ROOT-N CONSISTENCY OF INTERCEPT ESTIMATORS IN A BINARY RESPONSE MODEL UNDER TAIL RESTRICTIONS
Keyword(s):
The intercept of the binary response model is not regularly identified (i.e., $\sqrt n$ consistently estimable) when the support of both the special regressor V and the error term ε are the whole real line. The estimator of the intercept potentially has a slower than $\sqrt n$ convergence rate, which can result in a large estimation error in practice. This paper imposes additional tail restrictions which guarantee the regular identification of the intercept and thus the $\sqrt n$-consistency of its estimator. We then propose an estimator that achieves the $\sqrt n$ rate. Last, we extend our tail restrictions to a full-blown model with endogenous regressors.
1997 ◽
Vol 26
(2)
◽
pp. 229-236
◽
2015 ◽
Vol 188
(1)
◽
pp. 135-149
◽
1993 ◽
Vol 45
(4)
◽
pp. 741-758
◽
2012 ◽
pp. 187-204
Keyword(s):
2015 ◽
Vol 12
(11)
◽
pp. 794-801
◽
2006 ◽
Vol 59
(4)
◽
pp. 419-428
◽
2001 ◽
Vol 102
(2)
◽
pp. 231-269
◽
1996 ◽
Vol 11
(3)
◽
pp. 321-339
◽
Keyword(s):