HESSIAN AND GRADIENT ESTIMATESFOR THREE DIMENSIONAL SPECIAL LAGRANGIAN EQUATIONS WITH LARGE PHASE By MICAH WARREN and YU YUAN
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چکیده
We obtain a priori interior Hessian and gradient estimates for special Lagrangian equations with phase larger than a critical value in dimension three. Gradient estimates are also derived for critical and super critical phases in general dimensions.
منابع مشابه
Hessian and gradient estimates for three dimensional special Lagrangian equations with large phase
We obtain a priori interior Hessian and gradient estimates for special Lagrangian equations with phase larger than a critical value in dimension three. Gradient estimates are also derived for critical and super critical phases in general dimensions.
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تاریخ انتشار 2010