Question: Need a little bit more help with identify what variables to utilize with this research question using a quantitative regression technique. The quantitative regression technique
Need a little bit more help with identify what variables to utilize with this research question using a quantitative regression technique.
The quantitative regression technique can examine how leadership members integrate digital transformation into their current processes. It can also investigate what stakeholders must do to embrace the changes. To answer the question "What is the relationship between the integration of digital technology using leadership strategies in retail businesses and customer satisfaction?" there can be an examination of the relationship between variables using statistical tools. It can be used to analyze data collected through surveys, interviews, or secondary sources to determine the relationship between variables. The data can be analyzed using software such as SPSS, SAS, or R. Customer satisfaction can be influenced by digital transformation and identified as a factor affecting it. The findings can inform retail executives about the benefits of digital transformation and the elements they need to consider ensuring customer satisfaction. A statistical technique known as quantitative regression establishes the nature of the relationship between a dependent variable and one or more independent variables (Frost,2022). A linear regression model can estimate the heart of the relationship between a dependent variable and a set of independent variables. It is a valuable method for examining the impact of a particular variable or set of variables on the variable being studied. This is known as the dependent variable (Frost, 2022).
Frost, J. (2022). When should I use regression analysis? Statistics By Jim. Retrieved April 9, 2023, from https://statisticsbyjim.com/regression/when-use-regression-analysis/
Step by Step Solution
There are 3 Steps involved in it
Get step-by-step solutions from verified subject matter experts
