Hello everyone
I am working on a paper. I am asking for your advice on how to re-scale the data and decrease the number of zeros in the coefficients.
Attached is the regression table
Table 2: Cocoa Agricultural Productivity
Dependent Variable: [lnYield (ton/he)]
- - - OLS, Municipality and Year Fixed Effect - - -
Thanks!
I am working on a paper. I am asking for your advice on how to re-scale the data and decrease the number of zeros in the coefficients.
Attached is the regression table
Table 2: Cocoa Agricultural Productivity
Dependent Variable: [lnYield (ton/he)]
- - - OLS, Municipality and Year Fixed Effect - - -
Variables | (1) | (2) | (3) |
Ln(Credit for Investment) | 0.00452*** | 0.00164** | 0.00137* |
(0.000546) | (0.000618) | (0.000623) | |
Ln(Fiscal Revenue) | -0.00847* | 0.00206 | -0.00774 |
(0.00343) | (0.00744) | (0.00868) | |
Land use | -0.000196 | -0.00758 | -0.00637 |
(0.00271) | (0.00834) | (0.00831) | |
Labor | 0.0139*** | 0.0357*** | 0.0339*** |
(0.00173) | (0.00525) | (0.00827) | |
Aqueduct Coverage | -0.000514** | 0.0000916 | 0.000176 |
(0.000163) | (0.000161) | (0.000159) | |
Energy Coverage | 0.00186*** | 0.000800* | 0.000664 |
(0.000279) | (0.000362) | (0.000367) | |
Constant | -1.596*** | -2.918*** | -2.726*** |
(0.0957) | (0.294) | (0.514) | |
Municipality FE | No | Yes | Yes |
Year FE | No | No | Yes |
N | 6424 | 6424 | 6424 |
R-sq | 0.052 | 0.616 | 0.623 |
OLS Robust Standard errors in parentheses | |||
*** p<0.01, ** p<0.05, * p<0.1 |
Thanks!
Comment