Towards More Efficient Interval Analysis: Corner Forms and a Remainder Interval Newton Method
<p>In this thesis we present two new advancements in verified scientific computing using interval analysis:</p> <p>1. The Corner Taylor Form (CTF) interval extension. The CTF is the first interval extension for multivariate polynomials that guarantees smaller excess width than t...
Summary: | <p>In this thesis we present two new advancements in verified scientific computing using interval analysis:</p>
<p>1. The Corner Taylor Form (CTF) interval extension. The CTF is the first interval extension for multivariate polynomials that guarantees smaller excess width than the natural extension on any input interval, large or small. To help with the proofs we introduce the concept of Posynomial Decomposition (PD). Using PD we develop simple and elegant proofs showing the CTF is isotonic and has quadratic or better (local) inclusion convergence order. We provide methods for computing the exact local order of convergence as well as the magnitude of excess width reduction the CTF produces over the natural extension.</p>
<p>2. The Remainder Interval Newton (RIN) method. RIN methods use first order Taylor Models (instead of the mean value theorem) to linearize (systems of) equations. We show that this linearization has many advantages which make RIN methods significantly more efficient than conventional Interval Newton (IN). In particular, for single multivariate equations, we show that RIN requires only order of the square root as many solution regions as IN does for the same problem. Therefore, RIN realizes same order savings in both time and memory for a significant overall improvement.</p>
<p>We also present a novel application of the two contributions to computer graphics: Beam Tracing Implicit Surfaces.</p> |
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