Lectures ( 12h 58m ) | Size: 11 GB
Published 12/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: All | Genre: eLearning | Language: English | Duration: 88 Lectures ( 12h 58m ) | Size: 11 GB
Unlock the power of SPSS for advanced regression modeling and data interpretation.
What you'll learn
How to import and manage datasets in SPSS.
Techniques for visualizing and analyzing correlations.
Fundamentals of linear, multiple, logistic, and multinomial regression.
Practical application of statistical models on real-world data.
Requirements
Basic understanding of statistics is helpful. Familiarity with MS Excel is recommended but not mandatory. Access to SPSS software for practice.
Description
Course IntroductionThis course provides a comprehensive guide to mastering regression techniques and data analysis using SPSS. From importing datasets to conducting linear, multiple, logistic, and multinomial regression, you’ll gain hands-on experience in analyzing complex datasets. Designed for professionals, researchers, and students, this course ensures a deep understanding of SPSS functionalities and statistical modeling concepts.Section-wise WriteupSection 1: Importing DatasetLearn the essentials of importing datasets in various formats (text, CSV, xlsx) and navigate the SPSS interface, including menus and basic statistical calculations like mean and standard deviation. Implement these concepts using SPSS through practical examples.Section 2: Correlation TechniquesUnderstand the fundamentals of correlation, from theory to practical implementation. Visualize data relationships using scatter plots and analyze datasets through SPSS’s Data Editor and Statistics Viewer. Gain expertise in interpreting results through various examples.Section 3: Linear Regression ModelingDive into linear regression techniques, including regression equations and scatter plots. Explore real-world examples, such as stock returns, energy consumption, and debt assessments, to understand interpretation and application. Learn how to use MS Excel alongside SPSS for predicted values.Section 4: Multiple Regression ModelingMaster the art of multiple regression with an extensive array of practical examples. Delve into critical output variables, understand variable relationships, and create meaningful regression models to address complex data scenarios.Section 5: Logistic RegressionExplore logistic regression concepts, focusing on binary outcomes and categorical predictors. Analyze datasets like smoking preferences and heart pulse studies. Learn to generate outputs, interpret results, and validate findings using SPSS and MS Excel.Section 6: Multinomial RegressionAdvance your regression knowledge with multinomial regression techniques. Analyze health studies and other categorical datasets, work with model fitting and asymptotic correlations, and interpret outputs and parameter estimates.
Who this course is for
Researchers and analysts looking to enhance their data analysis skills. Students seeking practical knowledge of SPSS for academic projects. Professionals aiming to use regression techniques in business or research.