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Teaching Learning

Materials / Data / Books / VDO

M.Phil., Management, Tribhuvan University

Tribhuvan University's M.Phil. in Management program prepares professionals for teaching roles in universities, colleges, and training centers, and managerial/consultancy positions in business, government, NGOs, and research institutions. It also aims to enhance the skills of existing business studies faculty members
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Slide Sampling Estimation

M.Phil., Public Administration, Tribhuvan University

The Master of Philosophy (M.Phil.) in Public Administration is one of the important academic programs offered by the Central Department of Public Administration (CDPA) under the Faculty of Management at Tribhuvan University (TU) in Nepal. This program focuses on core issues of public administration in both global and Nepalese contexts and maintains a strong research orientation. The program is designed to fulfill the growing demand for higher studies in Public Administration within Nepal.
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Analysis of Variance [Slide, Book] ; Regression [Slide, Book]

M.Phil., Management, Sudur Paschim University

The aim of the MPhil program in Management at Sudur Paschim University Nepal is to prepare students for research and consultancy, making them eligible for the enrollment in the PhD Program of the Faculty of Management. This program also aims at producing research graduates and consultants in management through a continual learning process.
.[Slide 1].. ..[Syllabus].. Practice Question

Books

Youtube Videos

Instruction to install R and R Studio

Instruction to install SPSS in Mac OS


Instruction to install SPSS in Windows OS


R Study Materials

  1. Introduction to R
  2. Introduction to R Studio
  3. Introduction to R Graphics
  4. Descriptive Statistics
  5. Probability Distribution

SPSS VDO Materials

Intro SPSS / Creating Tables and Charts
Simple Regression Analysis
Multiple Regression Analysis
Chi Square Test
Non Parametric Test

Presentation

  1. Survey Questionnaire
  2. Descriptive Data Analysis