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ON USE OF DUMMY VARIABLES IN REGRESSION ANALYSIS
https://meral.edu.mm/records/8087
https://meral.edu.mm/records/8087e0353a70-468e-4d94-9c3f-9d0a7a400fd1
aacc8845-54b0-41f7-877e-adc0174349a6
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Publication type | ||||||
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Journal article | ||||||
Upload type | ||||||
Publication | ||||||
Title | ||||||
Title | ON USE OF DUMMY VARIABLES IN REGRESSION ANALYSIS | |||||
Language | en | |||||
Publication date | 2018-12-01 | |||||
Authors | ||||||
EI THANDA | ||||||
Description | ||||||
This purpose of this paper is to present the role of qualitative explanatory variables in regression analysis. The nature of dummy variables is described in Chapter II .Among its various applications, some are considered in Chapter III. These include (1) comparing two (or more) regression, (2) deseasonalizing time series data and (3) piecewise linear regression models. It will be show that introduction of qualitative variables, often called dummy variables, makes the linear regression model an extremely flexible tool is capable of handling many interesting problems encountered in empirical studies. |
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Journal articles | ||||||
1 | ||||||
Co-operative University, Thanlyin Research Journal 2018 | ||||||
129 -137 | ||||||
Vol.3,No.1 |