HESSIAN AND GRADIENT ESTIMATESFOR THREE DIMENSIONAL SPECIAL LAGRANGIAN EQUATIONS WITH LARGE PHASE By MICAH WARREN and YU YUAN

نویسنده

  • YU YUAN
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.

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تاریخ انتشار 2010