A unifying investigation of interior - point methods for convex programming Report 92 - 89
نویسندگان
چکیده
In the recent past a number of papers were written that present low complexity interior-point methods for di erent classes of convex programs. Goal of this article is to show that the logarithmic barrier function associated with these programs is self-concordant, and that the analyses of interiorpoint methods for these programs can thus be reduced to the analysis of interior-point methods with self-concordant barrier functions.
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