| File Name: | Research Methodology and Statistical Analysis |
| Content Source: | https://www.udemy.com/course/research-methodology-and-statistical-analysis/ |
| Genre / Category: | Other Tutorials |
| File Size : | 7.4 GB |
| Publisher: | Amit Kumar Yadav |
| Updated and Published: | January 28, 2026 |
About Course:- “This course contains the use of artificial intelligence.” The course “Research Methodology and Statistical Analysis” is designed to provide students with a comprehensive understanding of research concepts, experimental design, and statistical techniques, along with hands-on implementation using modern computational tools. The course builds a strong foundation in scientific research thinking, enabling learners to identify research problems, collect and analyze data systematically, and communicate findings effectively following ethical and academic standards.
The course begins by introducing the concept of research, its objectives, motivation, and utility, and explains the importance of research in academic, industrial, and societal contexts. Students are familiarized with various types of research, including descriptive versus analytical research and applied versus fundamental research. Emphasis is placed on understanding research methodology, exploratory research design, interdisciplinary approaches, and standard research procedures.
Learners are guided through the complete research process, including problem identification, literature survey, experimental and quasi-experimental studies, surveys, and data collection techniques such as CATI, CAPI, mail, email, and face-to-face methods. Advanced qualitative techniques like discourse analysis and biographical data analysis are also covered. The course further explains sampling concepts, primary and secondary data collection, validation methods, and the fundamentals of sampling theory.
A significant portion of the course focuses on measurement and attitude scaling, including Likert scales, deterministic attitudes, measurement models, summative models, and factorial experimental designs. Students learn the principles of experimental design, such as replication, randomization, and blocking, and apply them to single-factor experiments and hypothesis formulation.
The statistical core of the course includes hypothesis testing using z-tests and t-tests, analysis of variance (ANOVA) for fixed and random effect models, computation of sum of squares, degrees of freedom, and numerical problem-solving. Advanced topics such as confidence intervals, chi-square tests, correlation analysis, regression techniques (simple, multiple, polynomial, logistic), and regularization methods like Ridge and Lasso regression are also introduced.
To strengthen practical skills, the course provides extensive hands-on programming experience using Python in Google Colab and MATLAB, covering descriptive statistics, hypothesis testing, ANOVA, regression analysis, data visualization, and model adequacy checking. Students also gain exposure to data collection, extraction, cleansing, spreadsheet applications, and statistical analysis using SPSS, along with effective chart and graph generation and PowerPoint-based data presentation.
DOWNLOAD LINK: Research Methodology and Statistical Analysis
Research_Methodology_and_Statistical_Analysis.part1.rar – 1000.0 MB
Research_Methodology_and_Statistical_Analysis.part2.rar – 1000.0 MB
Research_Methodology_and_Statistical_Analysis.part3.rar – 1000.0 MB
Research_Methodology_and_Statistical_Analysis.part4.rar – 1000.0 MB
Research_Methodology_and_Statistical_Analysis.part5.rar – 1000.0 MB
Research_Methodology_and_Statistical_Analysis.part6.rar – 1000.0 MB
Research_Methodology_and_Statistical_Analysis.part7.rar – 1000.0 MB
Research_Methodology_and_Statistical_Analysis.part8.rar – 440.2 MB
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